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DER Aggregator’s Data-Driven Bidding Strategy Using the Information Gap Decision Theory in a Non-Cooperative Electricity Market

机译:非合作电力市场中DER Aggregator基于信息鸿沟决策理论的数据驱动竞价策略

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When multiple distributed energy resource (DER) aggregators exist in a non-cooperative power market, the calculation of individual aggregator's bidding strategies could encounter significant uncertainties for considering DERs and competing market participants' bidding strategies. In this paper, a bi-level bidding strategy optimization model is proposed for a DER aggregator which utilizes wind power, energy storage system (ESS), and curtailable load. At the upper level, the designated aggregator's bidding strategy is optimized considering the wind power uncertainty. The wind forecast error is modeled by an ambiguity set using the data-driven approach. The information gap decision theory (IGDT) method is employed in this paper to maximize the risk level the designated aggregator can bear for a certain level of expected payoff. By detecting the worst case in wind power generation, the upper-level model is linearized as an MILP. The designated aggregator submits its bids to the market using the linear utility function acquired from linear regression. At the lower level, the market clearing is carried out using competing market participants' bidding strategy scenarios. The scenarios and the corresponding probability are modeled through a data-driven approach. The market clearing problem is linearized using Taylor series. The price signal is iterated between the two levels as the proposed bi-level model is solved. Numerical results prove the validity and effectiveness of the proposed IGDT-based method. It is shown that the aggregator can adjust either the bidding quantities or coefficients to reach an expected payoff level. The bidding strategies are affected by uncertainties of wind power and competing bidding strategies. For an expected payoff level, when the designated aggregator is posed to consider a higherrisk of wind power uncertainty, the aggregator can only bear a lower risk level from competing bidding strategies and vice versa.
机译:当非合作电力市场中存在多个分布式能源(DER)聚合器时,在考虑DER和竞争性市场参与者的投标策略时,单个聚合器的投标策略的计算可能会遇到很大的不确定性。本文提出了一种利用风能,储能系统和可削减负荷的DER聚合器的二级投标策略优化模型。在较高级别,考虑风能不确定性,优化了指定的集合商的出价策略。通过使用数据驱动方法的歧义集对天气预报误差进行建模。本文采用信息缺口决策理论(IGDT)方法,以最大化指定的聚合器可以承受的预期收益水平的风险水平。通过检测风力发电的最坏情况,高层模型被线性化为MILP。指定的集合商使用从线性回归获得的线性效用函数将其投标提交给市场。在较低级别上,市场清算是使用竞争的市场参与者的出价策略方案进行的。方案和相应的概率是通过数据驱动的方法建模的。市场清算问题使用泰勒级数线性化。解决了所提出的双级模型后,在两个级之间迭代了价格信号。数值结果证明了该方法的有效性和有效性。结果表明,聚合器可以调整投标数量或系数以达到预期的收益水平。投标策略受风电不确定性和竞争性投标策略的影响。对于预期的收益水平,当指定的集合商被认为考虑较高的风电不确定性风险时,集合商只能承受来自竞争性投标策略的较低风险水平,反之亦然。

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