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|a 9783642107016
|9 978-3-642-10701-6
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|a 10.1007/978-3-642-10701-6
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|a Computational Intelligence in Expensive Optimization Problems
|h [electronic resource] /
|c edited by Yoel Tenne, Chi-Keong Goh.
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|a 1st ed. 2010.
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|a Berlin, Heidelberg :
|b Springer Berlin Heidelberg :
|b Imprint: Springer,
|c 2010.
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|a 800 p. 270 illus.
|b online resource.
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|a Adaptation, Learning, and Optimization,
|x 1867-4542 ;
|v 2
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|a Techniques for Resource-Intensive Problems -- A Survey of Fitness Approximation Methods Applied in Evolutionary Algorithms -- A Review of Techniques for Handling Expensive Functions in Evolutionary Multi-Objective Optimization -- Multilevel Optimization Algorithms Based on Metamodel- and Fitness Inheritance-Assisted Evolutionary Algorithms -- Knowledge-Based Variable-Fidelity Optimization of Expensive Objective Functions through Space Mapping -- Reducing Function Evaluations Using Adaptively Controlled Differential Evolution with Rough Approximation Model -- Kriging Is Well-Suited to Parallelize Optimization -- Analysis of Approximation-Based Memetic Algorithms for Engineering Optimization -- Opportunities for Expensive Optimization with Estimation of Distribution Algorithms -- On Similarity-Based Surrogate Models for Expensive Single- and Multi-objective Evolutionary Optimization -- Multi-objective Model Predictive Control Using Computational Intelligence -- Improving Local Convergence in Particle Swarms by Fitness Approximation Using Regression -- Techniques for High-Dimensional Problems -- Differential Evolution with Scale Factor Local Search for Large Scale Problems -- Large-Scale Network Optimization with Evolutionary Hybrid Algorithms: Ten Years' Experience with the Electric Power Distribution Industry -- A Parallel Hybrid Implementation Using Genetic Algorithms, GRASP and Reinforcement Learning for the Salesman Traveling Problem -- An Evolutionary Approach for the TSP and the TSP with Backhauls -- Towards Efficient Multi-objective Genetic Takagi-Sugeno Fuzzy Systems for High Dimensional Problems -- Evolutionary Algorithms for the Multi Criterion Minimum Spanning Tree Problem -- Loss-Based Estimation with Evolutionary Algorithms and Cross-Validation -- Real-World Applications -- Particle Swarm Optimisation Aided MIMO Transceiver Designs -- Optimal Design of a Common Rail Diesel Engine Piston -- Robust Preliminary Space Mission Design under Uncertainty -- Progressive Design Methodology for Design of Engineering Systems -- Reliable Network Design Using Hybrid Genetic Algorithm Based on Multi-Ring Encoding -- Isolated Word Analysis Using Biologically-Based Neural Networks -- A Distributed Evolutionary Approach to Subtraction Radiography -- Speeding-Up Expensive Evaluations in High-Level Synthesis Using Solution Modeling and Fitness Inheritance.
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|a In modern science and engineering, laboratory experiments are replaced by high fidelity and computationally expensive simulations. Using such simulations reduces costs and shortens development times but introduces new challenges to design optimization process. Examples of such challenges include limited computational resource for simulation runs, complicated response surface of the simulation inputs-outputs, and etc. Under such difficulties, classical optimization and analysis methods may perform poorly. This motivates the application of computational intelligence methods such as evolutionary algorithms, neural networks and fuzzy logic, which often perform well in such settings. This is the first book to introduce the emerging field of computational intelligence in expensive optimization problems. Topics covered include: Dedicated implementations of evolutionary algorithms, neural networks and fuzzy logic. Reduction of expensive evaluations (modelling, variable-fidelity, fitness inheritance). Frameworks for optimization (model management, complexity control, model selection). Parallelization of algorithms (implementation issues on clusters, grids, parallel machines). Incorporation of expert systems and human-system interface. Single and multiobjective algorithms. Data mining and statistical analysis. Analysis of real-world cases (such as multidisciplinary design optimization). The edited book provides both theoretical treatments and real-world insights gained by experience, all contributed by leading researchers in the respective fields. As such, it is a comprehensive reference for researchers, practitioners, and advanced-level students interested in both the theory and practice of using computational intelligence for expensive optimization problems.
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|a Engineering mathematics.
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|a Engineering-Data processing.
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|a Artificial intelligence.
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|a Mathematics.
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|a Mathematical and Computational Engineering Applications.
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|a Artificial Intelligence.
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|a Applications of Mathematics.
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|a Tenne, Yoel.
|e editor.
|4 edt
|4 http://id.loc.gov/vocabulary/relators/edt
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|a Goh, Chi-Keong.
|e editor.
|4 edt
|4 http://id.loc.gov/vocabulary/relators/edt
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|a SpringerLink (Online service)
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|t Springer Nature eBook
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|i Printed edition:
|z 9783642107023
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|i Printed edition:
|z 9783642263187
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|i Printed edition:
|z 9783642107009
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|a Adaptation, Learning, and Optimization,
|x 1867-4542 ;
|v 2
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|u https://doi.uam.elogim.com/10.1007/978-3-642-10701-6
|z Texto Completo
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|a ZDB-2-ENG
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|a ZDB-2-SXE
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|a Engineering (SpringerNature-11647)
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|a Engineering (R0) (SpringerNature-43712)
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