Approximation and Solution Schemes for Stochastic Dynamic Optimization Problems

Approximation and Solution Schemes for Stochastic Dynamic Optimization Problems

DiLisa A. Korf

Di solito viene stampato in 3-5 giorni lavorativi
Optimization and control problems often need to be formulated in a way that takes the uncertainty of the future into account in order to accurately reflect a "good" decision that can stand up to a variety of possible future outcomes. One way of including uncertainty in such problems treats the uncertain parameters as a random vector with an underlying probability distribution. Doing this creates a stochastic programming model which is inherently infinite dimensional, or at best extremely large, in particular when many time stages are present. In order to solve such problems, a good approximation framework is needed that encompasses various approaches such as sampling and analytical methods for various problem classes. Complementing this should be a development of solution procedures that exploit a problem's structure, for example taking advantage of convexity and decomposability wherever possible. This dissertation addresses these key issues in four parts.

Dettagli

Data di pubblicazione
Jun 7, 2009
Lingua
English
Categoria
Ingegneria
Copyright
Tutti i diritti riservati - Licenza di copyright standard
Collaboratori
Di (autore): Lisa A. Korf

Specifiche

Pagine
117
Tipo di rilegatura
Libro a copertina morbida Libro a copertina morbida
Colore del contenuto
Bianco e nero
Dimensioni
Lettera US (216 x 279 mm)

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