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Different Decomposition Strategies to Solve Stochastic Hydrothermal Unit Commitment Problems

机译:解决随机热水机组承诺问题的不同分解策略

摘要

Solving very-large-scale optimization problems frequently require to decompose them in smaller subproblems, that are iteratively solved to produce useful information. One such approach is the Lagrangian Relaxation (LR), a broad range technique that leads to many different decomposition schemes. The LR supplies a lower bound of the objective function and useful information for heuristics aimed at constructing feasible primal solutions. In this paper, we compare the main LR strategies used so far for Stochastic Hydrothermal Unit Commitment problems, where uncertainty mainly concerns water availability in reservoirs and demand (weather conditions). This problem is customarily modeled as a two-stage mixed-integer optimization problem. We compare different decomposition strategies (unit and scenario schemes) in terms of quality of produced lower bound and running time. The schemes are assessed with various hydrothermal systems, considering different configuration of power plants, in terms of capacity and number of units.
机译:解决超大规模优化问题通常需要将它们分解为较小的子问题,这些子问题可以通过迭代解决以产生有用的信息。一种这样的方法是拉格朗日松弛(LR),这是一种导致许多不同分解方案的宽范围技术。 LR提供了目标函数的下限和有用的信息,这些启发式信息旨在构建可行的原始解。在本文中,我们比较了迄今为止用于随机热液机组承诺问题的主要LR策略,其中不确定性主要涉及水库中的水可用性和需求(天气条件)。通常将此问题建模为两阶段混合整数优化问题。我们根据产生的下界和运行时间的质量比较不同的分解策略(单元和方案方案)。在容量和机组数量方面,考虑到电厂的不同配置,可使用各种水热系统对方案进行评估。

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