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Mixed Integer Nonlinear Programming

Jon Lee

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ISBN 10: 1461419263 / ISBN 13: 9781461419266
Published by Springer-Verlag Gmbh Dez 2011, 2011
New Condition: Neu Buch
From Agrios-Buch (Bergisch Gladbach, Germany)

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About this Item

Neuware - Many engineering, operations, and scientific applications include a mixture of discrete and continuous decision variables and nonlinear relationships involving the decision variables that have a pronounced effect on the set of feasible and optimal solutions. Mixed-integer nonlinear programming (MINLP) problems combine the numerical difficulties of handling nonlinear functions with the challenge of optimizing in the context of nonconvex functions and discrete variables. MINLP is one of the most flexible modeling paradigms available for optimization; but because its scope is so broad, in the most general cases it is hopelessly intractable. Nonetheless, an expanding body of researchers and practitioners - including chemical engineers, operations researchers, industrial engineers, mechanical engineers, economists, statisticians, computer scientists, operations managers, and mathematical programmers - are interested in solving large-scale MINLP instances. 690 pp. Englisch. Bookseller Inventory # 9781461419266

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Bibliographic Details

Title: Mixed Integer Nonlinear Programming

Publisher: Springer-Verlag Gmbh Dez 2011

Publication Date: 2011

Binding: Buch

Book Condition:Neu

About this title

Synopsis:

Many engineering, operations, and scientific applications include a mixture of discrete and continuous decision variables and nonlinear relationships involving the decision variables that have a pronounced effect on the set of feasible and optimal solutions. Mixed-integer nonlinear programming (MINLP) problems combine the numerical difficulties of handling nonlinear functions with the challenge of optimizing in the context of nonconvex functions and discrete variables. MINLP is one of the most flexible modeling paradigms available for optimization; but because its scope is so broad, in the most general cases it is hopelessly intractable. Nonetheless, an expanding body of researchers and practitioners - including chemical engineers, operations researchers, industrial engineers, mechanical engineers, economists, statisticians, computer scientists, operations managers, and mathematical programmers - are interested in solving large-scale MINLP instances.

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