一种基于主动子空间的混合随机和区间不确定性自适应响应面方法

IF 0.5 Q4 ENGINEERING, MECHANICAL Journal of Verification, Validation and Uncertainty Quantification Pub Date : 2019-06-01 DOI:10.1115/1.4045200
Xingzhi Hu, Yanhui Duan, Ruili Wang, Xiao Liang, Jiangtao Chen
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引用次数: 0

摘要

响应面方法的广泛使用加速了参数识别和响应分析问题的解决。然而,受解释和认识不确定性影响的精确RSM模型仍然很难构建,尤其是对于多维输入,这在现实世界的问题中广泛存在。在本研究中,针对混合随机和区间不确定性,提出了一种基于扩展活动子空间的自适应区间响应面方法(AIRSM)。基于子空间降维的思想,针对混合不确定性给出了扩展的有源子空间,并推导了AIRSM的区间有源变量表示。引入并测试了一种加权响应面策略来预测精确边界。此外,定义了区间动态相关指数,并在活动子空间中重新表述了显著性检验和交叉验证,以评估AIRSM。通过三维非线性函数和减速器设计两个试验实例验证了AIRSM的有效性。它们都具有一个估计误差较小的主导一维主动子空间,并且通过与全维蒙特卡罗模拟的比较验证了AIRSM的准确性,从而为解决涉及概率和区间不确定性的高维问题提供了一个潜在的模板。
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An Adaptive Response Surface Methodology Based on Active Subspaces for Mixed Random and Interval Uncertainties
The popular use of response surface methodology (RSM) accelerates the solutions of parameter identification and response analysis issues. However, accurate RSM models subject to aleatory and epistemic uncertainties are still challenging to construct, especially for multidimensional inputs, which is widely existed in real-world problems. In this study, an adaptive interval response surface methodology (AIRSM) based on extended active subspaces is proposed for mixed random and interval uncertainties. Based on the idea of subspace dimension reduction, extended active subspaces are given for mixed uncertainties, and interval active variable representation is derived for the construction of AIRSM. A weighted response surface strategy is introduced and tested for predicting the accurate boundary. Moreover, an interval dynamic correlation index is defined, and significance check and cross validation are reformulated in active subspaces to evaluate the AIRSM. The effectiveness of AIRSM is demonstrated on two test examples: three-dimensional nonlinear function and speed reducer design. They both possess a dominant one-dimensional active subspace with small estimation error, and the accuracy of AIRSM is verified by comparing with full-dimensional Monte Carlo simulates, thus providing a potential template for tackling high-dimensional problems involving mixed aleatory and interval uncertainties.
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CiteScore
1.60
自引率
16.70%
发文量
12
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