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Reduced scenario methodology for treating uncertainty in transmission expansion with large wind power penetration

机译:减少情景方法的方法,用于处理大风电渗透时输电扩展的不确定性

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This paper presents an algorithm for solving the Transmission Expansion Planning (TEP) problem when large scale wind generation is considered. Variability of wind speed and demand uncertainty are taken into account. The formulation includes the DC model of the network, and the obtained expansion plans minimize the investment, the load shedding and the wind generation curtailment. The mathematical model includes uncertainties by means of an extreme scenario methodology that maps the uncertainty set. The Chu-Beasley Genetic Algorithm (CBGA) is used for finding feasible optimal expansion plans that cope with the uncertainties in load forecasting and also to maximize wind power injection. The proposed algorithm is validated on the 6-bus Garver system, IEEE 24-bus RTS test system and the real life South-Brazilian 46-bus system. Comparison with other methods is carried out to demonstrate the performance of the proposed approach.
机译:本文提出了一种在考虑大规模风力发电时解决输电扩展计划(TEP)问题的算法。考虑了风速的变化和需求的不确定性。该公式包括网络的DC模型,并且所获得的扩展计划将投资,负荷削减和风力发电削减最小化。数学模型通过映射不确定性集的极端情景方法来包括不确定性。 Chu-Beasley遗传算法(CBGA)用于找到可行的最佳扩展计划,以应对负荷预测中的不确定性,并最大程度地增加风能注入。该算法在6总线Garver系统,IEEE 24总线RTS测试系统和现实生活中的巴西南部46总线系统上得到了验证。与其他方法进行了比较,以证明该方法的性能。

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