Novel Neural Network Optimized by Electrostatic Discharge Algorithm for Modification of Buildings Energy Performance

Author:

Fallah Arash Mohammadi1ORCID,Ghafourian Ehsan2,Shahzamani Sichani Ladan3,Ghafourian Hossein4,Arandian Behdad5ORCID,Nehdi Moncef L.6ORCID

Affiliation:

1. Department of Architecture, Urmia Branch, Islamic Azad University, Urmia 5719976453, Iran

2. Department of Computer Science, Iowa State University, Ames, IA 50010, USA

3. Department of Art and Architecture, Semirom Branch, Islamic Azad University, Semiron 7357586619, Iran

4. Department of Civil and Environmental Engineering, University of Massachusetts Amherst, Amherst, MA 01375, USA

5. Department of Electrical Engineering, Dolatabad Branch, Islamic Azad University, Isfahan 8194975178, Iran

6. Department of Civil Engineering, McMaster University, Hamilton, ON L8S 4L8, Canada

Abstract

Proper analysis of building energy performance requires selecting appropriate models for handling complicated calculations. Machine learning has recently emerged as a promising effective solution for solving this problem. The present study proposes a novel integrative machine learning model for predicting two energy parameters of residential buildings, namely annual thermal energy demand (DThE) and annual weighted average discomfort degree-hours (HDD). The model is a feed-forward neural network (FFNN) that is optimized via the electrostatic discharge algorithm (ESDA) for analyzing the building characteristics and finding their optimal contribution to the DThE and HDD. According to the results, the proposed algorithm is an effective double-target model that can predict the required parameters with superior accuracy. Moreover, to further verify the efficiency of the ESDA, this algorithm was compared with three similar optimization techniques, namely atom search optimization (ASO), future search algorithm (FSA), and satin bowerbird optimization (SBO). Considering the Pearson correlation indices 0.995 and 0.997 (for the DThE and HDD, respectively) obtained for the ESDA-FFNN versus 0.992 and 0.938 for ASO-FFNN, 0.926 and 0.895 for FSA-FFNN, and 0.994 and 0.995 for SBO-FFNN, the ESDA provided higher accuracy of training. Subsequently, by collecting the weights and biases of the optimized FFNN, two formulas were developed for easier computation of the DThE and HDD in new cases. It is posited that building engineers and energy experts could consider the use of ESDA-FFNN along with the proposed new formulas for investigating the energy performance in residential buildings.

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

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