摘要
针对响应服从非正态分布和模型不确定性的稳健参数设计问题,在Polya树混合建模的框架下,构建了一种半参数分层贝叶斯响应曲面模型,并在此基础上实现了稳健参数设计。首先,建立贝叶斯半参数模型,并获得模型各参数的后验分布;其次,运用马尔可夫链蒙特卡罗(Markov chain Monte Carlo,MCMC)算法获得各参数的估计值;然后,基于此构建期望质量损失函数,并利用混合遗传算法全局寻优,获得可控因子的最优设置;最后,通过数值模拟研究和实际案例验证了所提方法的有效性。所提方法能有效解决小样本数据以及模型不确定性对优化结果影响的问题,从而能够获得更稳健可靠的可控因子最优设置。
To solve the robust parameter design problem with non-normal distribution and model uncertainty,a semi-parametric hierarchical Bayesian response surface model is constructed under the framework of Polya tree hybrid modeling,and the robust parameter design is realized on this basis.Firstly,the Bayesian semi-parametric model is established and the posterior distributions of the parameters of the model are obtained.Secondly,the Markov chain Monte Carlo(MCMC)algorithm is used to obtain the estimated value of each parameter.Then,the expected quality loss function is constructed based on this,and the hybrid genetic algorithm is used for global optimization to obtain the optimal setting of controllable factors.Finally,a numerical simulation study and a real case are given to verify the effectiveness of the proposed method.The proposed method can effectively solve the problem of the influence of small sample data and model uncertainty on optimization results,so as to obtain a more robust and reliable optimal setting of controllable factors.
作者
陈晓英
汪建均
杨世娟
CHEN Xiaoying;WANG Jianjun;YANG Shijuan(School of Economics and Management,Nanjing University of Science and Technology,Nanjing 210094,China)
出处
《系统工程与电子技术》
EI
CSCD
北大核心
2023年第5期1580-1588,共9页
Systems Engineering and Electronics
基金
国家自然科学基金重点项目(71931006)
国家自然科学基金面上项目(72171118,71771121)资助课题。