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A neuro-fuzzy approach for estimating mean residual life in condition-based maintenance systems

机译:一种神经模糊方法,用于评估基于状态的维护系统中的平均剩余寿命

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摘要

This paper presents a framework for online reliability estimation of physical systems utilising degradation signals. Most prognostics methods promoted in the literature for estimation of mean-residual-life of individual components utilise trending or forecasting models in combination with mechanistic or empirical failure definition models. In the absence of sound knowledge for the mechanics of degradation and/or adequate failure data, it is not possible to establish practical failure definition models. However, if there exist domain experts with strong experiential knowledge, one can establish fuzzy inference models for failure definition. This paper presents a neuro-fuzzy approach for performing prognostics under such circumstances. The proposed approach is evaluated on a cutting tool monitoring problem. In particular, the method is used to monitor high-speed-steel drill-bits used for drilling holes in stainless steel metal plates.
机译:本文提出了一种利用退化信号在线评估物理系统可靠性的框架。文献中提出的用于估计单个组件的平均剩余寿命的大多数预后方法都结合了趋势或预测模型,并结合了机械或经验失效定义模型。在没有足够的降级力学知识和/或足够的故障数据的情况下,不可能建立实际的故障定义模型。但是,如果存在具有丰富经验的领域专家,则可以建立用于故障定义的模糊推理模型。本文提出了一种在这种情况下进行预后的神经模糊方法。针对刀具监控问题对提出的方法进行了评估。特别地,该方法用于监视用于在不锈钢金属板上钻洞的高速钢钻头。

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