Multidisciplinary collaborative optimization based on relaxation method for solving complex problems

Author:

Chagraoui Hamda1ORCID,Soula Mohamed12

Affiliation:

1. Department of Mechanical engineering, Height National Engineering School of Tunis, Tunis University, Tunis, Tunisia

2. LMAI-ENIT, Tunis El Manar University, Tunis, Tunisia

Abstract

The purpose of the present work is to improve the performance of the standard collaborative optimization (CO) approach based on an existing dynamic relaxation method. This approach may be weakened by starting design points. First, a New Relaxation (NR) method is proposed to solve the difficulties in convergence and low accuracy of CO. The new method is based on the existing dynamic relaxation method and it is achieved by changing the system-level consistency equality constraints into relaxation inequality constraints. Then, a Modified Collaborative Optimization (MCO) approach is proposed to eliminate the impact of the information inconsistency between the system-level and the discipline-level on the feasibility of optimal solutions. In the MCO approach, the impact of the inconsistency is treated by transforming the discipline-level constrained optimization problems into an unconstrained optimization problem using an exact penalty function. Based on the NR method, the performance of the MCO approach carried out by solving two multidisciplinary optimization problems. The obtained results show that the MCO approach has improved the convergence of CO significantly. These results prove that the present MCO succeeds in getting feasible solutions while the CO fails to provide feasible solutions with the used starting design points.

Publisher

SAGE Publications

Subject

Computer Science Applications,General Engineering,Modeling and Simulation

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