DocumentCode :
7893
Title :
A Robust Solution to the Load Curtailment Problem
Author :
Simao, H.P. ; Jeong, H.B. ; Defourny, Boris ; Powell, Warren B. ; Boulanger, Albert ; Gagneja, Ashish ; Wu, Liang ; Anderson, R.N.
Author_Institution :
Princeton Lab. for Energy Syst. Anal. (PENSA), Princeton Univ., Princeton, NJ, USA
Volume :
4
Issue :
4
fYear :
2013
fDate :
Dec. 2013
Firstpage :
2209
Lastpage :
2219
Abstract :
Operations planning in smart grids is likely to become a more complex and demanding task in the next decades. In this paper we show how to formulate the problem of planning short-term load curtailment in a dense urban area, in the presence of uncertainty in electricity demand and in the state of the distribution grid, as a stochastic mixed-integer optimization problem. We propose three rolling-horizon look-ahead policies to approximately solve the optimization problem: a deterministic one and two based on approximate dynamic programming (ADP) techniques. We demonstrate through numerical experiments that the ADP-based policies yield curtailment plans that are more robust on average than the deterministic policy, but at the expense of the additional computational burden needed to calibrate the ADP-based policies. We also show how the worst case performance of the three approximation policies compares with a baseline policy where all curtailable loads are curtailed to the maximum amount possible.
Keywords :
approximation theory; integer programming; power system planning; smart power grids; stochastic programming; ADP-based policies; approximate dynamic programming techniques; approximation policies; baseline policy; deterministic policy; distribution grid; electricity demand; numerical experiments; operations planning; rolling-horizon look-ahead policies; short-term load curtailment planning; smart grids; stochastic mixed-integer optimization problem; Approximation methods; Linear programming; Load modeling; Optimization; Planning; Power cables; Robustness; Approximate dynamic programming; computer simulation; demand response; load management; mathematical programming; optimization methods; power distribution; power system management; power system modeling; smart grids;
fLanguage :
English
Journal_Title :
Smart Grid, IEEE Transactions on
Publisher :
ieee
ISSN :
1949-3053
Type :
jour
DOI :
10.1109/TSG.2013.2276754
Filename :
6599009
Link To Document :
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