IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

An Advanced Hybrid Algorithm (haDEPSO) for Engineering Design Optimization Integrating Novel Strategies for Enhanced Performance

An Advanced Hybrid Algorithm (haDEPSO) for Engineering Design Optimization Integrating Novel Strategies for Enhanced Performance
View Sample PDF
Author(s): Utkal Surseh Patil (Sharad Institute of Technology College of Engineering, Ichalkaranji, India), A. Krishnakumari (Hindustan Institute of Technology and Science, Padur, India), M. Saravanan (Hindustan Institute of Technology and Science, Padur, India), M. Muthukannan (KCG College of Technology, Karapakkam, India), Ramya Maranan (Lovely Professional University, Punjab, India)and R. Rambabu (Rajamahendri Institute of Engineering and Technology, Rajamahendravaram, India)
Copyright: 2024
Pages: 20
Source title: Metaheuristics Algorithm and Optimization of Engineering and Complex Systems
Source Author(s)/Editor(s): Thanigaivelan R. (AKT Memorial College of Engineering and Technology, India), Suchithra M. (SRM Institute of Science and Technology, India), Kaliappan S. (KCG College of Technology, India)and Mothilal T. (KCG College of Technology, India)
DOI: 10.4018/979-8-3693-3314-3.ch010

Purchase


Abstract

This research presents haDEPSO, a pioneering hybrid technique for engineering design optimization. Combining the strengths of Differential Evolution (DE) and Particle Swarm Optimization (PSO), haDEPSO offers a versatile answer to the difficulties of contemporary optimization settings. The methodology combines a precise integration of DE's robust exploration capabilities with PSO's efficient exploitation tactics, ensuring adaptability across diverse problem environments. Through 10 trials, performance measures such as fitness function value, convergence speed, and diversity meter reveal haDEPSO's consistent optimization power. Scalability testing reveals the algorithm's effectiveness in addressing situations of varying sizes, yet challenges occur in particularly massive instances. These findings contribute to a deep knowledge of haDEPSO's strengths and restrictions, driving subsequent advancements for better applicability in engineering design optimization.

Related Content

Manoj Himmatrao Devare, Anita Manoj Devare, Nirali Verma. © 2025. 24 pages.
N. Manjunathan, T. Venkata Ramana, A. Rajasekar, D. Vijayakumar, V. Sameswari, S. M. Nandha Gopal, R. Siva Subramanian. © 2025. 30 pages.
J. Rajeshkumar, K. Aravindaraj, T. Uma Mageswari, S. Kerthy, R. Premkumar, S. Gayathri, R. Siva Subramanian. © 2025. 24 pages.
J. Refonaa, M. Maheswari, D. Poornima, S. L. Jany Shabu, M. Gowri, S. Praveen, R. S. Amshavalli. © 2025. 30 pages.
M. Gokuldhev, K. Vijayakumar, M. Mercy Theresa, K. Sudha, S. Nagarajan, R. Prasath, P. J. Beslin Pajila. © 2025. 26 pages.
M. Ezhilvendan, Aniket Gangadharrao Patil, S. M. Sassirekha, A. Mathankumar, T. P. Anish, V. Sathya, P. Gajalakshmi. © 2025. 32 pages.
D. Ravindran, G. Mariammal, S. Udhayashankar, K. Dhivya, D. Lekha, T. Maheshwaran, V. Sathya. © 2025. 18 pages.
Body Bottom