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Mathematical Programming bounds for Large-Scale Unit Commitment Problems in Medium-Term Energy System Simulations

机译:中期能源系统模拟中大规模单位承诺问题的数学规划

摘要

We consider a large-scale unit commitment problem arising in medium-term simulation of energy networks, stemming from a joint project between the University of Milan and a major energy research centre in Italy. Optimal plans must be computed for a set of thermal and hydroelectric power plants, located in one or more countries, over a time horizon spanning from a few months to one year, with a hour-by-hour resolution. We propose a mixed-integer linear programming model for the problem. Since the complexity of this unit commitment problem and the size of real-world instances make it impractical to directly optimise this model using general purpose solvers, we devise ad-hoc heuristics and relaxations to obtain approximated solutions and quality estimations. We exploit an incremental approach: at first, a linear relaxation of an aggregated model is solved. Then, the model is disaggregated and the full linear relaxation is computed. Finally, a tighter linear relaxation of an extended formulation is obtained using column generation. At each stage, metaheuristics are run to obtain good integer solutions. Experimental tests on real-world data reveal that accurate results can be obtained by our framework in affordable time, making it suitable for efficient scenario simulations.
机译:我们考虑到能源网络的中期模拟中出现的大规模单位承诺问题,这是由米兰大学与意大利的一个主要能源研究中心之间的一个联合项目引起的。必须为一个或多个国家/地区的一组火力发电厂和水力发电厂计算最佳计划,计划的时间跨度为几个月到一年,时间分辨率为一个小时。我们针对该问题提出了混合整数线性规划模型。由于此单元承诺问题的复杂性和实际实例的大小使得使用通用求解器直接优化此模型不切实际,因此,我们设计了临时启发法和松弛法来获得近似解和质量估计。我们采用增量方法:首先,解决了聚合模型的线性松弛问题。然后,分解模型并计算整个线性松弛。最后,使用色谱柱产生了扩展配方的更紧密的线性松弛。在每个阶段,运行元启发法以获得良好的整数解。对现实世界数据的实验测试表明,我们的框架可以在可承受的时间内获得准确的结果,使其适用于有效的场景模拟。

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