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RESIDUAL AUTOCORRELATION IN PROBABILISTIC MODEL-BASED DIAGNOSTICS

机译:基于概率模型的诊断中的残差自相关

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摘要

The performance of model-based diagnostic techniques depends not only on the quality of the residuals generated using the models, but also on the method used to interpret the residuals. Robust residuals can often be interpreted deterministically, but noisy residuals can benefit from being interpreted probabilistically. A probabilistic framework enables the modeling of uncertainty and the relationship between multiple faults and multiple residuals. However, it is not well-suited for representing residual dynamics, and as a result, residuals must be assumed to not be autocorrelated. Since this condition is rarely met, this paper analyzes it to determine how residuals can be made to be fit the assumption, and the consequences when the assumption is violated. The paper demonstrates that fault probabilities determined using autocorrelated residuals are useful, but lack calibration. Two methods for removing autocorrelation are discussed and both are shown to result in probability estimates that trade refinement for calibration.
机译:基于模型的诊断技术的性能不仅取决于使用模型生成的残差的质量,还取决于用于解释残差的方法。健壮的残差通常可以确定性地解释,但是嘈杂的残差可以从概率性解释中受益。一个概率框架可以对不确定性以及多个故障和多个残差之间的关系进行建模。但是,它不适用于表示残差动态,因此,必须假定残差不是自相关的。由于很少满足此条件,因此本文对其进行了分析,以确定如何使残差适合假设,以及违反假设时的后果。本文证明了使用自相关残差确定的故障概率是有用的,但缺乏校准。讨论了两种消除自相关的方法,并且都显示了两种方法都可以产生概率估计,从而可以进行校正以进行校准。

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