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Automotive signal fault diagnostics - part I: signal fault analysis, signal segmentation, feature extraction and quasi-optimal feature selection

机译:汽车信号故障诊断-第一部分:信号故障分析,信号分段,特征提取和准最佳特征选择

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The paper describes our research in vehicle signal fault diagnosis. A modern vehicle has embedded sensors, controllers and computer modules that collect a large number of different signals. These signals, ranging from simple binary modes to extremely complex spark timing signals, interact with each other either directly or indirectly. Modern vehicle fault diagnostics very much depend upon the input from vehicle signal diagnostics. Modeling vehicle engine diagnostics as a signal fault diagnostic problem requires a good understanding of signal behaviors relating to various vehicle faults. Two important tasks in vehicle signal diagnostics are to find what signal features are related to various vehicle faults, and how can these features be effectively extracted from signals. We present our research results in signal faulty behavior analysis, automatic signal segmentation, feature extraction and selection of important features. These research results have been incorporated in a novel vehicle fault diagnostic system, which is described in another paper (see Yi Lu Murphey et al., ibid., p.1076-98).
机译:本文介绍了我们在车辆信号故障诊断中的研究。现代车辆具有嵌入式传感器,控制器和计算机模块,这些传感器,控制器和计算机模块收集大量不同的信号。这些信号从简单的二进制模式到极其复杂的火花正时信号,都可以直接或间接地相互影响。现代车辆故障诊断很大程度上取决于车辆信号诊断的输入。将车辆发动机诊断模型建模为信号故障诊断问题,需要对与各种车辆故障相关的信号行为有充分的了解。车辆信号诊断中的两个重要任务是找到与各种车辆故障相关的信号特征,以及如何从信号中有效提取这些特征。我们在信号故障行为分析,自动信号分割,特征提取和重要特征选择方面展示了我们的研究结果。这些研究结果已被整合到一种新型的车辆故障诊断系统中,该系统已在另一篇论文中进行了描述(参见Yi Lu Murphey等人,同上,第1076-98页)。

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