论文标题
使用CNN Edectivicnet和IGTD算法的电池电动汽车的充电水平进行预测建模
Predictive Modeling of Charge Levels for Battery Electric Vehicles using CNN EfficientNet and IGTD Algorithm
论文作者
论文摘要
卷积神经网络(CNN)是理解庞大图像数据集的一个很好的解决方案。随着配备电池电动汽车的数量增加在全球范围内蓬勃发展,已经进行了很多研究,了解了哪种电荷电力汽车驾驶员会选择为车辆充电以无需任何预防就能到达目的地。我们实施了深度学习方法来分析表格数据集,以了解其充电状态以及他们会选择哪些充电水平。此外,我们还为表格数据集算法实现了图像生成器,以利用表格数据集作为图像数据集来训练卷积神经网络。此外,我们集成了其他CNN体系结构,例如Extricnet,以证明CNN是从表格数据集中转换的图像中读取信息的出色学习者,并且能够预测配备电池电池电动汽车的充电水平。我们还评估了几种优化方法,以提高模型的学习率,并检查了有关改进模型体系结构的进一步分析。
Convolutional Neural Networks (CNN) have been a good solution for understanding a vast image dataset. As the increased number of battery-equipped electric vehicles is flourishing globally, there has been much research on understanding which charge levels electric vehicle drivers would choose to charge their vehicles to get to their destination without any prevention. We implemented deep learning approaches to analyze the tabular datasets to understand their state of charge and which charge levels they would choose. In addition, we implemented the Image Generator for Tabular Dataset algorithm to utilize tabular datasets as image datasets to train convolutional neural networks. Also, we integrated other CNN architecture such as EfficientNet to prove that CNN is a great learner for reading information from images that were converted from the tabular dataset, and able to predict charge levels for battery-equipped electric vehicles. We also evaluated several optimization methods to enhance the learning rate of the models and examined further analysis on improving the model architecture.