Yasear, Shaymah Akram (2020) Enhanced Harris's Hawk algorithm for continuous multi-objective optimization problems. Doctoral thesis, Universiti Utara Malaysia.
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Abstract
Multi-objective swarm intelligence-based (MOSI-based) metaheuristics were proposed to solve multi-objective optimization problems (MOPs) with conflicting objectives. Harris’s hawk multi-objective optimizer (HHMO) algorithm is a MOSIbased algorithm that was developed based on the reference point approach. The reference point is determined by the decision maker to guide the search process to a particular region in the true Pareto front. However, HHMO algorithm produces a poor approximation to the Pareto front because lack of information sharing in its population update strategy, equal division of convergence parameter and randomly generated
initial population. A two-step enhanced non-dominated sorting HHMO (2SENDSHHMO) algorithm has been proposed to solve this problem. The algorithm includes (i) a population update strategy which improves the movement of hawks in
the search space, (ii) a parameter adjusting strategy to control the transition between exploration and exploitation, and (iii) a population generating method in producing the initial candidate solutions. The population update strategy calculates a new position of hawks based on the flush-and-ambush technique of Harris’s hawks, and selects the best hawks based on the non-dominated sorting approach. The adjustment strategy enables the parameter to adaptively changed based on the state of the search space. The initial population is produced by generating quasi-random numbers using Rsequence followed by adapting the partial opposition-based learning concept to improve the diversity of the worst half in the population of hawks. The performance of the 2S-ENDSHHMO has been evaluated using 12 MOPs and three engineering MOPs. The obtained results were compared with the results of eight state-of-the-art
multi-objective optimization algorithms. The 2S-ENDSHHMO algorithm was able to generate non-dominated solutions with greater convergence and diversity in solving most MOPs and showed a great ability in jumping out of local optima. This indicates the capability of the algorithm in exploring the search space. The 2S-ENDSHHMO algorithm can be used to improve the search process of other MOSI-based algorithms and can be applied to solve MOPs in applications such as structural design and signal processing.
Item Type: | Thesis (Doctoral) |
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Supervisor : | Ku Mahamud, Ku Ruhana and Alobaedy, Mustafa Muwafak |
Item ID: | 8673 |
Uncontrolled Keywords: | Metaheuristic, Swarm intelligence, Exploration and exploitation, Preference-based approach, Pareto front |
Subjects: | Q Science > QA Mathematics |
Divisions: | Awang Had Salleh Graduate School of Arts & Sciences |
Date Deposited: | 27 Sep 2021 06:50 |
Last Modified: | 27 Sep 2021 06:50 |
Department: | Awang Had Salleh Graduate School of Arts & Sciences |
Name: | Ku Mahamud, Ku Ruhana and Alobaedy, Mustafa Muwafak |
URI: | https://etd.uum.edu.my/id/eprint/8673 |