基于参数识别的电机绝缘诊断定子绕组高频建模

W. Liu, E. Schaeffer, L. Loron, P. Chanemouga
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引用次数: 8

摘要

本文提出了一种新的状态空间建模方法,用于用参数辨识法诊断绕线电机的定子绝缘。所提出的诊断方法的基本思想是存在一个广泛的频域(从几kHz到数百MHz),这还没有被传统的电气诊断工具所利用。我们工作的独创性,但也是它的困难,在于寻找模型可识别性的简单性和诊断能力的复杂性之间的最佳权衡。这对于需要解释参数估计值及其漂移的诊断和维护程序非常重要。只有当模型参数与系统物理参数足够密切相关时,这才有可能。具有超快上升时间的高压Mosfet脉冲发生器允许理论和实验系统识别,相对于主要的工业限制。第一个实验是从5kv感应电机上取下的线圈。这允许隔离和理解在鉴定过程中发生在定子绝缘的复杂现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Frequency Modelling of Stator Windings Dedicated to Machine Insulation Diagnosis by Parametric Identification
This paper presents a novel state-space modelling dedicated to stator insulation diagnosis of form wound electrical machines by parametric identification. The underlying idea of the proposed diagnosis approach is that there exists a wide frequency domain (from several kHz to hundreds of MHz) which has not yet been exploited by conventional electrical diagnosis tools. The originality of our work, but also its difficulty, consists in searching for the best tradeoff between simplicity for model identiflability and complexity for its diagnosis ability. This is important for diagnosis and maintenance procedures which require to interpret the parameter estimated values and theirs drifts. It is possible only if the model parameters are related closely enough to the system physical parameters. A high voltage Mosfet pulse generator with ultra fast rise time allows theoretical and experimental system identification with respect to main industrial constraints. The first experiments deal with coils taken from a 5 kV induction machine. This allows to isolate and understand the complex phenomena which occur in stator insulation during identification procedures.
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