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Interaction Prediction Optimization in Multidisciplinary Design Optimization Problems

机译:多学科设计优化问题中的交互预测优化

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摘要

The distributed strategy of Collaborative Optimization (CO) is suitable for large-scale engineering systems. However, it is hard for CO to converge when there is a high level coupled dimension. Furthermore, the discipline objectives cannot be considered in each discipline optimization problem. In this paper, one large-scale systems control strategy, the interaction prediction method (IPM), is introduced to enhance CO. IPM is utilized for controlling subsystems and coordinating the produce process in large-scale systems originally. We combine the strategy of IPM with CO and propose the Interaction Prediction Optimization (IPO) method to solve MDO problems. As a hierarchical strategy, there are a system level and a subsystem level in IPO. The interaction design variables (including shared design variables and linking design variables) are operated at the system level and assigned to the subsystem level as design parameters. Each discipline objective is considered and optimized at the subsystem level simultaneously. The values of design variables are transported between system level and subsystem level. The compatibility constraints are replaced with the enhanced compatibility constraints to reduce the dimension of design variables in compatibility constraints. Two examples are presented to show the potential application of IPO for MDO.
机译:协同优化(CO)的分布式策略适用于大型工程系统。但是,当存在高水平的耦合维时,CO很难收敛。此外,不能在每个学科优化问题中考虑学科目标。本文介绍了一种大型系统控制策略,即交互预测方法(IPM)以增强CO。IPM最初是用于控制子系统和协调大型系统中的生产过程的。我们将IPM与CO的策略相结合,并提出了交互预测优化(IPO)方法来解决MDO问题。作为分层策略,IPO中有系统级和子系统级。交互设计变量(包括共享设计变量和链接设计变量)在系统级别进行操作,并作为设计参数分配给子系统级别。同时考虑每个学科目标并在子系统级别进行优化。设计变量的值在系统级别和子系统级别之间传输。兼容性约束将替换为增强的兼容性约束,以减小兼容性约束中设计变量的尺寸。给出了两个例子来说明IPO在MDO中的潜在应用。

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