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Short-Term Load Forecasting for Electric Vehicle Charging Stations Based on Deep Learning Approaches

机译:基于深度学习方法的电动车充电站短期负荷预测

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摘要

Short-term load forecasting is a key task to maintain the stable and effective operation of power systems, providing reasonable future load curve feeding to the unit commitment and economic load dispatch. In recent years, the boost of internal combustion engine (ICE) based vehicles leads to the fossil fuel shortage and environmental pollution, bringing significant contributions to the greenhouse gas emissions. One of the effective ways to solve problems is to use electric vehicles (EVs) to replace the ICE based vehicles. However, the mass rollout of EVs may cause severe problems to the power system due to the huge charging power and stochastic charging behaviors of the EVs drivers. The accurate model of EV charging load forecasting is, therefore, an emerging topic. In this paper, four featured deep learning approaches are employed and compared in forecasting the EVs charging load from the charging station perspective. Numerical results show that the gated recurrent units (GRU) model obtains the best performance on the hourly based historical data charging scenarios, and it, therefore, provides a useful tool of higher accuracy in terms of the hourly based short-term EVs load forecasting.
机译:短期负荷预测是维持电力系统稳定有效运行的关键任务,为单位承诺和经济负载调度提供合理的未来负载曲线。近年来,内燃机(冰)的车辆的推动导致化石燃料短缺和环境污染,为温室气体排放带来了重大贡献。解决问题的有效方法之一是使用电动车辆(EVS)来更换冰的车辆。然而,由于EVS驱动器的巨大充电电源和随机充电行为,EVS的质量卷展栏可能对电力系统产生严重问题。因此,EV充电负荷预测的准确模型是新兴主题。在本文中,采用了四种精彩的深度学习方法,并比较了从充电站的透视中预测EVS充电负荷。数值结果表明,所通用的经常性单元(GU)模型在基于小时的历史数据充电方案上获得最佳性能,因此,在基于每小时的短期EVS负载预测方面提供了更高准确性的有用工具。

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