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A two-stage robust optimization for PJM look-ahead unit commitment

机译:PJM展望未来单位承诺的两级鲁棒优化

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Robust optimization recently becomes a state-of-the-art approach to solve decision-making under uncertainty problems in the power system operations. To better quantify and highlight the significance of the robust optimization for reliable unit commitment runs, PJM and Alstom Grid have collaborated to develop a two-stage robust optimization (TSRO) prototype since 2012. In this paper, we present a computational tractable TSRO framework for the PJM Look-Ahead Unit Commitment (LAUC) with the consideration of load uncertainty. Instead of only covering limited number of scenarios in the uncertainty set, TSRO provides a robust solution that immunizes all possible scenario realizations. Linear decision rule (LDR) and two-stage decomposition approaches are considered respectively to solve TSRO in this research. We test the scalability and sensitivity of the proposed models and algorithms with the PJM market data. Finally, the computational results indicate that the proposed TSRO framework provides sufficient ramping capability and improves the security of the large-scale power grid system.
机译:鲁棒优化最近成为解决下的电力系统运行的不确定性问题决策的一个国家的最先进的方法。为了更好地量化,并强调可靠的机组运行的鲁棒性优化的重要意义,PJM和阿尔斯通电网已经合作开发了两个阶段的稳健优化自2012年起在本文中(TSRO)的原型,我们提出了一个计算听话的TSRO框架在PJM预读机组(LAUC)与负载考虑不确定性。而不是只覆盖在不确定性组场景数量有限,TSRO提供了一个强大的解决方案,可以免所有可能的方案的实现。线性决策规则(LDR)和两阶段分解方法分别认为是解决TSRO这项研究。我们测试提出的模型和算法与PJM市场数据的可扩展性和灵敏度。最后,计算结果表明,该TSRO框架提供了足够的斜坡能力,提高了大型电网系统的安全性。

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