Design of intelligent detection method for electricity transmission line equipment defect based on data mining algorithm

Q1 Chemical Engineering International Journal of Thermofluids Pub Date : 2024-08-22 DOI:10.1016/j.ijft.2024.100814
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引用次数: 0

Abstract

Electricity transmission line is the most significant way of power transmission. Regular detection of it can find and eliminate its defects and hidden dangers in time and prevent major accidents, which is of great significance to the power system. In order to find the problems in the electricity transmission line in time, this paper applied the data mining algorithm to the intelligent detection method of electricity transmission line equipment defects. An electricity transmission line equipment defect intelligent detection and monitoring system was constructed, and the differences between clustering analysis image recognition technology in data mining algorithms and the XGBoost algorithm were analyzed. The results showed that compared with using XGBoost algorithms, the highest accuracy rate of the intelligent detection method of electricity transmission line equipment defects using data mining algorithm in the detection results was 98 %, which was generally higher than that of XGBoost algorithms, and could reduce the consumption of time. From the perspective of replication rate, the overall average value of XGBoost algorithms was 52.38 % and the overall average value of data mining algorithms was 7.63 %. The replica rate of data mining algorithm was much lower than that of XGBoost algorithm and the performance of fault signal detection was better. Therefore, the application of data mining algorithm to the intelligent detection method of electricity transmission line equipment defects can be more suitable, thus significantly improving the efficiency of all aspects. At the same time, the method has the advantages of simple operation, fast, reliable and not affected by region.

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基于数据挖掘算法的输电线路设备缺陷智能检测方法设计
输电线路是电力传输的最主要方式。对其进行定期检测,可以及时发现并消除其缺陷和隐患,防止重大事故的发生,对电力系统具有重要意义。为了及时发现输电线路中存在的问题,本文将数据挖掘算法应用于输电线路设备缺陷智能检测方法中。构建了输电线路设备缺陷智能检测与监控系统,分析了数据挖掘算法中聚类分析图像识别技术与 XGBoost 算法的区别。结果表明,与使用XGBoost算法相比,使用数据挖掘算法的输电线路设备缺陷智能检测方法在检测结果中的最高准确率为98%,普遍高于XGBoost算法,且可以减少时间消耗。从复制率的角度来看,XGBoost 算法的总体平均值为 52.38%,数据挖掘算法的总体平均值为 7.63%。数据挖掘算法的复制率远远低于 XGBoost 算法,而且故障信号检测性能更好。因此,将数据挖掘算法应用到输电线路设备缺陷智能检测方法中可以更加适用,从而显著提高各方面的工作效率。同时,该方法还具有操作简单、快速、可靠、不受地域影响等优点。
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来源期刊
International Journal of Thermofluids
International Journal of Thermofluids Engineering-Mechanical Engineering
CiteScore
10.10
自引率
0.00%
发文量
111
审稿时长
66 days
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