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A multivariate robust parameter optimization approach based on Principal Component Analysis with combined arrays

机译:基于主成分分析和组合数组的多元鲁棒参数优化方法

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摘要

Today's modem industries have found a wide array of applications for optimization methods based on modeling with Robust Parameter Designs (RPD). Methods of carrying out RPD have thus multiplied. However, little attention has been given to the multiobjective optimization of correlated multiple responses using response surface with combined arrays. Considering this gap, this paper presents a multiobjective hybrid approach combining response surface methodology (RSM) with Principal Component Analysis (PCA) to study a multi-response dataset with an embedded noise factor, using a DOE combined array. How this approach differs from the most common approaches to RPD is that it derives the mean and variance equations using the propagation of error principle (POE). This comes from a control-noise response surface equation written with the most significant principal component scores that can be used to replace the original correlated dataset. Besides the dimensional reduction, this multiobjective programming approach has the benefit of considering the correlation among the multiple responses while generating convex Pareto frontiers to mean square error (MSE) functions. To demonstrate the procedure of the proposed approach, we used a bivariate case of AISI 52100 hardened steel turning employing wiper mixed ceramic tools. Theoretical and experimental results are convergent and confirm the effectiveness of the proposed approach.
机译:当今的调制解调器行业发现了基于基于稳健参数设计(RPD)进行建模的优化方法的广泛应用。因此执行RPD的方法已经成倍增加。但是,很少有人关注使用带有组合阵列的响应面对相关多个响应进行多目标优化。考虑到这一差距,本文提出了一种多目标混合方法,将响应面方法(RSM)与主成分分析(PCA)相结合,以使用DOE组合阵列研究具有嵌入式噪声因子的多响应数据集。此方法与最常见的RPD方法的不同之处在于,它使用误差原理的传播(POE)得出均值和方差方程。这来自写有最高有效主成分分数的控制噪声响应面方程,该方程可用于替换原始的相关数据集。除了降维以外,这种多目标编程方法还具有在生成凸均方误差(MSE)函数的凸Pareto边界时考虑多个响应之间的相关性的优势。为了演示提出的方法的过程,我们使用了带有刮水器混合陶瓷工具的AISI 52100淬硬钢车削的双变量案例。理论和实验结果是一致的,并证实了该方法的有效性。

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