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Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging
AI, Volume: 2, Issue: 1, Pages: 135 - 149
Swansea University Authors: James Flynn, Cinzia Giannetti
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DOI (Published version): 10.3390/ai2010009
Abstract
With Electric Vehicles (EV) emerging as the dominant form of green transport in the UK, it is critical that we better understand existing infrastructures in place to support the uptake of these vehicles. In this multi-disciplinary paper, we demonstrate a novel end-to-end workflow using deep learning...
Published in: | AI |
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ISSN: | 2673-2688 |
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MDPI AG
2021
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URI: | https://cronfa.swan.ac.uk/Record/cronfa56687 |
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2022-08-15T15:09:49.1593577 v2 56687 2021-04-19 Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging 90788c8b9c1334834ba9cc37403ea471 James Flynn James Flynn true false a8d947a38cb58a8d2dfe6f50cb7eb1c6 0000-0003-0339-5872 Cinzia Giannetti Cinzia Giannetti true false 2021-04-19 FGSEN With Electric Vehicles (EV) emerging as the dominant form of green transport in the UK, it is critical that we better understand existing infrastructures in place to support the uptake of these vehicles. In this multi-disciplinary paper, we demonstrate a novel end-to-end workflow using deep learning to perform automated surveys of urban areas to identify residential properties suitable for EV charging. A unique dataset comprised of open source Google Street View images was used to train and compare three deep neural networks and represents the first attempt to classify residential driveways from streetscape imagery. We demonstrate the full system workflow on two urban areas and achieve accuracies of 87.2% and 89.3% respectively. This proof of concept demonstrates a promising new application of deep learning in the field of remote sensing, geospatial analysis, and urban planning, as well as a major step towards fully autonomous artificially intelligent surveying techniques of the built environment. Journal Article AI 2 1 135 149 MDPI AG 2673-2688 deep learning; electric vehicles; transfer learning; remote sensing; Google Street View 16 3 2021 2021-03-16 10.3390/ai2010009 COLLEGE NANME Science and Engineering - Faculty COLLEGE CODE FGSEN Swansea University SU College/Department paid the OA fee European Social Fund via the Welsh Government (c80816), Engineering and Physical Sciences Research Council (Grant Ref: EP/L015099/1). 2022-08-15T15:09:49.1593577 2021-04-19T11:49:44.7865646 Faculty of Science and Engineering School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Mechanical Engineering James Flynn 1 Cinzia Giannetti 0000-0003-0339-5872 2 56687__19677__132982e0e61a4c15b56812167e970cf1.pdf 55687.pdf 2021-04-19T11:51:40.2948290 Output 3697085 application/pdf Version of Record true Copyright: © 2021 by the authors. This is an open access article distributed under the terms of the Creative Commons Attribution (CC BY) license true eng http://creativecommons.org/licenses/by/4.0/ |
title |
Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging |
spellingShingle |
Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging James Flynn Cinzia Giannetti |
title_short |
Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging |
title_full |
Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging |
title_fullStr |
Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging |
title_full_unstemmed |
Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging |
title_sort |
Using Convolutional Neural Networks to Map Houses Suitable for Electric Vehicle Home Charging |
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90788c8b9c1334834ba9cc37403ea471 a8d947a38cb58a8d2dfe6f50cb7eb1c6 |
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90788c8b9c1334834ba9cc37403ea471_***_James Flynn a8d947a38cb58a8d2dfe6f50cb7eb1c6_***_Cinzia Giannetti |
author |
James Flynn Cinzia Giannetti |
author2 |
James Flynn Cinzia Giannetti |
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Journal article |
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AI |
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2 |
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135 |
publishDate |
2021 |
institution |
Swansea University |
issn |
2673-2688 |
doi_str_mv |
10.3390/ai2010009 |
publisher |
MDPI AG |
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Faculty of Science and Engineering |
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School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Mechanical Engineering{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Mechanical Engineering |
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description |
With Electric Vehicles (EV) emerging as the dominant form of green transport in the UK, it is critical that we better understand existing infrastructures in place to support the uptake of these vehicles. In this multi-disciplinary paper, we demonstrate a novel end-to-end workflow using deep learning to perform automated surveys of urban areas to identify residential properties suitable for EV charging. A unique dataset comprised of open source Google Street View images was used to train and compare three deep neural networks and represents the first attempt to classify residential driveways from streetscape imagery. We demonstrate the full system workflow on two urban areas and achieve accuracies of 87.2% and 89.3% respectively. This proof of concept demonstrates a promising new application of deep learning in the field of remote sensing, geospatial analysis, and urban planning, as well as a major step towards fully autonomous artificially intelligent surveying techniques of the built environment. |
published_date |
2021-03-16T04:11:49Z |
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1763753810923094016 |
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11.037166 |