Planning of a neural network based integrated condition monitoring system for application in substations

S. Shihab, V. Rao, V. Melik, S. Moorthy
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引用次数: 1

Abstract

With the rapidly changing technologies and new equipment such as gas insulated switchgear (GIS) and gapless surge arresters, new condition monitoring systems are required to assist looking into specific indicators relating to the equipment conditions. Integrated condition monitoring systems (ICMS) are required to study the multiple parameters and their effect on the equipment condition since plant aging and ultimate failure are usually a result of combined influence of more than one parameter. Artificial neural networks (ANN) have distinctive characteristics such as fault tolerance and analysis of complex networks at high speed and have already been proven to be superior than any other AI techniques for solving problems of diagnostic nature. Hence ANNs can be used for the diagnosis of the insulation problems and condition monitoring of equipment. This paper is intended to describe the planning and design approaches for an integrated condition monitoring system using ANN.<>
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基于神经网络的变电站综合状态监测系统规划
随着快速变化的技术和新设备,如气体绝缘开关设备(GIS)和无间隙避雷器,需要新的状态监测系统来协助查看与设备状态相关的具体指标。由于设备老化和最终失效通常是多个参数综合影响的结果,因此需要综合状态监测系统(ICMS)来研究多个参数及其对设备状态的影响。人工神经网络(ANN)具有容错性和高速复杂网络分析等独特特点,在解决诊断性问题方面已被证明优于任何其他人工智能技术。因此,人工神经网络可以用于设备绝缘问题的诊断和状态监测。本文旨在描述一个基于人工神经网络的综合状态监测系统的规划和设计方法。
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