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About this product
- DescriptionThis book addresses modern nlinear programming (NLP) concepts and algorithms, especially as they apply to challenging applications in chemical process engineering. The author provides a firm grounding in fundamental NLP properties and algorithms, and relates them to real-world problem classes in process optimization, thus making the material understandable and useful to chemical engineers and experts in mathematical optimization. Nonlinear Programming shows readers which NLP methods are best suited for specific applications, how large-scale problems should be formulated and what features of these problems should be emphasized, and how existing NLP methods can be extended to exploit specific structures of large-scale optimization models.
- Author BiographyLorenz T. Biegler is the Bayer Professor of Chemical Engineering at Carnegie Mellon University and a Fellow of the American Institute of Chemical Engineers. He has authored or coauthored over 200 journal articles and two books. His research interests lie in the field of computer-aided process engineering, including flowsheet optimization, optimization of systems of differential and algebraic equations, reactor network synthesis and algorithms for constrained, nonlinear process control.
- Author(s)Lorenz T. Biegler
- PublisherSociety for Industrial & Applied Mathematics,U.S.
- Date of Publication30/09/2010
- Series TitleMOS-SIAM Series on Optimization
- Series Part/Volume Numberv. 10
- Place of PublicationNew York
- Country of PublicationUnited States
- ImprintSociety for Industrial & Applied Mathematics,U.S.
- Content NoteIllustrations
- Weight890 g
- Width152 mm
- Height229 mm
- Spine26 mm
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