Variants of Evolutionary Algorithms for Real-World Applications
β Scribed by Christian Blum, Raymond Chiong, Maurice Clerc, Kenneth De Jong, Zbigniew Michalewicz (auth.), Raymond Chiong, Thomas Weise, Zbigniew Michalewicz (eds.)
- Publisher
- Springer-Verlag Berlin Heidelberg
- Year
- 2012
- Tongue
- English
- Leaves
- 469
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Evolutionary Algorithms (EAs) are population-based, stochastic search algorithms that mimic natural evolution. Due to their ability to find excellent solutions for conventionally hard and dynamic problems within acceptable time, EAs have attracted interest from many researchers and practitioners in recent years. This book βVariants of Evolutionary Algorithms for Real-World Applicationsβ aims to promote the practitionerβs view on EAs by providing a comprehensive discussion of how EAs can be adapted to the requirements of various applications in the real-world domains. It comprises 14 chapters, including an introductory chapter re-visiting the fundamental question of what an EA is and other chapters addressing a range of real-world problems such as production process planning, inventory system and supply chain network optimisation, task-based jobs assignment, planning for CNC-based work piece construction, mechanical/ship design tasks that involve runtime-intense simulations, data mining for the prediction of soil properties, automated tissue classification for MRI images, and database query optimisation, among others. These chapters demonstrate how different types of problems can be successfully solved using variants of EAs and how the solution approaches are constructed, in a way that can be understood and reproduced with little prior knowledge on optimisation.
β¦ Table of Contents
Front Matter....Pages -
Evolutionary Optimization....Pages 1-29
An Evolutionary Approach to Practical Constraints in Scheduling: A Case-Study of the Wine Bottling Problem....Pages 31-58
A Memetic Framework for Solving the Lot Sizing and Scheduling Problem in Soft Drink Plants....Pages 59-93
Simulation-Based Evolutionary Optimization of Complex Multi-Location Inventory Models....Pages 95-141
A Fuzzy-Evolutionary Approach to the Problem of Optimisation and Decision-Support in Supply Chain Networks....Pages 143-166
A Genetic-Based Solution to the Task-Based Sailor Assignment Problem....Pages 167-203
Genetic Algorithms for Manufacturing Process Planning....Pages 205-244
A Fitness Granulation Approach for Large-Scale Structural Design Optimization....Pages 245-280
A Reinforcement Learning Based Hybrid Evolutionary Algorithm for Ship Stability Design....Pages 281-303
An Interactively Constrained Neuro-Evolution Approach for Behavior Control of Complex Robots....Pages 305-341
A Genetic Programming-Based Approach for the Performance Characteristics Assessment of Stabilized Soil....Pages 343-376
Evolving Cellular Neural Networks for the Automated Segmentation of Multiple Sclerosis Lesions....Pages 377-412
An Evolutionary Algorithm for Skyline Query Optimization....Pages 413-436
A Bio-inspired Approach to Self-organization of Mobile Nodes in Real-Time Mobile Ad Hoc Network Applications....Pages 437-462
Back Matter....Pages -
β¦ Subjects
Computational Intelligence; Artificial Intelligence (incl. Robotics)
π SIMILAR VOLUMES
ΠΠ·Π΄Π°ΡΠ΅Π»ΡΡΡΠ²ΠΎ InTech, 2012, -376 pp.<div class="bb-sep"></div>Genetic Algorithms are a part of Evolutionary Computing, which is a rapidly growing area of Artificial Intelligence. The popularity of Genetic Algorithms is reflected in the increasing amount of literature devoted to theoretical works and
<p><p>"Industrial applications of evolutionary algorithms" is intended as a resource for both experienced users of evolutionary algorithms and researchers that are beginning to approach these fascinating optimization techniques.</p><p>Experienced users will find interesting details of real-world pro
<span>Network Science</span><p><span>Network Science</span><span> offers comprehensive insight on network analysis and network optimization algorithms, with simple step-by-step guides and examples throughout, and a thorough introduction and history of network science, explaining the key concepts and