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Parallelized Stochastic Short-term Hydrothermal Generation Scheduling

机译:并行随机短期热液发电调度

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This paper proposes a Stochastic Mixed-Integer Linear Programming (SMILP) formulation for Short-Term Hydrothermal Generation Scheduling (STHTGS) under uncertainty. STHTGS seeks to minimize present and future operation costs by deciding the commitments of thermal generators and the allocation of hydro resources during the planning horizon. The stochastic STHTGS is decomposed using the Progressive Hedging Algorithm (PHA) and each sub-problem is solved in parallel. Numerical tests are conducted for the Chilean Central Interconnected System with 12 stochastic scenarios and a weekly decision horizon. The stochastic and deterministic formulations are compared by solving standard variations of the stochastic problem. Numerical results show that the proposed decomposition and parallelization strategy can help reduce simulation times and hedge against uncertainty, but the level of benefits and the convergence properties are highly dependent on the amount of water available in the scheduling horizon and the diversity of the scenarios.
机译:本文提出了不确定性下短期热液发电调度(STHTGS)的随机混合整数线性规划(SMILP)公式。 STHTGS试图通过在规划阶段确定热力发电机的承诺和水力资源分配的方式来最大程度地减少当前和未来的运营成本。使用渐进式对冲算法(PHA)分解随机的STHTGS,并并行解决每个子问题。对智利中央互连系统进行了数值测试,其中包含12种随机情况和每周决策期。通过解决随机问题的标准变化来比较随机和确定性公式。数值结果表明,所提出的分解和并行化策略可以帮助减少仿真时间并避免不确定性,但是收益的水平和收敛性高度依赖于调度范围内可用的水量和方案的多样性。

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