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Abnormal energy consumption detection for GSHP system based on ensemble deep learning and statistical modeling method

机译:基于集合深度学习和统计建模方法的GSHP系统异常能耗检测

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Energy consumption of heat pump system accounts for a large part of the total building energy consumption, and the energy-saving operation of heat pump system has always been the focus of researchers. A promising solution to tackling energy wastes during system operations is anomaly detection. In this study, we propose an anomaly detection method for GSHP system in a public building based on mode decomposition based LSTM and statistical modeling method Grubbs' test. The system energy consumption is predicted using mode decomposition based LSTM algorithm, and the difference between predicted value and actual value is used to detect the abnormal system energy consumption by Grubbs' test. Results show that detected anomalies can be summarily divided into three categories (parabola anomaly, abrupt anomaly and time related anomaly) depending on their characteristics, and the rationality of detected anomalies are evaluated through field investigation and expert knowledge. This work is enlightening and indicates that the proposed method would efficiently detect the abnormal performance of GSHP system, and find out unreasonable operating patterns. (C) 2020 Elsevier Ltd and IIR. All rights reserved.
机译:热泵系统的能量消耗占总建筑能耗的大部分,而热泵系统的节能运行一直是研究人员的重点。在系统操作期间解决能量废物的有希望的解决方案是异常检测。在这项研究中,我们提出了一种基于模式分解的LSTM和统计建模方法GRUBBS测试的公共建筑中GSHP系统的异常检测方法。使用基于模式分解的LSTM算法预测了系统能量消耗,并且预测值和实际值之间的差异用于检测GRUBBS测试的异常系统能量消耗。结果表明,检测到的异常可以根据其特征将检测到的异常(Parabola异常,突然异常和时间相关异常)分为三类,并且通过现场调查和专业知识进行检测到的异常的合理性。这项工作是启发性的,并表明该方法将有效地检测GSHP系统的异常性能,并找出不合理的操作模式。 (c)2020 Elsevier Ltd和IIR。版权所有。

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