论文标题
在不确定和非凸负载模型下的汇总灵活性的数据驱动建模
Data-Driven Modeling of Aggregate Flexibility under Uncertain and Non-Convex Load Models
论文作者
论文摘要
通过负载聚合器捆绑大量分布式能源资源,已被提倡是将这些资源整合到全销售能源市场中的有效手段。为了简化市场清算,系统操作员允许聚合器提交简单预测的多重型形状的竞标模型。聚合器需要仔细设计并致力于最能沿日期安排范围捕获其能量灵活性的多层。这项工作为聚合器提供了基于模型的基于数据的最佳灵活性设计,该设计涉及单个负载的时间耦合,不确定和非凸模型。提出的解决方案首先生成(非) - disaggregatable计划的标记数据集。然后,使用标记的数据集训练凸二次分类器时,通过椭圆形近似聚合器的可行组。椭圆形随后通过多层镜头近似。使用Farkas引理,获得的多层人士最终通过市场决定的多重色形状近似。数值测试显示了提议的柔韧性设计框架的有效性,以设计可行的小型和大型聚合器,可协调太阳能光伏,恒温控制的负载,电池和电动汽车。这些测试进一步表明,对于聚合者,考虑最佳灵活性设计中的时间耦合和不确定性至关重要。
Bundling a large number of distributed energy resources through a load aggregator has been advocated as an effective means to integrate such resources into whole-sale energy markets. To ease market clearing, system operators allow aggregators to submit bidding models of simple prespecified polytopic shapes. Aggregators need to carefully design and commit to a polytope that best captures their energy flexibility along a day-ahead scheduling horizon. This work puts forth a model-informed data-based optimal flexibility design for aggregators, which deals with the time-coupled, uncertain, and non-convex models of individual loads. The proposed solution first generates efficiently a labeled dataset of (non)-disaggregatable schedules. The feasible set of the aggregator is then approximated by an ellipsoid upon training a convex quadratic classifier using the labeled dataset. The ellipsoid is subsequently inner approximated by a polytope. Using Farkas lemma, the obtained polytope is finally inner approximated by the polytopic shape dictated by the market. Numerical tests show the effectiveness of the proposed flexibility design framework for designing the feasible sets of small- and large-sized aggregators coordinating solar photovoltaics, thermostatically-controlled loads, batteries, and electric vehicles. The tests further demonstrate that it is crucial for the aggregator to consider time-coupling and uncertainties in optimal flexibility design.