Optimization Techniques for Solving Complex Problems || Optimization Using Genetic Algorithms with Micropopulations
β Scribed by Alba, Enrique; Blum, Christian; Isasi, Pedro; Len, Coromoto; Gmez, Juan Antonio
- Book ID
- 121181524
- Publisher
- Wiley
- Year
- 2008
- Tongue
- English
- Weight
- 684 KB
- Edition
- 1
- Category
- Article
- ISBN
- 0470293322
No coin nor oath required. For personal study only.
β¦ Synopsis
Real-world problems and modern optimization techniques to solve them
Here, a team of international experts brings together core ideas for solving complex problems in optimization across a wide variety of real-world settings, including computer science, engineering, transportation, telecommunications, and bioinformatics.
Part One-covers methodologies for complex problem solving including genetic programming, neural networks, genetic algorithms, hybrid evolutionary algorithms, and more.
Part Two-delves into applications including DNA sequencing and reconstruction, location of antennae in telecommunication networks, metaheuristics, FPGAs, problems arising in telecommunication networks, image processing, time series prediction, and more.
All chapters contain examples that illustrate the applications themselves as well as the actual performance of the algorithms.?Optimization Techniques for Solving Complex Problems is a valuable resource for practitioners and researchers who work with optimization in real-world settings.
π SIMILAR VOLUMES
In this paper we study the performance of two stochastic search methods: Genetic Algorithms and Simulated Annealing, applied to the optimization of pin-jointed steel bar structures. We show that it is possible to embed these two schemes into a single parametric family of algorithms, and that optimal