Open Access Open Access  Restricted Access Subscription Access

Novel Adaptive Whale Optimization Algorithm for Global Optimization


Affiliations
1 Department of Electrical Engineering, G.E. College, Gandhinagar Near GEB Cross Road, Sector 28, Gandhinagar - 382028, Gujarat, India
2 Department of Electrical Engineering, L. E. College, Sama Kathe Near Natraj Fatak, Morbi - 363641, Gujarat, India
3 Department of Electrical Engineering, S.S. College, New Sidsar Campus, Post: Vartej, Sidsar, Bhavnagar - 364060, Gujarat, India
 

Background/Objectives: In the meta-heuristic algorithms, randomization plays a very crucial role in both exploration and exploitation. So meta-heuristic algorithms are proposed to avoid these problems. Methods/Statistical Analysis: A novel bio-inspired optimization algorithm based on the special bubble-net hunting strategy used by humpback whales called the Whale Optimization Algorithm (WOA). In contrast to meta-heuristic, main feature is randomization having a relevant role in both exploration and exploitation in optimization problem. A novel randomization technique termed adaptive technique is integrated with WOA and exercised on ten unconstraint test benchmark function. Findings: WOA algorithm has quality feature that it uses logarithmic spiral function so it covers a broader area in exploration phase then addition with powerful randomization adaptive technique potent the adaptive whale optimization Algorithm (AWOA) to attain global optimal solution and faster convergence with less parameter dependency. Application/Improvements: Adaptive WOA (AWOA) solutions are evaluated and results shows its competitively better performance over standard WOA optimization algorithm.

Keywords

Adaptive Technique, Exploitation, Exploration, Hunting, Optimization, Whale Optimization Algorithm.
User

Abstract Views: 164

PDF Views: 0




  • Novel Adaptive Whale Optimization Algorithm for Global Optimization

Abstract Views: 164  |  PDF Views: 0

Authors

Indrajit N. Trivedi
Department of Electrical Engineering, G.E. College, Gandhinagar Near GEB Cross Road, Sector 28, Gandhinagar - 382028, Gujarat, India
Jangir Pradeep
Department of Electrical Engineering, L. E. College, Sama Kathe Near Natraj Fatak, Morbi - 363641, Gujarat, India
Jangir Narottam
Department of Electrical Engineering, L. E. College, Sama Kathe Near Natraj Fatak, Morbi - 363641, Gujarat, India
Kumar Arvind
Department of Electrical Engineering, S.S. College, New Sidsar Campus, Post: Vartej, Sidsar, Bhavnagar - 364060, Gujarat, India
Ladumor Dilip
Department of Electrical Engineering, L. E. College, Sama Kathe Near Natraj Fatak, Morbi - 363641, Gujarat, India

Abstract


Background/Objectives: In the meta-heuristic algorithms, randomization plays a very crucial role in both exploration and exploitation. So meta-heuristic algorithms are proposed to avoid these problems. Methods/Statistical Analysis: A novel bio-inspired optimization algorithm based on the special bubble-net hunting strategy used by humpback whales called the Whale Optimization Algorithm (WOA). In contrast to meta-heuristic, main feature is randomization having a relevant role in both exploration and exploitation in optimization problem. A novel randomization technique termed adaptive technique is integrated with WOA and exercised on ten unconstraint test benchmark function. Findings: WOA algorithm has quality feature that it uses logarithmic spiral function so it covers a broader area in exploration phase then addition with powerful randomization adaptive technique potent the adaptive whale optimization Algorithm (AWOA) to attain global optimal solution and faster convergence with less parameter dependency. Application/Improvements: Adaptive WOA (AWOA) solutions are evaluated and results shows its competitively better performance over standard WOA optimization algorithm.

Keywords


Adaptive Technique, Exploitation, Exploration, Hunting, Optimization, Whale Optimization Algorithm.



DOI: https://doi.org/10.17485/ijst%2F2016%2Fv9i38%2F126949