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A Neuro-Fuzzy Self Built System For Prognostics: a Way To Ensure Good Prediction Accuracy by Balancing Complexity and Generalization

机译:一种用于预测的神经模糊自制系统:通过平衡复杂性和泛化来确保良好预测精度的方法

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In maintenance field, prognostics is recognized as a key feature as the prediction of the remaining useful life of a system allows avoiding inopportune maintenance spending. However, it can be a non trivial task to develop and implement effective prognostics models including the inherent uncertainty of prognostics. Moreover, there is no systematic way to construct a prognostics tool since the user can make some assumptions: choice of a structure, initialization of parameters... This last problem is addressed in the paper: how to build a prognostics system with no human intervention, neither a priori knowledge? The proposition is based on the use of a neuro-fuzzy predictor whose architecture is partially determined thanks to a statistical approach based on the Akaike information criterion. It consists in using a cost function in the learning phase in order to automatically generate an accurate prediction system that reaches a compromise between complexity and generalization capability. The proposition is illustrated and discussed.
机译:在维护领域,预测被认为是一个关键特征,因为系统的剩余使用寿命允许避免Inopportune维护支出。然而,它可以是一个非琐碎的任务,可以制定和实施有效的预测模型,包括预后的固有不确定性。此外,由于用户可以做出一些假设,因此没有系统的方法来构建预后工具:选择结构,参数初始化......此纸张中的解决方案:如何构建没有人为干预的预测系统,既不是先验的知识吗?该命题基于使用神经模糊预测器的使用,其既有基于Akaike信息标准的统计方法都会被部分地确定其体系结构。它包括在学习阶段中使用成本函数,以便自动生成准确的预测系统,该系统在复杂性和泛化能力之间达到折衷。说明并讨论了这个命题。

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