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Remaining Useful Life Estimation by Classification of Predictions Based on a Neuro-Fuzzy System and Theory of Belief Functions

机译:基于神经模糊系统和信念函数理论的预测分类对剩余使用寿命的估计

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摘要

Various approaches for prognostics have been developed, and data-driven methods are increasingly applied. The training step of these methods generally requires huge datasets to build a model of the degradation signal, and estimate the limit under which the degradation signal should stay. Applicability and accuracy of these methods are thereby closely related to the amount of available data, and even sometimes requires the user to make assumptions on the dynamics of health states evolution. Following that, the aim of this paper is to propose a method for prognostics and remaining useful life estimation that starts from scratch, without any prior knowledge. Assuming that remaining useful life can be seen as the time between the current time and the instant where the degradation is above an acceptable limit, the proposition is based on a classification of prediction strategy (CPS) that relies on two factors. First, it relies on the use of an evolving real-time neuro-fuzzy system that forecasts observations in time. Secondly, it relies on the use of an evidential Markovian classifier based on Dempster-Shafer theory that enables classifying observations into the possible functioning modes. This approach has the advantage to cope with a lack of data using an evolving system, and theory of belief functions. Also, one of the main assets is the possibility to train the prognostic system without setting any threshold. The whole proposition is illustrated and assessed by using the CMAPPS turbofan dataset. RUL estimates are shown to be very close to actual values, and the approach appears to accurately estimate the failure instants, even with few learning data.
机译:已经开发了各种用于预测的方法,并且越来越多地应用数据驱动的方法。这些方法的训练步骤通常需要庞大的数据集以建立退化信号模型,并估计退化信号应保持的极限。因此,这些方法的适用性和准确性与可用数据量密切相关,甚至有时需要用户对健康状态演变的动态进行假设。接下来,本文的目的是提出一种无需任何先验知识即可从头开始的预测和剩余使用寿命估计方法。假设可以将剩余使用寿命视为当前时间与降级超过可接受极限的瞬间之间的时间,则该主张基于预测策略(CPS)的分类,该分类依赖于两个因素。首先,它依赖于使用不断发展的实时神经模糊系统来及时预测观察结果。其次,它依赖于基于Dempster-Shafer理论的证据马尔可夫分类器的使用,该分类器能够将观察结果分类为可能的功能模式。这种方法的优点是可以使用不断发展的系统和信念函数理论来解决数据不足的问题。同样,主要资产之一是无需设置任何阈值即可训练预后系统的可能性。通过使用CMAPPS涡轮风扇数据集来说明和评估整个命题。结果表明,RUL估计非常接近实际值,并且该方法似乎可以准确估计故障瞬间,即使只有很少的学习数据也是如此。

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