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A synergic multivariate statistical process control framework for monitoring, diagnosis, and adjustment of multiple response abrasive machining processes

机译:用于监测,诊断和调整多重响应磨料加工过程的协同多变量统计过程控制框架

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摘要

In various abrasive machining processes, output quality is defined in terms of multiple critical responses and their deviations from target values. These multiple responses are often interacting and changing the process conditions for improving or controlling one response may deteriorate the quality of another. Thus, there is a need to simultaneously consider all responses and recommend a trade-off operating condition for process control and optimisation. Two important fields that consider simultaneous control and optimisation of multiple responses are the multivariate statistical process control (MSPC) and multiple response optimisation (MRO). Although various MSPC and MRO approaches have been proposed by researchers, there is limited prior research on the integration of MSPC and MRO approaches to ensure the stability and process capability. In this study, a synergic MSPC and MRO approach is proposed based on Mahalanobis-Taguchi system and nonlinear optimisation to ensure the stability and capability of the abrasive machining process.
机译:在各种磨料加工过程中,输出质量在多个关键响应方面定义及其与目标值的偏差。这些多响应通常是相互作用和改变用于改善或控制的过程条件,一个响应可能会降低另一个响应。因此,需要同时考虑所有响应并推荐用于过程控制和优化的权衡操作条件。考虑同时控制和优化多次响应的两个重要领域是多元统计过程控制(MSPC)和多个响应优化(MRO)。虽然研究人员提出了各种MSPC和MRO方法,但有限的现有研究现有研究了MSPC和MRO方法的集成,以确保稳定性和过程能力。在本研究中,基于Mahalanobis-Taguchi系统和非线性优化提出了一种协同MSPC和MRO方法,以确保磨料加工过程的稳定性和能力。

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