Deep Learning Approaches for Electrical Vehicular Mobility Management: Invited Paper

Aicha Dridi, Chérifa Boucetta, Abubakar Yau Alhassan, Hassine Moungla, H. Afifi, H. Labiod
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引用次数: 1

Abstract

Electrical vehicular (EV) energy management is a promising trend. Forecasting vehicular trajectories and delay is crucial for EV energy management. The presented work is devoted to the study and the application of deep learning techniques on specific road trajectories. First, exhaustive deep learning algorithms are considered. Second, road traces are converted to time series. Then, delays and road trajectories are analyzed. In fact, we consider two Recurrent Neural Networks (RNN): LSTM (Long Short Term Memory) and GRU (Gated Recurrent Units). Neural Networks are adapted and trained on 60 days of real urban traffic of Rome in Italy. We calculate the Loss function for both machine learning techniques which is defined by mean square error (MSE) and Root mean square error (RMSE). Experimental results demonstrate that both LSTM and GRU are adequate for the context of EV in terms of route trajectory and delay prediction.
电动汽车移动管理的深度学习方法:特邀论文
电动汽车(EV)能源管理是一个有前途的趋势。预测车辆轨迹和延迟是电动汽车能源管理的关键。本文致力于研究深度学习技术在特定道路轨迹上的应用。首先,考虑了穷举深度学习算法。其次,将道路轨迹转换为时间序列。然后,分析了延迟和道路轨迹。事实上,我们考虑两种递归神经网络(RNN): LSTM(长短期记忆)和GRU(门控递归单元)。神经网络在意大利罗马60天的真实城市交通中进行了调整和训练。我们计算了由均方误差(MSE)和均方根误差(RMSE)定义的两种机器学习技术的损失函数。实验结果表明,LSTM和GRU在路径轨迹和延迟预测方面都适合EV环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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