住宅用电量在单一低成本电表上的分解

M. Tesfaye, M. Nardello, D. Brunelli
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引用次数: 1

摘要

预计未来几年电力需求和成本将会增长。这提高了人们对监测能源使用情况的兴趣,以减少损失,并提供有关所消耗电力成本的实时反馈。本文的重点是实现一个能够实时跟踪所使用的功率的独立系统,并从单个测量点提供每个设备的功耗估计。学习活动是通过使用聚类算法检测电气设备的可能状态来完成的,该算法涉及k-means技术来分析和检测设备的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Residential electrical consumption disaggregation on a single low-cost meter
Demand and cost of electricity is expected to grow in the next years. This has raised interest in monitoring energy usage to reduce losses, and to provide real-time feedback about the cost of the electrical power consumed. This paper focuses on the implementation of a stand-alone system capable of real-time tracking of the power used and that provides power consumption estimation for each device from a single point of measurement. The learning activity is done by detecting the possible state of the electrical devices using a clustering algorithm, which involves k-means technique to analyze and detect the state of an appliance.
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