Unlock the world of “Swarm Intelligence,” where robotics, artificial intelligence, and evolutionary computation converge. This book is essential for professionals, students, and enthusiasts eager to explore the cuttingedge methods transforming the future of robotics. Gain insights into natureinspired algorithms and how they optimize problemsolving across diverse fields. Whether you're pursuing a career in robotics or just passionate about intelligent systems, this book bridges theory and practice.
Chapters Brief Overview:
1: Swarm intelligence: Introduces the concept of collective behavior in decentralized systems, vital for understanding multiagent robotics.
2: Genetic algorithm: Explores evolutionary principles applied to problemsolving, a cornerstone of optimization techniques in robotics.
3: Evolutionary algorithm: Delves into the evolution of algorithms to improve solutions iteratively, crucial for autonomous robotic systems.
4: Swarm behaviour: Investigates how swarm systems operate and collaborate, essential for creating responsive robotic networks.
5: Evolutionary computation: Highlights computational strategies inspired by biological evolution, enhancing robotic adaptability.
6: Particle swarm optimization: Introduces a populationbased method inspired by natural systems, ideal for solving complex optimization problems in robotics.
7: Boids: Discusses flocking algorithms for simulating natural group behaviors, influencing swarm robotics for coordinated movement.
8: Ant colony optimization algorithms: Shows how ants’ foraging behavior provides a framework for solving routing and optimization problems in robotic navigation.
9: Metaheuristic: Explores highlevel problemsolving strategies, expanding robotics capabilities by refining optimization processes.
10: Marco Dorigo: Focuses on the work of Marco Dorigo, pioneering research in swarm intelligence, a key influence in robotics evolution.
11: Computational intelligence: Examines AI's role in robotics, demonstrating how computational techniques empower robots to think and learn autonomously.
12: Stochastic diffusion search: Introduces random search strategies for optimization, an essential tool for autonomous decisionmaking in robotics.
13: Ant robotics: Explores the application of ant colony optimization in robotic systems, emphasizing efficiency in swarm robotics.
14: Firefly algorithm: Unveils the fireflyinspired optimization algorithm, showing its potential in dynamic and realtime robotic control.
15: Metaoptimization: Delves into improving optimization algorithms themselves, crucial for enhancing the performance of robotic systems.
16: Fly algorithm: Focuses on a bioinspired optimization algorithm, expanding the toolkit for solving complex robotic control tasks.
17: Table of metaheuristics: Provides a comprehensive reference to metaheuristic algorithms, a key resource for optimizing robotic systems.
18: Maurice Clerc (mathematician): Highlights the contributions of Maurice Clerc, deepening the understanding of particle swarm optimization’s role in robotics.
19: Atulya Nagar: Focuses on Atulya Nagar's work in computational intelligence, exploring its relevance to robotic decisionmaking and adaptability.
20: Genetic programming: Introduces genetic programming as a way to evolve solutions for robotic systems, paving the way for autonomous development.
21: Neuroevolution of augmenting topologies: Explores how neuroevolution helps optimize neural networks for complex robotic tasks, a cuttingedge area in robotics research.