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simulated annealing #91

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2 changes: 2 additions & 0 deletions src/EvoLP.jl
Original file line number Diff line number Diff line change
Expand Up @@ -20,6 +20,7 @@ include("testfunctions.jl")

include("algorithms/ga.jl")
include("algorithms/ea.jl")
include("algorithms/sa.jl")
include("algorithms/swarm.jl")

include("deprecated.jl")
Expand All @@ -32,6 +33,7 @@ export Particle, normal_rand_particle_pop, unif_rand_particle_pop # Particles

# Algorithms
export GA, GA!
export SA
export oneplusone, oneplusone!
export PSO, PSO!

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54 changes: 54 additions & 0 deletions src/algorithms/sa.jl
Original file line number Diff line number Diff line change
@@ -0,0 +1,54 @@
"""
SA(f, pop, k_max, S, C, M; T_init)

Simulated annealing.

## Arguments
- `f::Function`: objective function to **minimise**.
- `population::AbstractVector`: a list of vector individuals.
- `k_max::Integer`: number of iterations.
- `S::ParentSelector`: one of the available [`ParentSelector`](@ref).
- `C::CrossoverMethod`: one of the available [`CrossoverMethod`](@ref).
- `M::MutationMethod`: one of the available [`MutationMethod`](@ref).
- `T₀::Real=100.0`: initial temperature
- `α::Real=0.99`: cooling rate

Returns a [`Result`](@ref).
"""
function SA(
f::Function,
population::AbstractVector,
k_max::Integer,
S::ParentSelector,
C::Recombinator,
M::Mutator;
T₀::Real=100.0,
α::Real=0.99
)
fx = Inf
best_ind = copy(population)
T = T₀

runtime = @elapsed begin
for _ in 1:k_max
c = mutate(M, population)
fc = f(c)
ΔE = fc - fx # Calculate the difference in objective function values

# Acceptance probability function
if ΔE < 0 || rand() < exp(-ΔE / T)
population = copy(c)
fx = fc
end

fx < f(best_ind) && (best_ind = copy(population))

T *= α
end
end

n_evals = k_max

return Result(fx, best_ind, [best_ind], k_max, n_evals, runtime)
end

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