基于数据挖掘算法的电网用户行为分析 - 系统设计与实施

Yan Wang, Jiawei Xu, Xiaowen Chen, Ying Huang
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引用次数: 0

摘要

针对现有电网用户行为分析系统稳定性和准确性不足的问题,设计了基于数据挖掘的电网用户行为分析系统。设计电网用户行为分析系统的整体结构;在系统硬件设计方面,选择核心控制器,搭建安装服务器,作为系统信息传输和逻辑运算的基础;基于 ZigBee 无线通信技术,设计了 ZigBee 无线通信协议栈和通信扩展板;在系统软件设计方面,在系统数据采集层使用Python抓取用户行为数据,使用Python语言维护抓取程序;使用K均值算法对电网用户行为数据进行二次挖掘和聚类,得到电网用户行为分析结果,并传输到系统可视化展示层。本文以数据分析的权重和兰德系数为指标,检验该方法的应用效果。实验结果表明,该系统能够稳定、准确地分析电网用户行为,具有良好的应用效果。该研究成果对世界科学界电网用户行为分析领域的研究具有重要的参考意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Power Grid User Behavior Based on Data Mining Algorithms – System Design and Implementation
A data mining based power grid user behavior analysis system has been designed to address the issues of insufficient stability and accuracy in existing power grid user behavior analysis systems. Design the overall structure of the power grid user behavior analysis system; In terms of system hardware design, select a core controller, build and install a server as the foundation for system information transmission and logical operation; Based on ZigBee wireless communication technology, a ZigBee wireless communication protocol stack and communication expansion board were designed; In terms of system software design, Python is used to crawl user behavior data in the system data collection layer, and Python language is used to maintain the crawling program; Use the K-means algorithm to perform secondary mining and clustering on power grid user behavior data, obtain the analysis results of power grid user behavior, and transmit them to the system visualization display layer. The weight and Rand coefficient of data analysis were used as indicators to test the application effect of the method in this paper. The experimental results showed that the system can stably and accurately analyze the behavior of power grid users, and has good application effect. This research achievement has important reference significance for the research in the field of power grid user behavior analysis in the world scientific community.
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