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Robust optimization vs. stochastic programming incorporating risk measures for unit commitment with uncertain variable renewable generation

机译:鲁棒的优化与随机规划相结合的风险度量,用于不确定不确定性可再生发电的机组承诺

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摘要

Unit commitment seeks the most cost effective generator commitment schedule for an electric power system to meet net load, defined as the difference between the load and the output of renewable generation, while satisfying the operational constraints on transmission system and generation resources. Stochastic programming and robust optimization are the most widely studied approaches for unit commitment under net load uncertainty. We incorporate risk considerations in these approaches and investigate their comparative performance for a multi-bus power system in terms of economic efficiency as well as the risk associated with the commitment decisions. We explicitly account for risk, via Conditional Value at Risk (CVaR) in the stochastic programming objective function, and by employing a CVaR-based uncertainty set in the robust optimization formulation. The numerical results indicate that the stochastic program with CVaR evaluated in a low-probability tail is able to achieve better cost-risk trade-offs than the robust formulation with less conservative preferences. The CVaR-based uncertainty set with the most conservative parameter settings outperforms an uncertainty set based only on ranges.
机译:机组承诺为电力系统寻求最具成本效益的发电机承诺计划,以满足净负荷,净负荷定义为负荷与可再生发电量之间的差额,同时满足对输电系统和发电资源的运行约束。随机规划和鲁棒优化是净负荷不确定性下机组承诺研究最广泛的方法。我们将风险考虑因素纳入这些方法,并从经济效率以及与承诺决策相关的风险方面研究其在多总线电源系统中的比较性能。我们通过随机规划目标函数中的条件风险值(CVaR)以及在稳健的优化公式中采用基于CVaR的不确定性集来明确说明风险。数值结果表明,在概率较低的尾部评估具有CVaR的随机程序,与健壮的公式(具有较少的保守偏好)相比,能够实现更好的成本风险权衡。具有最保守参数设置的基于CVaR的不确定性集优于仅基于范围的不确定性集。

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