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A hybrid genetic algorithm for constrained multi-objective optimization under uncertainty and target matching problems
Authors:N.F. Wang  X.M. Zhang  Y.W. Yang
Affiliation:1. Guangdong Province Key Laboratory of Precision Equipment and Manufacturing Technology, South China University of Technology, Guangzhou 510640, PR China;2. School of Civil and Environment Engineering, Nanyang Technological University, N1-01c-85, 50 Nanyang Avenue, Singapore 639798, Singapore
Abstract:This work presents a new approach for interval-based uncertainty analysis. The proposed approach integrates a local search strategy as the worst-case-scenario technique of anti-optimization with a constrained multi-objective genetic algorithm. Anti-optimization is a term for an approach to safety factors in engineering structures which is described as pessimistic and searching for least favorable responses, in combination with optimization techniques but in contrast to probabilistic approaches. The algorithm is applied and evaluated to be efficient and effective in producing good results via target matching problems: a simulated topology and shape optimization problem where a ‘target’ geometry set is predefined as the Pareto optimal solution and a constrained multiobjective optimization problem formulated such that the design solutions will evolve and converge towards the target geometry set.
Keywords:Genetic algorithm  Uncertainty  Local search  Anti-optimization  Target matching problem
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