Publication:
Efficient decoupling-assisted evolutionary/metaheuristic framework for expensive reliability-based design optimization problems

Thumbnail Image

Organizational Units

Authors

Yildiz, Ali Riza

Authors

Meng, Zeng
Mirjalili, Seyedali

Advisor

Language

Publisher:

Pergamon-elsevier Science Ltd

Journal Title

Journal ISSN

Volume Title

Abstract

Reliability-based design optimization (RBDO) algorithm is to minimize the objective under the probabilistic factors. While gradient-based and classical evolutionary RBDO algorithms provide promising performance on simple optimization problems, they are likely to perform poorly on challenging problems, including the multimodal functions, discrete design spaces, non-differential problems, etc. This paper proposes a unified framework to improve the performance of existing RBDO algorithms for complex RBDO problems. Our framework is based on three new strategies: generalized decoupling evolutionary and metaheuristic RBDO framework, particle's memory saving strategy, and adaptive fractional-order equilibrium optimizer algorithm. The proposed algorithm is characterized by a decoupling strategy to enable the parallel operation of the inner reliability computation and outer deterministic optimization, a particle's memory saving strategy to provide effective guidance from the previous iteration, and the adaptive fractional-order equilibrium optimizer algorithm to enhance the search efficiency and global convergence capacity. To evaluate the performance of the proposed algorithm, a wide range of experiments are conducted on different types of use cases. The experimental results demonstrate that our algorithm provides superior performance over other comparative algorithms.

Description

Source:

Keywords:

Keywords

Performance-measure approach, Single-loop approach, Differential evolution, Sequential optimization, Structural design, Robust design, Algorithm, Approximation, Linearization, Gradient, Reliability-based design optimization, Fractional-order equilibrium optimizer algorithm, Metaheuristic, Particle's memory saving strategy, Evolutionary algorithm, Optimization, Algorithm, Science & technology, Technology, Computer science, artificial intelligence, Engineering, electrical & electronic, Operations research & management science, Computer science, Engineering

Citation

Endorsement

Review

Supplemented By

Referenced By

0

Views

25

Downloads

View PlumX Details