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A Probabilistic Vehicle Diagnostic System Using Multiple Models

机译:使用多种型号的概率车辆诊断系统

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In addition to being accurate, it is important that diagnostic systems for use in automobiles also have low development and hardware costs. Model-based methods have shown promise at reducing hardware costs since they use analytical redundancy to reduce physical redundancy. In addition to requiring no extra sensors, the diagnostic system presented in this paper also allows for high accuracy and low development costs by using information from multiple simple models. This is made possible by the use of a Bayesian network to process model residuals. A hybrid, dynamic Bayesian network is used to model the temporal behavior of the faults and determine fault probabilities. A prototype of the system has been implemented and tested on a Mercedes-Benz E320 sedan. This paper describes the prototype system and presents results demonstrating the system's advantages over traditional residual threshold techniques.
机译:除了准确之外,重要的是,汽车用于汽车的诊断系统也具有较低的开发和硬件成本。基于模型的方法在降低了硬件成本以降低分析冗余以降低物理冗余时,已经显示了许可。除了不需要额外的传感器外,本文中提供的诊断系统还通过使用来自多种简单模型的信息来实现高精度和低开发成本。这是通过使用贝叶斯网络来处理模型残差来实现的。混合动力,动态贝叶斯网络用于模拟故障的时间行为并确定故障概率。在梅赛德斯 - 奔驰E320轿车上已经实施和测试了系统的原型。本文介绍了原型系统,并提出了展示系统与传统剩余阈值技术的优势的结果。

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