使绿色交通成为现实:一种基于分类的数据分析方法来确定适合电动汽车充电点安装的特性

J. Flynn, E. Brealy, C. Giannetti
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引用次数: 2

摘要

随着电动汽车(EV)成为英国绿色交通的主要模式,地方当局和城市规划者能够准确地绘制现有电动汽车基础设施的地图至关重要。在本文中,我们展示了一种新的数据处理管道,用于分析遥感图像数据,以突出城市中最适合电动汽车基础设施的区域。通过将深度迁移学习应用于多个数据集,我们能够确定适合安装家用电动汽车充电点的单个地址。使用同样的方法,我们还强调了最有效安装社区充电点的区域。我们通过整合地形数据、人口普查数据和遥感图像数据,改进了以前的方法,实现了一个能够大规模测量外部建筑特征的全自动系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Making Green Transport a Reality: A Classification Based Data Analysis Method to Identify Properties Suitable for Electric Vehicle Charging Point Installation
With Electric Vehicles (EVs) emerging as the dominant mode of green transportation in the UK, it is critical that local authorities and urban planners can accurately map the existing EV infrastructures in place. In this paper, we demonstrate a novel data processing pipeline to analyse remotely sensed image data to highlight areas of a city most suitable for EV infrastructure. By applying deep transfer learning to multiple datasets, we are able to identify individual addresses suitable for the installation of home EV charging points. Using this same methodology, we also highlight areas where community charging points would be most effectively installed. We improve on previous methods by integrating topographical data, Census data, and remotely sensed image data to achieve a fully automated system capable of large-scale surveying of external building characteristics.
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CiteScore
1.20
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