Scheduling Electric Vehicle Fleets as a Virtual Battery under Uncertainty using Quantile Forecasts

N. Brinkel, Jing Hu, Lennard Visser, Wilfried van Sark, T. Alskaif
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引用次数: 1

Abstract

Electric vehicles have significant potential to reduce their charging costs by participating in electricity markets through electric vehicle smart charging. However, one of the main barriers to electric vehicle participation in an electricity market is the high uncertainty in their availability at the market gate closure time. Not accounting for this uncertainty when making market bids could result in high imbalance costs. This study proposes a method to determine the optimal bidding strategy for a fleet of electric vehicles under uncertainty using a scenario-based stochastic optimization algorithm. This model considers both the uncertainty in electric vehicle availability and uncertainty in imbalance prices in the electricity market, as well as the risk-aversiveness of aggregators to high charging costs using the conditional value-at-risk. It proposes to model the electric vehicle fleet as a virtual battery, and to use a set of quantile forecasts of the virtual battery parameters to account for the uncertainty in electric vehicle availability. The effectiveness of the proposed model is evaluated by testing it on an actual case study fleet. The results indicate that it is crucial to consider both the expected charging costs and the conditional value-at-risk when determining market bids for an electric vehicle fleet under uncertainty.
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基于分位数预测的不确定性虚拟电池电动汽车车队调度
电动汽车通过智能充电参与电力市场,降低充电成本的潜力巨大。然而,电动汽车参与电力市场的主要障碍之一是其在市场关闭时间的可用性的高度不确定性。在进行市场投标时不考虑这种不确定性可能导致高不平衡成本。提出了一种基于场景的随机优化算法在不确定条件下确定电动汽车最优竞价策略的方法。该模型考虑了电动汽车可用性的不确定性和电力市场价格不平衡的不确定性,以及聚合商对高充电成本的风险厌恶度。提出将电动汽车车队建模为一个虚拟电池,并使用虚拟电池参数的一组分位数预测来解释电动汽车可用性的不确定性。通过对实际案例研究机队的测试,评价了该模型的有效性。结果表明,在不确定条件下,考虑预期充电成本和条件风险价值是决定电动汽车市场投标的关键。
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