Ejemplo n.º 1
0
        public static ANFIS Build(double[][] input, double[][] output, IRuleExtractor RuleExtractor, ITraining trainer, int MaxIterations)
        {
            InMemoryLogger.PrintMessage("Start...");
            InMemoryLogger.PrintMessage($"Constructing initial rule set with [{RuleExtractor.GetType().Name}]");
            var ruleBase = RuleSetFactory <R> .Build(input, output, RuleExtractor).Select(z => z as IRule).ToList();

            InMemoryLogger.PrintMessage($"Get {ruleBase.Count} initial rules.");
            int epoch = 0;

            double trnError = 0.0;

            Console.WriteLine();
            Console.WriteLine();
            do
            {
                trnError = trainer.Iteration(input, output, ruleBase);
                InMemoryLogger.PrintMessage($"Epoch {epoch}, training error {trnError}");

                if (double.IsNaN(trnError))
                {
                    InMemoryLogger.PrintMessage("Failure! Training error is NAN.");
                    throw new Exception("Failure! Bad system design.");
                }
            } while (!trainer.isTrainingstoped() && epoch++ < MaxIterations);


            ANFIS fis = new ANFIS(ruleBase);

            InMemoryLogger.PrintMessage("Done");
            return(fis);
        }
Ejemplo n.º 2
0
        public void TestRulesetGeneration()
        {
            int trainingSamples = 100;

            double[][] x = new double[trainingSamples][];
            double[][] y = new double[trainingSamples][];

            Random rnd = new Random();

            for (int i = 0; i < trainingSamples; i++)
            {
                bool   isRigth = i % 2 == 0;
                double valx    = (isRigth ? 1 : -1) + (0.5 - rnd.NextDouble());

                x[i] = new double[] { valx, valx };
                y[i] = new double[] { isRigth ? 1 : 0, isRigth ? 0 : 1 };
            }

            KMEANSExtractorIO   extractor = new KMEANSExtractorIO(2);
            List <GaussianRule> ruleBase  = RuleSetFactory <GaussianRule> .Build(x, y, extractor);

            if (ruleBase[0].Z[0] > 0.5)
            {
                Assert.AreEqual(ruleBase[0].Z[0], 1, 1e-2);
                Assert.AreEqual(ruleBase[0].Z[1], 0, 1e-2);
                Assert.AreEqual(ruleBase[1].Z[1], 1, 1e-2);
                Assert.AreEqual(ruleBase[1].Z[0], 0, 1e-2);
                Assert.AreEqual(ruleBase[0].Parameters[0], 1, 1e-1);
                Assert.AreEqual(ruleBase[0].Parameters[1], 1, 1e-1);
                Assert.AreEqual(ruleBase[1].Parameters[0], -1, 1e-1);
                Assert.AreEqual(ruleBase[1].Parameters[1], -1, 1e-1);
            }
            else
            {
                Assert.AreEqual(ruleBase[0].Z[1], 1, 1e-2);
                Assert.AreEqual(ruleBase[0].Z[0], 0, 1e-2);
                Assert.AreEqual(ruleBase[1].Z[0], 1, 1e-2);
                Assert.AreEqual(ruleBase[1].Z[1], 0, 1e-2);
                Assert.AreEqual(ruleBase[1].Parameters[0], 1, 1e-1);
                Assert.AreEqual(ruleBase[1].Parameters[1], 1, 1e-1);
                Assert.AreEqual(ruleBase[0].Parameters[0], -1, 1e-1);
                Assert.AreEqual(ruleBase[0].Parameters[1], -1, 1e-1);
            }
        }
Ejemplo n.º 3
0
        public static ANFIS Build(double[][] input, double[][] output, IRuleExtractor RuleExtractor, ITraining trainer, int MaxIterations)
        {
            _log.Info("Start...");
            _log.Info($"Constructing initial rule set with [{RuleExtractor.GetType().Name}]");
            var ruleBase = RuleSetFactory <R> .Build(input, output, RuleExtractor).Select(z => z as IRule).ToList();

            _log.Info($"Get {ruleBase.Count} initial rules.");
            int epoch = 0;

            double trnError = 0.0;

            Console.WriteLine();
            Console.WriteLine("Старт обучения");
            do
            {
                trnError = trainer.Iteration(input, output, ruleBase);
                _log.Info($"Epoch {epoch}, training error {trnError}");

                if (double.IsNaN(trnError))
                {
                    _log.Info("Failure! Training error is NAN.");
                    throw new Exception("Failure! Bad system design.");
                }

                if (epoch % 100 == 0)
                {
                    Console.WriteLine("Обучение: " + epoch.ToString() + " итерация. Ошибка: " + trnError);
                }
            } while (!trainer.isTrainingstoped() && epoch++ < MaxIterations);


            ANFIS fis = new ANFIS(ruleBase);

            Console.WriteLine("Завершение обучения");
            _log.Info("Done");
            return(fis);
        }