示例#1
0
        /// <summary>
        /// Takes 2 parent gene vectors, selects a midpoint and then swaps the ends
        /// of each genome creating 2 new genomes which are stored in baby1 and baby2
        /// </summary>
        /// <param name="other"></param>
        /// <param name="baby1"></param>
        /// <param name="baby2"></param>
        public void CrossOver(Genome <TMainModel, TCombinationModel> other, Genome <TMainModel, TCombinationModel> baby1, Genome <TMainModel, TCombinationModel> baby2)
        {
            // just return parents as offspring dependent on the rate
            // or if parents are the same
            if ((GAUtils.RandDouble() > _settings.CrossoverRate) || (this == other))
            {
                baby1.Genes = this.Genes;
                baby2.Genes = other.Genes;
                return;
            }

            if (baby1.Genes.Count <= 1 || baby2.Genes.Count <= 1)
            {
                baby1.Genes = this.Genes;
                baby2.Genes = other.Genes;
                return;
            }


            // determine a crossover point
            int crossOverPoint = GAUtils.RandInt(0, this.Genes.Count - 1); // = 29

            for (int i = 0; i < this.Genes.Count; i++)
            {
                var crossed = Genes[i].Cross(other.Genes[i], i < crossOverPoint);
                baby1.Genes.Add(crossed[0]);
                baby2.Genes.Add(crossed[1]);
            }
        }
示例#2
0
        public void Initialize()
        {
            int geneSize = _settings.InitialPopulation.Count; // number of all items to be combined

            Parts.Clear();                                    // for re-initialisation when there is already a gene that's the same
            for (int i = 0; i < geneSize; i++)
            {
                Parts.Add(new GenePart <TCombinationModel>
                {
                    Model  = _settings.InitialPopulation[i],
                    Active = GAUtils.RandDouble() > 0.5
                });
            }
        }
示例#3
0
 /// <summary>
 /// Iterates through each gene flipping the bits acording to the mutation rate
 /// </summary>
 public void Mutate()
 {
     // Go through each gene
     for (int i = 0; i < Genes.Count; i++)
     {
         Gene <TCombinationModel> gene = Genes[i];
         int mutationCounter           = 0;
         for (int j = 0; j < gene.Parts.Count; j++)
         {
             //do we flip this bit?
             if (GAUtils.RandDouble() < _settings.MutationRate)
             {
                 //flip the bit
                 gene.Parts[j].Active = gene.Parts[j].Active == false;
                 mutationCounter++;
             }
         }
         //Debug.WriteLineIf(mutationCounter > 0, $"> Mutated {mutationCounter}/{gene.Parts.Count} items");
     }
 }
示例#4
0
        private Genome <TMainModel, TCombinationModel> RouletteWheelSelection()
        {
            double fSlice = GAUtils.RandDouble() * TotalFitnessScore;

            double cfTotal = 0.0;

            int selectedGenome = 0;

            for (int i = 0; i < Genomes.Count; ++i)
            {
                cfTotal += Genomes[i].Fitness;

                if (cfTotal > fSlice)
                {
                    selectedGenome = i;
                    break;
                }
            }

            return(Genomes[selectedGenome]);
        }