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A new health estimation model for CNC machine tool based on infinite irrelevance and belief rule base

机译:基于无限关联和信念规则库的数控机床健康评估新模型

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摘要

To guarantee the normal workflow and determine scheme of optimal maintenance, it is important to accurately estimate the health condition of computerized numerical control (CNC) machine tool. In current studies, the health condition of CNC machine tool is modeled by using one feature. Due to the complexity of CNC machine tool, the estimating accuracy of the current models is poor and real-time performance cannot be satisfied when multiple features are chosen. Moreover, it is difficult to obtain more effective monitoring data when the CNC machine tool is from normal to failure. To solve the problems, based on infinite irrelevance and belief rule base (BRB), a health estimation model which is named as the infinite irrelevance BRB model is proposed in this paper. In particular, the infinite irrelevance method is used to select key features to optimize the model structure, and BRB is applied to estimate the health condition according to the monitoring data and expert knowledge. Thus, the quantitative monitoring data and expert knowledge can be used effectively to improve accuracy and real-time performance of health estimation. Furthermore, because the initial values of the parameters in the proposed infinite irrelevance BRB model given by experts may not be accurate, the constraint covariance matrix adaptation evolution strategy (CMA-ES) algorithm is employed to train the parameters. A case study for the servo system of the CNC milling machine is used to verify the effective and accuracy of the proposed model. The results show that the infinite irrelevance BRB model can accurately estimate the health condition of the servo system.
机译:为了保证正常的工作流程并确定最佳维护方案,准确估计计算机数控(CNC)机床的健康状况非常重要。在当前的研究中,使用一种功能对CNC机床的健康状况进行建模。由于数控机床的复杂性,当前模型的估计精度很差,并且在选择多个功能时无法满足实时性能。而且,当数控机床从正常状态变为故障状态时,很难获得更有效的监控数据。为了解决这些问题,本文基于无限不相关和信念规则库(BRB),提出了一种健康估计模型,称为无限不相关BRB模型。特别是,使用无限不相关方法来选择关键特征以优化模型结构,并根据监视数据和专家知识将BRB应用于健康状况估计。因此,可以有效地使用定量监测数据和专家知识来提高健康估计的准确性和实时性能。此外,由于专家给出的无限无关BRB模型中的参数初始值可能不准确,因此采用约束协方差矩阵适应进化策略(CMA-ES)算法来训练参数。以数控铣床伺服系统为例,验证了所提模型的有效性和准确性。结果表明,无限无关BRB模型可以准确地估计伺服系统的健康状况。

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