Evolutionary Algorithms and Agricultural Systems

Cover of Evolutionary Algorithms and Agricultural Systems by David G. Mayer
Publisher: Springer US
Year: 2012
Language: en
Edition: 2002
Pages: 107
ISBN-13: 9781461356936
Dimensions:
Height: 9.25 Inches
Length: 6.1 Inches
Weight: 0.399 Pounds
Width: 0.28 Inches
Dewey Decimal: 006.3, 630/.1/5118
Editorial overview Touché

Evolutionary Algorithms and Agricultural Systems by David G. Mayer, published by Springer US on October 23, 2012, is a focused exploration of the application of evolutionary algorithms in agricultural systems. This 107-page book introduces systems research methodology and provides real-world examples of how these algorithms can enhance the study and management of agriculture. The integration of agricultural models with optimization techniques, particularly genetic algorithms, is a central theme, highlighting both the advantages and potential challenges of this approach.

Readers will find a detailed discussion on various agricultural applications using optimization techniques, including gradient methods and simulated annealing. The book outlines the specific problems associated with these algorithms and offers practical solutions, emphasizing the benefits of a hybrid approach. Additionally, it provides general recommendations for robust options and parameter settings for evolutionary algorithms, making it a valuable resource for practitioners and researchers in the fields of agriculture, technology, and operations research.


Official synopsis Publisher

Evolutionary Algorithms and Agricultural Systems deals with the practical application of evolutionary algorithms to the study and management of agricultural systems. The rationale of systems research methodology is introduced, and examples listed of real-world applications. It is the integration of these agricultural systems models with optimization techniques, primarily genetic algorithms, which forms the focus of this book. The advantages are outlined, with examples of agricultural models ranging from national and industry-wide studies down to the within-farm scale. The potential problems of this approach are also discussed, along with practical methods of resolving these problems.
Agricultural applications using alternate optimization techniques (gradient and direct-search methods, simulated annealing and quenching, and the tabu search strategy) are also listed and discussed. The particular problems and methodologies of these algorithms, including advantageous features that may benefit a hybrid approach or be usefully incorporated into evolutionary algorithms, are outlined. From consideration of this and the published examples, it is concluded that evolutionary algorithms are the superior method for the practical optimization of models of agricultural and natural systems. General recommendations on robust options and parameter settings for evolutionary algorithms are given for use in future studies.
Evolutionary Algorithms and Agricultural Systems will prove useful to practitioners and researchers applying these methods to the optimization of agricultural or natural systems, and would also be suited as a text for systems management, applied modeling, or operations research.

FAQ
What is “Evolutionary Algorithms and Agricultural Systems” about?
This page includes the available description and bibliographic details for “Evolutionary Algorithms and Agricultural Systems” by David G. Mayer. Synopsis preview: Evolutionary Algorithms and Agricultural Systems deals with the practical application of evolutionary algorithms to the study and management of agricultural systems. The rationale of systems research methodology is intro…
Who is the author of “Evolutionary Algorithms and Agricultural Systems”?
“Evolutionary Algorithms and Agricultural Systems” is credited to David G. Mayer.
When was “Evolutionary Algorithms and Agricultural Systems” published?
Publisher: Springer US. Year: 2012.
What is the ISBN for “Evolutionary Algorithms and Agricultural Systems”?
ISBN-13: 9781461356936.
What are the book details (language, pages, edition)?
Language: en. Pages: 107. Edition: 2002.

Related Books by Topic