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A probabilistic approach to residual processing for vehicle fault detection

机译:一种用于车辆故障检测的残差处理概率方法

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This paper presents a probabilistic method for processing and analyzing residuals for the purpose of fault detection. The method incorporates residuals from multiple models using a hybrid dynamic Bayesian network in order to yield a low-cost, complete, diagnostic system. Continuous residuals are used as evidence directly in the network, and this paper discusses options for representing their probability distributions. The Bayesian network is used to model the temporal behavior of the faults, and the assumptions necessary to do this are analyzed. The diagnostic method is demonstrated on a car's handling system and experimental results are presented.
机译:本文提出了一种用于故障检测和处理的概率方法。该方法使用混合动态贝叶斯网络合并了来自多个模型的残差,以便产生低成本,完整的诊断系统。连续残差直接用作网络中的证据,本文讨论了表示其概率分布的选项。贝叶斯网络用于对故障的时间行为进行建模,并对进行此操作所需的假设进行了分析。在汽车的操纵系统上演示了该诊断方法,并提供了实验结果。

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