Keshab Nath
Evolutionary Computation (EC) has emerged as a pivotal technique for solving complex, real-world optimization problems across diverse scientific and engineering disciplines. Despite its broad applicability and success, the quest for more efficient, scalable, and adaptable evolutionary algorithms (EAs) remains a vibrant area of research. This research work explores the latest innovations in EC methodologies, emphasizing hybrid approaches, adaptive mechanisms, and novel applications that stretch the boundaries of traditional optimization problems. By integrating insights from computational biology, engineering, and finance, this paper introduces groundbreaking EC frameworks that not only enhance algorithmic performance and efficiency but also broaden the scope of applicability to include multifaceted and interdisciplinary optimization challenges. Moreover, the paper highlights case studies where EC has catalyzed significant advancements, providing insights into its practical impact and future potential. To inspire further exploration and innovation within the EC domain, a deeper understanding of its capabilities and new horizons for its application would be fostered by bridging theoretical underpinnings with practical applications.
Evolutionary computation; Hybrid evolutionary algorithms; Optimization techniques; Scalability in evolutionary algorithms; Cross-disciplinary applications