Multi-response robust design based on improved desirability function

Shengnan Zhou, Jianjun Wang
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引用次数: 2

Abstract

Robust design, which is an important technology of continuous quality improvement activity, has been widely applied to optimal design of product or process. In this paper, a new approach integrating an improved desirability function and dual response surface models is proposed to tackle the problem of multi-response robust design. We build two desirability functions for mean and variance through combining desirability function and dual response surface models, respectively. Furthermore, we separately give objective weights for mean desirability function and variance desirability function by using entropy weight theory. Then, the overall desirability function considering location effect and dispersion effect is optimized by a hybrid genetic algorithm to obtain the optimum parameter settings. An example is illustrated to verify the effectiveness of the proposed method. The results show that the proposed approach can achieve more robust and feasible parameter settings.
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基于改进期望函数的多响应稳健设计
稳健设计是持续质量改进活动的一项重要技术,已广泛应用于产品或过程的优化设计。本文提出了一种结合改进的期望函数和双响应面模型的多响应鲁棒设计方法。将期望函数与双响应面模型相结合,分别构建了均值和方差的两个期望函数。此外,利用熵权理论分别给出了平均可取函数和方差可取函数的客观权重。然后,利用混合遗传算法对考虑位置效应和分散效应的总体期望函数进行优化,得到最优参数设置;算例验证了该方法的有效性。结果表明,该方法具有较强的鲁棒性和可行性。
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