首页> 外文会议>EVER 2013;International Conference and Exhibition on Ecological Vehicles and Renewable Energies >Neural Classification Method in Fault Detection and Diagnosis for Voltage Source Inverter in Variable Speed Drive with Induction Motor
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Neural Classification Method in Fault Detection and Diagnosis for Voltage Source Inverter in Variable Speed Drive with Induction Motor

机译:感应电动机变速驱动中电压源逆变器故障检测和诊断的神经分类方法

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These days, electrical drives generally associate inverter and induction machine. Thus, these two elements must be taken into account in order to provide a relevant diagnosis of these electrical systems. The aim of this paper is to study the feasibility of fault detection and diagnosis in a three-phase inverter feeding an induction motor. The proposed approach is a neural, network classification applied to the fault diagnosis of a field oriented drive of induction motor. Multilayer perception(MLP) networks are used to identify the type and location of occurring fault using the stator Concordia mean current vector. In the case of a single fault occurrence, a localization domain made with seven patterns is built. With the possibility of occurrence of two faults simultaneously, there are twenty-two different patterns. Simulated experimental results on 1.5-kW induction motor drives show the effectiveness of the proposed approach with a classification performance over than 95%.
机译:这些天,电气驱动器通常会使逆变器和感应机器相关联。 因此,必须考虑这两个元件,以便提供这些电气系统的相关诊断。 本文的目的是研究三相逆变器中的故障检测和诊断的可行性,进给感应电动机。 所提出的方法是一种神经网络分类,应用于感应电动机的场导向驱动的故障诊断。 多层感知(MLP)网络用于识别使用定子Concordia意味着电流矢量发生故障的类型和位置。 在单个故障发生的情况下,构建了用七种模式进行的本地化域。 随着两个故障同时发生的可能性,有二十两种不同的模式。 1.5千瓦感应电动机驱动器上的模拟实验结果表明,提出的方法的有效性,分类性能超过95%。

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