Common Set Operations

Common Set Operations

This section of the manual describes the basic symbolic types describing operations between sets.

Cartesian Product

Binary Cartesian Product

CartesianProduct{N<:Real, S1<:LazySet{N}, S2<:LazySet{N}} <: LazySet{N}

Type that represents a Cartesian product of two convex sets.

Fields

  • X – first convex set
  • Y – second convex set

Notes

The Cartesian product of three elements is obtained recursively. See also CartesianProductArray for an implementation of a Cartesian product of many sets without recursion, instead using an array.

The EmptySet is the absorbing element for CartesianProduct.

Constructors:

  • CartesianProduct{N<:Real, S1<:LazySet{N}, S2<:LazySet{N}}(X1::S1, X2::S2) – default constructor

  • CartesianProduct(Xarr::Vector{S}) where {S<:LazySet} – constructor from an array of convex sets

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LinearAlgebra.:×Method.
×

Alias for the binary Cartesian product.

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Base.:*Method.
    *(X::LazySet, Y::LazySet)

Alias for the binary Cartesian product.

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LazySets.dimMethod.
dim(cp::CartesianProduct)::Int

Return the dimension of a Cartesian product.

Input

  • cp – Cartesian product

Output

The ambient dimension of the Cartesian product.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, cp::CartesianProduct{N}) where {N<:Real}

Return the support function of a Cartesian product.

Input

  • d – direction
  • cp – Cartesian product

Output

The support function in the given direction. If the direction has norm zero, the result depends on the wrapped sets.

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LazySets.σMethod.
σ(d::AbstractVector{N}, cp::CartesianProduct{N}) where {N<:Real}

Return the support vector of a Cartesian product.

Input

  • d – direction
  • cp – Cartesian product

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the wrapped sets.

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LazySets.isboundedMethod.
isbounded(cp::CartesianProduct)::Bool

Determine whether a Cartesian product is bounded.

Input

  • cp – Cartesian product

Output

true iff both wrapped sets are bounded.

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Base.:∈Method.
∈(x::AbstractVector{N}, cp::CartesianProduct{N})::Bool where {N<:Real}

Check whether a given point is contained in a Cartesian product.

Input

  • x – point/vector
  • cp – Cartesian product

Output

true iff $x ∈ cp$.

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Base.isemptyMethod.
isempty(cp::CartesianProduct)::Bool

Return if a Cartesian product is empty or not.

Input

  • cp – Cartesian product

Output

true iff any of the sub-blocks is empty.

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constraints_list(cp::CartesianProduct{N}
                )::Vector{LinearConstraint{N}} where {N<:Real}

Return the list of constraints of a (polytopic) Cartesian product.

Input

  • cp – Cartesian product

Output

A list of constraints.

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vertices_list(cp::CartesianProduct{N})::Vector{Vector{N}} where {N<:Real}

Return the list of vertices of a (polytopic) Cartesian product.

Input

  • cp – Cartesian product

Output

A list of vertices.

Algorithm

We assume that the underlying sets are polytopic. Then the high-dimensional set of vertices is just the Cartesian product of the low-dimensional sets of vertices.

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Inherited from LazySet:

$n$-ary Cartesian Product

CartesianProductArray{N<:Real, S<:LazySet{N}} <: LazySet{N}

Type that represents the Cartesian product of a finite number of convex sets.

Fields

  • array – array of sets

Notes

The EmptySet is the absorbing element for CartesianProductArray.

Constructors:

  • CartesianProductArray(array::Vector{<:LazySet}) – default constructor

  • CartesianProductArray([n]::Int=0, [N]::Type=Float64) – constructor for an empty product with optional size hint and numeric type

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LazySets.dimMethod.
dim(cpa::CartesianProductArray)::Int

Return the dimension of a Cartesian product of a finite number of convex sets.

Input

  • cpa – Cartesian product array

Output

The ambient dimension of the Cartesian product of a finite number of convex sets.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, cp::CartesianProductArray{N}) where {N<:Real}

Return the support function of a Cartesian product array.

Input

  • d – direction
  • cpa – Cartesian product array

Output

The support function in the given direction. If the direction has norm zero, the result depends on the wrapped sets.

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LazySets.σMethod.
σ(d::AbstractVector{N}, cpa::CartesianProductArray{N}) where {N<:Real}

Support vector of a Cartesian product array.

Input

  • d – direction
  • cpa – Cartesian product array

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the product sets.

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LazySets.isboundedMethod.
isbounded(cpa::CartesianProductArray)::Bool

Determine whether a Cartesian product of a finite number of convex sets is bounded.

Input

  • cpa – Cartesian product of a finite number of convex sets

Output

true iff all wrapped sets are bounded.

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Base.:∈Method.
∈(x::AbstractVector{N}, cpa::CartesianProductArray{N}
 )::Bool where {N<:Real}

Check whether a given point is contained in a Cartesian product of a finite number of sets.

Input

  • x – point/vector
  • cpa – Cartesian product array

Output

true iff $x ∈ \text{cpa}$.

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Base.isemptyMethod.
isempty(cpa::CartesianProductArray)::Bool

Return if a Cartesian product is empty or not.

Input

  • cp – Cartesian product

Output

true iff any of the sub-blocks is empty.

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constraints_list(cpa::CartesianProductArray{N}
                )::Vector{LinearConstraint{N}} where {N<:Real}

Return the list of constraints of a (polytopic) Cartesian product of a finite number of sets.

Input

  • cpa – Cartesian product array

Output

A list of constraints.

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vertices_list(cpa::CartesianProductArray{N}
             )::Vector{Vector{N}} where {N<:Real}

Return the list of vertices of a (polytopic) Cartesian product of a finite number of sets.

Input

  • cpa – Cartesian product array

Output

A list of vertices.

Algorithm

We assume that the underlying sets are polytopic. Then the high-dimensional set of vertices is just the Cartesian product of the low-dimensional sets of vertices.

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LazySets.arrayMethod.
array(cpa::CartesianProductArray{N, S}
     )::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Cartesian product of a finite number of convex sets.

Input

  • cpa – Cartesian product array

Output

The array of a Cartesian product of a finite number of convex sets.

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array(cha::ConvexHullArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a convex hull of a finite number of convex sets.

Input

  • cha – convex hull array

Output

The array of a convex hull of a finite number of convex sets.

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array(ia::IntersectionArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of an intersection of a finite number of convex sets.

Input

  • ia – intersection of a finite number of convex sets

Output

The array of an intersection of a finite number of convex sets.

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array(msa::MinkowskiSumArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Minkowski sum of a finite number of convex sets.

Input

  • msa – Minkowski sum array

Output

The array of a Minkowski sum of a finite number of convex sets.

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array(cms::CacheMinkowskiSum{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a caching Minkowski sum.

Input

  • cms – caching Minkowski sum

Output

The array of a caching Minkowski sum.

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array(cup::UnionSetArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a union of a finite number of convex sets.

Input

  • cup – union of a finite number of convex sets

Output

The array that holds the union of a finite number of convex sets.

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Inherited from LazySet:

Convex Hull

Binary Convex Hull

ConvexHull{N<:Real, S1<:LazySet{N}, S2<:LazySet{N}} <: LazySet{N}

Type that represents the convex hull of the union of two convex sets.

Fields

  • X – convex set
  • Y – convex set

Notes

The EmptySet is the neutral element for ConvexHull.

Examples

Convex hull of two 100-dimensional Euclidean balls:

julia> b1, b2 = Ball2(zeros(100), 0.1), Ball2(4*ones(100), 0.2);

julia> c = ConvexHull(b1, b2);

julia> typeof(c)
ConvexHull{Float64,Ball2{Float64},Ball2{Float64}}
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LazySets.CHType.
CH

Alias for ConvexHull.

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LazySets.dimMethod.
dim(ch::ConvexHull)::Int

Return the dimension of a convex hull of two convex sets.

Input

  • ch – convex hull of two convex sets

Output

The ambient dimension of the convex hull of two convex sets.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, ch::ConvexHull{N}) where {N<:Real}

Return the support function of a convex hull of two convex sets in a given direction.

Input

  • d – direction
  • ch – convex hull of two convex sets

Output

The support function of the convex hull in the given direction.

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LazySets.σMethod.
σ(d::AbstractVector{N}, ch::ConvexHull{N}) where {N<:Real}

Return the support vector of a convex hull of two convex sets in a given direction.

Input

  • d – direction
  • ch – convex hull of two convex sets

Output

The support vector of the convex hull in the given direction.

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LazySets.isboundedMethod.
isbounded(ch::ConvexHull)::Bool

Determine whether a convex hull of two convex sets is bounded.

Input

  • ch – convex hull of two convex sets

Output

true iff both wrapped sets are bounded.

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Base.isemptyMethod.
isempty(ch::ConvexHull)::Bool

Return if a convex hull of two convex sets is empty or not.

Input

  • ch – convex hull

Output

true iff both wrapped sets are empty.

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Inherited from LazySet:

$n$-ary Convex Hull

ConvexHullArray{N<:Real, S<:LazySet{N}} <: LazySet{N}

Type that represents the symbolic convex hull of a finite number of convex sets.

Fields

  • array – array of sets

Notes

The EmptySet is the neutral element for ConvexHullArray.

Constructors:

  • ConvexHullArray(array::Vector{<:LazySet}) – default constructor

  • ConvexHullArray([n]::Int=0, [N]::Type=Float64) – constructor for an empty hull with optional size hint and numeric type

Examples

Convex hull of 100 two-dimensional balls whose centers follows a sinusoidal:

julia> b = [Ball2([2*pi*i/100, sin(2*pi*i/100)], 0.05) for i in 1:100];

julia> c = ConvexHullArray(b);
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CHArray

Alias for ConvexHullArray.

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LazySets.dimMethod.
dim(cha::ConvexHullArray)::Int

Return the dimension of the convex hull of a finite number of convex sets.

Input

  • cha – convex hull array

Output

The ambient dimension of the convex hull of a finite number of convex sets.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, cha::ConvexHullArray{N}) where {N<:Real}

Return the support function of a convex hull array in a given direction.

Input

  • d – direction
  • cha – convex hull array

Output

The support function of the convex hull array in the given direction.

Algorithm

This algorihm calculates the maximum over all $ρ(d, X_i)$ where the $X_1, …, X_k$ are the sets in the array cha.

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LazySets.σMethod.
σ(d::AbstractVector{N}, cha::ConvexHullArray{N}) where {N<:Real}

Return the support vector of a convex hull array in a given direction.

Input

  • d – direction
  • cha – convex hull array
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LazySets.isboundedMethod.
isbounded(cha::ConvexHullArray)::Bool

Determine whether a convex hull of a finite number of convex sets is bounded.

Input

  • cha – convex hull of a finite number of convex sets

Output

true iff all wrapped sets are bounded.

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LazySets.arrayMethod.
array(cpa::CartesianProductArray{N, S}
     )::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Cartesian product of a finite number of convex sets.

Input

  • cpa – Cartesian product array

Output

The array of a Cartesian product of a finite number of convex sets.

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array(cha::ConvexHullArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a convex hull of a finite number of convex sets.

Input

  • cha – convex hull array

Output

The array of a convex hull of a finite number of convex sets.

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array(ia::IntersectionArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of an intersection of a finite number of convex sets.

Input

  • ia – intersection of a finite number of convex sets

Output

The array of an intersection of a finite number of convex sets.

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array(msa::MinkowskiSumArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Minkowski sum of a finite number of convex sets.

Input

  • msa – Minkowski sum array

Output

The array of a Minkowski sum of a finite number of convex sets.

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array(cms::CacheMinkowskiSum{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a caching Minkowski sum.

Input

  • cms – caching Minkowski sum

Output

The array of a caching Minkowski sum.

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array(cup::UnionSetArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a union of a finite number of convex sets.

Input

  • cup – union of a finite number of convex sets

Output

The array that holds the union of a finite number of convex sets.

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Base.isemptyMethod.
isempty(cha::ConvexHullArray)::Bool

Return if a convex hull array is empty or not.

Input

  • cha – convex hull array

Output

true iff all wrapped sets are empty.

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Inherited from LazySet:

Convex Hull Algorithms

LazySets.convex_hullFunction.
convex_hull(P1::HPoly{N}, P2::HPoly{N};
           [backend]=default_polyhedra_backend(P1, N)) where {N}

Compute the convex hull of the set union of two polyhedra in H-representation.

Input

  • P1 – polyhedron
  • P2 – another polyhedron
  • backend – (optional, default: default_polyhedra_backend(P1, N)) the polyhedral computations backend

Output

The HPolyhedron (resp. HPolytope) obtained by the concrete convex hull of P1 and P2.

Notes

For performance reasons, it is suggested to use the CDDLib.Library() backend for the convex_hull.

For further information on the supported backends see Polyhedra's documentation.

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convex_hull(P::VPolygon{N}, Q::VPolygon{N};
            [algorithm]::String="monotone_chain")::VPolygon{N} where {N<:Real}

Return the convex hull of two polygons in vertex representation.

Input

  • P – polygon in vertex representation
  • Q – another polygon in vertex representation
  • algorithm – (optional, default: "monotone_chain") the algorithm used to compute the convex hull

Output

A new polygon such that its vertices are the convex hull of the given two polygons.

Algorithm

A convex hull algorithm is used to compute the convex hull of the vertices of the given input polygons P and Q; see ?convex_hull for details on the available algorithms. The vertices of the output polygon are sorted in counter-clockwise fashion.

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convex_hull(P1::VPolytope{N}, P2::VPolytope{N};
            [backend]=default_polyhedra_backend(P1, N)) where {N}

Compute the convex hull of the set union of two polytopes in V-representation.

Input

  • P1 – polytope
  • P2 – another polytope
  • backend – (optional, default: default_polyhedra_backend(P1, N)) the polyhedral computations backend, see Polyhedra's documentation for further information

Output

The VPolytope obtained by the concrete convex hull of P1 and P2.

Notes

For performance reasons, it is suggested to use the CDDLib.Library() backend for the convex_hull.

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convex_hull(points::Vector{VN}; [algorithm]::String="monotone_chain"
           )::Vector{VN} where {N<:Real, VN<:AbstractVector{N}}

Compute the convex hull of points in the plane.

Input

  • points – list of 2D vectors

  • algorithm – (optional, default: "monotone_chain") the convex hull algorithm, valid options are:

    • "monotone_chain"
    • "monotone_chain_sorted"

Output

The convex hull as a list of 2D vectors with the coordinates of the points.

Examples

Compute the convex hull of a random set of points:

julia> points = [randn(2) for i in 1:30]; # 30 random points in 2D

julia> hull = convex_hull(points);

julia> typeof(hull)
Array{Array{Float64,1},1}

Plot both the random points and the computed convex hull polygon:

julia> using Plots;

julia> plot([Tuple(pi) for pi in points], seriestype=:scatter);

julia> plot!(VPolygon(hull), alpha=0.2);
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LazySets.convex_hull!Function.
convex_hull!(points::Vector{VN}; [algorithm]::String="monotone_chain"
            )::Vector{VN} where {N<:Real, VN<:AbstractVector{N}}

Compute the convex hull of points in the plane, in-place.

Input

  • points – list of 2D vectors (is modified)

  • algorithm – (optional, default: "monotone_chain") the convex hull algorithm; valid options are:

    • "monotone_chain"
    • "monotone_chain_sorted"

Output

The convex hull as a list of 2D vectors with the coordinates of the points.

Notes

See the non-modifying version convex_hull for more details.

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LazySets.right_turnFunction.
right_turn(O::AbstractVector{N}, A::AbstractVector{N}, B::AbstractVector{N}
          )::N where {N<:Real}

Determine if the acute angle defined by the three points O, A, B in the plane is a right turn (counter-clockwise) with respect to the center O.

Input

  • O – 2D center point
  • A – 2D one point
  • B – 2D another point

Output

Scalar representing the rotation.

Algorithm

The cross product is used to determine the sense of rotation. If the result is 0, the points are collinear; if it is positive, the three points constitute a positive angle of rotation around O from A to B; otherwise they constitute a negative angle.

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monotone_chain!(points::Vector{VN}; sort::Bool=true
               )::Vector{VN} where {N<:Real, VN<:AbstractVector{N}}

Compute the convex hull of points in the plane using Andrew's monotone chain method.

Input

  • points – list of 2D vectors; is sorted in-place inside this function
  • sort – (optional, default: true) flag for sorting the vertices lexicographically; sortedness is required for correctness

Output

List of vectors containing the 2D coordinates of the corner points of the convex hull.

Notes

For large sets of points, it is convenient to use static vectors to get maximum performance. For information on how to convert usual vectors into static vectors, see the type SVector provided by the StaticArrays package.

Algorithm

This function implements Andrew's monotone chain convex hull algorithm to construct the convex hull of a set of $n$ points in the plane in $O(n \log n)$ time. For further details see Monotone chain

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Intersection

Binary Intersection

Intersection{N<:Real, S1<:LazySet{N}, S2<:LazySet{N}} <: LazySet{N}

Type that represents the intersection of two convex sets.

Fields

  • X – convex set
  • Y – convex set
  • cache – internal cache for avoiding recomputation; see IntersectionCache

Examples

Create an expression, $Z$, which lazily represents the intersection of two squares $X$ and $Y$:

julia> X, Y = BallInf([0,0.], 0.5), BallInf([1,0.], 0.65);

julia> Z = X ∩ Y;

julia> typeof(Z)
Intersection{Float64,BallInf{Float64},BallInf{Float64}}

julia> dim(Z)
2

We can check if the intersection is empty with isempty:

julia> isempty(Z)
false

Do not confuse Intersection with the concrete operation, which is computed with the lowercase intersection function:

julia> W = intersection(X, Y)
Hyperrectangle{Float64}([0.425, 0.0], [0.075, 0.5])
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Base.:∩Method.

Alias for Intersection.

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LazySets.dimMethod.
dim(cap::Intersection)::Int

Return the dimension of an intersection of two convex sets.

Input

  • cap – intersection of two convex sets

Output

The ambient dimension of the intersection of two convex sets.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, cap::Intersection{N}) where {N<:Real}

Return an upper bound on the support function of the intersection of two convex sets in a given direction.

Input

  • d – direction
  • cap – intersection of two convex sets

Output

An uper bound on the support function in the given direction.

Algorithm

The support function of an intersection of $X$ and $Y$ is upper bounded by the minimum of the support functions of $X$ and $Y$.

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LazySets.ρMethod.
ρ(d::AbstractVector{N},
  cap::Intersection{N, S1, S2};
  [algorithm]::String="line_search",
  [kwargs...]) where {N<:Real,
                      S1<:LazySet{N},
                      S2<:Union{HalfSpace{N}, Hyperplane{N}, Line{N}}}

Return the support function of the intersection of a compact set and a half-space/hyperplane/line in a given direction.

Input

  • d – direction

  • cap – lazy intersection of a compact set and a half-space/hyperplane/ line

  • algorithm – (optional, default: "line_search"): the algorithm to calculate the support function; valid options are:

    • "line_search" – solve the associated univariate optimization problem using a line search method (either Brent or the Golden Section method)
    • "projection" – only valid for intersection with a hyperplane; evaluates the support function by reducing the problem to the 2D intersection of a rank 2 linear transformation of the given compact set in the plane generated by the given direction d and the hyperplane's normal vector n
    • "simple" – take the $\min$ of the support function evaluation of each operand

Output

The scalar value of the support function of the set cap in the given direction.

Notes

It is assumed that the set cap.X is compact.

Any additional number of arguments to the algorithm backend can be passed as keyword arguments.

Algorithm

The algorithms are based on solving the associated optimization problem

\[\min_\{ λ ∈ D_h \} ρ(ℓ - λa, X) + λb.\]

where $D_h = \{ λ : λ ≥ 0 \}$ if $H$ is a half-space or $D_h = \{ λ : λ ∈ \mathbb{R} \}$ if $H$ is a hyperplane.

For additional information we refer to:

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LazySets.ρMethod.
ρ(d::AbstractVector{N},
  cap::Intersection{N, S1, S2};
  kwargs...) where {N<:Real, S1<:LazySet{N}, S2<:AbstractPolytope{N}}

Return an upper bound of the intersection between a compact set and a polytope along a given direction.

Input

  • d – direction
  • cap – intersection of a compact set and a polytope
  • kwargs – additional arguments that are passed to the support function algorithm

Output

An upper bound of the support function of the given intersection.

Algorithm

The idea is to solve the univariate optimization problem ρ(di, X ∩ Hi) for each half-space in the set P and then take the minimum. This gives an overapproximation of the exact support function.

This algorithm is inspired from G. Frehse, R. Ray. Flowpipe-Guard Intersection for Reachability Computations with Support Functions.

Notes

This method relies on having available the constraints_list of the polytope P.

This method of overapproximation can return a non-empty set even if the original intersection is empty.

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LazySets.σMethod.
σ(d::AbstractVector{N}, cap::Intersection{N}) where {N<:Real}

Return the support vector of an intersection of two convex sets in a given direction.

Input

  • d – direction
  • cap – intersection of two convex sets

Output

The support vector in the given direction.

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LazySets.isboundedMethod.
isbounded(cap::Intersection)::Bool

Determine whether an intersection of two convex sets is bounded.

Input

  • cap – intersection of two convex sets

Output

true iff the intersection is bounded.

Algorithm

We first check if any of the wrapped sets is bounded. Otherwise, we check boundedness via isbounded_unit_dimensions.

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Base.isemptyMethod.
isempty(cap::Intersection)::Bool

Return if the intersection is empty or not.

Input

  • cap – intersection of two convex sets

Output

true iff the intersection is empty.

Notes

The result will be cached, so a second query will be fast.

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Base.:∈Method.
∈(x::AbstractVector{N}, cap::Intersection{N})::Bool where {N<:Real}

Check whether a given point is contained in an intersection of two convex sets.

Input

  • x – point/vector
  • cap – intersection of two convex sets

Output

true iff $x ∈ cap$.

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isempty_known(cap::Intersection)

Ask whether the status of emptiness is known.

Input

  • cap – intersection of two convex sets

Output

true iff the emptiness status is known. In this case, isempty(cap) can be used to obtain the status.

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set_isempty!(cap::Intersection, isempty::Bool)

Set the status of emptiness in the cache.

Input

  • cap – intersection of two convex sets
  • isempty – new status of emptiness
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LazySets.swapMethod.
swap(cap::Intersection{N, S1, S2})::Intersection{N} where {N<:Real, S1, S2}

Return a new Intersection object with the arguments swapped.

Input

  • cap – intersection of two convex sets

Output

A new Intersection object with the arguments swapped. The old cache is shared between the old and new objects.

Notes

The advantage of using this function instead of manually swapping the arguments is that the cache is shared.

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use_precise_ρ(cap::Intersection{N})::Bool where {N<:Real}

Determine whether a precise algorithm for computing $ρ$ shall be applied.

Input

  • cap – intersection of two convex sets

Output

true if a precise algorithm shall be applied.

Notes

The default implementation always returns true.

If the result is false, a coarse approximation of the support function is returned.

This function can be overwritten by the user to control the policy.

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LazySets._line_searchFunction.
_line_search(ℓ, X, H; [kwargs...])

Given a compact and convex set $X$ and a halfspace $H = \{x: a^T x ≤ b \}$ or a hyperplane $H = \{x: a^T x = b \}$, calculate:

\[\min_\{ λ ∈ D_h \} ρ(ℓ - λa, X) + λb.\]

where $D_h = \{ λ : λ ≥ 0 \}$ if $H$ is a half-space or $D_h = \{ λ : λ ∈ \mathbb{R} \}$ if $H$ is a hyperplane.

Input

  • – direction
  • X – set
  • H – halfspace or hyperplane

Output

The tuple (fmin, λmin), where fmin is the minimum value of the function $f(λ) = ρ(ℓ - λa) + λb$ over the feasible set $λ ≥ 0$, and $λmin$ is the minimizer.

Notes

This function requires the Optim package, and relies on the univariate optimization interface Optim.optimize(...).

Additional arguments to the optimize backend can be passed as keyword arguments. The default method is Optim.Brent().

Examples

julia> X = Ball1(zeros(2), 1.0);

julia> H = HalfSpace([-1.0, 0.0], -1.0); # x >= 0 

julia> using Optim

julia> import LazySets._line_search

julia> _line_search([1.0, 0.0], X, H) # uses Brent's method by default
(1.0, 999999.9849478417)

We can specify the upper bound in Brent's method:

julia> _line_search([1.0, 0.0], X, H, upper=1e3)
(1.0, 999.9999849478418)

Instead of using Brent, we use the Golden Section method:

julia> _line_search([1.0, 0.0], X, H, upper=1e3, method=GoldenSection())
(1.0, 381.9660112501051)
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LazySets._projectionFunction.
_projection(ℓ, X, H::Union{Hyperplane{N}, Line{N}};
            [lazy_linear_map]=false,
            [lazy_2d_intersection]=true,
            [algorithm_2d_intersection]=nothing,
            [kwargs...]) where {N}

Given a compact and convex set $X$ and a hyperplane $H = \{x: n ⋅ x = γ \}$, calculate the support function of the intersection between the rank-2 projection $Π_{nℓ} X$ and the line $Lγ = \{(x, y): x = γ \}$.

Input

  • – direction
  • X – set
  • H – hyperplane
  • lazy_linear_map – (optional, default: false) to perform the projection lazily or concretely
  • lazy_2d_intersection – (optional, default: true) to perform the 2D intersection between the projected set and the line lazily or concretely
  • algorithm_2d_intersection – (optional, default: nothing) if given, fixes the support function algorithm used for the intersection in 2D; otherwise the default is implied

Output

The support function of $X ∩ H$ along direction $ℓ$.

Algorithm

This projection method is based on Prop. 8.2, page 103, C. Le Guernic. Reachability Analysis of Hybrid Systems with Linear Continuous Dynamics, PhD thesis.

In the original algorithm, Section 8.2 of Le Guernic's thesis, the linear map is performed concretely and the intersection is performed lazily (these are the default options in this algorithm, but here the four combinations are available). If the set $X$ is a zonotope, its concrete projection is again a zonotope (sometimes called "zonogon"). The intersection between this zonogon and the line can be taken efficiently in a lazy way (see Section 8.2.2 of Le Guernic's thesis), if one uses dispatch on ρ(y_dir, Sℓ⋂Lγ; kwargs...) given that Sℓ is itself a zonotope.

Notes

This function depends itself on the calculation of the support function of another set in two dimensions. Obviously one doesn't want to use again algorithm="projection" for this second calculation. The option algorithm_2d_intersection is such that, if it is not given, the default support function algorithm is used (e.g. "line_search"). You can still pass additional arguments to the "line_search" backend through the kwargs.

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Inherited from LazySet:

Intersection cache

IntersectionCache

Container for information cached by a lazy Intersection object.

Fields

  • isempty – is the intersection empty? There are three possible states, encoded as Int8 values -1, 0, 1:

    • $-1$ - it is currently unknown whether the intersection is empty or not
    • $0$ - intersection is not empty
    • $1$ - intersection is empty
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$n$-ary Intersection

IntersectionArray{N<:Real, S<:LazySet{N}} <: LazySet{N}

Type that represents the intersection of a finite number of convex sets.

Fields

  • array – array of convex sets

Notes

This type assumes that the dimensions of all elements match.

The EmptySet is the absorbing element for IntersectionArray.

Constructors:

  • IntersectionArray(array::Vector{<:LazySet}) – default constructor

  • IntersectionArray([n]::Int=0, [N]::Type=Float64) – constructor for an empty sum with optional size hint and numeric type

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LazySets.dimMethod.
dim(ia::IntersectionArray)::Int

Return the dimension of an intersection of a finite number of sets.

Input

  • ia – intersection of a finite number of convex sets

Output

The ambient dimension of the intersection of a finite number of sets.

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LazySets.σMethod.
σ(d::AbstractVector{N}, ia::IntersectionArray{N})::Vector{N} where {N<:Real}

Return the support vector of an intersection of a finite number of sets in a given direction.

Input

  • d – direction
  • ia – intersection of a finite number of convex sets

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the individual sets.

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LazySets.isboundedMethod.
isbounded(ia::IntersectionArray)::Bool

Determine whether an intersection of a finite number of convex sets is bounded.

Input

  • ia – intersection of a finite number of convex sets

Output

true iff the intersection is bounded.

Algorithm

We first check if any of the wrapped sets is bounded. Otherwise, we check boundedness via isbounded_unit_dimensions.

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Base.:∈Method.
∈(x::AbstractVector{N}, ia::IntersectionArray{N})::Bool where {N<:Real}

Check whether a given point is contained in an intersection of a finite number of convex sets.

Input

  • x – point/vector
  • ia – intersection of a finite number of convex sets

Output

true iff $x ∈ ia$.

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LazySets.arrayMethod.
array(cpa::CartesianProductArray{N, S}
     )::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Cartesian product of a finite number of convex sets.

Input

  • cpa – Cartesian product array

Output

The array of a Cartesian product of a finite number of convex sets.

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array(cha::ConvexHullArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a convex hull of a finite number of convex sets.

Input

  • cha – convex hull array

Output

The array of a convex hull of a finite number of convex sets.

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array(ia::IntersectionArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of an intersection of a finite number of convex sets.

Input

  • ia – intersection of a finite number of convex sets

Output

The array of an intersection of a finite number of convex sets.

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array(msa::MinkowskiSumArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Minkowski sum of a finite number of convex sets.

Input

  • msa – Minkowski sum array

Output

The array of a Minkowski sum of a finite number of convex sets.

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array(cms::CacheMinkowskiSum{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a caching Minkowski sum.

Input

  • cms – caching Minkowski sum

Output

The array of a caching Minkowski sum.

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array(cup::UnionSetArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a union of a finite number of convex sets.

Input

  • cup – union of a finite number of convex sets

Output

The array that holds the union of a finite number of convex sets.

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Inherited from LazySet:

Minkowski Sum

Binary Minkowski Sum

MinkowskiSum{N<:Real, S1<:LazySet{N}, S2<:LazySet{N}} <: LazySet{N}

Type that represents the Minkowski sum of two convex sets.

Fields

  • X – first convex set
  • Y – second convex set

Notes

The ZeroSet is the neutral element and the EmptySet is the absorbing element for MinkowskiSum.

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LazySets.:⊕Method.
⊕(X::LazySet, Y::LazySet)

Unicode alias constructor ⊕ (oplus) for the lazy Minkowski sum operator.

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Base.:+Method.
X + Y

Convenience constructor for Minkowski sum.

Input

  • X – a convex set
  • Y – another convex set

Output

The symbolic Minkowski sum of $X$ and $Y$.

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LazySets.dimMethod.
dim(ms::MinkowskiSum)::Int

Return the dimension of a Minkowski sum.

Input

  • ms – Minkowski sum

Output

The ambient dimension of the Minkowski sum.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, ms::MinkowskiSum{N}) where {N<:Real}

Return the support function of a Minkowski sum.

Input

  • d – direction
  • ms – Minkowski sum

Output

The support function in the given direction.

Algorithm

The support function in direction $d$ of the Minkowski sum of two sets $X$ and $Y$ is the sum of the support functions of $X$ and $Y$ in direction $d$.

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LazySets.σMethod.
σ(d::AbstractVector{N}, ms::MinkowskiSum{N}) where {N<:Real}

Return the support vector of a Minkowski sum.

Input

  • d – direction
  • ms – Minkowski sum

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the summand sets.

Algorithm

The support vector in direction $d$ of the Minkowski sum of two sets $X$ and $Y$ is the sum of the support vectors of $X$ and $Y$ in direction $d$.

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LazySets.isboundedMethod.
isbounded(ms::MinkowskiSum)::Bool

Determine whether a Minkowski sum is bounded.

Input

  • ms – Minkowski sum

Output

true iff both wrapped sets are bounded.

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Base.isemptyMethod.
isempty(ms::MinkowskiSum)::Bool

Return if a Minkowski sum is empty or not.

Input

  • ms – Minkowski sum

Output

true iff any of the wrapped sets are empty.

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Inherited from LazySet:

$n$-ary Minkowski Sum

MinkowskiSumArray{N<:Real, S<:LazySet{N}} <: LazySet{N}

Type that represents the Minkowski sum of a finite number of convex sets.

Fields

  • array – array of convex sets

Notes

This type assumes that the dimensions of all elements match.

The ZeroSet is the neutral element and the EmptySet is the absorbing element for MinkowskiSumArray.

Constructors:

  • MinkowskiSumArray(array::Vector{<:LazySet}) – default constructor

  • MinkowskiSumArray([n]::Int=0, [N]::Type=Float64) – constructor for an empty sum with optional size hint and numeric type

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LazySets.dimMethod.
dim(msa::MinkowskiSumArray)::Int

Return the dimension of a Minkowski sum of a finite number of sets.

Input

  • msa – Minkowski sum array

Output

The ambient dimension of the Minkowski sum of a finite number of sets.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, msa::MinkowskiSumArray{N}) where {N<:Real}

Return the support function of a Minkowski sum array of a finite number of sets in a given direction.

Input

  • d – direction
  • msa – Minkowski sum array

Output

The support function in the given direction.

Algorithm

The support function of the Minkowski sum of sets is the sum of the support functions of each set.

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LazySets.σMethod.
σ(d::AbstractVector{N}, msa::MinkowskiSumArray{N}) where {N<:Real}

Return the support vector of a Minkowski sum of a finite number of sets in a given direction.

Input

  • d – direction
  • msa – Minkowski sum array

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the summand sets.

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LazySets.isboundedMethod.
isbounded(msa::MinkowskiSumArray)::Bool

Determine whether a Minkowski sum of a finite number of convex sets is bounded.

Input

  • msa – Minkowski sum of a finite number of convex sets

Output

true iff all wrapped sets are bounded.

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Base.isemptyMethod.
isempty(msa::MinkowskiSumArray)::Bool

Return if a Minkowski sum array is empty or not.

Input

  • msa – Minkowski sum array

Output

true iff any of the wrapped sets are empty.

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LazySets.arrayMethod.
array(cpa::CartesianProductArray{N, S}
     )::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Cartesian product of a finite number of convex sets.

Input

  • cpa – Cartesian product array

Output

The array of a Cartesian product of a finite number of convex sets.

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array(cha::ConvexHullArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a convex hull of a finite number of convex sets.

Input

  • cha – convex hull array

Output

The array of a convex hull of a finite number of convex sets.

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array(ia::IntersectionArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of an intersection of a finite number of convex sets.

Input

  • ia – intersection of a finite number of convex sets

Output

The array of an intersection of a finite number of convex sets.

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array(msa::MinkowskiSumArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Minkowski sum of a finite number of convex sets.

Input

  • msa – Minkowski sum array

Output

The array of a Minkowski sum of a finite number of convex sets.

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array(cms::CacheMinkowskiSum{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a caching Minkowski sum.

Input

  • cms – caching Minkowski sum

Output

The array of a caching Minkowski sum.

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array(cup::UnionSetArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a union of a finite number of convex sets.

Input

  • cup – union of a finite number of convex sets

Output

The array that holds the union of a finite number of convex sets.

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Inherited from LazySet:

$n$-ary Minkowski Sum with cache

CacheMinkowskiSum{N<:Real, S<:LazySet{N}} <: LazySet{N}

Type that represents the Minkowski sum of a finite number of convex sets. Support vector queries are cached.

Fields

  • array – array of convex sets
  • cache – cache of support vector query results

Notes

This type assumes that the dimensions of all elements match.

The ZeroSet is the neutral element and the EmptySet is the absorbing element for CacheMinkowskiSum.

The cache (field cache) is implemented as dictionary whose keys are directions and whose values are pairs (k, s) where k is the number of elements in the array array when the support vector was evaluated last time, and s is the support vector that was obtained. Thus this type assumes that array is not modified except by adding new sets at the end.

Constructors:

  • CacheMinkowskiSum(array::Vector{<:LazySet}) – default constructor

  • CacheMinkowskiSum([n]::Int=0, [N]::Type=Float64) – constructor for an empty sum with optional size hint and numeric type

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LazySets.dimMethod.
dim(cms::CacheMinkowskiSum)::Int

Return the dimension of a caching Minkowski sum.

Input

  • cms – caching Minkowski sum

Output

The ambient dimension of the caching Minkowski sum.

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LazySets.σMethod.
σ(d::AbstractVector{N}, cms::CacheMinkowskiSum{N}) where {N<:Real}

Return the support vector of a caching Minkowski sum in a given direction.

Input

  • d – direction
  • cms – caching Minkowski sum

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the summand sets.

Notes

The result is cached, i.e., any further query with the same direction runs in constant time. When sets are added to the caching Minkowski sum, the query is only performed for the new sets.

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LazySets.isboundedMethod.
isbounded(cms::CacheMinkowskiSum)::Bool

Determine whether a caching Minkowski sum is bounded.

Input

  • cms – caching Minkowski sum

Output

true iff all wrapped sets are bounded.

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Base.isemptyMethod.
isempty(cms::CacheMinkowskiSum)::Bool

Return if a caching Minkowski sum array is empty or not.

Input

  • cms – caching Minkowski sum

Output

true iff any of the wrapped sets are empty.

Notes

Forgotten sets cannot be checked anymore. Usually they have been empty because otherwise the support vector query should have crashed before. In that case, the caching Minkowski sum should not be used further.

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LazySets.arrayMethod.
array(cpa::CartesianProductArray{N, S}
     )::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Cartesian product of a finite number of convex sets.

Input

  • cpa – Cartesian product array

Output

The array of a Cartesian product of a finite number of convex sets.

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array(cha::ConvexHullArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a convex hull of a finite number of convex sets.

Input

  • cha – convex hull array

Output

The array of a convex hull of a finite number of convex sets.

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array(ia::IntersectionArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of an intersection of a finite number of convex sets.

Input

  • ia – intersection of a finite number of convex sets

Output

The array of an intersection of a finite number of convex sets.

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array(msa::MinkowskiSumArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a Minkowski sum of a finite number of convex sets.

Input

  • msa – Minkowski sum array

Output

The array of a Minkowski sum of a finite number of convex sets.

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array(cms::CacheMinkowskiSum{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a caching Minkowski sum.

Input

  • cms – caching Minkowski sum

Output

The array of a caching Minkowski sum.

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array(cup::UnionSetArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a union of a finite number of convex sets.

Input

  • cup – union of a finite number of convex sets

Output

The array that holds the union of a finite number of convex sets.

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forget_sets!(cms::CacheMinkowskiSum)::Int

Tell a caching Minkowski sum to forget the stored sets (but not the support vectors). Only those sets are forgotten such that for each cached direction the support vector has been computed before.

Input

  • cms – caching Minkowski sum

Output

The number of sets that have been forgotten.

Notes

This function should only be used under the assertion that no new directions are queried in the future; otherwise such support vector results will be incorrect.

This implementation is optimistic and first tries to remove all sets. However, it also checks that for all cached directions the support vector has been computed before. If it finds that this is not the case, the implementation identifies the biggest index $k$ such that the above holds for the $k$ oldest sets, and then it only removes these. See the example below.

Examples

julia> x1 = BallInf(ones(3), 3.); x2 = Ball1(ones(3), 5.);

julia> cms1 = CacheMinkowskiSum(2); cms2 = CacheMinkowskiSum(2);

julia> d = ones(3);

julia> a1 = array(cms1); a2 = array(cms2);

julia> push!(a1, x1); push!(a2, x1);

julia> σ(d, cms1); σ(d, cms2);

julia> push!(a1, x2); push!(a2, x2);

julia> σ(d, cms1);

julia> idx1 = forget_sets!(cms1) # support vector was computed for both sets
2

julia> idx1 = forget_sets!(cms2) # support vector was only computed for first set
1
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Inherited from LazySet:

Maps

Linear Map

LinearMap{N<:Real, S<:LazySet{N}, NM, MAT<:AbstractMatrix{NM}} <: LazySet{N}

Type that represents a linear transformation $M⋅S$ of a convex set $S$.

Fields

  • M – matrix/linear map
  • X – convex set

Notes

This type is parametric in the elements of the linear map, NM, which is independent of the numeric type of the target set (N). Typically NM = N, but there may be exceptions, e.g., if NM is an interval that holds numbers of type N, where N is a floating point number type such as Float64.

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Base.:*Method.
    *(M::AbstractMatrix{N}, X::LazySet{N}) where {N<:Real}

Return the linear map of a convex set.

Input

  • M – matrix/linear map
  • X – convex set

Output

A lazy linear map, i.e. a LinearMap instance.

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Base.:*Method.
    *(a::N, X::LazySet{N}) where {N<:Real}

Return a linear map of a convex set by a scalar value.

Input

  • a – scalar
  • X – convex set

Output

The linear map of the convex set.

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Base.:*Method.
    *(a::N, lm::LM)::LM where {N<:Real, LM<:LinearMap{N}}

Return a linear map scaled by a scalar value.

Input

  • a – scalar
  • lm – linear map

Output

The scaled linear map.

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Base.:*Method.
    *(M::AbstractMatrix{N}, Z::ZeroSet{N})::ZeroSet{N} where {N<:Real}

A linear map of a zero set, which is simplified to a zero set (the absorbing element).

Input

  • M – abstract matrix
  • Z – zero set

Output

The zero set with the output dimension of the linear map.

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LazySets.dimMethod.
dim(lm::LinearMap)::Int

Return the dimension of a linear map.

Input

  • lm – linear map

Output

The ambient dimension of the linear map.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, lm::LinearMap{N}; kwargs...) where {N<:Real}

Return the support function of the linear map.

Input

  • d – direction
  • lm – linear map
  • kwargs – additional arguments that are passed to the support function algorithm

Output

The support function in the given direction. If the direction has norm zero, the result depends on the wrapped set.

Notes

If $L = M⋅S$, where $M$ is a matrix and $S$ is a convex set, it follows that $ρ(d, L) = ρ(M^T d, S)$ for any direction $d$.

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LazySets.σMethod.
σ(d::AbstractVector{N}, lm::LinearMap{N}) where {N<:Real}

Return the support vector of the linear map.

Input

  • d – direction
  • lm – linear map

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the wrapped set.

Notes

If $L = M⋅S$, where $M$ is a matrix and $S$ is a convex set, it follows that $σ(d, L) = M⋅σ(M^T d, S)$ for any direction $d$.

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Base.:∈Method.
∈(x::AbstractVector{N}, lm::LinearMap{N})::Bool where {N<:Real}

Check whether a given point is contained in a linear map of a convex set.

Input

  • x – point/vector
  • lm – linear map of a convex set

Output

true iff $x ∈ lm$.

Algorithm

Note that $x ∈ M⋅S$ iff $M^{-1}⋅x ∈ S$. This implementation does not explicitly invert the matrix, which is why it also works for non-square matrices.

Examples

julia> lm = LinearMap([2.0 0.0; 0.0 1.0], BallInf([1., 1.], 1.));

julia> ∈([5.0, 1.0], lm)
false
julia> ∈([3.0, 1.0], lm)
true

An example with non-square matrix:

julia> B = BallInf(zeros(4), 1.);

julia> M = [1. 0 0 0; 0 1 0 0]/2;

julia> ∈([0.5, 0.5], M*B)
true
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an_element(lm::LinearMap{N})::Vector{N} where {N<:Real}

Return some element of a linear map.

Input

  • lm – linear map

Output

An element in the linear map. It relies on the an_element function of the wrapped set.

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LazySets.isboundedMethod.
isbounded(lm::LinearMap)::Bool

Determine whether a linear map is bounded.

Input

  • lm – linear map

Output

true iff the linear map is bounded.

Algorithm

We first check if the matrix is zero or the wrapped set is bounded. Otherwise, we check boundedness via isbounded_unit_dimensions.

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Base.isemptyMethod.
isempty(lm::LinearMap)::Bool

Return if a linear map is empty or not.

Input

  • lm – linear map

Output

true iff the wrapped set is empty.

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vertices_list(lm::LinearMap{N})::Vector{Vector{N}} where {N<:Real}

Return the list of vertices of a (polytopic) linear map.

Input

  • lm – linear map

Output

A list of vertices.

Algorithm

We assume that the underlying set X is polytopic. Then the result is just the linear map applied to the vertices of X.

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Inherited from LazySet:

Exponential Map

ExponentialMap{N<:Real, S<:LazySet{N}} <: LazySet{N}

Type that represents the action of an exponential map on a convex set.

Fields

  • spmexp – sparse matrix exponential
  • X – convex set

Examples

The ExponentialMap type is overloaded to the usual times * operator when the linear map is a lazy matrix exponential. For instance,

julia> A = sprandn(100, 100, 0.1);

julia> E = SparseMatrixExp(A);

julia> B = BallInf(zeros(100), 1.);

julia> M = E * B; # represents the image set: exp(A) * B

julia> M isa ExponentialMap
true

julia> dim(M)
100
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LazySets.dimMethod.
dim(em::ExponentialMap)::Int

Return the dimension of an exponential map.

Input

  • em – an ExponentialMap

Output

The ambient dimension of the exponential map.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, em::ExponentialMap{N}) where {N<:Real}

Return the support function of the exponential map.

Input

  • d – direction
  • em – exponential map

Output

The support function in the given direction.

Notes

If $E = \exp(M)⋅S$, where $M$ is a matrix and $S$ is a convex set, it follows that $ρ(d, E) = ρ(\exp(M)^T d, S)$ for any direction $d$.

We allow sparse direction vectors, but will convert them to dense vectors to be able to use expmv.

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LazySets.σMethod.
σ(d::AbstractVector{N}, em::ExponentialMap{N}) where {N<:Real}

Return the support vector of the exponential map.

Input

  • d – direction
  • em – exponential map

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the wrapped set.

Notes

If $E = \exp(M)⋅S$, where $M$ is a matrix and $S$ is a convex set, it follows that $σ(d, E) = \exp(M)⋅σ(\exp(M)^T d, S)$ for any direction $d$.

We allow sparse direction vectors, but will convert them to dense vectors to be able to use expmv.

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Base.:∈Method.
∈(x::AbstractVector{N}, em::ExponentialMap{N})::Bool where {N<:Real}

Check whether a given point is contained in an exponential map of a convex set.

Input

  • x – point/vector
  • em – exponential map of a convex set

Output

true iff $x ∈ em$.

Algorithm

This implementation exploits that $x ∈ \exp(M)⋅S$ iff $\exp(-M)⋅x ∈ S$. This follows from $\exp(-M)⋅\exp(M) = I$ for any $M$.

Examples

julia> using Compat.SparseArrays: SparseMatrixCSC;

julia> em = ExponentialMap(SparseMatrixExp(SparseMatrixCSC([2.0 0.0; 0.0 1.0])),
                           BallInf([1., 1.], 1.));

julia> ∈([-1.0, 1.0], em)
false
julia> ∈([1.0, 1.0], em)
true
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LazySets.isboundedMethod.
isbounded(em::ExponentialMap)::Bool

Determine whether an exponential map is bounded.

Input

  • em – exponential map

Output

true iff the exponential map is bounded.

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Base.isemptyMethod.
isempty(em::ExponentialMap)::Bool

Return if an exponential map is empty or not.

Input

  • em – exponential map

Output

true iff the wrapped set is empty.

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vertices_list(em::ExponentialMap{N})::Vector{Vector{N}} where {N<:Real}

Return the list of vertices of a (polytopic) exponential map.

Input

  • em – exponential map

Output

A list of vertices.

Algorithm

We assume that the underlying set X is polytopic. Then the result is just the exponential map applied to the vertices of X.

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Inherited from LazySet:

ExponentialProjectionMap{N<:Real, S<:LazySet{N}} <: LazySet{N}

Type that represents the application of a projection of a sparse matrix exponential to a convex set.

Fields

  • spmexp – projection of a sparse matrix exponential
  • X – convex set
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LazySets.dimMethod.
dim(eprojmap::ExponentialProjectionMap)::Int

Return the dimension of a projection of an exponential map.

Input

  • eprojmap – projection of an exponential map

Output

The ambient dimension of the projection of an exponential map.

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LazySets.σMethod.
σ(d::AbstractVector{N},
  eprojmap::ExponentialProjectionMap{N}) where {N<:Real}

Return the support vector of a projection of an exponential map.

Input

  • d – direction
  • eprojmap – projection of an exponential map

Output

The support vector in the given direction. If the direction has norm zero, the result depends on the wrapped set.

Notes

If $S = (L⋅M⋅R)⋅X$, where $L$ and $R$ are matrices, $M$ is a matrix exponential, and $X$ is a set, it follows that $σ(d, S) = L⋅M⋅R⋅σ(R^T⋅M^T⋅L^T⋅d, X)$ for any direction $d$.

We allow sparse direction vectors, but will convert them to dense vectors to be able to use expmv.

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LazySets.isboundedMethod.
isbounded(eprojmap::ExponentialProjectionMap)::Bool

Determine whether an exponential projection map is bounded.

Input

  • eprojmap – exponential projection map

Output

true iff the exponential projection map is bounded.

Algorithm

We first check if the left or right projection matrix is zero or the wrapped set is bounded. Otherwise, we check boundedness via isbounded_unit_dimensions.

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Base.isemptyMethod.
isempty(eprojmap::ExponentialProjectionMap)::Bool

Return if an exponential projection map is empty or not.

Input

  • eprojmap – exponential projection map

Output

true iff the wrapped set is empty.

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Inherited from LazySet:

SparseMatrixExp{N}

Type that represents the matrix exponential, $\exp(M)$, of a sparse matrix.

Fields

  • M – sparse matrix

Examples

Take for exammple a random sparse matrix:

julia> A = sprandn(100, 100, 0.1);

julia> E = SparseMatrixExp(A);

julia> size(E)
(100, 100)

Now, E is a lazy representation of $\exp(A)$. To compute with E, use get_row and get_column (or get_rows and get_columns; they return row and column vectors (or matrices). For example:

julia> get_row(E, 10); # compute E[10, :]

julia> get_column(E, 10); # compute E[:, 10]

julia> get_rows(E, [10]); # same as get_row(E, 10) but a 1x100 matrix is returned

julia> get_columns(E, [10]); # same as get_column(E, 10) but a 100x1 matrix is returned

Notes

This type is provided for use with very large and very sparse matrices. The evaluation of the exponential matrix action over vectors relies on the Expokit package.

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Base.:*Method.
    *(spmexp::SparseMatrixExp{N},
      X::LazySet{N})::ExponentialMap{N} where {N<:Real}

Return the exponential map of a convex set from a sparse matrix exponential.

Input

  • spmexp – sparse matrix exponential
  • X – convex set

Output

The exponential map of the convex set.

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LazySets.get_rowMethod.
get_row(spmexp::SparseMatrixExp{N}, i::Int) where {N}

Return a single row of a sparse matrix exponential.

Input

  • spmexp – sparse matrix exponential
  • i – row index

Output

A row vector corresponding to the ith row of the matrix exponential.

Notes

This function uses Julia's transpose function to create the result. The result is of type Transpose; in Julia versions older than v0.7, the result was of type RowVector.

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ProjectionSparseMatrixExp{N<:Real}

Type that represents the projection of a sparse matrix exponential, i.e., $L⋅\exp(M)⋅R$ for a given sparse matrix $M$.

Fields

  • L – left multiplication matrix
  • E – sparse matrix exponential
  • R – right multiplication matrix
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Base.:*Method.
    *(projspmexp::ProjectionSparseMatrixExp,
      X::LazySet)::ExponentialProjectionMap

Return the application of a projection of a sparse matrix exponential to a convex set.

Input

  • projspmexp – projection of a sparse matrix exponential
  • X – convex set

Output

The application of the projection of a sparse matrix exponential to the convex set.

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Symmetric Interval Hull

SymmetricIntervalHull{N<:Real, S<:LazySet{N}} <: AbstractHyperrectangle{N}

Type that represents the symmetric interval hull of a convex set.

Fields

  • X – convex set
  • cache – partial storage of already computed bounds, organized as mapping from dimension to tuples (bound, valid), where valid is a flag indicating if the bound entry has been computed

Notes

The symmetric interval hull can be computed with $2n$ support vector queries of unit vectors, where $n$ is the dimension of the wrapped set (i.e., two queries per dimension). When asking for the support vector for a direction $d$, one needs $2k$ such queries, where $k$ is the number of non-zero entries in $d$.

However, if one asks for many support vectors in a loop, the number of computations may exceed $2n$. To be most efficient in such cases, this type stores the intermediately computed bounds in the cache field.

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LazySets.dimMethod.
dim(sih::SymmetricIntervalHull)::Int

Return the dimension of a symmetric interval hull of a convex set.

Input

  • sih – symmetric interval hull of a convex set

Output

The ambient dimension of the symmetric interval hull of a convex set.

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LazySets.σMethod.
σ(d::AbstractVector{N}, sih::SymmetricIntervalHull{N}) where {N<:Real}

Return the support vector of a symmetric interval hull of a convex set in a given direction.

Input

  • d – direction
  • sih – symmetric interval hull of a convex set

Output

The support vector of the symmetric interval hull of a convex set in the given direction. If the direction has norm zero, the origin is returned.

Algorithm

For each non-zero entry in d we need to either look up the bound (if it has been computed before) or compute it, in which case we store it for future queries. One such computation just asks for the support vector of the underlying set for both the positive and negative unit vector in the respective dimension.

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LazySets.centerMethod.
center(sih::SymmetricIntervalHull{N})::Vector{N} where {N<:Real}

Return the center of a symmetric interval hull of a convex set.

Input

  • sih – symmetric interval hull of a convex set

Output

The origin.

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radius_hyperrectangle(sih::SymmetricIntervalHull{N}
                     )::Vector{N} where {N<:Real}

Return the box radius of a symmetric interval hull of a convex set in every dimension.

Input

  • sih – symmetric interval hull of a convex set

Output

The box radius of the symmetric interval hull of a convex set.

Notes

This function computes the symmetric interval hull explicitly.

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radius_hyperrectangle(sih::SymmetricIntervalHull{N},
                      i::Int)::N where {N<:Real}

Return the box radius of a symmetric interval hull of a convex set in a given dimension.

Input

  • sih – symmetric interval hull of a convex set

Output

The radius in the given dimension. If it was computed before, this is just a look-up, otherwise it requires two support vector computations.

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Inherited from LazySet:

Inherited from AbstractPolytope:

Inherited from AbstractCentrallySymmetricPolytope:

Inherited from AbstractHyperrectangle:

Union

Binary Set Union

UnionSet{N<:Real, S1<:LazySet{N}, S2<:LazySet{N}}

Type that represents the set union of two convex sets.

Fields

  • X – convex set
  • Y – convex set
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Base.:∪Method.

Alias for UnionSet.

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LazySets.dimMethod.
dim(cup::Union)::Int

Return the dimension of the set union of two convex sets.

Input

  • cup – union of two convex sets

Output

The ambient dimension of the union of two convex sets.

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LazySets.σMethod.
σ(d::AbstractVector{N}, cup::UnionSet{N}; [algorithm]="support_vector") where {N<:Real}

Return the support vector of the union of two convex sets in a given direction.

Input

  • d – direction
  • cup – union of two convex sets
  • algorithm – (optional, default: "supportvector"): the algorithm to compute the support vector; if "supportvector", use the support vector of each argument; if "support_function" use the support function of each argument and evaluate the support vector of only one of them

Output

The support vector in the given direction.

Algorithm

The support vector of the union of two convex sets $X$ and $Y$ can be obtained as the vector that maximizes the support function of either $X$ or $Y$, i.e. it is sufficient to find the $\argmax(ρ(d, X), ρ(d, Y)])$ and evaluate its support vector.

The default implementation, with option algorithm="support_vector", computes the support vector of $X$ and $Y$ and then compares the support function using a dot product. If it happens that the support function can be more efficiently computed (without passing through the support vector), consider using the alternative algorithm="support_function" implementation, which evaluates the support function of each set directly and then calls only the support vector of either $X$ or $Y$.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, cup::UnionSet{N}) where {N<:Real}

Return the support function of the union of two convex sets in a given direction.

Input

  • d – direction
  • cup – union of two convex sets

Output

The support function in the given direction.

Algorithm

The support function of the union of two convex sets $X$ and $Y$ is the maximum of the support functions of $X$ and $Y$.

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$n$-ary Set Union

UnionSetArray{N<:Real, S<:LazySet{N}}

Type that represents the set union of a finite number of convex sets.

Fields

  • array – array of convex sets
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LazySets.dimMethod.
dim(cup::UnionSetArray)::Int

Return the dimension of the set union of a finite number of convex sets.

Input

  • cup – union of a finite number of convex sets

Output

The ambient dimension of the union of a finite number of convex sets.

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LazySets.arrayMethod.
array(cup::UnionSetArray{N, S})::Vector{S} where {N<:Real, S<:LazySet{N}}

Return the array of a union of a finite number of convex sets.

Input

  • cup – union of a finite number of convex sets

Output

The array that holds the union of a finite number of convex sets.

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LazySets.σMethod.
σ(d::AbstractVector{N}, cup::UnionSetArray{N}; [algorithm]="support_vector") where {N<:Real}

Return the support vector of the union of a finite number of convex sets in a given direction.

Input

  • d – direction
  • cup – union of a finite number of convex sets
  • algorithm – (optional, default: "supportvector"): the algorithm to compute the support vector; if "supportvector", use the support vector of each argument; if "support_function" use the support function of each argument and evaluate the support vector of only one of them

Output

The support vector in the given direction.

Algorithm

The support vector of the union of a finite number of convex sets $X₁, X₂, ...$ can be obtained as the vector that maximizes the support function, i.e. it is sufficient to find the $\argmax(ρ(d, X₂), ρ(d, X₂), ...])$ and evaluate its support vector.

The default implementation, with option algorithm="support_vector", computes the support vector of all $X₁, X₂, ...$ and then compares the support function using a dot product. If it happens that the support function can be more efficiently computed (without passing through the support vector), consider using the alternative algorithm="support_function" implementation, which evaluates the support function of each set directly and then calls only the support vector of one of the $Xᵢ$.

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LazySets.ρMethod.
ρ(d::AbstractVector{N}, cup::UnionSetArray{N}) where {N<:Real}

Return the support function of the union of a finite number of convex sets in a given direction.

Input

  • d – direction
  • cup – union of a finite number of convex sets

Output

The support function in the given direction.

Algorithm

The support function of the union of a finite number of convex sets $X₁, X₂, ...$ can be obtained as the maximum of $ρ(d, X₂), ρ(d, X₂), ...$.

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