用于非侵入式负荷监测的自动设备分类

Po-An Chou, Chi-Cheng Chuang, R.-I. Chang
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引用次数: 7

摘要

本文以非侵入式负荷监测(NILM)为基础,将低频传感器应用于电力电路中。传统工艺在确定电路是什么之前必须建立一个特征数据库。如果系统想要将电器的新特性添加到数据库中,必须重新学习电气数据。因此,本文提出了一种可以识别家电状态和是否存在新家电的方法。它还可以同时自动学习电器的特性。该方法将统计与分类技术相结合,简化了特征提取。所得结果在经济性、准确性和可行性上是相当有效的。此外,如果NILM系统没有成功识别,则可能包含未知设备。因此,可以识别未知的器具。该系统将能够自动扩展其在数据库中的设备数量。用各种单一或多重分类进行的实验,其中包括未知的器具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic appliance classification for non-intrusive load monitoring
This paper is based on non-intrusive load monitoring (NILM), which uses low-frequency sensor in power circuit. Traditional process must establish a database with features before identifying what the circuit is. If the system wants to add new feature of appliances into database, it must relearn electrical data. Therefore, this paper proposes a method, which can identify appliances status and whether new appliances exist or not. It can also learn feature of appliances automatically at the same time. The proposed method combines statistics with classification techniques to simplify the feature extraction. The consequent is quite valid in the economy, accuracy and feasibility. In addition, if NILM system does not identify successfully, it might contain the unknown appliances. The unknown appliances can thus be identified. The system will be able to expand its appliances amount in the database automatically. Experiment performed with a variety of single or multiple classifications which include the unknown appliances.
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