Title :
Adaptive Robust Optimization for the Security Constrained Unit Commitment Problem
Author :
Bertsimas, Dimitris ; Litvinov, Eugene ; Sun, Xu Andy ; Jinye Zhao ; Tongxin Zheng
Author_Institution :
Sloan Sch. of Manage. & the Oper. Res. Center, Massachusetts Inst. of Technol., Cambridge, MA, USA
Abstract :
Unit commitment, one of the most critical tasks in electric power system operations, faces new challenges as the supply and demand uncertainty increases dramatically due to the integration of variable generation resources such as wind power and price responsive demand. To meet these challenges, we propose a two-stage adaptive robust unit commitment model for the security constrained unit commitment problem in the presence of nodal net injection uncertainty. Compared to the conventional stochastic programming approach, the proposed model is more practical in that it only requires a deterministic uncertainty set, rather than a hard-to-obtain probability distribution on the uncertain data. The unit commitment solutions of the proposed model are robust against all possible realizations of the modeled uncertainty. We develop a practical solution methodology based on a combination of Benders decomposition type algorithm and the outer approximation technique. We present an extensive numerical study on the real-world large scale power system operated by the ISO New England. Computational results demonstrate the economic and operational advantages of our model over the traditional reserve adjustment approach.
Keywords :
approximation theory; distributed power generation; power system security; statistical distributions; stochastic programming; Benders decomposition type algorithm; ISO New England; adaptive robust optimization; electric power system operations; hard-to-obtain probability distribution; nodal net injection uncertainty; outer approximation technique; price responsive demand; real-world large scale power system; security constrained unit commitment problem; stochastic programming approach; two-stage adaptive robust unit commitment model; variable generation resources; wind power; Adaptation models; Approximation algorithms; Computational modeling; Optimization; Robustness; Security; Uncertainty; Bilevel mixed-integer optimization; power system control and reliability; robust and adaptive optimization; security constrained unit commitment;
Journal_Title :
Power Systems, IEEE Transactions on
DOI :
10.1109/TPWRS.2012.2205021