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Mechanical Condition Recognition of Medium-Voltage Vacuum Circuit Breaker Based on Mechanism Dynamic Features Simulation and ANN

机译:基于机构动态特性仿真和人工神经网络的中压真空断路器机械状态识别

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摘要

A new research method is proposed for the medium-voltage (MV) vacuum circuit breaker's (CB's) mechanical condition monitoring, which combines the mechanism dynamic features simulation and mechanical condition recognition algorithm based on artificial neural networks (ANNs). This method includes three steps: First, the relations between eigenvalues and mechanical failures of a vacuum circuit breaker (CB) through simulation instead of measurement are obtained. In this paper, the mechanism dynamic features of a vacuum CB in failure are simulated; the simulation results indicate that the parameter that can be monitored-main angle-has different characters for different mechanism failures. Second, the eigenvalues for different failure conditions are described by three parameters. Third, mechanical condition recognition of the MV vacuum CB by an algorithm based on ANN is realized. It is concluded by the work mentioned above, both the known mechanical condition type and the new mechanical condition type of the medium-voltage vacuum CB can be recognized with predetermined reliability.
机译:针对中压真空断路器的机械状态监测,提出了一种新的研究方法,该方法结合了机构动态特征仿真和基于人工神经网络的机械状态识别算法。该方法包括三个步骤:首先,通过仿真代替测量来获得特征值与真空断路器(CB)的机械故障之间的关系。本文对真空断路器的失效机理进行了仿真。仿真结果表明,对于不同的机构故障,可监控的参数-主角具有不同的特征。其次,通过三个参数描述了不同失效条件下的特征值。第三,实现了基于神经网络算法的中压真空断路器的机械状态识别。通过上述工作可以得出结论,中压真空断路器CB的已知机械状态类型和新机械状态类型都可以以预定的可靠性被识别。

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