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Data-driven and adaptive statistical residual evaluation for fault detection with an automotive application

机译:数据驱动的自适应统计残差评估,用于汽车应用中的故障检测

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摘要

An important step in model-based fault detection is residual evaluation, where residuals are evaluated with the aim to detect changes in their behavior caused by faults. To handle residuals subject to time-varying uncertainties and disturbances, which indeed are present in practice, a novel statistical residual evaluation approach is presented. The main contribution is to base the residual evaluation on an explicit comparison of the probability distribution of the residual, estimated online using current data, with a no-fault residual distribution. The no-fault distribution is based on a set of a priori known no-fault residual distributions, and is continuously adapted to the current situation. As a second contribution, a method is proposed for estimating the required set of no-fault residual distributions off-line from no-fault training data. The proposed residual evaluation approach is evaluated with measurement data on a residual for fault detection in the gas-flow system of a Scania truck diesel engine. Results show that small faults can be reliably detected with the proposed approach in cases where regular methods fail.
机译:基于模型的故障检测中的重要一步是残差评估,对残差进行评估的目的是检测由故障引起的行为变化。为了处理在实践中确实存在的时变不确定性和扰动的残差,提出了一种新颖的统计残差评估方法。主要的贡献是将残差评估基于使用当前数据在线估算的残差概率分布与无故障残差分布的显式比较。无故障分布基于一组先验已知的无故障残差分布,并不断适应当前情况。作为第二贡献,提出了一种用于从无故障训练数据离线估计所需的无故障残余分布的方法。所提出的残差评估方法是通过对残渣的测量数据进行评估,以检测斯堪尼亚卡车柴油发动机的气流系统中的故障。结果表明,在常规方法失败的情况下,使用所提出的方法可以可靠地检测出小故障。

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