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Divide to conquer: decomposition methods for energy optimization

机译:分而治之:能量优化的分解方法

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摘要

Modern electricity systems provide a plethora of challenging issues in optimization. The increasing penetration of low carbon renewable sources of energy introduces uncertainty in problems traditionally modeled in a deterministic setting. The liberalization of the electricity sector brought the need of designing sound markets, ensuring capacity investments while properly reflecting strategic interactions. In all these problems, hedging risk, possibly in a dynamic manner, is also a concern. The fact of representing uncertainty and/or competition of different companies in a multi-settlement power market considerably increases the number of variables and constraints. For this reason, usually a trade-off needs to be found between modeling and numerical tractability: the more details are brought into the model, the harder becomes the optimization problem. For structured optimization and generalized equilibrium problems, we explore some variants of solution methods based on Lagrangian relaxation and on Benders decomposition. Throughout we keep as a leading thread the actual practical value of such techniques in terms of their efficiency to solve energy related problems.
机译:现代电力系统在优化中提供了许多具有挑战性的问题。低碳可再生能源的日益普及为确定性环境中传统建模的问题带来了不确定性。电力部门的自由化带来了设计合理的市场,确保容量投资同时适当反映战略互动的需求。在所有这些问题中,对冲风险(可能以动态方式)也是一个问题。在多结算电力市场中代表不同公司的不确定性和/或竞争的事实大大增加了变量和约束的数量。因此,通常需要在建模和数值可处理性之间找到一个折衷:将更多的细节引入模型中,最难成为优化问题。对于结构优化和广义平衡问题,我们探索了基于拉格朗日松弛和Benders分解的求解方法的一些变体。在整个过程中,我们始终以此类技术在解决能源相关问题的效率方面的实际实用价值为指导。

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