Research on Substation Monitoring and Fault Diagnosis Based on Distributed Computing and Artificial Neural Network

IF 0.5 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Fujun Yang, Xiaohang Li
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引用次数: 0

Abstract

In the Energy Conversion for Next-Generation Smart Cities, intelligent substation plays an important role in the power conversion. As an important guarantee for the stable operation of intelligent substation, the research on fault diagnosis technology is particularly important. In this paper, the acoustic characteristic diagnosis of substation equipment (take transformers for example) is researched and the application of “Voice Recognition + artificial neural network (ANN)” technology in substation fault diagnosis is analyzed. At the same time, the continuous online monitoring of the intelligent substation equipment will produce a large amount of monitoring data, which needs to be analyzed timely and effectively to understand the operating status of the equipment accurately. Because of this, this paper adopts distributed computing by establishing a real-time distributed computing platform, using open source technology to store the online monitoring of sound data into the computing platform for data processing to achieve the purpose of automatic fault detection and analysis. The results show that distributed computing can realize the intelligent analysis, storage, and visualization of equipment data in the substation, which provides data support for fault diagnosis. Besides, the fitting accuracy rates of ANN model are 95.123% for training process and the fitting accuracy rates of ANN model are 99.353% for training process and the overall fitting accuracy rates of ANN model are 95.478% and the error between the predicted value and the actual value of the 5 sound signals is within 5% in the fault diagnosis process. Consequently, the ANN model can accurately identify each fault sound of substation and achieve the purpose of fault diagnosis.
基于分布式计算和人工神经网络的变电站监测与故障诊断研究
在下一代智能城市的能源转换中,智能变电站在电力转换中发挥着重要作用。作为智能变电站稳定运行的重要保障,故障诊断技术的研究显得尤为重要。本文研究了变电站设备(以变压器为例)的声学特性诊断,分析了“语音识别+人工神经网络”技术在变电站故障诊断中的应用。同时,智能变电站设备的持续在线监测会产生大量的监测数据,需要及时有效地进行分析,准确了解设备的运行状态。正因为如此,本文采用分布式计算,通过建立实时分布式计算平台,利用开源技术将声音数据的在线监测存储到计算平台中进行数据处理,达到故障自动检测和分析的目的。结果表明,分布式计算可以实现变电站设备数据的智能分析、存储和可视化,为故障诊断提供数据支持。此外,在故障诊断过程中,神经网络模型对训练过程的拟合准确率为95.123%,对训练过程中的拟合准确度为99.353%,神经网络的整体拟合准确率达95.478%,5个声音信号的预测值与实际值之间的误差在5%以内。因此,该神经网络模型能够准确地识别变电站的各个故障声音,达到故障诊断的目的。
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来源期刊
Parallel Processing Letters
Parallel Processing Letters COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
0.90
自引率
25.00%
发文量
12
期刊介绍: Parallel Processing Letters (PPL) aims to rapidly disseminate results on a worldwide basis in the field of parallel processing in the form of short papers. It fills the need for an information vehicle which can convey recent achievements and further the exchange of scientific information in the field. This journal has a wide scope and topics covered included: - design and analysis of parallel and distributed algorithms - theory of parallel computation - parallel programming languages - parallel programming environments - parallel architectures and VLSI circuits
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