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Multi-period integrated natural gas and electric power system probabilistic optimal power flow incorporating power-to-gas units

机译:多期天然气和电力系统集成的概率最优潮流并入了电转气装置

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摘要

The increasing adoption of gas-fired power plants directly strengthens the coupling between electric power and natural gas systems. Current industrial practice in optimal power flow for electric power systems has not taken the security constraints of gas systems into consideration, resulting in an overly-optimistic solution. Meanwhile, the operation of electric power and natural gas systems is coupled over multiple periods because of the ramp rate limits of power generators and the slow dynamical characteristics of gas systems. Based on these motivations, we propose a multi-period integrated natural gas and electric power system probabilistic optimal power flow(M-GEPOPF) model, which includes dynamic gas flow models. To address the uncertainties originating from wind power and load forecasting, a probabilistic optimal power flow(POPF) calculation based on a three-point estimate method(3 PEM) is adopted. Moreover, power-togas(Pt G) units are employed to avoid wind power curtailment and enable flexible bi-directional energy flows between the coupled energy systems. An integrated IEEE RTS 24-bus electric power system and the Belgian 20-node natural gas system are employed as a test case to verify the applicability of the proposed M-GEPOPF model, and to demonstrate the potential economic benefits of Pt G units.
机译:通过燃气发电厂的增加直接加强电力和天然气系统之间的耦合。电力系统最优电流的当前工业实践并未考虑气体系统的安全约束,从而导致过度乐观的解决方案。同时,由于发电机的斜率限制以及气体系统的慢速动态特性,电力和天然气系统的操作在多个时段上耦合。基于这些动机,我们提出了一种多时期集成天然气和电力系统概率最优功率流(M-GEPOPF)模型,包括动态气体流动模型。为了解决源自风力和负载预测的不确定性,采用了基于三点估计方法(3 PEM)的概率最佳功率流(POPF)计算。此外,采用功率-ToGA(PT G)单元来避免风力缩减并使耦合能量系统之间的柔性双向能量能够流动。集成IEEE RTS 24-Bus电力系统和比利时20节天然气系统被用作测试用例,以验证所提出的M-GEPOPF模型的适用性,并展示Pt G单位的潜在经济效益。

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