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An augmented Lagrangian decomposition method for quasi-separable problems in MDO

机译:MDO中拟可分问题的增强拉格朗日分解方法

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摘要

Several decomposition methods have been proposed for the distributed optimal design of quasi-separable problems encountered in Multidisciplinary Design Optimization (MDO). Some of these methods are known to have numerical convergence difficulties that can be explained theoretically. We propose a new decomposition algorithm for quasi-separable MDO problems. In particular, we propose a decomposed problem formulation based on the augmented Lagrangian penalty function and the block coordinate descent algorithm. The proposed solution algorithm consists of inner and outer loops. In the outer loop, the augmented Lagrangian penalty parameters are updated. In the inner loop, our method alternates between solving an optimization master problem and solving disciplinary optimization subproblems. The coordinating master problem can be solved analytically; the disciplinary subproblems can be solved using commonly available gradient-based optimization algorithms. The augmented Lagrangian decomposition method is derived such that existing proofs can be used to show convergence of the decomposition algorithm to Karush-Kuhn-Tucker points of the original problem under mild assumptions. We investigate the numerical performance of the proposed method on two example problems.
机译:已经提出了几种分解方法,用于在多学科设计优化(MDO)中遇到的准可分问题的分布式优化设计。已知其中一些方法具有数值收敛困难,这在理论上可以得到解释。我们提出了一种新的分解算法,用于拟分离的MDO问题。特别是,我们提出了基于增强拉格朗日罚函数和块坐标下降算法的分解问题公式。所提出的解决方案算法由内部和外部循环组成。在外循环中,更新了拉格朗日罚分参数。在内部循环中,我们的方法在解决优化主问题和解决学科优化子问题之间交替进行。协调主问题可以通过解析来解决;可以使用常用的基于梯度的优化算法来解决学科子问题。推导了增强的拉格朗日分解方法,使得现有证据可用于证明分解算法在温和假设下收敛至原始问题的Karush-Kuhn-Tucker点。我们在两个示例问题上研究了该方法的数值性能。

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