Smart Building Energy Management using Deep Learning Based Predictions

M. Palak, G. Revati, A. Sheikh
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引用次数: 2

Abstract

The prediction of electricity consumption in a building is critical for recognizing the possibilities for energy savings as a part of the digitalization of the built environment. This also helps to mitigate the effects of climate change, since buildings are required to be more adaptable and resilient while consuming less energy and maintaining user comfort. Peak energy demand may be detected using historical building data, allowing users to more efficiently manage their energy consumption while also providing the demand side management response to the utilities for the necessary control and actuation in real-time. In view of this, the paper focuses on various deep learning methods (re-current neural network (RNN), long short term memory (LSTM), and gated recurrent unit (GRU)) to predict electricity consumption of three different types of buildings in a model-free environment. A hybrid model is also developed by combining the features of RNN and GRU for predicting the load profile. Another major contribution of the paper is the introduction of hyperparameter tuning for improving prediction accuracy. The results highlight the effectiveness of the hybrid model in predicting electricity consumption and also show the improvement in prediction accuracy using hyperparameter tuning.
基于深度学习预测的智能建筑能源管理
作为建筑环境数字化的一部分,建筑物的电力消耗预测对于认识到节能的可能性至关重要。这也有助于减轻气候变化的影响,因为建筑需要更强的适应性和弹性,同时消耗更少的能源并保持用户的舒适度。可以使用历史建筑数据检测峰值能源需求,允许用户更有效地管理他们的能源消耗,同时还为公用事业公司提供需求侧管理响应,以进行必要的实时控制和驱动。鉴于此,本文重点研究了各种深度学习方法(再流神经网络(RNN)、长短期记忆(LSTM)和门控循环单元(GRU))在无模型环境下对三种不同类型建筑的用电量进行预测。结合RNN和GRU的特点,建立了一种用于负荷预测的混合模型。本文的另一个主要贡献是引入了用于提高预测精度的超参数调优。结果表明了混合模型在预测电力消耗方面的有效性,并表明使用超参数整定可以提高预测精度。
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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