首页> 外文会议>Prognostics and Health Management Conference, 2010. PHM '10 >Prognostics in switching systems: Evidential markovian classification of real-time neuro-fuzzy predictions
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Prognostics in switching systems: Evidential markovian classification of real-time neuro-fuzzy predictions

机译:交换系统中的预测:实时神经模糊预测的证据马尔可夫分类

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Condition-based maintenance is nowadays considered as a key-process in maintenance strategies and prognostics appears to be a very promising activity as it should permit to not engage inopportune spending. Various approaches have been developed and data-driven methods are increasingly applied. The training step of these methods generally requires huge datasets since a lot of methods rely on probability theory and/or on artificial neural networks. This step is thus time-consuming and generally made in batch mode which can be restrictive in practical application when few data are available. A method for prognostics is proposed to face up this problem of lack of information and missing prior knowledge. The approach is based on the integration of three complementary modules and aims at predicting the failure mode early while the system can switch between several functioning modes. The three modules are: 1) observation selection based on information theory and Choquet Integral, 2) prediction relying on an evolving real-time neuro-fuzzy system and 3) classification into one of the possible functioning modes using an evidential Markovian classifier based on Dempster-Shafer theory. Experiments concern the prediction of an engine health based on more than twenty observations.
机译:如今,基于条件的维护被认为是维护策略中的关键过程,而预后似乎是一项非常有前途的活动,因为它应该允许不进行不合时宜的支出。已经开发了各种方法,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,因为许多方法依赖于概率论和/或人工神经网络。因此,该步骤是耗时的,并且通常以批处理模式进行,这在实际应用中在可用数据很少的情况下会受到限制。提出了一种用于预测的方法来解决这一问题,即缺少信息和缺少先验知识。该方法基于三个互补模块的集成,旨在在系统可以在几种功能模式之间切换的同时尽早预测故障模式。这三个模块是:1)基于信息论和Choquet积分的观察选择,2)依靠不断发展的实时神经模糊系统进行的预测,以及3)使用基于Dempster的证据马尔可夫分类器将其分类为一种可能的功能模式-谢弗理论。实验涉及基于二十多个观察结果的发动机运行状况预测。

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