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SDDP for some interstage dependent risk-averse problems and application to hydro-thermal planning

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000329123700007.pdf (1.101Mb)
Date
2014-01
Author
Guigues, Vincent Gérard Yannick
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Abstract
We consider interstage dependent stochastic linear programs where both the random right-hand side and the model of the underlying stochastic process have a special structure. Namely, for equality constraints (resp. inequality constraints) the right-hand side is an affine function (resp. a given function b (t) ) of the process value for the current time step t. As for m-th component of the process at time step t, it depends on previous values of the process through a function h (tm) . For this type of problem, to obtain an approximate policy under some assumptions for functions b (t) and h (tm) , we detail a stochastic dual dynamic programming algorithm. Our analysis includes some enhancements of this algorithm such as the definition of a state vector of minimal size, the computation of feasibility cuts without the assumption of relatively complete recourse, as well as efficient formulas for sharing optimality and feasibility cuts between nodes of the same stage. The algorithm is given for both a non-risk-averse and a risk-averse model. We finally provide preliminary results comparing the performances of the recourse functions corresponding to these two models for a real-life application.
URI
http://hdl.handle.net/10438/23361
Collections
  • Documentos Indexados pela Web of Science [875]
Knowledge Areas
Administração pública
Subject
Monte Carlo, Método de
Processo estocástico
Keyword
Stochastic programming
Risk-averse optimization
Decomposition algorithms
Interstage dependency
Monte Carlo sampling
Stochastic linear-programs

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