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Charging demand of Plug-in Electric Vehicles: Forecasting travel behavior based on a novel Rough Artificial Neural Network approach

机译:采用电动汽车的充电需求:基于新型粗糙人工神经网络方法的旅行行为

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The market penetration of Plug-in Electric Vehicles (PEVs) is escalating due to their energy saving and environmental benefits. In order to address PEVs impact on the electric networks, the aggregators need to accurately predict the PEV Travel Behavior (PEV-TB) since the addition of a great number of PEVs to the current distribution network poses serious challenges to the power system. Forecasting PEV-TB is critical because of the high degree of uncertainties in drivers' behavior. Existing studies mostly simplified the PEV-TB by mapping travel behavior from conventional vehicles. This could cause bias in power estimation considering the differences in PEV-TB because of charging pattern which consequently could bungle economic analysis of aggregators. In this study, to forecast PEV-TB an artificial intelligence-based method-feedforward and recurrent Artificial Neural Networks (ANN) with Levenberg Marquardt (LM) training method based on Rough structure - is developed. The method is based on historical data including arrival time, departure time and trip length. In this study, the correlation among arrival time, departure time and trip length is also considered. The forecasted PEV-TB is then compared with Monte Carlo Simulation (MCS) which is the main benchmarking method in this field. The results comparison depicted the robustness of the proposed methodology. The proposed method reduces the aggregators' financial loss approximately by 16 $/PEV per year compared to the conventional methods. The findings underline the importance of applying more accurate methods to forecast PEV-TB to gain the most benefit of vehicle electrification in the years to come. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于节能和环境效益,插入电动汽车(PEV)的市场渗透升级。为了解决PEVS对电网的影响,聚集器需要准确地预测PEV行为行为(PEV-TB),因为向当前分配网络添加了大量PEV来构成电力系统的严重挑战。由于司机行为的高度不确定性,预测PEV-TB至关重要。现有研究主要通过从传统车辆的行程行为绘制行政行为来简化PEV-TB。这可能导致功率估计中的偏差考虑PEV-TB的差异,因为充电模式因此可能是对聚合器的经济分析的扭曲。在本研究中,为了预测PEV-TB基于人工智能的方法 - 前馈和经常性的人工神经网络(ANN),基于粗糙结构的基于粗糙结构的Levenberg Marquardt(LM)训练方法。该方法基于包括到达时间,出发时间和行程长度的历史数据。在这项研究中,还考虑了到达时间,出发时间和跳闸长度之间的相关性。然后将预测的PEV-TB与Monte Carlo仿真(MCS)进行比较,这是该领域的主要基准测试方法。结果比较描绘了所提出的方法的鲁棒性。与常规方法相比,该方法每年减少大约16美元/ PEV的聚合器的财务损失。调查结果强调了应用更准确的方法来预测PEV-TB的重要性,以获得迄今为止的车辆电气化的最大利益。 (c)2019 Elsevier Ltd.保留所有权利。

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