基于LSTM的停车场负荷预测

Mohamad Amin Gharibi, H. Abyaneh
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引用次数: 1

摘要

随着城市中电动汽车和插电式电动汽车数量的增加,电动汽车停车场在车辆电量估算和最优充电管理方面面临诸多挑战。为了增加电动汽车停车场所有者的利润,他们必须对自己的日前负荷有一个正确的估计,以便他们能够以低于实时市场(RTM)的价格向日前市场(DAM)提出申请。本文利用LSTM网络估算电动汽车日前负荷,并通过从DAM和RTM购买LSTM方法与其他传统方法进行比较。仿真结果表明,LSTM网络给出了非常准确的负荷估计,并且与实际值相比性能良好。在这种情况下,停车场可以有更高的利润。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parking lots Load prediction by LSTM
With the increase of electric vehicles (EVs) and plug-in electric vehicles (PEVs) in cities, EV parking lots face many challenges in estimating the electric charge and managing the optimal charge of the vehicles. To increase the profit of the owners of EV parking lots, they must have a correct estimate of the amount of their day ahead load so that they can request from the Day-Ahead Market(DAM) at a lower price than the Real-Time market (RTM). In this paper, using the LSTM network, the amount of EVs day ahead load is estimated and compared LSTM method with other conventional methods by buying from DAM and RTM. The simulation results show that the LSTM network gives a very accurate estimate of the load and performs well compared to the actual value. In this case, parking lots can have a higher profit.
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