Title :
Advanced optimization methods for power systems
Author :
Panciatici, P. ; Campi, M.C. ; Garatti, S. ; Low, S.H. ; Molzahn, D.K. ; Sun, A.X. ; Wehenkel, L.
Author_Institution :
R&D Dept., RTE, Versailles, France
Abstract :
Power system planning and operation offers multitudinous opportunities for optimization methods. In practice, these problems are generally large-scale, non-linear, subject to uncertainties, and combine both continuous and discrete variables. In the recent years, a number of complementary theoretical advances in addressing such problems have been obtained in the field of applied mathematics. The paper introduces a selection of these advances in the fields of non-convex optimization, in mixed-integer programming, and in optimization under uncertainty. The practical relevance of these developments for power systems planning and operation are discussed, and the opportunities for combining them, together with high-performance computing and big data infrastructures, as well as novel machine learning and randomized algorithms, are highlighted.
Keywords :
Big Data; concave programming; integer programming; learning (artificial intelligence); nonlinear programming; parallel processing; power engineering computing; power system planning; randomised algorithms; Big Data infrastructure; advanced optimization method; high-performance computing; machine learning; mixed integer programming; nonconvex optimization; power system operation; power system planning; randomized algorithm; Electronic mail; Europe; Linear programming; Optimization; Planning; Power systems; Uncertainty;
Conference_Titel :
Power Systems Computation Conference (PSCC), 2014
Conference_Location :
Wroclaw
DOI :
10.1109/PSCC.2014.7038504