Robust Optimization for Power Systems Capacity Expansion under Uncertainty |
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Authors: | Scott A. Malcolm Stavros A. Zenios |
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Affiliation: | 1.School of Engineering and Applied Sciences, University of Pennsylvania,USA;2.Operations and Information Management, The Wharton School, University of Pennsylvania,USA |
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Abstract: | We develop a robust optimization model for planning power system capacity expansion in the face of uncertain power demand. The model generates capacity expansion plans that are both solution and model robust. That is, the optimal solution from the model is ‘almost’ optimal for any realization of the demand scenarios (i.e. solution robustness). Furthermore, the optimal solution has reduced excess capacity for any realization of the scenarios (i.e. model robustness). Experience with a characteristic test problem illustrates not only the unavoidable trade-offs between solution and model robustness, but also the effectiveness of the model in controlling the sensitivity of its solution to the uncertain input data. The experiments also illustrate the differences of robust optimization from the classical stochastic programming formulation. |
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