Publication:
Nature-Inspired Heuristic Frameworks Trends in Solving Multi-objective Engineering Optimization Problems

Date
2024
Authors
Chang C.C.W.
Ding T.J.
Ee C.C.W.
Han W.
Paw J.K.S.
Salam I.
Bhuiyan M.A.S.
Kuan G.S.
Journal Title
Journal ISSN
Volume Title
Publisher
Springer Science and Business Media B.V.
Research Projects
Organizational Units
Journal Issue
Abstract
Nowadays, nature-inspired artificial intelligent metaheuristic optimization algorithms (MHOAs) have gained many attentions from researchers all over the world due to their capabilities in solving various decision-making problems. These algorithms are inspired and modelled based on the searching behaviour of animals in real life. This review paper provides in-depth discussions on various challenges and breakthroughs in numerous state-of-the-art nature-inspired artificial intelligence (AI) algorithms in solving multi-objective optimization engineering problems with emphasis on the mathematical modelling and algorithm developments. From conventional analysis such as speeds and accuracies to relatively advanced benchmarks such as complexities and convergence patterns, the comparison criteria of population-based and nature-inspired search mechanisms have evolved in the effort to further enhance the overall performance and reachability of these heuristic algorithms. This paper provides a platform for young readers and new researches who are about to indulge in the realm of various AI optimization techniques. Comprehensive analysis and discussions are presented on various state-of-the-art methods, with possible fields of applications proposed. Suitability of search mechanisms to specific optimization problem categories has also been investigated and presented, with combined or hybrid methods under scrutiny. ? The Author(s) under exclusive licence to International Center for Numerical Methods in Engineering (CIMNE) 2024.
Description
Keywords
Benchmarking , Biomimetics , Decision making , Multiobjective optimization , Artificial intelligent , Decision-making problem , Engineering optimization problems , Metaheuristic optimization , Multi objective , Optimization algorithms , Review papers , Search mechanism , Searching behavior , State of the art , Heuristic algorithms
Citation
Collections