A Review on Machine/Deep Learning Techniques Applied to Building Energy Simulation, Optimization and Management

Thermo Pub Date : 2024-03-06 DOI:10.3390/thermo4010008
Francesca Villano, Gerardo Maria Mauro, Alessia Pedace
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Abstract

Given the climate change in recent decades and the ever-increasing energy consumption in the building sector, research is widely focused on the green revolution and ecological transition of buildings. In this regard, artificial intelligence can be a precious tool to simulate and optimize building energy performance, as shown by a plethora of recent studies. Accordingly, this paper provides a review of more than 70 articles from recent years, i.e., mostly from 2018 to 2023, about the applications of machine/deep learning (ML/DL) in forecasting the energy performance of buildings and their simulation/control/optimization. This review was conducted using the SCOPUS database with the keywords “buildings”, “energy”, “machine learning” and “deep learning” and by selecting recent papers addressing the following applications: energy design/retrofit optimization, prediction, control/management of heating/cooling systems and of renewable source systems, and/or fault detection. Notably, this paper discusses the main differences between ML and DL techniques, showing examples of their use in building energy simulation/control/optimization. The main aim is to group the most frequent ML/DL techniques used in the field of building energy performance, highlighting the potentiality and limitations of each one, both fundamental aspects for future studies. The ML approaches considered are decision trees/random forest, naive Bayes, support vector machines, the Kriging method and artificial neural networks. The DL techniques investigated are convolutional and recursive neural networks, long short-term memory and gated recurrent units. Firstly, various ML/DL techniques are explained and divided based on their methodology. Secondly, grouping by the aforementioned applications occurs. It emerges that ML is mostly used in energy efficiency issues while DL in the management of renewable source systems.
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应用于建筑能源模拟、优化和管理的机器/深度学习技术综述
鉴于近几十年来的气候变化和建筑领域日益增长的能源消耗,人们广泛关注建筑的绿色革命和生态转型研究。在这方面,人工智能可以成为模拟和优化建筑节能性能的宝贵工具,最近的大量研究就证明了这一点。因此,本文综述了近年来(主要是 2018 年至 2023 年)有关机器/深度学习(ML/DL)在建筑能效预测及其模拟/控制/优化方面应用的 70 多篇文章。本综述使用 SCOPUS 数据库,以 "建筑物"、"能源"、"机器学习 "和 "深度学习 "为关键词,选择了涉及以下应用的最新论文:能源设计/改造优化、预测、供热/制冷系统和可再生能源系统的控制/管理和/或故障检测。值得注意的是,本文讨论了 ML 和 DL 技术的主要区别,并举例说明了它们在建筑能源模拟/控制/优化中的应用。本文的主要目的是对建筑能效领域最常用的 ML/DL 技术进行归类,强调每种技术的潜力和局限性,这两个方面都是未来研究的基础。所考虑的 ML 方法包括决策树/随机森林、天真贝叶斯、支持向量机、克里金法和人工神经网络。研究的 DL 技术包括卷积和递归神经网络、长短期记忆和门控递归单元。首先,解释了各种 ML/DL 技术,并根据其方法进行了划分。其次,根据上述应用进行分组。结果表明,ML 主要用于能源效率问题,而 DL 则用于可再生能源系统的管理。
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