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Short-Circuit Fault Diagnosis Based on Rough Sets Theory for a Single-Phase Inverter

机译:基于粗糙集理论的单相逆变器的短路故障诊断

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摘要

The short-circuit (SC) fault diagnosis in inverters is an important procedure for the continuity of the performance and the extension of its useful life. The methods of diagnosis of SC failures produce good results, however, they present unfavorable aspects: they detect only one of the faults of SC, that is to say, the hard switch fault (HSF) or the fault under load (FUL); depend on switch parameters; and use artificial intelligence (AI) techniques in their algorithms, which are executed simultaneously with the inverter operation. This article presents a method of diagnosing SC faults performed with a digital circuit. The proposed method identifies short-circuit faults: HSF and FUL; can be used with any switch, regardless of its parameters; and does not use AI algorithms and techniques concurrently with inverter operation. The digital diagnostic circuit is obtained with the use of rough sets theory (RST), which optimizes and defines a minimum set of variables necessary to diagnose faults. Applying RST to the variables obtains a set of diagnostic rules. These rules are performed with basic logic functions and, for this reason, a digital diagnostic circuit is obtained. The diagnostic variables are the command signals and the voltage source inverter switches currents. The simulation and experimental results validate the shown diagnostic method.
机译:逆变器的短路(SC)故障诊断是绩效连续性和其使用寿命的延伸的重要程序。诊断SC失败的方法产生了良好的结果,然而,它们呈现不利的方面:它们只检测到SC的一个故障,也就是说,硬盘断路器(HSF)或负载下的故障(FUR);取决于开关参数;并在其算法中使用人工智能(AI)技术,其与逆变器操作同时执行。本文介绍了一种诊断使用数字电路执行的SC故障的方法。该方法识别短路故障:HSF和FUR;可以与任何开关一起使用,无论其参数如何;并不使用逆变器操作同时使用AI算法和技术。使用粗糙集理论(RST)获得数字诊断电路,该理论(RST)优化并定义了诊断故障所需的最小变量集。将RST应用于变量获取一组诊断规则。这些规则是以基本逻辑功能执行的,因此,获得了数字诊断电路。诊断变量是命令信号,电压源逆变器开关电流。模拟和实验结果验证了所显示的诊断方法。

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