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Research on Accelerated Solving Method of Security-Constrained Unit Commitment Based on Heuristic Knowledge

机译:基于启发式知识的安全约束单位承诺加速解决方法研究

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Aiming at the efficiency bottleneck problem of solving the security-constrained unit commitment (SCUC)with mixed-integer programming (MIP), a solution method based on heuristic knowledge and MIP(HKMIP) is proposed in this paper. Firstly, a mapping model of load and unit status is established through deep learning (DL). The historical data of load and solution are selected as the data set. Next, dual-threshold is introduced to judge the on/off state of the unit. In the new load scenario, the states of some units are determined by the mapping model. Simultaneously, as heuristic knowledge, the determined unit states are written into the original SCUC model. And the status and output of the remaining units are obtained through the solver. Finally, the IEEE-RTS96 test case is used as the experimental simulation platform. The cost and solution efficiency of MIP and HKMIP are compared. The results show that the model can significantly accelerate the solution efficiency while ensuring a high-quality solution, which verifies the feasibility and effectiveness of the discussed method.
机译:旨在解决与混合整数编程(MIP)解决安全受限单元承诺(SCUC)的效率瓶颈问题,本文提出了一种基于启发式知识和MIP(HKMIP)的解决方案方法。首先,通过深度学习(DL)建立负载和单位状态的映射模型。选择负载和解决方案的历史数据作为数据集。接下来,引入双阈值以判断单位的开/关状态。在新负载方案中,某些单位的状态由映射模型确定。同时,作为启发式知识,所确定的单位状态被写入原始的SCUC模型。并且剩余单位的状态和输出通过求解器获得。最后,IEEE-RTS96测试盒用作实验模拟平台。比较MIP和HKMIP的成本和解决方案效率。结果表明,该模型可以显着加速解决方案效率,同时确保高质量的解决方案,这验证了讨论的方法的可行性和有效性。

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