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Building Energy Disaggregation using Spatiotemporal Pattern Network

机译:使用时空模式网络的建筑能源分解

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Numerous studies on non-intrusive load monitoring (NILM) of electrical demand have been performed for the purpose of identifying load components only using univariate data, such as the identification of a certain type of end-use (e.g., lighting load) via whole building electricity consumption time series. However, additional time series data may become useful in providing distinguishable features for energy disaggregation which can be rendered as a multivariate time series data analysis problem. This paper presents a novel probabilistic graphical modeling approach called the spatiotemporal pattern network (STPN) for addressing such problem of pattern extraction from multivariate time-series data with application to building energy disaggregation. The proposed scheme shows promise in dealing with multivariate time-series with widely different characteristics for the improvement in energy disaggregation performance. We use multiple real data sets to validate the STPN framework along with performance comparison with the state-of-the-art techniques such as factorial hidden Markov models (FHMM) and combinatorial optimization (CO).
机译:为了仅使用单变量数据来识别负载分量,例如通过整个建筑物识别某种类型的最终用途(例如照明负载),已经进行了许多有关电力需求的非侵入式负载监控(NILM)的研究。用电时间序列。但是,其他时间序列数据可能在为能量分解提供可区分特征方面很有用,可以将其表示为多变量时间序列数据分析问题。本文提出了一种新颖的概率图形建模方法,称为时空模式网络(STPN),用于解决这种从多元时间序列数据中提取模式的问题,并将其应用于建筑物的能量分解。所提出的方案显示了在处理具有广泛不同特征的多元时间序列方面的希望,以改善能量分解性能。我们使用多个真实数据集来验证STPN框架,并与诸如因子分解隐马尔可夫模型(FHMM)和组合优化(CO)等最新技术进行性能比较。

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