Abstract

The computational efficiency of unit commitment (UC) is important for power system operations. Traditionally the unit commitment problem is solved per hour in a day, but with the scale of the power system and the electricity market continuing to expand, the large-scale UC problem will be hard to be solved within 1 h which will affect the power system operation and market clearing. To reduce the solving time of the large-scale UC problem, an ultra-fast optimization algorithm of neural branching for unit commitment (NBUC) is proposed. NBUC learns the branch and bound (B&B) decision made by full strong branching (FSB), which can generate the perfect B&B order to minimize the iterative process but take a lot of time to decide the perfect order by using graph convolutional neural network according to the historical data, and then makes the perfect order prediction with a certain precision without spending a lot of time to make B&B decision which minimizes the solving time including the iteration time and decision time in order to solve the large-scale UC problem quickly. A modified RTS-96 bus system is used to validate the effectiveness of the proposed NBUC. The results show 9.3% and 23.2% reductions in computational time compared with commercial software CPLEX and SCIP.

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