Review of Artificial Neural Network Approaches for Predicting Building Energy Consumption

Siti Solehah Md Ramli, Mohammad Nizam Ibrahim, Anuar Mohamad, K. Daud, A. M. Saidina Omar, Nur Darina Ahmad
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Abstract

Recently, the forecasting of energy consumption has prompted a massive escalation in research studies that are being conducted all over the world in an effort to attain higher levels of sustainability. Forecasting is essential to decision-making for effective energy conservation and development within an organization. The adoption of data-driven models for energy forecasting has seen tremendous growth in the past few decades as a result of improvements in performance, robustness, and simplicity of deployment brought about by these improvements. There are various kinds of models, but Artificial Neural Networks (ANN) are currently among the most widely used data-driven methods that have been applied to real-world situations. This study provides a comprehensive overview of research on ANN and a comparison with other data-driven models and the evaluation metrics were employed to evaluate the performances of each technique. This review helps to outline potential future research in the area of data-driven building energy consumption prediction and prominence existing research gaps.
人工神经网络方法在建筑能耗预测中的研究进展
最近,对能源消耗的预测促使世界各地正在进行的研究工作大规模升级,以期达到更高水平的可持续性。预测对于组织内有效的节能和发展决策是必不可少的。在过去的几十年里,数据驱动模型在能源预测方面的应用取得了巨大的增长,这是由于这些改进带来的性能、稳健性和部署简单性的提高。有各种各样的模型,但人工神经网络(ANN)是目前应用最广泛的数据驱动方法之一,已应用于现实世界的情况。本研究对人工神经网络的研究进行了全面概述,并与其他数据驱动模型进行了比较,并采用了评估指标来评估每种技术的性能。这篇综述有助于概述数据驱动的建筑能耗预测领域潜在的未来研究,并突出现有的研究差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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