基于卷积神经网络的NILM系统多状态器具辨识

G. Bucci, F. Ciancetta, E. Fiorucci, S. Mari, A. Fioravanti
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引用次数: 6

摘要

电力负荷具有独特的能耗模式,通常被称为“签名”,它允许分解算法从总体负荷测量中区分和识别不同用户的操作。无论是在民用用户还是在商业和工业用户中,多状态电器的存在都是极其普遍的。分解算法必须能够从总体负载测量中正确地识别出这些设备的消耗模式。在本文中,我们将演示一种基于卷积神经网络的NILM算法,该算法能够仅从测量总电流开始识别连接到房屋的电气负载。此外,该算法通过同时检测和分类的过程实时提供事件信息,而无需进行双重处理,从而减少了计算时间。然后,我们将重点关注算法管理多状态设备的能力,分析一个具体的案例,并评论系统的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-State Appliances Identification through a NILM System Based on Convolutional Neural Network
Electrical loads have a unique energy consumption pattern, often referred to as a “signature”, which allows disaggregation algorithms to distinguish and recognize the operations of different users from aggregate load measurements. Both in the case of civil users and in that of commercial and industrial users, the presence of multi-state appliances is extremely common. The disaggregation algorithms must be able to correctly identify the consumption patterns of such devices from the aggregate load measurements. In this paper we will illustrate a NILM algorithm, based on a convolutional neural network, able to identify the electrical loads connected to a house, starting only from the measurement of the total electrical current. Furthermore, the algorithm provides information on events in real time through a process of simultaneous detection and classification of them, without having to perform a double processing, thus reducing calculation times. Then we will focus on the algorithm's ability to manage multi-state devices, analyzing a specific case and commenting on the possibilities of the system.
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