Abstract

The electric power industry is an essential part of the energy industry as it strengthens the monitoring and control management of household electricity for the construction of an economic power system. In this paper, a non-intrusive affinity propagation (AP) clustering algorithm is improved according to the factor graph model and the belief propagation theory. The energy data of non-intrusive monitoring consists of the actual energy consumption data of each electronic appliance. The experimental results show that this improved algorithm identifies the basic and combined class of home appliances. According to the possibility of conversion between different classes, the combination of classes is broken down into different basic classes. This method provides the basis for power management companies to allocate electricity scientifically and rationally.

Highlights

  • In the past few decades, electrical energy has developed rapidly, and a substantial investment has been made towards the construction of intelligent metering power grids [1]

  • Hierarchical clustering algorithm can be divided into two types: Agglomerative Nesting (AGNES) and Divisive Analysis (DIANA)

  • Each combined class is composed of multiple electrical appliances working at the same time

Read more

Summary

Introduction

In the past few decades, electrical energy has developed rapidly, and a substantial investment has been made towards the construction of intelligent metering power grids [1]. Intelligent monitoring of household electricity is an essential prerequisite for improving energy efficiency, which is significant for building a safe and economic power system [2,3]. The first method is intrusive load monitoring, which is a method of recording the operation status of each appliance and requires installing electricity meters on each household appliance. In practical application, this method has complex circuit modification and high installation cost. By decomposing the monitoring load data, we can identify the rated

Methods
Discussion
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call