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simulator2.cpp 5.08 KiB
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  • /**
     * DESCRIPTION OF THE FILE
     *
     * @author Michal Kravčenko
     * @date 15.3.19 -
     */
    
    
    #include <iostream>
    #include <cstdio>
    #include <fstream>
    #include <vector>
    #include <utility>
    #include <algorithm>
    #include <assert.h>
    
    #include "4neuro.h"
    #include "../LearningMethods/RandomSolution.h"
    
    int main(int argc, char** argv) {
    
        //TODO NORMALIZACI NEPOUZIVAT KVULI CASOVYM POSUNUM
        bool normalize_data = false;
        double prec = 1e-9;
        double prec_lm = 1e-9;
        int restart_interval = 500;
        int max_n_iters_gradient = 10000;
        int max_n_iters_gradient_lm = 10000;
    
        int max_n_iters_swarm = 20;
        int n_particles_swarm = 200;
        unsigned long batch_size = 0;
        int max_number_of_cycles = 1;
        try {
            /* PHASE 2 - TRAINING DATA LOADING, SIMPLE SIMULATION */
            l4n::CSVReader reader1("../../../data_files/data_BACK_RH_1.csv", ";", true);  // File, separator, skip 1st line
            reader1.read();  // Read from the file
    
            /* PHASE 2 - NEURAL NETWORK SPECIFICATION */
            /* Create data set for both the first training of the neural network */
            /* Specify which columns are inputs or outputs */
            std::vector<unsigned int> inputs = { 0 };  // Possible multiple inputs, e.g. {0,3}, column indices starting from 0
            std::vector<unsigned int> outputs = { 2 };  // Possible multiple outputs, e.g. {1,2}
            l4n::DataSet ds1 = reader1.get_data_set(&inputs, &outputs);  // Creation of data-set for NN
            if(normalize_data){
                ds1.normalize();  // Normalization of data to prevent numerical problems
            }
    
            /* Numbers of neurons in layers (including input and output layers) */
            std::vector<size_t> neuron_numbers_in_layers = { 1, 3, 3, 1 };
    
            /* for each valve (1 in this example) setup the times of change */
            std::vector<std::vector<double>> t;
            t.push_back({0});
    
            /* for each valve (1 in this example) setup the magnitudes of change */
            std::vector<std::vector<double>> xi;
            xi.push_back({ds1.get_data()->at(0).second});
    
            /* The simulator2 object */
            l4n::Simulator sim(outputs.size(), neuron_numbers_in_layers, t, xi);
    
            /* Error function */
            l4n::MSE mse1(&sim, &ds1);  // First parameter - neural network, second parameter - data-set
    
            /* Particle Swarm method domain*/
            std::vector<double> domain_bounds(2 * (sim.get_n_weights() + sim.get_n_biases()));
            for (size_t i = 0; i < domain_bounds.size() / 2; ++i) {
                domain_bounds[2 * i] = -0.1;
                domain_bounds[2 * i + 1] = 0.1;
            }
    
            l4n::RandomSolution rnd;
            l4n::LevenbergMarquardt leven(max_n_iters_gradient_lm, batch_size, prec_lm );
            l4n::LearningSequence learning_sequence( 1e-6, max_number_of_cycles );
            learning_sequence.add_learning_method( &rnd );
            learning_sequence.add_learning_method( &leven );
    
            /* Weight and bias randomization in the network accordingly to the uniform distribution */
            sim.randomize_parameters();
    
            /* Complex Optimization */
            learning_sequence.optimize(mse1);  // Network training
    
            /* Save Neural network parameters to file */
            sim.save_text("test_net_Gradient_Descent.4n");
    
            /* PHASE 4 - TESTING DATA */
    
    //        /* Output file specification */
            std::string filename = "simulator_output.txt";
            std::ofstream output_file(filename);
            if (!output_file.is_open()) {
                throw std::runtime_error("File '" + filename + "' can't be opened!");
            }
    //
    //        /* Neural network loading */
            l4n::NeuralNetwork nn3("test_net_Gradient_Descent.4n");
    
            /* Check of the saved network - write to the file */
            output_file << std::endl << "The loaded network info:" << std::endl;
            nn3.write_stats(&output_file);
            nn3.write_weights(&output_file);
            nn3.write_biases(&output_file);
    //
    //        /* Evaluate network on an arbitrary data-set and save results into the file */
            l4n::CSVReader reader3("../../../data_files/data_BACK_RH_1.csv", ";", true);  // File, separator, skip 1st line
            reader3.read();  // Read from the file
    //
    //        /* Create data set for both the testing of the neural network */
    //        /* Specify which columns are inputs or outputs */
    //
            l4n::DataSet ds3 = reader3.get_data_set(&inputs, &outputs);  // Creation of data-set for NN
            if(normalize_data){
                ds3.normalize();  // Normalization of data to prevent numerical problems
            }
    //
    //        output_file << std::endl << "Evaluating network on the dataset: " << std::endl;
    //        ds3.store_data_text(&output_file);
    //
            output_file << "Output and the error:" << std::endl;
    //
    //        /* Error function */
            l4n::MSE mse3(&nn3, &ds3);  // First parameter - neural network, second parameter - data-set
    
            mse3.eval_on_data_set(&ds3, &output_file, nullptr, normalize_data, true);
    
            /* Close the output file for writing */
            output_file.close();
    
            return 0;
    
        }
        catch (const std::exception& e) {
            std::cerr << e.what() << std::endl;
            exit(EXIT_FAILURE);
        }
    
    }