Handbook of metaheuristic algorithms from fundamental theories to advanced applications
Handbook of Metaheuristic Algorithms: From Fundamental Theories to Advanced Applications provides a brief introduction to metaheuristic algorithms from the ground up, including basic ideas and advanced solutions. Although readers may be able to find source code for some metaheuristic algorithms on t...
Gespeichert in:
Hauptverfasser: | , |
---|---|
Format: | Elektronisch E-Book |
Sprache: | English |
Veröffentlicht: |
Amsterdam
Academic Press
2023
|
Schriftenreihe: | Uncertainty, computational techniques, and decision intelligence
|
Schlagworte: | |
Online-Zugang: | lizenzpflichtig |
Tags: |
Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
|
Zusammenfassung: | Handbook of Metaheuristic Algorithms: From Fundamental Theories to Advanced Applications provides a brief introduction to metaheuristic algorithms from the ground up, including basic ideas and advanced solutions. Although readers may be able to find source code for some metaheuristic algorithms on the Internet, the coding styles and explanations are generally quite different, and thus requiring expanded knowledge between theory and implementation. This book can also help students and researchers construct an integrated perspective of metaheuristic and unsupervised algorithms for artificial intelligence research in computer science and applied engineering domains. Metaheuristic algorithms can be considered the epitome of unsupervised learning algorithms for the optimization of engineering and artificial intelligence problems, including simulated annealing (SA), tabu search (TS), genetic algorithm (GA), ant colony optimization (ACO), particle swarm optimization (PSO), differential evolution (DE), and others. Distinct from most supervised learning algorithms that need labeled data to learn and construct determination models, metaheuristic algorithms inherit characteristics of unsupervised learning algorithms used for solving complex engineering optimization problems without labeled data, just like self-learning, to find solutions to complex problems. Presents a unified framework for metaheuristics and describes well-known algorithms and their variants Introduces fundamentals and advanced topics for solving engineering optimization problems, e.g., scheduling problems, sensors deployment problems, and clustering problems Includes source code based on the unified framework for metaheuristics used as examples to show how TS, SA, GA, ACO, PSO, DE, parallel metaheuristic algorithm, hybrid metaheuristic, local search, and other advanced technologies are realized in programming languages such as C++ and Python. |
---|---|
Beschreibung: | <b>PART 1 Fundamentals</b> <p>1. Introduction</p> <p>2. Optimization problems</p> <p>3. Traditional methods</p> <p>4. Metaheuristic algorithms</p> <p>5. Simulated annealing</p> <p>6. Tabu search</p> <p>7. Genetic algorithm</p> <p>8. Ant colony optimization</p> <p>9. Particle swarm optimization</p> <p>10. Differential evolution</p> <p><b>PART 2 Advanced technologies</b></p> <p>11. Solution encoding and initialization operator</p> <p>12. Transition operator</p> <p>13. Evaluation and determination operators</p> <p>14. Parallel metaheuristic algorithm</p> <p>15. Hybrid metaheuristic and hyperheuristic algorithms</p> <p>16. Local search algorithm</p> <p>17. Pattern reduction</p> <p>18. Search economics</p> <p>19. Advanced applications</p> <p>20. Conclusion and future research directions</p> <p>A. Interpretations and analyses of simulation results</p> <p>B. Implementation in Python</p>. - Description based on CIP data; resource not viewed |
Beschreibung: | 1 online resource (500 pages). |
ISBN: | 9780443191091 0443191093 |