基于大数据的电力设备诊断研究

Zichen Wang
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摘要

电力系统的持续发展是中国经济和科技快速发展的重要保证。智能电网的出现,加速了电力大数据和人工智能在电力领域的发展。在智能电网中,电力设备的状态决定着电力系统的状态,是电网稳定运行的决定性因素。Spark分布式并行处理系统能够满足大数据的存储与计算,为实现大数据下电力设备的故障分类与诊断提供了新的研究思路。深度学习的概念为大数据下电力设备状态的分析和预测提供了平台。介绍了电力设备切换试验的基本内容,分析了电力设备切换试验中常见的故障类型,介绍了现有的故障诊断方法,提出了基于spark平台的电力设备状态诊断方案,并利用spark中的朴素贝叶斯网络对电力设备的故障进行分类,以测试数据作为样本输入,对电力设备进行故障诊断。在此基础上,通过深度学习网络的研究,分析了电力设备故障诊断的可行性。试验表明,该方法能有效地对电力设备的状态进行诊断和预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on power equipment diagnosis based on big data
The continuous development of power system is an important guarantee for the rapid development of economy and science and technology in China. The emergence of smart grid has accelerated the development of power big data and artificial intelligence in power field. In smart grid, the state of power equipment determines the state of power system and is the decisive factor for the stable operation of power grid. spark distributed parallel processing system can meet the storage and calculation of big data, and provides a new research idea for realizing fault classification and diagnosis of power equipment under big data. The concept of deep learning provides a platform for the analysis and prediction of power equipment status under big data. This paper introduces the basic contents of power equipment handover test, analyzes the common fault types of power equipment in handover test, introduces the existing fault diagnosis methods, puts forward the scheme of power equipment state diagnosis-based on spark platform, and classifies the faults of power equipment by using the naive Bayesian network in spark, Taking the test data as sample input, the fault diagnosis of power equipment can be carried out. On this basis, through the research of deep learning network, the feasibility of power equipment fault diagnosis is analyzed. The test shows that the method used in this paper can diagnose and predict the state of power equipment effectively.
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