论文标题

在多个不确定性下,在日前市场中的电动机耦合系统的合作和结算

Co-optimisation and Settlement of Power-Gas Coupled System in Day-ahead Market under Multiple Uncertainties

论文作者

Zheng, Xiaodong, Xu, Yan, Li, Zhengmao, Chen, Haoyong

论文摘要

电力系统和天然气系统的相互依存是由新兴的电力汽油设施(PTGS)和现有气体发电机加强的。为了共同提高可再生能源资源和负载需求的各种不确定性下的效率和安全性,必须将这两个能源系统优化以进行日前的市场批准。在本文中,提出了一个数据驱动的集成电气系统随机合作模型。该模型通过顺序混合整数二阶编程来准确近似,然后通过利用广义弯曲器分解来平行和分散的方式解决该模型。由于在不确定性环境中,很少对综合电力系统进行价格形成和结算问题,因此提出了一种新颖的预期位置边缘价值概念,以归功于PTG的灵活性,从而有助于对冲不确定性。通过与确定性模型和分布鲁棒模型进行比较,验证了所提出的随机模型的优势以及所提出的解决方案方法的效率。提出了PTG的定价和和解的详细结果,这表明预期的位置边际价值可以相当归功于PTG的贡献,并反映了捕获不确定性的系统不足。

The interdependency of power systems and natural gas systems is being reinforced by the emerging power-to-gas facilities (PtGs), and the existing gas-fired generators. To jointly improve the efficiency and security under diverse uncertainties from renewable energy resources and load demands, it is essential to co-optimise these two energy systems for day-ahead market clearance. In this paper, a data-driven integrated electricity-gas system stochastic co-optimisation model is proposed. The model is accurately approximated by sequential mixed integer second-order cone programming, which can then be solved in parallel and decentralised manners by leveraging generalised Benders decomposition. Since the price formation and settlement issues have rarely been investigated for integrated electricity-gas systems in an uncertainty setting, a novel concept of expected locational marginal value is proposed to credit the flexibility of PtGs that helps hedging uncertainties. By comparing with a deterministic model and a distributionally robust model, the advantage of the proposed stochastic model and the efficiency of the proposed solution method are validated. Detailed results of pricing and settlement for PtGs are presented, showing that the expected locational marginal value can fairly credit the contribution of PtGs and reflect the system deficiency of capturing uncertainties.

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