175 lines
4.4 KiB
Go
175 lines
4.4 KiB
Go
// Copyright 2023 wanderer <a_mirre at utb dot cz>
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// SPDX-License-Identifier: GPL-3.0-or-later
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package ga
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import (
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"git.dotya.ml/wanderer/math-optim/bench/cec2020"
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"golang.org/x/exp/rand"
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"gonum.org/v1/gonum/stat/distuv"
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)
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// PopulationIndividual represents a single population individual.
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type SOMAT3APopulationIndividual struct {
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CurX DecisionVector
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PRTVector []float64
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Jumps [][]float64
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}
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// ChampionIndividual is a representation of the best individual currently
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// available in the population.
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type SOMAT3AChampionIndividual struct {
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X DecisionVector
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}
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// Population groups population individuals (agents) with metadata about the population.
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type SOMAT3APopulation struct {
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// Population is a slice of population individuals.
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Population []SOMAT3APopulationIndividual
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// Champion represents the best individual of the population.
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Champion SOMAT3AChampionIndividual
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// Problem is the current benchmarking function this population is attempting to optimise.
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Problem string
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// ProblemFunction is the actual function to optimise.
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ProblemFunc func([]float64) float64
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// Dimen is the dimensionality of the problem being optimised.
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Dimen int
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// fes is the current number of function evaluations.
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fes int
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// Seed is the value used to (re)init population.
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Seed uint64
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zeroToOneRNG distuv.Uniform
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// PRT is the perturbation parameter.
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PRT float64
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// K is the number of individuals to choose the leader from.
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K int
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// M denotes how many individuals are picked from the population to form a
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// `team` during the organisation phase, can be thought of as "team size".
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M int
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// N is the number of best individuals in each team selected for actual
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// migration.
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N int
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// Njumps is the fixed number of jumps that each chosen migrating
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// individual performs on their way to the leader.
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Njumps int
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}
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// GetIndividual returns a reference to individual at position n.
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func (p *SOMAT3APopulation) GetIndividual(n uint) *PopulationIndividual {
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return &PopulationIndividual{}
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}
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// GetBestIdx returns the index of the best population individual.
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func (p *SOMAT3APopulation) GetBestIdx() int {
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f := p.ProblemFunc
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bestIndividual := 0
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// the first one is the best one.
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bestVal := f(p.Population[0].CurX)
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for i, v := range p.Population {
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current := f(v.CurX)
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if current < bestVal {
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bestIndividual = i
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}
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}
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return bestIndividual
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}
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// GetWorstIdx returns the index of the worst population individual.
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func (p *SOMAT3APopulation) GetWorstIdx() int {
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f := p.ProblemFunc
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worstIndividual := 0
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// the first one is the worst one.
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worstVal := f(p.Population[0].CurX)
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for i, v := range p.Population {
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current := f(v.CurX)
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if current > worstVal {
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worstIndividual = i
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}
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}
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return worstIndividual
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}
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// Init initialises all individuals to random values.
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func (p *SOMAT3APopulation) Init() {
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low := cec2020.SearchRange.Min()
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high := cec2020.SearchRange.Max()
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// zeroToOneRNG := distuv.Uniform{
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p.zeroToOneRNG = distuv.Uniform{
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Min: 0,
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Max: 1,
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Src: rand.NewSource(p.Seed),
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}
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// gaLogger.Printf("population initialisation - popCount: %d, seed: %d\n",
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// len(p.Population), p.Seed,
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// )
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p.PRT = p.getPrt()
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// for i,v := range p.Population {
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for i := range p.Population {
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v := SOMAT3APopulationIndividual{}
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v.CurX = make([]float64, p.Dimen)
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for j := 0; j < p.Dimen; j++ {
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// with current settings, this will always be `low + 0` since
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// `high - low = 0`.
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v.CurX[j] = low + p.zeroToOneRNG.Rand()*(high-low)
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}
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v.PRTVector = p.getPrtVector()
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v.Jumps = make([][]float64, p.Njumps)
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p.Population[i] = v
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}
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p.Champion = SOMAT3AChampionIndividual{X: p.Population[p.GetBestIdx()].CurX}
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}
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// Reinit reinitialises all individuals.
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func (p *SOMAT3APopulation) Reinit() {
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p.Init()
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}
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// Clear sets all vectors to 0.
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func (p *SOMAT3APopulation) Clear() {
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if p.Population != nil {
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for _, v := range p.Population {
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v.CurX = make([]float64, p.Dimen)
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}
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}
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}
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// Size returns the number of population individuals.
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func (p *SOMAT3APopulation) Size() int {
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return len(p.Population)
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}
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// newPopulation returns a pointer to a new, uninitialised population.
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func newSOMAT3APopulation(benchProblem string, np, k, m, n, nj, dimen int) *SOMAT3APopulation {
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p := &SOMAT3APopulation{
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Problem: benchProblem,
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ProblemFunc: cec2020.Functions[benchProblem],
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K: k,
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M: m,
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N: n,
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Njumps: nj,
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Dimen: dimen,
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Population: make([]SOMAT3APopulationIndividual, np),
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}
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return p
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}
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