测量误差对多响应稳健参数设计的影响研究

A. Danbaba, N. S. Dauran, A. Mustafa, M. Ibrahim
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引用次数: 0

摘要

稳健参数设计是质量改进方法中的一项原则,旨在减少由噪声因素或控制因素引起的误差影响。响应面方法是稳健参数设计的有效方法。之前的研究讨论了基于响应面模型的稳健参数设计,即考虑控制变量对单一响应变量的测量误差。然而,在工艺设计中,确定控制变量的最佳水平是一些具有不同输出的问题的重要问题。因此,本研究探讨了控制变量水平的测量误差对具有多种质量特性(响应)的过程的影响。对控制变量水平的不同误差方差进行了测试,并进行了响应面建模和优化分析。结果表明,随着控制变量水平测量误差的增大,多响应的确定系数和预期质量损失会偏离初始状态。不过,根据这一结果可以得出结论,控制变量水平的测量误差会对多响应的稳健参数设计产生影响。
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A Study of the Impacts of Measurement errors on Robust Parameter Design for Multi-response
Robust parameter design is a principle in quality improvement methodologies that is directed towards reducing the effects of errors which are either poised by the noise factors or the control factors. Response surface methodology is an effective approach to robust parameter design. Previous studies discussed Robust parameter design based on the response surface model by considering measurement errors in control variables for a single response variable. However, in process design, determining optimal levels of control variables is an important issue in some problems with different outputs. This study therefore investigates the impacts of measurement errors in the levels of control variables on processes with multiple quality characteristics (responses). Different variances of error were tested on the levels of control variables and the analysis of response surface modeling and optimization was performed. The result showed that as measurement errors in the levels of control variables increase, the coefficient of determinations for the multi-response and the expected quality loss deviates from what is obtainable in the initial state. It can be concluded based on the result however, that measurement errors in the levels of control variables exert impacts on robust parameter design for multi-response.
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