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Induction Motor Stator Fault Detection by a Condition Monitoring Scheme Based on Parameter Estimation Algorithms

机译:基于参数估计算法的状态监测方案感应电动机定子故障检测

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摘要

This article presents a simple, low-cost, and effective method for the early diagnosis of stator short-circuit faults. The approach relies on the combination of an induction motor mathematical model and parameter estimation algorithm. The kernel of the method is the efficient search for the characteristic parameters that indicate stator short-circuit faults. However, the non-linearity of a machine model may imply multiple local minima of an objective function implemented in the estimation algorithm. Taking this into consideration, the suitability of two industry-proven optimization algorithms (pattern search algorithm and genetic algorithm) as applied in the proposed condition monitoring method was investigated. Experimental results show that the proposed diagnosis method is capable of detecting stator short-circuit faults and estimating level and location of faults. The study also indicates that the proposed method is robust to motor parameters offset and unbalanced voltage supply. Application of the pattern search algorithm is suitable for a continuous monitoring system, where the previous result can be used as starting point of the new search. The genetic algorithm requires longer computation time and is suitable for the offline diagnostic system. It is not sensitive to the starting point, and achieving global solution is guaranteed.
机译:本文提出了一种用于定子短路故障早期诊断的简单,低成本,有效的方法。该方法依赖于感应电动机数学模型和参数估计算法的组合。该方法的核心是有效搜索指示定子短路故障的特征参数。然而,机器模型的非线性可能意味着在估计算法中实现的目标函数的多个局部最小值。考虑到这一点,研究了两种工业验证的优化算法(模式搜索算法和遗传算法)在所提出的状态监测方法中的适用性。实验结果表明,所提出的诊断方法能够检测出定子短路故障,并能估计出故障的程度和位置。研究还表明,所提出的方法对于电机参数偏移和不平衡电压供应具有鲁棒性。模式搜索算法的应用适用于连续监视系统,在该系统中,先前的结果可以用作新搜索的起点。遗传算法需要较长的计算时间,适用于离线诊断系统。它对起点不敏感,因此可以保证实现全球解决方案。

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