By Urmila Diwekar
- Provides well-written self-contained chapters, together with challenge units and routines, making it perfect for the study room setting;
- Introduces applied optimization to the unsafe waste mixing problem;
- Explores linear programming, nonlinear programming, discrete optimization, international optimization, optimization lower than uncertainty, multi-objective optimization, optimum regulate and stochastic optimum control;
- Includes an intensive bibliography on the finish of every bankruptcy and an index;
- GAMS documents of case stories for Chapters 2, three, four, five, and 7 are associated with http://www.springer.com/math/book/978-0-387-76634-8;
strategies guide on hand upon adoptions.
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Extra resources for Introduction to Applied Optimization: Preliminary Entry 110 (Springer Optimization and Its Applications)
Introduction to Applied Optimization: Preliminary Entry 110 (Springer Optimization and Its Applications) by Urmila Diwekar