Risk-Aware Security-Constrained Unit Commitment: Taming the Curse of Real-Time Volatility and Consumer Exposure

Daniel Bienstock;Yury Dvorkin;Cheng Guo;Robert Mieth;Jiayi Wang
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Abstract

We propose an enhancement to wholesale electricity markets to contain the exposure of consumers to increasingly large and volatile consumer payments arising as a byproduct of volatile real-time net loads – i.e., loads minus renewable outputs – and prices, both compared to day-ahead cleared values. We incorporate a trade-off, motivated by portfolio optimization methods, between standard day-ahead payments and a robust estimate of such excess payments into the day-ahead computation and specifically seek to account for volatility in real-time net loads and renewable generation. Our model features a data-driven uncertainty set based on principal component analysis, which accommodates both load and wind production volatility and captures locational correlation of uncertain data. To solve the model more efficiently, we develop a decomposition algorithm that can handle nonconvex subproblems. Our extensive experiments on a realistic NYISO data set show that the risk-aware model protects the consumers from potential high costs caused by adverse circumstances.
风险意识安全约束的单位承诺:驯服实时波动和消费者暴露的诅咒
我们建议对批发电力市场进行改进,以控制消费者面临越来越大且不稳定的消费者支付,这是实时净负荷(即负荷减去可再生能源产出)和价格波动的副产品,两者都与前一天的清算值相比。在投资组合优化方法的激励下,我们在标准的日前支付和对此类超额支付的稳健估计之间进行了权衡,并将其纳入了日前计算,并特别寻求考虑实时净负荷和可再生能源发电的波动性。我们的模型的特点是基于主成分分析的数据驱动的不确定性集,它适应负荷和风力生产的波动性,并捕获不确定数据的位置相关性。为了更有效地求解该模型,我们开发了一种可以处理非凸子问题的分解算法。我们在现实的NYISO数据集上进行的广泛实验表明,风险意识模型保护消费者免受不利环境造成的潜在高成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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