Research and application progress of data mining technology in electric power system

Fangwei Ning, Yan Shi, Y. Cai, Weiqing Xu
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引用次数: 2

Abstract

With the rapid development of computer technology and the improvement of intelligent technologies in electric power engineering, the volume of data has increased exponentially. Data mining technology can be utilized to search information hidden in the huge amounts of data, and then the data can be transformed into useful knowledge to promote the development of electric power technology. In order to be acquainted with the research and application progress of data mining technology in electric power engineering, several major data mining algorithms are introduced in this paper, including ANN (Artificial Neural Network) algorithm, SVM (Support Vector Machine) algorithm, decision tree algorithm, K-means algorithm, NBC (Naive Bayesian Classification) algorithm and Apriori algorithm. And then, the methods of data mining technology in prediction, classification, clustering and association rules analysis are explained in detail in this engineering, which are combined with the electricity price prediction, power load forecasting, fault type identification, system state classification, power generation side association rules, power grid operation data association analysis. At last, this technology in electric power engineering is summarized and an expectation for the future development is provided.
数据挖掘技术在电力系统中的研究与应用进展
随着计算机技术的飞速发展和电力工程智能化技术的不断提高,数据量呈指数级增长。利用数据挖掘技术可以从海量数据中搜索隐藏的信息,将数据转化为有用的知识,推动电力技术的发展。为了了解数据挖掘技术在电力工程中的研究和应用进展,本文介绍了几种主要的数据挖掘算法,包括ANN(人工神经网络)算法、SVM(支持向量机)算法、决策树算法、K-means算法、NBC(朴素贝叶斯分类)算法和Apriori算法。然后,结合电价预测、负荷预测、故障类型识别、系统状态分类、发电侧关联规则、电网运行数据关联分析,详细阐述了数据挖掘技术在预测、分类、聚类和关联规则分析中的方法。最后对该技术在电力工程中的应用进行了总结,并对未来的发展进行了展望。
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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CiteScore
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