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Remaining Useful Life Prediction of IIoT-Enabled Complex Industrial Systems With Hybrid Fusion of Multiple Information Sources

机译:剩余有IIOT的复杂工业系统的使用寿命预测,具有多个信息源的混合融合

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摘要

Industrial Internet of Things has significantly boosted predictive maintenance for complex industrial systems, where the accurate prediction of remaining useful life (RUL) with high-level confidence is challenging. By aggregating multiple informative sources of system degradation, information fusion can be applied to improve the prediction accuracy and reduce the uncertainty. It can be performed on the data-level, feature-level, and decision-level. To fully exploit the available degradation information, this article proposes a hybrid fusion method on both the data level and decision level to predict the RUL. On the data level, genetic programming (GP) is adopted to integrate physical sensor sources into a composite health indicator (HI), resulting in an explicit nonlinear data-level fusion model. Subsequently, the predictions of the RUL based on each physical sensor and the developed composite HI are synthesized in the framework of belief functions theory, as the decision-level fusion method. Moreover, the decision-level method is flexible for incorporating other statistical data-driven methods with explicit estimations of the RUL. The proposed method is verified via a case study on NASA's C-MAPSS data set. Compared to the single-level fusion methods, the results confirm the superiority of the proposed method for higher accuracy and certainty of predicting the RUL.
机译:工业互联网有明显提升了复杂工业系统的预测性维护,在那里,高层信心剩余使用寿命(RUL)的准确预测是具有挑战性的。通过聚合多种信息源的系统劣化,可以应用信息融合来提高预测精度并降低不确定性。它可以对数据级,特征级别和决策级执行。为了充分利用可用的退化信息,本文提出了一种关于数据级别和决策级别的混合融合方法来预测rul。在数据级别中,采用遗传编程(GP)将物理传感器源集成到复合健康指标(HI)中,导致显式非线性数据级融合模型。随后,基于每个物理传感器和发达的复合材料HU的RUL预测在信仰功能理论的框架中被合成,作为决策级融合方法。此外,决策级方法是灵活的,用于结合具有ruL的明确估计的其他统计数据驱动方法。通过关于NASA的C-MAPSS数据集的案例研究验证了所提出的方法。与单级融合方法相比,结果证实了提出的方法的优越性,以获得更高的准确性和预测rul的确定性。

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