住宅和工业非侵入式负荷监测的现状和挑战

A. Adabi, P. Mantey, Emil Holmegaard, M. B. Kjaergaard
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引用次数: 18

摘要

非侵入式负荷监测(NILM)是利用分解算法从聚合功率接口中识别负荷的过程。本文确定了NILM在住宅和工业环境中的现状、方法和挑战。近年来,由于算法和方法的改进,NILM取得了长足的进步。目前,住宅NILM面临的重要挑战是无法获取电表高采样数据,缺乏可靠的高分辨率数据集。对于工业NILM,由于负载数量的增加和设备类型、时间模式和工业保密的可变性,识别更具挑战性。从我们对数据及其在NILM中的使用的检查中,我们观察到可以识别的设备数量和实现识别所需的训练周期不仅是算法的函数,更重要的是采样率的函数。
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Status and challenges of residential and industrial non-intrusive load monitoring
Non-Intrusive Load Monitoring (NILM) is the process of identification of loads from an aggregate power interface using disaggregation algorithms. This paper identifies the current status, methodologies and challenges of NILM in residential and industrial settings. NILM has advanced substantially in recent years due to improvement in algorithms and methodologies. Currently, the important challenges facing residential NILM are inaccessibility of electricity meter high sampling data, and lack of reliable high resolution datasets. For industrial NILM the identification is more challenging due to increased number of loads and the variability of equipment type, temporal patterns and industrial secrecy. From our examination of data and its use in NILM, we observe that the number of devices that can be recognized and the training period required to achiever recognition is not only a function of the algorithms but more importantly is a function of sampling rates.
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