不合格品影响下制造系统机械加工精度退化分析

Zhenggeng Ye, Zhiqiang Cai, F. Zhou, P. Zhang
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引用次数: 0

摘要

基于制造系统动态性能的机械故障预测方法是近年来研究较多的问题,也是制造业面临的最普遍和最重要的问题。在制造系统中,机器是关键部件。通过对机器健康状态的动态、精确识别,为生产操作决策提供支持。在本文中,由于不合格产品的传播会导致机器的加工精度下降,因此我们认为进口产品的质量是影响机器性能的重要因素。考虑到这一实际情况,应用非均匀泊松过程来模拟制造系统中质量失效的数量,并使用对数正态分布来描述不合格产品对机器的冲击强度。最后,讨论了该模型在系列制造系统中的适用性,并给出了机床精度退化的分析程序来说明其可操作性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Degradation Analysis of Machine Processing Accuracy for Manufacturing Systems with Effect of Unqualified Products
The machine fault prognosis method by monitoring the manufacturing system dynamical performance has been widely studied recently, which is also the most common and significant problem faced in manufacturing industries. In a manufacturing system, machine is the key component. The dynamic and precise identification of the healthy state of the machine can support the decision making of production operation. In this paper, since the propagation of unqualified products will lead to the deterioration of machine’s processing accuracy, quality of imported products is considered to be an important factor affecting machine’s performance. Considering this practical scenario, a non-homogeneous Poisson process is applied to model the number of quality failures in a manufacturing system, and the log-normal distribution is used to depict the impact strength of unqualified products to a machine. At last, the applicability of the proposed model is discussed for the serial manufacturing system, and an analysis procedure of machine’s accuracy degradation is provided to illustrate its actionability.
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