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Prediction of the Remaining Useful Life for the Power Module in the Traction System of Maglev Trains

机译:磁悬浮列车牵引系统中电力模块剩余使用寿命的预测

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Model-based prediction methods are difficult to capture the physical process of system degradation, and although artificial intelligence-based prediction methods do not require much prior knowledge, it is difficult to pass existing data due to the lack of operational data for Power Module in the Traction System of Maglev Trains Before forecasting, find an appropriate model to predict the future development of degradation indicators. In this regard, based on health assessment, combined with Dynamic Time Warping (DTW) and Kernel Density Estimator (KDE), an improved similarity remaining life prediction method was studied.
机译:基于模型的预测方法难以捕获系统劣化的物理过程,尽管基于人工智能的预测方法不需要太多先验知识,但由于缺少电源模块的操作数据,难以通过现有数据 在预测之前Maglev列车的牵引系统,找到一个适当的模型,以预测降解指标的未来发展。 在这方面,基于健康评估,研究了动态时间翘曲(DTW)和核密度估计器(KDE),研究了改进的相似性剩余寿命预测方法。

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