Abstract

The dramatic growth in the number of buildings worldwide has led to an increase interest in predicting energy consumption, especially for the case of residential buildings. As the heating and cooling system highly affect the operation cost of buildings; it is worth investigating the development of models to predict the heating and cooling loads of buildings. In contrast to the majority of the existing related studies, which are based on historical energy consumption data, this study considers building characteristics, such as area and floor height, to develop prediction models of heating and cooling loads. In particular, this study proposes deep neural networks models based on several hyper-parameters: the number of hidden layers, the number of neurons in each layer, and the learning algorithm. The tuned models are constructed using a dataset generated with the Integrated Environmental Solutions Virtual Environment (IESVE) simulation software for the city of Buraydah city, the capital of the Qassim region in Saudi Arabia. The Qassim region was selected because of its harsh arid climate of extremely cold winters and hot summers, which means that lot of energy is used up for cooling and heating of residential buildings. Through model tuning, optimal parameters of deep learning models are determined using the following performance measures: Mean Square Error (MSE), Root Mean Square Error (RMSE), Regression (R) values, and coefficient of determination (R2). The results obtained with the five-layer deep neural network model, with 20 neurons in each layer and the Levenberg–Marquardt algorithm, outperformed the results of the other models with a lower number of layers. This model achieved MSE of 0.0075, RMSE 0.087, R and R2 both as high as 0.99 in predicting the heating load and MSE of 0.245, RMSE of 0.495, R and R2 both as high as 0.99 in predicting the cooling load. As the developed prediction models were based on buildings characteristics, the outcomes of the research may be relevant to architects at the pre-design stage of heating and cooling energy-efficient buildings.

Highlights

  • Over the past decade, there has been a rapid increase in the number of residential buildings, which has raised worldwide interest on climate change, global carbon emission [1,2], global warming, urban growth, and fast construction development

  • Following the Saudi vision 2030 [5] to enhance energy efficiency, this study proposes a predictive model for energy consumption of residential buildings in the Qassim region based on a typical condition of building characteristics

  • The main goal of this study is to identify the optimal parameters of deep learning models for energy consumption prediction based on buildings’ characteristics

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Summary

Introduction

There has been a rapid increase in the number of residential buildings, which has raised worldwide interest on climate change, global carbon emission [1,2], global warming, urban growth, and fast construction development. All building sectors are accountable for around 70% of the total energy consumption, Sustainability 2021, 13, 12442. Sustainability 2021, 13, 12442 and about 50% of that is used by residential buildings [3,4]. Many residential buildings in Saudi Arabia are detached or semidetached types, which demand more cooling and heating loads than typical flat apartments. The region has a dry climate characterized by hot summers and cold winters. Energy in buildings is used primarily for their heating during winter and their cooling during summer.

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