Stochastic optimization of trading strategies in sequential electricity markets

Emil Kraft, M. Russo, D. Keles, V. Bertsch
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引用次数: 8

Abstract

Quantity and price risks determine key uncertainties market participants face in electricity markets with increased volatility, for instance due to high shares of renewables. In the time from day-ahead until real-time, there lies a large variation in best available information, such as between forecasts and realizations of uncertain parameters like renewable feed-in and electricity prices. This uncertainty reflects on both the market outcomes and the quantity of renewable generation, making the determination of sound trading strategies across different market segments a complex task. The scope of the paper is to optimize day-ahead and intraday trading decisions jointly for a portfolio with controllable and volatile renewable generation under consideration of risk. We include a reserve market, a day-ahead market and an intraday market in stochastic modeling and develop a multi-stage stochastic Mixed Integer Linear Program. We assess the profitability as well as the risk exposure, quantified by the conditional value at risk metric, of trading strategies following different risk preferences. We conclude that a risk-neutral trader mainly relies on the opportunity of higher expected profits in intraday trading, whereas risk can be hedged effectively by trading on the day-ahead. Finally, we show that reserve market participation implies various rationales, including the relation of expected reserve prices among each other, the relation of expected reserve prices to spot market prices, as well as the relation of the spot market prices among each other.
序贯电力市场交易策略的随机优化
数量和价格风险决定了市场参与者在波动性增加的电力市场面临的主要不确定性,例如由于可再生能源的高份额。从前一天到实时,最佳可用信息存在很大差异,例如在可再生能源上网电价和电价等不确定参数的预测和实现之间。这种不确定性既反映在市场结果上,也反映在可再生能源发电量上,使得在不同细分市场确定合理的交易策略成为一项复杂的任务。本文的研究范围是在考虑风险的情况下,对具有可控和不稳定可再生能源发电的投资组合进行日前和日内交易决策的联合优化。在随机模型中引入储备市场、日前市场和日内市场,建立了多阶段随机混合整数线性规划。我们评估盈利能力以及风险暴露,通过风险指标的条件价值量化,交易策略遵循不同的风险偏好。我们得出结论,风险中性交易者主要依赖于日内交易中较高预期利润的机会,而风险可以通过提前一天交易来有效对冲。最后,我们证明了储备市场参与隐含着多种基本原理,包括预期储备价格之间的关系、预期储备价格与现货市场价格之间的关系以及现货市场价格之间的关系。
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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