Reprint

Evolutionary Process for Engineering Optimization

Edited by
August 2022
286 pages
  • ISBN978-3-0365-4771-8 (Hardback)
  • ISBN978-3-0365-4772-5 (PDF)

This book is a reprint of the Special Issue Evolutionary Process for Engineering Optimization that was published in

Biology & Life Sciences
Chemistry & Materials Science
Computer Science & Mathematics
Engineering
Environmental & Earth Sciences
Summary

Engineering problems are one of the main focuses of data science, and there is no doubt that engineering is now quickly growing in all sciences and fields. Many problems in this domain need to be examined and analyzed by massive and varied methods to help industry and organizations make more informed business decisions, especially for uncovering design, parameter values, market trends, customer preferences, and other helpful information. In addition, engineering problems demand new and sophisticated algorithms based on optimization techniques to treat problems in the real world with high accuracy and productivity. The papers published in this Special Issue (Evolutionary Process for Engineering Optimization) have covered various vital topics, enriching the state of the art in artificial intelligence, machine learning, and engineering domains.Additionally, these research papers build upon fundamental techniques and approaches previously accomplished. The creativity in the established papers resides in the methods, reviews, and experimental techniques that present an outstanding value for beneficial applications. This is one of the explanations of why this Special Issue has been named “Evolutionary Process for Engineering Optimization”. There is also another explanation: practical applications need researchers, scientists, and engineers to find solutions for engineering problems consistent with current technologies and react to the near future demands. That is why researchers must utilize and develop artificial-intelligence-based optimization techniques for specific needs.

Format
  • Hardback
License
© 2022 by the authors; CC BY-NC-ND license
Keywords
material generation algorithm; constrained problems; metaheuristic algorithm; optimization; engineering design problem; dynamic; multi-objective; NSGA-III; evolutionary algorithm; prediction strategy; Arithmetic Optimization Algorithm (AOA); meta-heuristics; Differential Evolution; Optimization Algorithms; engineering problems; optimization problems; real-world problems; multilevel thresholding; image segmentation; Aquila Optimizer; Harris Hawks Optimizer; hybrid algorithm; nonlinear escaping energy parameter; random opposition-based learning; slime mold algorithm; arithmetic optimization algorithm; meta-heuristics algorithm; global optimization; engineering design problem; optimization; metaheuristic algorithms; swarm intelligence algorithm; moth-flame optimization (MFO); exploration and exploitation; population diversity; NSGA-II; scheduling; multi-objective optimization; review; scientometric analysis; feature selection; optimization algorithm; Tsallis-entropy; teaching and learning; adaptive weight strategy; Kent chaotic map; reversible data hiding (RDH); slime mould algorithm (SMA); difference expansion (DE); Unmanned Speed Aerial Vehicle; system identification ARX; ARMAX; Box Jenkin’s; Output Error; non-linear ARX