Exemple #1
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        /**
         * Calculates the maximum available fitness by multiplying the amount of block pairs with the amount of reward points.
         */
        int GetMaxFitness(ConnectedBlocksGraph connectedBlocks, GeneticOptions geneticOptions)
        {
            int maxFitness = 0;

            foreach (var a in connectedBlocks.Blocks)
            {
                foreach (var i in a)
                {
                    maxFitness++;
                }
            }
            return(maxFitness * geneticOptions.PositiveFitnessPoints);
        }
Exemple #2
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        /**
         * Creates a new population by recombining the parents to create children. Selects the parents to stay in the new population with roulette wheel selection.
         * @see ParentRecombination()
         */
        Population RefreshPopulation(Population population, ConnectedBlocksGraph connectedBlocks, GeneticOptions geneticOptions, Random random)
        {
            RouletteWheelSelection rouletteWheelSelection = new RouletteWheelSelection();
            int childrenAmount = (int)(geneticOptions.PopulationSize * geneticOptions.PopulationRefreshing);

            Individual[] children = new Individual[geneticOptions.PopulationSize];
            for (int i = 0; i < childrenAmount; i++)
            {
                int[,] parents = ParentSelection(population, random);
                children[i]    = ParentRecombination(new Individual(Util.GetRow(parents, 0)), new Individual(Util.GetRow(parents, 1)), random);
                children[i].CalculateFitness(connectedBlocks, geneticOptions);
            }
            for (int i = 0; i < geneticOptions.PopulationSize - childrenAmount; i++)
            {
                children[i + childrenAmount] = population.Individuals[rouletteWheelSelection.Selection(population.GetFitness(), random)];
            }
            return(new Population(children));
        }
Exemple #3
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 ///A method that calculates the fitness of the individual based on the reward and punishment values.
 public void CalculateFitness(ConnectedBlocksGraph connectedBlocks, GeneticOptions geneticOptions)
 {
     Fitness = 0;
     for (int j = 0; j < connectedBlocks.Blocks.Count; j++)
     {
         for (int k = 0; k < connectedBlocks.Blocks[j].Length; k++)
         {
             if (Sequence[j] == (connectedBlocks.Blocks[j][k] - 1))
             {
                 Fitness += geneticOptions.NegativeFitnessPoints;
             }
             else
             {
                 Fitness += geneticOptions.PositiveFitnessPoints;
             }
         }
     }
 }
Exemple #4
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        /**
         * The method that combines the methods below to actually compute the result of the genetic algorithm.
         * It initializes the population at first. Then, it calculates the fitness, and checks if the maximum fitness has been reached.
         * Continues until the max fitness has been reached, by creating a new population with recombination and mutation.
         */
        public void StartGeneticAlgorithmProcess(GeneticOptions geneticOptions, string graphPath, Random random)
        {
            int iterations = 0;
            ConnectedBlocksGraph connectedBlocks = new ConnectedBlocksGraph(graphPath);
            Population           population      = InitializePopulation(geneticOptions, connectedBlocks.Blocks.Count, random);

            foreach (var i in population.Individuals)
            {
                i.CalculateFitness(connectedBlocks, geneticOptions);
            }
            while (!CanEnd(connectedBlocks, population, geneticOptions))
            {
                Population newPopulation = RefreshPopulation(population, connectedBlocks, geneticOptions, random);
                newPopulation = ApplyMutation(newPopulation, random, geneticOptions, connectedBlocks);
                population    = newPopulation;
                iterations++;
            }
            int maxFitness = GetMaxFitness(connectedBlocks, geneticOptions);

            ResultPrinting(iterations, population, maxFitness);
        }
Exemple #5
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 /**
  * Applies mutation to the whole population based on the mutation chance.
  * @return Returns a population object with the mutated individuals.
  */
 Population ApplyMutation(Population population, Random random, GeneticOptions geneticOptions, ConnectedBlocksGraph connectedBlocks)
 {
     for (int i = 0; i < population.Individuals.Length; i++)
     {
         if (random.NextDouble() < geneticOptions.MutationChance)
         {
             population.Individuals[i].Mutate(random, geneticOptions);
             population.Individuals[i].CalculateFitness(connectedBlocks, geneticOptions);
         }
     }
     return(population);
 }
Exemple #6
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 /**
  * Checks if the maximum fitness value has been reached, by checking if the population has an individual with the maximum amount of fitness.
  */
 bool CanEnd(ConnectedBlocksGraph connectedBlocks, Population population, GeneticOptions geneticOptions)
 {
     return(GetMaxFitness(connectedBlocks, geneticOptions) == population.GetFitness().Max());
 }