首页> 外文期刊>ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B. Mechanical Engineering >A Sequential Approach for Robust Multidisciplinary Design Optimization Under Mixed Interval and Probabilistic Uncertainties
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A Sequential Approach for Robust Multidisciplinary Design Optimization Under Mixed Interval and Probabilistic Uncertainties

机译:混合间隔和概率不确定性下的鲁棒多学科设计优化的顺序方法

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摘要

Uncertainties cannot be ignored in the design process of complex multidisciplinary systems. Robust multidisciplinary design optimization methods (RMDOs) can treat uncertainties as specified probabilistic distributions when enough statistical information is available while they assign intervals for nondeterministic variables since designers may not have enough information to obtain statistical distributions, especially in the early stage of design optimization processes. Both types of uncertainties are very likely to appear simultaneously. In order to obtain solutions to RMDO problems under mixed interval and probabilistic uncertainties, this work proposed a new sequential RMDO approach, mixed SR-MDO. First, the robust optimization (RO) problem in a single discipline under mixed uncertainties is formulated and solved. Then, following the SR-MDO framework from the previous work, MDO problems under mixed uncertainties are solved by handling probabilistic and interval uncertainties sequentially in decomposed subsystem problems. Interval uncertainties are handled by using the worst-case sensitivity analysis, and the influence of probabilistic uncertainties in objectives, constraints, as well as in discipline analysis models is characterized by corresponding mean and variance. The applied SR-MDO framework allows subsystems in its full autonomy RO and sequential RO stages to run independently in parallel. This makes mixed SR-MDO be efficient for independent disciplines to work simultaneously and be more time-saving. Computational complexity of the proposed approach mainly relates to the double-loop optimization process in the worst-case interval uncertainties analysis. Examples are presented to demonstrate the applicability and efficiency of the mixed SR-MDO approach.
机译:复杂多学科系统的设计过程中不能忽视不确定性。鲁棒多学科设计优化方法(RMDOS)可以在分配非定值变量的间隔时可用的统计信息可用时处理不确定性,因为设计人员可能没有足够的信息以获得统计分布,特别是在设计优化过程的早期阶段。这两种类型的不确定因素都很可能同时出现。为了在混合间隔和概率不确定性下获得RMDO问题的解决方案,提出了一种新的连续RMDO方法,混合SR-MDO。首先,制定并解决了在混合不确定性下单个学科中的鲁棒优化(RO)问题。然后,在从上一项工作的SR-MDO框架之后,通过在分解的子系统问题中顺序处理概率和间隔不确定性来解决混合不确定性下的MDO问题。通过使用最坏情况的敏感性分析处理间隔不确定性,以及概率的不确定性在目标,约束以及纪律分析模型中的影响,其特征是相应的平均值和方差。应用的SR-MDO框架允许其完整的自主权RO中的子系统和顺序RO级以并行独立运行。这使得混合SR-MDO对独立学科具有高效,同时工作并更加省时。所提出的方法的计算复杂性主要涉及在最坏情况间隔不确定性分析中的双回路优化过程。提出了实施例以证明混合SR-MDO方法的适用性和效率。

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