基于高频模型的船用涡轮绝缘状态在线监测:寻找“最佳”识别协议的方法

Esseddik Ferdjallah-Kherkhachi, E. Schaeffer, L. Loron, M. Benbouzid
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引用次数: 6

摘要

本文研究了基于参数化建模和辨识的电机绕组绝缘系统在线监测。所提出的方法是通过对高频电模型参数的原位估计来监测诊断指标的漂移。所涉及的模型结构来源于绕组绝缘的RLC网络建模。由于它们经常存在重要的建模噪声,我们建议使用输出误差法不仅可以估计模型参数值,还可以评估它们的不确定性。该方法基于模型灵敏度函数的数值积分。所谓的全局识别方案是与一种优化算法相结合的,该算法使任何诊断模型结构及其在运行条件下可用的激励方案达到最佳组合。从工业伤口机记录的实验数据被用来说明该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online monitoring of marine turbine insulation condition based on high frequency models: Methodology for finding the "best" identification protocol
This paper investigates the online monitoring of electrical machine winding insulation systems based on the parametric modeling and identification. The proposed method consists in monitoring the drift of diagnostic indicators built from in-situ estimation of high-frequency electrical model parameters. The involved model structures are derived from the RLC network modeling of the winding insulation. Because they often present an important modeling noise, we propose to use the output error method not only to estimate the model parameter values but also to evaluate their uncertainty. This approach is based on the numerical integration of the model sensitivity functions. The so-called global identification scheme is coupled with an optimization algorithm that brings the best combination of any diagnostic model structure and its excitation protocol usable in operating conditions. Experimental data recorded from an industrial wound machines are used to illustrate the methodology.
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