用于 TSO-DSO-Retailer 协调的随机推理双基分解算法

Hamed Bakhtiari;Mohammad Reza Hesamzadeh;Derek Bunn
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引用次数: 0

摘要

嵌入式资源提供的灵活性服务对电网运营商和零售商都很有吸引力,但也带来了地方层面的协调和市场设计问题。本研究探讨了地方层面的灵活性市场运营商(FMO)(类似于批发层面的市场运营商)如何改善电力系统的实时运行,并有效管理 TSO、DSO 和零售商的利益。通过使用广义的分条件编程,该任务的随机双层表示被重新表述为带有指标约束的随机混合逻辑线性规划(MLLP)。我们开发了一种基于推理-双重分解(IDBD)的算法,并对子问题进行了放松,以减少迭代次数。利用期望夏普利值,引入了一种新的报酬机制,以公平的方式分配服务激活成本。最后,通过案例研究应用评估了所提方法的性能和优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Stochastic Inference-Dual-Based Decomposition Algorithm for TSO-DSO-Retailer Coordination
The flexibility services available from embedded resources, being attractive to both the network operators and retailers, pose a problem of co-ordination and market design at the local level. This research considers how a Flexibility Market Operator (FMO) at the local level, analogous to market operators at the wholesale level, can improve the real-time operation of the power systems and efficiently manage the interests of the TSO, DSO, and Retailers. Using generalized disjunctive programming, a stochastic bilevel representation of the task is reformulated as a stochastic mixed-logical linear program (MLLP) with indicator constraints. An Inference-Dual-Based Decomposition (IDBD) Algorithm is developed with sub-problem relaxation to reduce the iterations. Using expected Shapley values, a new payoff mechanism is introduced to allocate the cost of service activations in a fair way. Finally, the performance and benefits of the proposed method are assessed via a case study application.
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