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A new fault classification model for prognosis and diagnosis in CNC machine

机译:数控机床故障诊断的新故障分类模型

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This paper presents a new fault classification model and an integrated approach to fault diagnosis which involves the combination of ideas of Neuro-fuzzy Networks (NF), Dynamic Bayesian Networks (DBN) and Particle Filtering (PF) algorithm on single platform. In the new model we categorize faults in two aspects, namely first and second degree faults. First degree faults are instantaneous in nature and second degree faults are evolutional and appear as a developing phenomenon which start from an initial stage and graduate through development stage and finally ends at a mature stage, these category of fault have a lifetime which is inversely proportional a machine tool life according to modified version of Taylor's equation expressed as [1]. For fault diagnosis, our framework consists of two phases: the first focusing on fault prognosis which is done online and the second dwelling on fault diagnosis which depends on both off-line and on-line modules. On the first phase a neuro-fuzzy predictor is used take a decision on whether to embark Conditional Based Maintenance (CMB) or fault diagnosis based on the magnitude of a fault. The second phase only comes into action when an evolving fault goes beyond a critical threshold limit called CBM limit for a command to be issued for fault diagnosis. During this phase DBN and PF techniques are used as an intelligent fault diagnosis system to determine the magnitude, time and location of the fault. The feasibility of this approach has been tested in a simulation environment using CNC machine as a case study and the results are studied and analyzed.
机译:本文提出了一种新的故障分类模型和一种集成的故障诊断方法,该方法将神经模糊网络(NF),动态贝叶斯网络(DBN)和粒子滤波(PF)算法的思想结合在一个平台上。在新模型中,我们将故障分为两个方面,即一阶和二阶故障。一级断裂本质上是瞬时的,第二级断裂是演化的,并作为一种发展现象出现,从初始阶段开始逐步发展到发展阶段,最后到成熟阶段结束,这些断裂的寿命与反比例成正比。机床寿命根据泰勒方程的修改版表示为[1]。对于故障诊断,我们的框架包括两个阶段:第一个阶段集中于在线完成的故障诊断,第二个阶段集中于依赖于离线和在线模块的故障诊断。在第一阶段,使用神经模糊预测器根据故障的大小决定是否进行基于条件的维护(CMB)或故障诊断。第二阶段仅在不断发展的故障超过临界阈值限制(称为CBM限制)时才起作用,该临界阈值用于发出要进行故障诊断的命令。在此阶段,DBN和PF技术被用作智能故障诊断系统,以确定故障的大小,时间和位置。该方法的可行性已在模拟环境中使用CNC机床作为案例研究进行了测试,并对结果进行了研究和分析。

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