通过车联网实现可靠的频率调节:用稳健约束编码立法

Dirk Lauinger, François Vuille, Daniel Kuhn
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摘要

问题定义:通过向电网提供电动汽车电池,"汽车并网 "提高了私人电动汽车的低利用率。我们提出了一个稳健的优化问题,即最大化车主向电网出售一次频率调节的预期利润,并保证在编码了适用法律的功能不确定性集中的所有频率偏差轨迹中,始终满足市场承诺。对电池充放电过程中的能量转换损耗进行忠实建模会使该优化问题变得不凸。方法/结果:通过利用不确定性集的全单调性属性和精确的线性决策规则重述,我们证明了这个具有功能不确定性的非凸稳健优化问题等同于一个可处理的线性程序。通过使用真实世界数据进行广泛的数值实验,我们量化了车辆并网发电的经济价值,并阐明了车主、聚合器、设备制造商和监管机构的经济动机。管理意义:我们发现,目前对未交付承诺调节电量的处罚过低,无法激励车主履行向电网运营商提供的交付保证:本研究得到了 Vedecom 研究所的支持:在线附录见 https://doi.org/10.1287/msom.2022.0154 。
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Reliable Frequency Regulation Through Vehicle-to-Grid: Encoding Legislation with Robust Constraints
Problem definition: Vehicle-to-grid increases the low utilization rate of privately owned electric vehicles by making their batteries available to electricity grids. We formulate a robust optimization problem that maximizes a vehicle owner’s expected profit from selling primary frequency regulation to the grid and guarantees that market commitments are met at all times for all frequency deviation trajectories in a functional uncertainty set that encodes applicable legislation. Faithfully modeling the energy conversion losses during battery charging and discharging renders this optimization problem nonconvex. Methodology/results: By exploiting a total unimodularity property of the uncertainty set and an exact linear decision rule reformulation, we prove that this nonconvex robust optimization problem with functional uncertainties is equivalent to a tractable linear program. Through extensive numerical experiments using real-world data, we quantify the economic value of vehicle-to-grid and elucidate the financial incentives of vehicle owners, aggregators, equipment manufacturers, and regulators. Managerial implications: We find that the prevailing penalties for nondelivery of promised regulation power are too low to incentivize vehicle owners to honor the delivery guarantees given to grid operators.Funding: This work was supported by the Institut Vedecom.Supplemental Material: The online appendix is available at https://doi.org/10.1287/msom.2022.0154 .
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