Applications of Machine Learning in Building Energy Prediction and Savings

Priyan Rai, N. Nassif, K. Eaton, Alexander Rodrigues
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引用次数: 3

Abstract

In a constantly advancing world with growing needs, buildings play in important role in the daily functioning of the society. Developing more and more advanced techniques to optimize the working of these buildings is highly important for a constant growth. Modern computational techniques have opened doors to create advanced models that can utilize efficient techniques to produce highly accurate results. This paper introduces a model that utilizes machine learning algorithms to predict energy consumption in buildings. Energy data were used from two actual and two simulated buildings to fine tune the models. The model is also compared to a baseline regression model as well as a model based on Artificial Neural Network. The results show that the proposed model performs much better than the other two compared models. The proposed model can be used for many intelligent applications such as measurement and savings verification, optimization, building-energy assessment and fault detection and diagnosis. The models were tested to predict the savings calculations for a simulated building and the results proved the proposed model to be the closest predictor to actual savings.
机器学习在建筑能源预测和节约中的应用
在一个不断发展的世界,随着需求的增长,建筑在社会的日常运作中发挥着重要作用。开发越来越先进的技术来优化这些建筑的工作,对于不断发展是非常重要的。现代计算技术为创建先进的模型打开了大门,这些模型可以利用有效的技术产生高度精确的结果。本文介绍了一种利用机器学习算法预测建筑物能耗的模型。能源数据分别来自两座实际建筑和两座模拟建筑,以微调模型。该模型还与基线回归模型和基于人工神经网络的模型进行了比较。结果表明,该模型的性能明显优于其他两种模型。该模型可用于测量和节能验证、优化、建筑能耗评估和故障检测与诊断等智能应用。对模型进行了测试,以预测模拟建筑物的节省计算,结果证明所提出的模型是最接近实际节省的预测器。
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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