Esempio n. 1
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        public object Clone()
        {
            Individuum <T> Cloned = new Individuum <T>(DeepCopyCreator, Data);

            Cloned.Data    = DeepCopyCreator(Data);
            Cloned.Fitness = Fitness;
            return(Cloned);
        }
Esempio n. 2
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 protected override void Mutation(Individuum <Decision> dna)
 {
     for (int j = 0; j < dna.Data.Length; j++)
     {
         if (rand.NextDouble() <= mutationChance)
         {
             dna.Data[j].Init(); //re-initzialize a choice
         }
     }
 }
Esempio n. 3
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        /// <summary>
        /// Creates a new individuum with crossed decision data from parent1 and parent2
        /// </summary>
        /// <param name="parent1"></param>
        /// <param name="parent2"></param>
        /// <returns>retruns a new individuum with crossed decision data from parent1 and parent2</returns>
        protected override Individuum <Decision> Crossover(Individuum <Decision> parent1, Individuum <Decision> parent2)
        {
            Individuum <Decision> child = (Individuum <Decision>)parent1.Clone();
            int crossoverIndex          = rand.Next(child.Data.Length);

            for (int i = 0; i < crossoverIndex; i++)
            {
                child.Data[i] = parent2.Data[i];
            }

            return(child);
        }
Esempio n. 4
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 protected virtual void Mutation(Individuum <T> dna)
 {
     for (int j = 0; j < dna.Data.Length; j++)
     {
         if (rand.NextDouble() <= mutationChance)
         {
             int swapIndex = rand.Next(dna.Data.Length);
             T   swapValue = dna.Data[j];
             dna.Data[j]         = dna.Data[swapIndex];
             dna.Data[swapIndex] = swapValue;
         }
     }
 }
Esempio n. 5
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        /// <summary>
        /// Create a individuum and Setup decision data
        /// </summary>
        /// <returns></returns>
        protected override Individuum <Decision> CreateGen()
        {
            Decision[] decisions = new Decision[6];

            decisions[0] = new ChoiceDecision(primary.Length, rand);                                     //primary weapon
            decisions[1] = new ChoiceDecision(primary[decisions[0].Value].SuspressAble ? 2 : 1, rand);   // primary suspressor
            decisions[2] = new ChoiceDecision(secondary.Length, rand);                                   //secondary weapon
            decisions[3] = new ChoiceDecision(secondary[decisions[2].Value].SuspressAble ? 2 : 1, rand); //secondary suspressor
            decisions[4] = new ChoiceDecision(entries.Length, rand);                                     //entry
            decisions[5] = new ChoiceDecision(entries.Length, rand);                                     //exit

            Individuum <Decision> dna = new Individuum <Decision>(DeepCopy, decisions);

            return(dna);
        }
Esempio n. 6
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 public int CompareTo(Individuum <T> other)
 {
     if (Fitness > other.Fitness)
     {
         return(1);
     }
     else if (Fitness < other.Fitness)
     {
         return(-1);
     }
     else
     {
         return(0);
     }
 }
Esempio n. 7
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        protected virtual Individuum <T>[] GetElitist()
        {
            Individuum <T>[] newDna = new Individuum <T> [populationSize];
            int count = (int)Math.Ceiling(populationSize * elitistChance); //number of elitiest that survives

            for (int i = 0; i < count; i++)
            {
                newDna[i] = (Individuum <T>)dna[i].Clone();
            }

            if (newDna[0] == null)
            {
                newDna[0] = (Individuum <T>)dna[0].Clone();
            }

            return(newDna);
        }
Esempio n. 8
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        /// <summary>
        /// Starts calculations
        /// </summary>
        /// <returns>Returns best indviduum</returns>
        public virtual Individuum <T> Do()
        {
            for (int i = 0; i < iterations; i++)
            {
                IterationStarted?.Invoke(this, EventArgs.Empty);
                double           SummedFitness = CalculateSummedFitness();
                Individuum <T>[] NewPopulation = GetElitist();

                for (int j = (int)Math.Ceiling(populationSize * elitistChance); j < populationSize; j++)
                {
                    bool born = false;
                    if (rand.NextDouble() <= crossoverChance)
                    {
                        Individuum <T> parent1 = null;
                        Individuum <T> parent2 = null;
                        ChooseParents(SummedFitness, ref parent1, ref parent2);

                        Individuum <T> child = Crossover(parent1, parent2);
                        child.Fitness = CalculateFitness(child);
                        if (child.Fitness != parent1.Fitness && child.Fitness != parent2.Fitness)
                        {
                            NewPopulation[j] = child;
                            born             = true;
                        }
                    }

                    if (!born)
                    {
                        if (surviveChance >= rand.NextDouble())
                        {
                            Mutation(dna[j]);
                            NewPopulation[j] = dna[j];
                        }
                        else
                        {
                            NewPopulation[j] = CreateGen();
                        }
                    }
                }
                dna = NewPopulation;

                IterationCompleted?.Invoke(this, new IterationArgs <T>(Best, i));
            }
            return(Best);
        }
Esempio n. 9
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        protected virtual void Initzialize()
        {
            Individuum <T>[] newDna = new Individuum <T> [populationSize];
            if (dna != null)
            {
                ChooseSurvivors(ref newDna);
            }

            dna = newDna;

            for (int i = 0; i < dna.Length; i++)
            {
                if (dna[i] == null)
                {
                    dna[i] = CreateGen();
                }
            }
        }
Esempio n. 10
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        protected virtual void ChooseParents(double summedFitness, ref Individuum <T> parent1, ref Individuum <T> parent2)
        {
            do
            {
                for (int j = 0; j < populationSize; j++)
                {
                    if (parent1 != null && parent2 != null)
                    {
                        return;
                    }

                    if (summedFitness <= 0)
                    {
                        int value = rand.Next(populationSize);
                        parent1 = dna[value];
                        if (value + 1 < populationSize)
                        {
                            parent2 = dna[value + 1];
                        }
                        else if (value - 1 > 0)
                        {
                            parent2 = dna[value - 1];
                        }
                        else
                        {
                            parent2 = parent1;
                        }
                    }
                    else
                    {
                        if (parent1 == null && parent2 != dna[j] && 1 - (dna[j].Fitness / summedFitness) >= rand.NextDouble())
                        {
                            parent1 = dna[j];
                        }

                        if (parent2 == null && parent1 != dna[j] && 1 - (dna[j].Fitness / summedFitness) >= rand.NextDouble())
                        {
                            parent2 = dna[j];
                        }
                    }
                }
            } while (parent1 == null || parent2 == null);
        }
Esempio n. 11
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        protected virtual double CalculateSummedFitness()
        {
            double SumFitness = 0;

            for (int i = 0; i < populationSize; i++)
            {
                dna[i].Fitness = CalculateFitness(dna[i]);
            }
            Array.Sort(dna);

            for (int i = 0; i < populationSize; i++)
            {
                if (best == null || dna[i].Fitness > best.Fitness)
                {
                    best = dna[i];
                }
                SumFitness += dna[i].Fitness;
            }

            return(SumFitness);
        }
Esempio n. 12
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 protected abstract Individuum <T> Crossover(Individuum <T> dna1, Individuum <T> dna2);
Esempio n. 13
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 protected abstract int CalculateFitness(Individuum <T> dna);
Esempio n. 14
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 /// <summary>
 /// Runs a threaded game session (Fitness = health)
 /// </summary>
 /// <param name="dna"></param>
 /// <returns>Returns fitness</returns>
 protected override int CalculateFitness(Individuum <Decision> dna)
 {
     return(scene.DoTraining(dna.Data));
 }
Esempio n. 15
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 public IterationArgs(Individuum <T> best, int iteration)
 {
     Best      = best;
     Iteration = iteration;
 }