BiCIAM - Framework Metaheurístico
1.0
Framework de optimización con algoritmos metaheurísticos y evolutivos
Cargando...
Buscando...
Nada coincide
Lista de todos los campos de clases con enlaces a las clases a las que pertenecen:
- s -
sampling() :
evolutionary_algorithms.complement.ProbabilisticSampling
,
evolutionary_algorithms.complement.Sampling
,
factory_method.FactorySampling
Samplingtype :
metaheuristics.generators.DistributionEstimationAlgorithm
saveFreneParetoMonoObjetivo :
metaheurictics.strategy.Strategy
saveListBestStates :
metaheurictics.strategy.Strategy
saveListStates :
metaheurictics.strategy.Strategy
searchcandidate :
factory_method.FactoryCandidate
,
local_search.candidate_type.CandidateValue
searchState() :
metaheuristics.generators.MultiGenerator
SECURE_RANDOM :
config.SecureRandomGenerator
SecureRandomGenerator() :
config.SecureRandomGenerator
selection() :
evolutionary_algorithms.complement.FatherSelection
,
evolutionary_algorithms.complement.RouletteSelection
,
evolutionary_algorithms.complement.TruncationSelection
,
factory_method.FactoryFatherSelection
selectionType :
metaheuristics.generators.DistributionEstimationAlgorithm
,
metaheuristics.generators.EvolutionStrategies
,
metaheuristics.generators.GeneticAlgorithm
setActiveGenerator() :
metaheuristics.generators.MultiGenerator
setBestState() :
metaheurictics.strategy.Strategy
setCode() :
problem.definition.State
setCodification() :
problem.definition.Problem
setCountCurrent() :
metaheurictics.strategy.Strategy
setCountMax() :
metaheurictics.strategy.Strategy
setCountRef() :
metaheuristics.generators.ParticleSwarmOptimization
setData() :
evolutionary_algorithms.complement.Range
setDistributionType() :
metaheuristics.generators.DistributionEstimationAlgorithm
setEvaluation() :
problem.definition.State
setFactorySolutionMethod() :
problem.definition.Problem
setFunction() :
problem.definition.Problem
setGenerator() :
metaheuristics.generators.LimitRoulette
setGeneratorType() :
metaheuristics.generators.DistributionEstimationAlgorithm
,
metaheuristics.generators.GeneticAlgorithm
,
metaheuristics.generators.HillClimbing
,
metaheuristics.generators.HillClimbingRestart
,
metaheuristics.generators.MultiobjectiveHillClimbingDistance
,
metaheuristics.generators.MultiobjectiveHillClimbingRestart
,
metaheuristics.generators.MultiobjectiveStochasticHillClimbing
,
metaheuristics.generators.ParticleSwarmOptimization
setGeneratortype() :
metaheuristics.generators.MultiGenerator
setIdCity() :
config.tspDynamic.TSPState
setInitialReference() :
metaheuristics.generators.DistributionEstimationAlgorithm
,
metaheuristics.generators.EvolutionStrategies
,
metaheuristics.generators.Generator
,
metaheuristics.generators.GeneticAlgorithm
,
metaheuristics.generators.HillClimbing
,
metaheuristics.generators.HillClimbingRestart
,
metaheuristics.generators.LimitThreshold
,
metaheuristics.generators.MultiCaseSimulatedAnnealing
,
metaheuristics.generators.MultiGenerator
,
metaheuristics.generators.MultiobjectiveHillClimbingDistance
,
metaheuristics.generators.MultiobjectiveHillClimbingRestart
,
metaheuristics.generators.MultiobjectiveStochasticHillClimbing
,
metaheuristics.generators.MultiobjectiveTabuSearch
,
metaheuristics.generators.Particle
,
metaheuristics.generators.ParticleSwarmOptimization
,
metaheuristics.generators.RandomSearch
,
metaheuristics.generators.SimulatedAnnealing
,
metaheuristics.generators.TabuSearch
setKey() :
evolutionary_algorithms.complement.Probability
setLimitHigh() :
metaheuristics.generators.LimitRoulette
setLimitLow() :
metaheuristics.generators.LimitRoulette
setListGeneratedPP() :
metaheuristics.generators.MultiGenerator
setListGenerators() :
metaheuristics.generators.MultiGenerator
setListParticle() :
metaheuristics.generators.ParticleSwarmOptimization
setListReference() :
metaheuristics.generators.DistributionEstimationAlgorithm
setListState() :
metaheuristics.generators.GeneticAlgorithm
setListStateReference() :
metaheuristics.generators.EvolutionStrategies
,
metaheuristics.generators.ParticleSwarmOptimization
setMax() :
evolutionary_algorithms.complement.Range
setMin() :
evolutionary_algorithms.complement.Range
setNumber() :
problem.definition.State
setOperator() :
problem.definition.Problem
setPossibleValue() :
problem.definition.Problem
setProbability() :
evolutionary_algorithms.complement.Probability
setProblem() :
metaheurictics.strategy.Strategy
setState() :
problem.definition.Problem
setStateActual() :
metaheuristics.generators.Particle
setStatePBest() :
metaheuristics.generators.Particle
setStateRef() :
metaheuristics.generators.EvolutionStrategies
,
metaheuristics.generators.GeneticAlgorithm
,
metaheuristics.generators.HillClimbing
,
metaheuristics.generators.HillClimbingRestart
,
metaheuristics.generators.LimitThreshold
,
metaheuristics.generators.MultiCaseSimulatedAnnealing
,
metaheuristics.generators.MultiobjectiveHillClimbingDistance
,
metaheuristics.generators.MultiobjectiveHillClimbingRestart
,
metaheuristics.generators.MultiobjectiveStochasticHillClimbing
,
metaheuristics.generators.MultiobjectiveTabuSearch
,
metaheuristics.generators.SimulatedAnnealing
,
metaheuristics.generators.TabuSearch
setStateReferencePSO() :
metaheuristics.generators.ParticleSwarmOptimization
setStateReferenceTS() :
metaheuristics.generators.MultiobjectiveTabuSearch
setStopexecute() :
metaheurictics.strategy.Strategy
setTabusolution() :
local_search.candidate_type.CandidateValue
setTerminate() :
metaheuristics.generators.InstanceDE
,
metaheuristics.generators.InstanceEE
,
metaheuristics.generators.InstanceGA
setThreshold() :
metaheurictics.strategy.Strategy
setTypeCandidate() :
metaheuristics.generators.HillClimbing
,
metaheuristics.generators.HillClimbingRestart
,
metaheuristics.generators.LimitThreshold
,
metaheuristics.generators.MultiobjectiveTabuSearch
,
metaheuristics.generators.TabuSearch
setTypeGenerator() :
metaheuristics.generators.EvolutionStrategies
,
metaheuristics.generators.LimitThreshold
,
metaheuristics.generators.MultiCaseSimulatedAnnealing
,
metaheuristics.generators.MultiobjectiveTabuSearch
,
metaheuristics.generators.RandomSearch
,
metaheuristics.generators.SimulatedAnnealing
,
metaheuristics.generators.TabuSearch
,
problem.definition.State
setTypeProblem() :
problem.definition.ObjetiveFunction
,
problem.definition.Problem
setTypeSolutionMethod() :
problem.definition.Problem
setUpdateparameter() :
metaheurictics.strategy.Strategy
setValue() :
config.tspDynamic.TSPState
,
evolutionary_algorithms.complement.Probability
setVelocity() :
metaheuristics.generators.Particle
setWeight() :
metaheuristics.generators.DistributionEstimationAlgorithm
,
metaheuristics.generators.EvolutionStrategies
,
metaheuristics.generators.Generator
,
metaheuristics.generators.GeneticAlgorithm
,
metaheuristics.generators.HillClimbing
,
metaheuristics.generators.HillClimbingRestart
,
metaheuristics.generators.LimitThreshold
,
metaheuristics.generators.MultiCaseSimulatedAnnealing
,
metaheuristics.generators.MultiGenerator
,
metaheuristics.generators.MultiobjectiveHillClimbingDistance
,
metaheuristics.generators.MultiobjectiveHillClimbingRestart
,
metaheuristics.generators.MultiobjectiveStochasticHillClimbing
,
metaheuristics.generators.MultiobjectiveTabuSearch
,
metaheuristics.generators.Particle
,
metaheuristics.generators.ParticleSwarmOptimization
,
metaheuristics.generators.RandomSearch
,
metaheuristics.generators.SimulatedAnnealing
,
metaheuristics.generators.TabuSearch
,
problem.definition.ObjetiveFunction
SIMULATED_ANNEALING :
metaheuristics.generators.GeneratorType
SimulatedAnnealing() :
metaheuristics.generators.SimulatedAnnealing
sizeNeighbors :
metaheuristics.generators.MultiobjectiveHillClimbingDistance
,
metaheuristics.generators.MultiobjectiveHillClimbingRestart
SmallerCandidate :
local_search.candidate_type.CandidateType
solutionMethod :
factory_method.FactorySolutionMethod
SolutionMoreDistance() :
metaheuristics.generators.MultiobjectiveHillClimbingDistance
sonList :
metaheuristics.generators.DistributionEstimationAlgorithm
sortedPathValue() :
evolutionary_algorithms.complement.AIOMutation
State() :
problem.definition.State
state :
problem.definition.Problem
stateActual :
metaheuristics.generators.Particle
stateCandidate() :
local_search.candidate_type.CandidateValue
statePBest :
metaheuristics.generators.Particle
stateReferenceDA :
metaheuristics.generators.DistributionEstimationAlgorithm
stateReferenceES :
metaheuristics.generators.EvolutionStrategies
stateReferenceGA :
metaheuristics.generators.GeneticAlgorithm
stateReferenceHC :
metaheuristics.generators.HillClimbing
,
metaheuristics.generators.HillClimbingRestart
,
metaheuristics.generators.MultiobjectiveHillClimbingDistance
,
metaheuristics.generators.MultiobjectiveHillClimbingRestart
,
metaheuristics.generators.MultiobjectiveStochasticHillClimbing
stateReferenceLT :
metaheuristics.generators.LimitThreshold
stateReferencePSO :
metaheuristics.generators.ParticleSwarmOptimization
stateReferenceRS :
metaheuristics.generators.RandomSearch
stateReferenceSA :
metaheuristics.generators.MultiCaseSimulatedAnnealing
,
metaheuristics.generators.SimulatedAnnealing
stateReferenceTS :
metaheuristics.generators.MultiobjectiveTabuSearch
,
metaheuristics.generators.TabuSearch
stateSearch() :
local_search.candidate_type.GreaterCandidate
,
local_search.candidate_type.NotDominatedCandidate
,
local_search.candidate_type.RandomCandidate
,
local_search.candidate_type.SearchCandidate
,
local_search.candidate_type.SmallerCandidate
SteadyStateReplace :
evolutionary_algorithms.complement.ReplaceType
stopexecute :
metaheurictics.strategy.Strategy
stopIterations() :
local_search.complement.StopExecute
Strategy() :
metaheurictics.strategy.Strategy
strategy :
local_search.candidate_type.CandidateValue
,
metaheurictics.strategy.Strategy
,
metaheuristics.generators.HillClimbing
,
metaheuristics.generators.HillClimbingRestart
,
metaheuristics.generators.LimitThreshold
,
metaheuristics.generators.MultiCaseSimulatedAnnealing
,
metaheuristics.generators.MultiobjectiveHillClimbingDistance
,
metaheuristics.generators.MultiobjectiveHillClimbingRestart
,
metaheuristics.generators.MultiobjectiveStochasticHillClimbing
,
metaheuristics.generators.MultiobjectiveTabuSearch
,
metaheuristics.generators.RandomSearch
,
metaheuristics.generators.SimulatedAnnealing
,
metaheuristics.generators.TabuSearch
Generado el
para BiCIAM - Framework Metaheurístico por
1.15.0