A comparative study of three different mathematical methods for solving the unit commitment problem (Q1036336)
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scientific article; zbMATH DE number 5632475
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | A comparative study of three different mathematical methods for solving the unit commitment problem |
scientific article; zbMATH DE number 5632475 |
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A comparative study of three different mathematical methods for solving the unit commitment problem (English)
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13 November 2009
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Summary: The unit commitment (UC) problem which is an important subject in power system engineering is solved by using Lagragian relaxation (LR), penalty function (PF), and augmented Lagrangian penalty function (ALPF) methods due to their higher solution quality and faster computational time than metaheuristic approaches. This problem is considered to be a nonlinear programming-(NP-) hard problem because it is nonlinear, mixed-integer, and nonconvex. These three methods used for solving the problem are based on dual optimization techniques. ALPF method which combines the algorithmic aspects of both LR and PF methods is firstly used for solving the UC problem. These methods are compared to each other based on feasible schedule for each stage, feasible cost, dual cost, duality gap, duration time, and number of iterations. The numerical results show that the ALPF method gives the best duality gap, feasible and dual cost instead of worse duration time and the number of iterations. The four-unit Tuncbilek thermal plant which is located in Kutahya region in Turkey is chosen as a test system in this study. The programs used for all the analyses are coded and implemented using the general algebraic modeling system (GAMS).
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power system engineering
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dual optimization techniques
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