2018
DOI: 10.1287/ijoc.2017.0782
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Partially Adaptive Stochastic Optimization for Electric Power Generation Expansion Planning

Abstract: Electric Power Generation Expansion Planning (GEP) is the problem of determining an optimal construction and generation plan of both new and existing electric power plants to meet future electricity demand. We consider a stochastic optimization approach for this capacity expansion problem under demand and fuel price uncertainty. In a two-stage stochastic optimization model for GEP, the capacity expansion plan for the entire planning horizon is decided prior to the uncertainty realized and hence allows no adapt… Show more

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Cited by 18 publications
(9 citation statements)
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“…With an eye toward realworld implementation, the developed algorithm was fully automated and produced multiple candidate solutions, allowing practitioners to choose a treatment plan based on their own subject-matter expertise. Next, the work of Zou et al (2018) extends Shabbir's work in power-generation optimization. The problem they consider is to solve location-allocation problems in the context of electric power plants, but without knowing future power demands or fuel prices.…”
mentioning
confidence: 86%
See 1 more Smart Citation
“…With an eye toward realworld implementation, the developed algorithm was fully automated and produced multiple candidate solutions, allowing practitioners to choose a treatment plan based on their own subject-matter expertise. Next, the work of Zou et al (2018) extends Shabbir's work in power-generation optimization. The problem they consider is to solve location-allocation problems in the context of electric power plants, but without knowing future power demands or fuel prices.…”
mentioning
confidence: 86%
“…A multistage model in which adaptive decisions can be made over time in response to evolving data provides the desired flexibility for decision makers but is extraordinarily difficult to solve. Zou et al (2018) develop a compromise between these approaches: a partially adaptive SIP that essentially curtails the point past which adaptive decisions can be made.…”
mentioning
confidence: 99%
“…Following the studies Singh et al (2009), Zou et al (2018), we represent the generation capacity expansion planning problem as a stochastic program. We reformulate this problem as an adaptive two-stage program, where the capacity acquisition decisions can be revised once within the planning horizon.…”
Section: Experimental Setup and Optimization Modelmentioning
confidence: 99%
“…Another two-stage approximation to multi-stage models is presented in Bodur and Luedtke (2018) using Linear Decision Rules by limiting the decisions to be affine functions of the uncertain parameters. As an alternative intermediate approach, Zou et al (2018) proposes solving a generation capacity expansion planning problem by first considering a multi-stage stochastic program until a predefined stage, and then representing it as a two-stage program. They also develop a rolling horizon heuristic as discussed in Ahmed (2016) to approximate the multi-stage model.…”
Section: Introductionmentioning
confidence: 99%
“…One class of algorithms builds on the stochastic programming paradigm and extends two-stage decomposition schemes such as Benders Decomposition [54] or Progressive Hedging [38]. However, these methods depend on the existence of dual variables in the subsequent stage or on efficient and stable quadratic programming solvers and can be difficult to extend to problems with non-convex constraints, although some recent work has been done to address this [59,60,27].…”
Section: Introductionmentioning
confidence: 99%