<p>Evolutionary algorithms are general-purpose search procedures based on the mechanisms of natural selection and population genetics. They are appealing because they are simple, easy to interface, and easy to extend. This volume is concerned with applications of evolutionary algorithms and associat
Evolutionary Algorithms in Management Applications
β Scribed by Volker Nissen, JΓΆrg Biethahn (auth.), Prof. Dr. JΓΆrg Biethahn, Dr. Volker Nissen (eds.)
- Publisher
- Springer-Verlag Berlin Heidelberg
- Year
- 1995
- Tongue
- English
- Leaves
- 383
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Evolutionary Algorithms (EA) are powerful search and optimisation techniques inspired by the mechanisms of natural evolution. They imitate, on an abstract level, biological principles such as a population based approach, the inheritance of information, the variation of information via crossover/mutation, and the selection of individuals based on fitness. The most well-known class of EA are Genetic Algorithms (GA), which have received much attention not only in the scientific community lately. Other variants of EA, in particular Genetic Programming, Evolution Strategies, and Evolutionary Programming are less popular, though very powerful too. Traditionally, most practical applications of EA have appeared in the technical sector. Management problems, for a long time, have been a rather neglected field of EA-research. This is surprising, since the great potential of evolutionary approaches for the business and economics domain was recognised in pioneering publications quite a while ago. John Holland, for instance, in his seminal book Adaptation in Natural and Artificial Systems (The University of Michigan Press, 1975) identified economics as one of the prime targets for a theory of adaptation, as formalised in his reproductive plans (later called Genetic Algorithms).
β¦ Table of Contents
Front Matter....Pages I-XV
Front Matter....Pages 1-1
An Introduction to Evolutionary Algorithms....Pages 3-43
An Overview of Evolutionary Algorithms in Management Applications....Pages 44-97
Front Matter....Pages 99-99
A Genetic Algorithm Applied to Resource Management in Production Systems....Pages 101-111
A Case Study of Operational Just-In-Time Scheduling Using Genetic Algorithms....Pages 112-123
An Evolutionary Algorithm for Discovering Manufacturing Control Strategies....Pages 124-138
Determining the Optimal Network Partition and Kanban Allocation in JIT Production Lines....Pages 139-152
On Using Penalty Functions and Multicriteria Optimisation Techniques in Facility Layout....Pages 153-166
Tapping the Full Power of Genetic Algorithm through Suitable Representation and Local Optimization: Application to Bin Packing....Pages 167-182
A Hybrid Genetic Algorithm for the Two - Dimensional Guillotine Cutting Problem....Pages 183-196
Front Matter....Pages 197-197
Facility Management of Distribution Centres for Vegetables and Fruits....Pages 199-210
Integrating Machine Learning and Simulated Breeding Techniques to Analyze the Characteristics of Consumer Goods....Pages 211-224
Adaptive Behaviour in an Oligopoly....Pages 225-239
Determining a Good Inventory Policy with a Genetic Algorithm....Pages 240-249
Front Matter....Pages 251-251
Genetic Algorithms and the Management of Exchange Rate Risk....Pages 253-263
Evolving Decision Support Models for Credit Control....Pages 264-276
Genetic Classification Trees....Pages 277-289
A Model of Stock Market Participants....Pages 290-302
Front Matter....Pages 303-303
Using Evolutionary Programming to Control Metering Rates on Freeway Ramps....Pages 305-327
Application of Genetic Algorithms for Solving Problems Related to Free Routing for Aircraft....Pages 328-340
Genetic Algorithm with Redundancies for the Vehicle Scheduling Problem....Pages 341-353
Front Matter....Pages 355-355
Course Scheduling by Genetic Algorithms....Pages 357-368
Back Matter....Pages 369-379
β¦ Subjects
Operations Research/Decision Theory; Business Information Systems; Computer Communication Networks
π SIMILAR VOLUMES
<p>Genetic algorithms provide a powerful range of methods for solving complex engineering search and optimization algorithms. Their power can also lead to difficulty for new researchers and students who wish to apply such evolution-based methods. <STRONG>Applied Evolutionary Algorithms in JAVA </STR
<p>Metaheuristic optimization is a higher-level procedure or heuristic designed to find, generate, or select a heuristic (partial search algorithm) that may provide a sufficiently good solution to an optimization problem, especially with incomplete or imperfect information or limited computation cap
<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
<p><P><STRONG>Multiobjective Evolutionary Algorithms and Applications</STRONG> provides comprehensive treatment on the design of multiobjective evolutionary algorithms and their applications in domains covering areas such as control and scheduling. Emphasizing both the theoretical developments and t