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Beschreibung
This textbook comprehensively explores the foundational principles, algorithms, and applications of intelligent optimization, making it an ideal resource for both undergraduate and postgraduate artificial intelligence courses. It remains equally valuable for active researchers and individuals engaged in self-study. Serving as a significant reference, it delves into advanced topics within the evolutionary computation field, including multi-objective optimization, dynamic optimization, constrained optimization, robust optimization, expensive optimization, and other pivotal scientific studies related to optimization.

Designed to be approachable and inclusive, this textbook equips readers with the essential mathematical background necessary for understanding intelligent optimization. It employs an accessible writing style, complemented by extensive pseudo-code and diagrams that vividly illustrate the mechanisms, principles, and algorithms of optimization. With a focus on practicality, this textbook provides diverse real-world application examples spanning engineering, games, logistics, and other domains, enabling readers to confidently apply intelligent techniques to actual optimization problems.

Recognizing the importance of hands-on experience, the textbook introduces the Open-source Framework for Evolutionary Computation platform (OFEC) as a user-friendly tool. This platform serves as a comprehensive toolkit for implementing, evaluating, visualizing, and benchmarking various optimization algorithms. The book guides readers on maximizing the utility of OFEC for conducting experiments and analyses in the field of evolutionary computation, facilitating a deeper understanding of intelligent optimization through practical application.
This textbook comprehensively explores the foundational principles, algorithms, and applications of intelligent optimization, making it an ideal resource for both undergraduate and postgraduate artificial intelligence courses. It remains equally valuable for active researchers and individuals engaged in self-study. Serving as a significant reference, it delves into advanced topics within the evolutionary computation field, including multi-objective optimization, dynamic optimization, constrained optimization, robust optimization, expensive optimization, and other pivotal scientific studies related to optimization.

Designed to be approachable and inclusive, this textbook equips readers with the essential mathematical background necessary for understanding intelligent optimization. It employs an accessible writing style, complemented by extensive pseudo-code and diagrams that vividly illustrate the mechanisms, principles, and algorithms of optimization. With a focus on practicality, this textbook provides diverse real-world application examples spanning engineering, games, logistics, and other domains, enabling readers to confidently apply intelligent techniques to actual optimization problems.

Recognizing the importance of hands-on experience, the textbook introduces the Open-source Framework for Evolutionary Computation platform (OFEC) as a user-friendly tool. This platform serves as a comprehensive toolkit for implementing, evaluating, visualizing, and benchmarking various optimization algorithms. The book guides readers on maximizing the utility of OFEC for conducting experiments and analyses in the field of evolutionary computation, facilitating a deeper understanding of intelligent optimization through practical application.
Über den Autor
Yanbin Zhang is a Professor, Doctoral Supervisor, Hong Kong Scholars, and Taishan Young Expert in Shandong Province. He has published 123 papers, including 60 ESI Highly Cited Papers. His research has been cited 11,714 times (WoS), with an H-index of 60. He is recognized among the Top 2% Scientists by Stanford/Elsevier (2020~2024), Highly Cited Researcher by Clarivate (2022).
Changhe Li is a Professor, Doctoral Supervisor, foreign academician of the Russian Academy of Engineering, a distinguished expert under the Taishan Scholars program in Shandong Province, Shandong Excellent Inventor. He is recognized among the Top 2% Scientists by Stanford/Elsevier (2019~2024), Highly Cited Researcher by Clarivate (2022).
Inhaltsverzeichnis

chapter 1 Introduction.- chapter 2 Fundamentals.- chapter 3 Canonical Optimization Algorithms.- chapter 4 Basics of Evolutionary Computation Algorithms.- chapter 5 Popular Evolutionary Computation Algorithms.- chapter 6 Parameter Control and Policy Control.- chapter 7 Exploitation versus Exploration.- chapter 8 Multi-modal Optimization.- chapter 9 Multi-objective Optimization.- chapter 10 Constrained Optimization.- chapter 11 Dynamic Optimization.-chapter 12 Robust Optimization.-Chapter 13 Large-scale Global Optimization.-Chapter 14 Expensive Optimization.- Chapter 15 Real-world Applications.

Details
Erscheinungsjahr: 2024
Genre: Importe, Informatik
Rubrik: Naturwissenschaften & Technik
Medium: Taschenbuch
Inhalt: xxiii
361 S.
89 s/w Illustr.
63 farbige Illustr.
361 p. 152 illus.
63 illus. in color.
ISBN-13: 9789819732852
ISBN-10: 9819732859
Sprache: Englisch
Einband: Kartoniert / Broschiert
Autor: Li, Changhe
Han, Shoufei
Zeng, Sanyou
Yang, Shengxiang
Hersteller: Springer
Springer Singapore
Verantwortliche Person für die EU: Springer Verlag GmbH, Tiergartenstr. 17, D-69121 Heidelberg, juergen.hartmann@springer.com
Maße: 235 x 155 x 21 mm
Von/Mit: Changhe Li (u. a.)
Erscheinungsdatum: 11.07.2024
Gewicht: 0,587 kg
Artikel-ID: 129028839