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Abstract

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.

Details

Title
An augmented Lagrangian decomposition method for quasi-separable problems in MDO
Author
Tosserams, S 1 ; Etman, L F P 1 ; Rooda, J E 1 

 Department of Mechanical Engineering, Eindhoven University of Technology, Eindhoven, The Netherlands 
Pages
211-227
Publication year
2007
Publication date
Sep 2007
Publisher
Springer Nature B.V.
ISSN
1615147X
e-ISSN
16151488
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2262613167
Copyright
Structural and Multidisciplinary Optimization is a copyright of Springer, (2006). All Rights Reserved.