Grouping Genetic Algorithms Advances and Applications
tarafından
 
Mutingi, Michael. author.

Başlık
Grouping Genetic Algorithms Advances and Applications

Yazar
Mutingi, Michael. author.

ISBN
9783319443942

Yazar
Mutingi, Michael. author.

Edisyon
1st ed. 2017.

Fiziksel Niteleme
XIV, 243 p. 78 illus. online resource.

Seri
Studies in Computational Intelligence, 666

İçindekiler
Part I: Introduction -- Exploring Grouping Problems in Industry -- Complicating Features in Grouping Problems -- Part II: Grouping Genetic Algorithms -- Crouping Genetic Algorithms -- Fuzzy Grouping Genetic Algorithms -- Research Applications -- Fleet Size and Mix Vehicle Routing -- Heterogeneous Vehicle Routing -- Bin Packing: Container-Loading Problems with Compartments -- Homecare Staff Scheduling -- Task Assignment in Home Healthcare Services -- Nursing-Care Task Assignment -- Cell-Manufacturing Systems Design -- Cutting Stock Problem -- Assembly-Line Balancing -- Job-Shop Scheduling -- Equal Piles Problem -- Advertisement Allocation -- Part IV: Conclusions -- Concluding Remarks -- Further Research Considerations.

Özet
This book presents advances and innovations in grouping genetic algorithms, enriched with new and unique heuristic optimization techniques. These algorithms are specially designed for solving industrial grouping problems where system entities are to be partitioned or clustered into efficient groups according to a set of guiding decision criteria. Examples of such problems are: vehicle routing problems, team formation problems, timetabling problems, assembly line balancing, group maintenance planning, modular design, and task assignment. A wide range of industrial grouping problems, drawn from diverse fields such as logistics, supply chain management, project management, manufacturing systems, engineering design and healthcare, are presented. Typical complex industrial grouping problems, with multiple decision criteria and constraints, are clearly described using illustrative diagrams and formulations. The problems are mapped into a common group structure that can conveniently be used as an input scheme to specific variants of grouping genetic algorithms. Unique heuristic grouping techniques are developed to handle grouping problems efficiently and effectively. Illustrative examples and computational results are presented in tables and graphs to demonstrate the efficiency and effectiveness of the algorithms. Researchers, decision analysts, software developers, and graduate students from various disciplines will find this in-depth reader-friendly exposition of advances and applications of grouping genetic algorithms an interesting, informative and valuable resource.

Konu Başlığı
Engineering.
 
Operations research.
 
Artificial intelligence.
 
Industrial engineering.
 
Computational Intelligence. http://scigraph.springernature.com/things/product-market-codes/T11014
 
Operations Research/Decision Theory. http://scigraph.springernature.com/things/product-market-codes/521000
 
Artificial Intelligence. http://scigraph.springernature.com/things/product-market-codes/I21000
 
Industrial and Production Engineering. http://scigraph.springernature.com/things/product-market-codes/T22008
 
Operations Research, Management Science. http://scigraph.springernature.com/things/product-market-codes/M26024

Yazar Ek Girişi
Mbohwa, Charles.

Ek Kurum Yazar
SpringerLink (Online service)

Elektronik Erişim
https://doi.org/10.1007/978-3-319-44394-2


Materyal TürüBarkodYer NumarasıDurumu/İade Tarihi
Electronic Book224641-1001Q342Springer E-Book Collection