Swarm Intelligence: Innovation, new algorithms and methods, Volume 2
Swarm Intelligence: Innovation, new algorithms and methods, Volume 2
edited by Ying Tan
The Institution of Engineering and Technology, 2018 eISBN: 978-1-78561-630-3 | Cloth: 978-1-78561-629-7 Library of Congress Classification Q337.3.S924 2018 Dewey Decimal Classification 006.3824
ABOUT THIS BOOK | TOC
ABOUT THIS BOOK
Swarm Intelligence (SI) is one of the most important and challenging paradigms under the umbrella of computational intelligence. It focuses on the research of collective behaviours of a swarm in nature and/or social phenomenon to solve complicated and difficult problems which cannot be handled by traditional approaches. Thousands of papers are published each year presenting new algorithms, new improvements and numerous real world applications. This makes it hard for researchers and students to share their ideas with other colleagues; follow up the works from other researchers with common interests; and to follow new developments and innovative approaches. This complete and timely collection fills this gap by presenting the latest research systematically and thoroughly to provide readers with a full view of the field of swarm. Students will learn the principles and theories of typical swarm intelligence algorithms; scholars will be inspired with promising research directions; and practitioners will find suitable methods for their applications of interest along with useful instructions.
TABLE OF CONTENTS
Chapter 1: Standard fireworks algorithm 2017
Chapter 2: Guided fireworks algorithm applied to multilevel image thresholding
Chapter 3: Credit card number encryption using firework-based key generation
Chapter 4: ST (Shafiabady-Teshnehlab) optimization algorithm
Chapter 5: Predator-prey optimization with heterogeneous swarms
Chapter 6: A novel modified ant lion optimizer algorithm: extension to proposed 4D-TC
Chapter 7: Push-pull glowworm swarm optimization algorithm for multimodal functions
Chapter 8: Firefly algorithm and its applications
Chapter 9: The optimization dialectical method for the multiple sequences alignment problem
Chapter 10: A new binary moth-flame optimization algorithm (BMFOA) - development and application to solve unit commitment problem
Chapter 11: Binary whale optimization algorithm for unit commitment problem in power system operation
Chapter 12: Real-coded grey wolf optimisation algorithm for progressive thermal power system unit commitment
Chapter 13: Application of grey wolf optimization in fuzzy controller tuning for servo systems
Chapter 14: Smart swarm inspired algorithms for microwave imaging problems
Chapter 15: Interactive chaotic evolution
Chapter 16: Symbiotic organisms search algorithm for static and dynamic transmission expansion planning
Chapter 17: Inclined planes system optimisation (IPO) and its applications in data mining and system identification