Cane Creek

Engineering Optimization: An Introduction with Metaheuristic Applications

Description: Modern optimization techniques are widely applicable to many applications, and metaheuristics form a class of emerging powerful algorithms for optimization. This book introduces state-of-the-art metaheuristic algorithms and their applications in optimization, using both MATLAB(r) and Octave allowing readers to visualize, learn, and solve optimization problems. It provides step-by-step explanations of all algorithms, case studies, real-world applications, and detailed references to the latest literature. It is ideal for researchers and professionals in mathematics, industrial engineering, and computer science, as well as students in computer science, engineering optimization, and computer simulation. XIN-SHE YANG, PhD, is Senior Research Fellow in the Department of Engineering at Cambridge University (United Kingdom). The Editor-in-Chief of International Journal of Mathematical Modeling and Numerical Optimization (IJMMNO), Dr. Yang has published more than sixty journal articles in his areas of research interest, which include computational mathematics, metaheuristic algorithms, numerical analysis, and engineering optimization. List of Figures. Preface. Acknowledgments. Introduction. PART I Foundations of Optimization and Algorithms. 1.1 Before 1900. 1.2 Twentieth Century. 1.3 Heuristics and Metaheuristics. Exercises. 2 Engineering Optimization. 2.1 Optimization. 2.2 Type of Optimization. 2.3 Optimization Algorithms. 2.4 Metaheuristics. 2.5 Order Notation. 2.6 Algorithm Complexity. 2.7 No Free Lunch Theorems. Exercises. 3 Mathematical Foundations. 3.1 Upper and Lower Bounds. 3.2 Basic Calculus. 3.3 Optimality. 3.4 Vector and Matrix Norms. 3.5 Eigenvalues and Definiteness. 3.6 Linear and Affine Functions. 3.7 Gradient and Hessian Matrices. 3.8 Convexity. Exercises. 4 Classic Optimization Methods I. 4.1 Unconstrained Optimization. 4.2 Gradient-Based Methods. 4.3 Constrained Optimization. 4.4 Linear Programming. 4.5 Simplex Method. 4.6 Nonlinear Optimization. 4.7 Penalty Method. 4.8 Lagrange Multipliers. 4.9 Karush-Kuhn-Tucker Conditions. Exercises. 5 Classic Optimization Methods II. 5.1 BFGS Method. 5.2 Nelder-Mead Method. 5.3 Trust-Region Method. 5.4 Sequential Quadratic Programming. Exercises. 6 Convex Optimization. 6.1 KKT Conditions. 6.2 Convex Optimization Examples. 6.3 Equality Constrained Optimization. 6.4 Barrier Functions. 6.5 Interior-Point Methods. 6.6 Stochastic and Robust Optimization. Exercises. 7 Calculus of Variations. 7.1 Euler-Lagrange Equation. 7.2 Variations with Constraints. 7.3 Variations for Multiple Variables. 7.4 Optimal Control. Exercises. 8 Random Number Generators. 8.1 Linear Congruential Algorithms. 8.2 Uniform Distribution. 8.3 Other Distributions. 8.4 Metropolis Algorithms. Exercises. 9 Monte Carlo Methods. 9.1 Estimating p. 9.2 Monte Carlo Integration. 9.3 Importance of Sampling. Exercises. 10 Random Walk and Markov Chain. 10.1 Random Process. 10.2 Random Walk. 10.3 Lévy Flights. 10.4 Markov Chain. 10.5 Markov Chain Monte Carlo. 10.6 Markov Chain and Optimisation. Exercises. PART II Metaheuristic Algorithms. 11 Genetic Algorithms. 11.1 Introduction. 11.2 Genetic Algorithms. 11.3 Implementation. Exercises. 12 Simulated Annealing. 12.1 Annealing and Probability. 12.2 Choice of Parameters. 12.3 SA Algorithm. 12.4 Implementation. Exercises. 13 Ant Algorithms. 13.1 Behaviour of Ants. 13.2 Ant Colony Optimization. 13.3 Double Bridge Problem. 13.4 Virtual Ant Algorithm. Exercises. 14 Bee Algorithms. 14.1 Behavior of Honey Bees. 14.2 Bee Algorithms. 14.3 Applications. Exercises. 15 Particle Swarm Optimization. 15.1 Swarm Intelligence. 15.2 PSO algorithms. 15.3 Accelerated PSO. 15.4 Implementation. 15.5 Constraints. Exercises. 16 Harmony Search. 16.1 Music-Based Algorithms. 16.2 Harmony Search. 16.3 Implementation. Exercises. 17 Firefly Algorithm. 17.1 Behaviour of Fireflies. 17.2 Firefly-Inspired Algorithm. 17.3 Implementation. Exercises. PART III Applications. 18 Multiobjective Optimization. 18.1 Pareto Optimality. 18.2 Weighted Sum Method. 18.3 Utility Method. 18.4 Metaheuristic Search. 18.5 Other Algorithms. Exercises. 19 Engineering Applications. 19.1 Spring Design. 19.2 Pressure Vessel. 19.3 Shape Optimization. 19.4 Optimization of Eigenvalues and Frequencies. 19.5 Inverse Finite Element Analysis. Exercises. Appendices. Appendix A: Test Problems in Optimization. Appendix B: Matlab(r) Programs. B.1 Genetic Algorithms. B.2 Simulated Annealing. B.3 Particle Swarm Optimization. B.4 Harmony Search. B.5 Firefly Algorithm. B.6 Large Sparse Linear Systems. B.7 Nonlinear Optimization. B.7.1 Spring Design. B.7.2 Pressure Vessel. Appendix C: Glossary. Appendix D: Problem Solutions. References. Index.

Price: 169 AUD

Location: Hillsdale, NSW

End Time: 2024-11-10T03:53:24.000Z

Shipping Cost: 26.41 AUD

Product Images

Engineering Optimization: An Introduction with Metaheuristic ApplicationsEngineering Optimization: An Introduction with Metaheuristic Applications

Item Specifics

Return shipping will be paid by: Buyer

Returns Accepted: Returns Accepted

Item must be returned within: 30 Days

Return policy details:

EAN: 9780470582466

UPC: 9780470582466

ISBN: 9780470582466

MPN: N/A

Format: Hardback, 376 pages

Author: Yang, Xin-She

Item Height: 2.3 cm

Item Length: 23.6 cm

Item Weight: 0.66 kg

Item Width: 16 cm

Language: Eng

Publication Name: N/A

Publisher: Wiley-Blackwell

Type: N/A

Recommended

1970 Engineering Mathematics Textbook - Optimization by Converse HC 1st Edition
1970 Engineering Mathematics Textbook - Optimization by Converse HC 1st Edition

$25.16

View Details
SEO 2017 Learn Search Engine Optimization With Smart Internet Marketing Stra...
SEO 2017 Learn Search Engine Optimization With Smart Internet Marketing Stra...

$3.99

View Details
Mobile Usability - Paperback By Nielsen, Jakob - VERY GOOD
Mobile Usability - Paperback By Nielsen, Jakob - VERY GOOD

$4.33

View Details
Search Engine Optimization: Your Visual Blueprint for Effective Inte - VERY GOOD
Search Engine Optimization: Your Visual Blueprint for Effective Inte - VERY GOOD

$7.50

View Details
14 GRAND CHEROKEE 6.4L AT ECU ECM PCM ENGINE CONTROL COMPUTER 05035871AF TESTED
14 GRAND CHEROKEE 6.4L AT ECU ECM PCM ENGINE CONTROL COMPUTER 05035871AF TESTED

$279.99

View Details
Genetic Algorithms and Engineering Optimization by Gen, Mitsuo; Cheng, Runwei
Genetic Algorithms and Engineering Optimization by Gen, Mitsuo; Cheng, Runwei

$18.77

View Details
The Art of SEO: Mastering Search Engine Optimization
The Art of SEO: Mastering Search Engine Optimization

$4.87

View Details
SEO 2017 Learn Search Engine Optimization With Smart Internet Market - VERY GOOD
SEO 2017 Learn Search Engine Optimization With Smart Internet Market - VERY GOOD

$4.26

View Details
Text Book MANUFACTURING ENGINEERING: PRINCIPLES FOR OPTIMIZATION Daniel Koenig
Text Book MANUFACTURING ENGINEERING: PRINCIPLES FOR OPTIMIZATION Daniel Koenig

$15.99

View Details
Wordpress Search Engine Optimization
Wordpress Search Engine Optimization

$8.74

View Details