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Evolutionary hybrid approaches for generation scheduling in power systems
Authors:Keshav P. Dahal  Chris J. Aldridge  Stuart J. Galloway
Affiliation:1. School of Informatics, University of Bradford, Bradford, BD7 1DP, UK;2. Department of Mathematics, University of Strathclyde, Richmond Street, Glasgow G1 1XH, UK;3. Institute of Energy and Environment, University of Strathclyde, 204 George Street, Glasgow G1 1XW, UK
Abstract:Generation scheduling (GS) in power systems is a tough optimisation problem which continues to present a challenge for efficient solution techniques. The solution is to define on/off decisions and generation levels for each electricity generator of a power system for each scheduling interval. The solution procedure requires simultaneous consideration of binary decision and continuous variables. In recent years researchers have focused much attention on developing new hybrid approaches using evolutionary and traditional exact methods for this type of mixed-integer problems. This paper investigates how the optimum or near optimum solution for the GS problem may be quickly identified. A design is proposed which uses a variety of metaheuristic, heuristics and mathematical programming techniques within a hybrid framework. The results obtained for two case studies are promising and show that the hybrid approach offers an effective alternative for solving the GS problems within a realistic timeframe.
Keywords:Evolutionary computations   Genetic algorithms   Knowledge-based systems   Power systems   Scheduling
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