Generalization Capacity Analysis of Non- Intrusive Load Monitoring using Deep Learning

Halil Çimen, E. Palacios-García, N. Çetinkaya, Morten Kolbæk, G. Sciumè, J. Vasquez, J. Guerrero
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引用次数: 1

Abstract

Appliance Load Monitoring is a technique used to monitor devices existing in homes, industry or naval vessels. Acquisition of device-level data can provide great benefits in many areas such as energy management, demand response, and load forecasting. However, the monitoring process is often provided with a costly installation, as it requires a large number of sensors and a data center. Non-Intrusive Load Monitoring (NILM) is an alternative and cost-efficient load monitoring solution. Simply put, NILM is the process of obtaining device-level data by analyzing the aggregated data read from the main meter that measures the electricity consumption of the whole house. Before NILM analysis is performed, the load patterns of the appliances are usually modeled individually. In general, one model for each appliance is modeled even if the appliance has more than one operating program such as washing machine and oven. Therefore, when the appliance operates in other programs, the accuracy of NILM analysis decreases. In this paper, an appliance-based NILM analysis has been made considering the appliances having multiple operating programs. In order to increase the accuracy of NILM analysis, several deep learning methods, which are the most important data-driven technique of recent times, are used. Developed models were tested in IoT Microgrid Laboratory environment.
基于深度学习的非侵入式负荷监测泛化能力分析
电器负荷监测是一种用于监测家庭、工业或海军舰艇中存在的设备的技术。设备级数据的获取可以在能源管理、需求响应和负荷预测等许多领域提供巨大的好处。然而,监控过程通常需要昂贵的安装费用,因为它需要大量的传感器和数据中心。非侵入式负载监控(NILM)是另一种经济高效的负载监控解决方案。简单地说,NILM是通过分析从主电表读取的汇总数据来获取设备级数据的过程,主电表测量整个房屋的用电量。在执行NILM分析之前,通常对设备的负载模式进行单独建模。一般来说,即使器具有一个以上的操作程序,如洗衣机和烤箱,也要为每个器具建模一个模型。因此,当仪器在其他程序中运行时,NILM分析的准确性会降低。本文针对具有多个操作程序的家电进行了基于家电的NILM分析。为了提高NILM分析的准确性,使用了近年来最重要的数据驱动技术——深度学习方法。开发的模型在物联网微电网实验室环境中进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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