For a new city that is committed to promoting Electric Vehicles (EVs), it is significant to plan the public charging infrastructure where charging demands are high. However, it is difficult to predict charging demands before the actual deployment of EV chargers for lack of operational data, resulting in a deadlock. A direct idea is to leverage the urban transfer learning paradigm to learn the knowledge from a source city, then exploit it to predict charging demands, and meanwhile determine locations and amounts of slow/fast chargers for charging stations in the target city. However, the demand prediction and charger planning depend on each other, and it is required to re-train the prediction model to eliminate the negative transfer between cities for each varied charger plan, leading to the unacceptable time complexity. To this end, we propose the concept and an effective solution of Simultaneous Demand Prediction And Planning (SPAP): discriminative features are extracted from multi-source data, and fed into an Attention-based Spatial-Temporal City Domain Adaptation Network (AST-CDAN) for cross-city demand prediction; a novel Transfer Iterative Optimization (TIO) algorithm is designed for charger planning by iteratively utilizing AST-CDAN and a charger plan fine-tuning algorithm. Extensive experiments on real-world datasets collected from three cities in China validate the effectiveness and efficiency of SPAP. Specially, SPAP improves at most 72.5% revenue compared with the real-world charger deployment.
翻译:对于致力于推广电动车辆(EVs)的新城市来说,重要的是在需求高的地方规划公共收费基础设施;然而,由于缺少操作数据,很难预测在实际部署EV充电器之前因缺乏操作数据而提出收费要求,从而导致僵局。一个直接的想法是利用城市转移学习模式从来源城市学习知识,然后利用这一模式来预测收费需求,同时确定目标城市收费站的缓慢/快速充电站的位置和数量。然而,需求预测和充电规划取决于彼此,需要重新培训预测模型,以消除各式各样的电源计划在城市之间的负转移,从而导致不可接受的时间复杂性。为此目的,我们提出“同量需求预测和规划”的概念和有效解决方案:从多来源数据中提取歧视性特征,并反馈给关注的跨城市需求预测基于空间/时空城市的适应网络(AST-Cdan);新设计的“异性优化配置”预测模型,以便消除各式电荷充电计划之间的负转移,从而导致无法接受的时间复杂性。为此,我们提出了“同声需求预测”需求预测“需求预测”概念和有效解决方案:从现实的SPS-AS-ADAR ASimal Avial Avical”系统对中国进行真正的投资进行真正的升级。