Title :
Electric capacity expansion under uncertain demand: decomposition approaches
Author :
Marín, Ángel ; Salmerón, Javier
Author_Institution :
Matematica Aplicada y Estadistica, Univ. Politecnica de Madrid, Spain
fDate :
5/1/1998 12:00:00 AM
Abstract :
The authors present a stochastic model of electric capacity expansion planning under uncertainty in demand. The goal of this problem is to determine the most interesting investments (plants and capacity levels) over the considered planning time (up to several years). Periods are divided into smaller subperiods (e.g. weekly or monthly) for which demand is assumed uncertain and modeled as a continuous probability distribution function. This leads to consider the risk associated to each decision for the capacity to be used (electricity generation). A first approach as a nonlinear continuous model is presented. Benders decomposition and Lagrangean relaxation-decomposition are proposed as solution methods, where the structures of the related sub-problems are exploited to speed up the convergence. The authors provide a large computational experience and comparisons within these methods and other general purpose optimization packages, and focus the report on the advantages of each
Keywords :
load (electric); power system analysis computing; power system planning; probability; Benders decomposition; Lagrangean relaxation-decomposition; continuous probability distribution function; convergence speed; decision risk; decomposition approaches; demand uncertainty; nonlinear continuous model; power system capacity expansion planning; stochastic model; Capacity planning; Demand forecasting; Investments; Power generation; Power system analysis computing; Power system economics; Power system planning; Probability distribution; Stochastic processes; Uncertainty;
Journal_Title :
Power Systems, IEEE Transactions on