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E-raamat: Practical Handbook of Genetic Algorithms: New Frontiers, Volume II [Taylor & Francis e-raamat]

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  • Taylor & Francis e-raamat
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  • Tavahind: 342,91 €
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Teised raamatud teemal:
The second volume of two examining genetic algorithms (GA) as a means to assess or develop systems by applying the rules of reproduction, gene crossover, and mutation. Fourteen essays written by distinguished researchers examine the potentiality of GA in artificial neural network evolution, parameter estimation, the Boltzmann selection procedure, hybrid approaches for real-time sequencing and scheduling problems, and chemical engineering. The discussions use tables and graphs to help illustrate key elements. Annotation c. by Book News, Inc., Portland, Or.

The mathematics employed by genetic algorithms (GAs)are among the most exciting discoveries of the last few decades. But what exactly is a genetic algorithm? A genetic algorithm is a problem-solving method that uses genetics as its model of problem solving. It applies the rules of reproduction, gene crossover, and mutation to pseudo-organisms so those "organisms" can pass beneficial and survival-enhancing traits to new generations. GAs are useful in the selection of parameters to optimize a system's performance. A second potential use lies in testing and fitting quantitative models. Unlike any other book available, this interesting new text/reference takes you from the construction of a simple GA to advanced implementations. As you come to understand GAs and their processes, you will begin to understand the power of the genetic-based problem-solving paradigms that lie behind them.
Multi-Niche Crowding for Multi-Modal Search
5(31)
Artificial Neural Network Evolution: Learning to Steer a Land Vehicle
31(22)
Locating Putative Protein Signal Sequences
53(14)
Selection Methods for Evolutionary Algorithms
67(26)
Parallel Cooperating Genetic Algorithms: An Application to Robot Motion Planning
93(18)
The Boltzmann Selection Procedure
111(28)
Structure and Performance of Fine-Grain Parallelism in Genetic Search
139(16)
Parameter Estimation for a Generalized Parallel Loop Scheduling Algorithm
155(18)
Controlling a Dynamic Physical System Using Genetic Based Learning Methods
173(24)
A Hybrid Approach Using Neural Networks, Simulation, Genetic Algorithms, and Machine Learning for Real-Time Sequencing and Scheduling Problems
197(24)
Chemical Engineering
221(32)
Vehicle Routing with Time Windows Using Genetic Algorithms
253(26)
Evolutionary Algorithms and Dialogue
279(24)
Incorporating Redundancy and Gene Activation Mechanisms in Genetic Search for Adapting to Non-Stationary Environments
303(14)
Input Space Segmentation with a Genetic Algorithm for Generation of Rule Based Classifier Systems
317(16)
Appendix 1: An Indexed Bibliography of Genetic Algorithms 333(96)
Index 429
Chambers, Lance D.