转换器-机器关联缺陷的仿真:使用CHDN模型在组件级建模的优势

J. Saadi, M. Chami, A. Zakari
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引用次数: 0

摘要

仿真是分析和表征复杂系统缺陷的重要工具。它允许对其严重性和分布进行分析,以进行测试策略,以便尽快发现严重缺陷并避免设备的完全破坏。它还有助于识别降级的操作模式,甚至预测默认情况的发生,从而通过执行预测性维护在默认情况发生之前做出反应。在本文中,我们展示了在组件级别建模的重要性,它允许在相应的配置出现时计算功能方程(与Matlab相反),从而消除了所有有或没有缺陷的方程的事先计算,从而大大减少了计算时间。我们简要回顾了组件动态混合网络模型,以及它考虑组件缺陷和多物理场建模的简单方法。给出了基于该模型的仿真工具simmrdh。然后我们用一个关联机转换器缺陷的例子来说明我们的讨论。
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Simulation of defects within converters-machines associations: Advantage of the modeling at the components level using CHDN model
Simulation is an essential tool for analysing and characterizing defects in complex systems. It allows an analysis of their severity and their distribution for testing strategies to detect serious defects as soon as possible and avoid so the total destruction of the equipment. It also helps to identify the degraded operating modes or even anticipate the occurrence of default and so react before the default occur by performing predictive maintenance. In this paper, we show the importance of modeling at component level which allows to calculate functioning equations as the corresponding configuration appear(contrary to Matlab) and so eliminates the prior calculation of of all equations with and without defect allowing to reduce drastically the computation time. We briefly recall the Component Dynamic Hybrid Network model and the simple way it takes into account the components defects and multiphysics modeling. The simulation tool SimRDH based on this model is presented. We then illustrate our discussion with an example of defects in an association Machine converter.
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