Using PSO-GA algorithm for training artificial neural network to forecast solar space heating system parameters

•In this study, the PSO-GA neural network is proposed for modelling SSHS.•Verification is done with HEPSO-ANN and TGA-ANN to show the ability of the model.•The results of the model are compared and validated with the experiments.•The best PSO-GA-ANN model is compared with PSO-ANN and GA-ANN models.•...

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Veröffentlicht in:Applied thermal engineering 2019-01, Vol.147, p.647-660
Hauptverfasser: Jamali, Behnam, Rasekh, Mohamad, Jamadi, Farnaz, Gandomkar, Ramin, Makiabadi, Faezeh
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container_start_page 647
container_title Applied thermal engineering
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creator Jamali, Behnam
Rasekh, Mohamad
Jamadi, Farnaz
Gandomkar, Ramin
Makiabadi, Faezeh
description •In this study, the PSO-GA neural network is proposed for modelling SSHS.•Verification is done with HEPSO-ANN and TGA-ANN to show the ability of the model.•The results of the model are compared and validated with the experiments.•The best PSO-GA-ANN model is compared with PSO-ANN and GA-ANN models.•The proposed neural network can be well used in modelling the solar energy system. An Artificial Neural Network (ANN) model based on PSO-GA optimization algorithm is applied to predict a Solar Space Heating System (SSHS) performance. An experimental research is conducted into the SSHS equipped with a Parabolic Through Collector (PTC). A number of influential factors such as I, Ta, T2c and Tw are considered to validate the ANN results. The proposed PSO-GA algorithm is used to identify a complex non-linear relationship between input and output parameters of the SSHS, and to obtain the optimized estimating ANN model. To show the accuracy of the PSO-GA model in training ANN, its results are compared with those of two highly powerful optimization algorithms, namely High Exploration Particle Swarm Optimization (HEPSO) and Team Game Algorithm (TGA), based on some evaluating criteria such as Mean Absolute Percentage Error (MAPE), Variance Accounted For (VAF), the coefficient of determination (R2) and Root Mean Square Error (RMSE). Results show the reliability of PSO-GA-ANN with highest R2 and RMSE. Afterwards, testing phases of the PSO-GA algorithm are done based on its parameters to obtain the best model of the neural network. Eventually, comparing the proposed model to Multi-Layer Perception Artificial Neural Network (MLPANN) exhibits its higher ability to estimate outputs when more accurate results are required.
doi_str_mv 10.1016/j.applthermaleng.2018.10.070
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An Artificial Neural Network (ANN) model based on PSO-GA optimization algorithm is applied to predict a Solar Space Heating System (SSHS) performance. An experimental research is conducted into the SSHS equipped with a Parabolic Through Collector (PTC). A number of influential factors such as I, Ta, T2c and Tw are considered to validate the ANN results. The proposed PSO-GA algorithm is used to identify a complex non-linear relationship between input and output parameters of the SSHS, and to obtain the optimized estimating ANN model. To show the accuracy of the PSO-GA model in training ANN, its results are compared with those of two highly powerful optimization algorithms, namely High Exploration Particle Swarm Optimization (HEPSO) and Team Game Algorithm (TGA), based on some evaluating criteria such as Mean Absolute Percentage Error (MAPE), Variance Accounted For (VAF), the coefficient of determination (R2) and Root Mean Square Error (RMSE). 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subjects Algorithms
Artificial neural networks
Genetic algorithm
Mathematical models
Model accuracy
Multilayers
Neural network
Neural networks
Optimization algorithms
Parabolic through collector
Parameter identification
Particle swarm optimization
Root-mean-square errors
Solar space heating system
Space heating
Team game algorithm
Training
title Using PSO-GA algorithm for training artificial neural network to forecast solar space heating system parameters
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