Consumer Preferences for Electric Vehicle Charging Infrastructure Based on the Text Mining Method
Abstract
:1. Introduction
2. Methodology and Data
2.1. Data Sources
2.2. Methods
2.2.1. Publication Intensity Analysis
2.2.2. Data Preprocessing
2.2.3. Keyword Extraction
2.2.4. Keyword Similarity Analysis
3. Results and Discussion
3.1. Publication Intensity
3.1.1. Time Dimension
3.1.2. Spatial Dimension
3.2. Consumer Preference Analysis
3.2.1. Word Frequency Statistics
3.2.2. Keyword Extraction and Similarity Analysis
3.2.3. Visualization of Similarity Correlation Network
3.2.4. K-Means Cluster Analysis
3.3. Regional Difference Analysis
4. Conclusions and Policy Implications
4.1. Conclusions
4.2. Policy Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
User Name | Date | Province | City | Data Sources | Comment |
---|---|---|---|---|---|
Small seven-day tour | 16 April 2020 | Shanghai | PCauto a | Charging at home is convenient, so it is necessary to install a private charging pile. | |
Chushu Xiaole | 9 January 2019 | Jiangsu | Taizhou | PCauto | It’s so troublesome to go outside to charge. |
Citizen76 no regrets | 9 January 2019 | An’hui | Hefei | PCauto | Our community has built many charging piles this year. |
Soaring up | 24 March 2018 | Guangdong | Shenzhen | Zhihu b | I care more about the charging time. For a long distance, you can run hundreds of kilometers after entering the gas station in a few minutes. One oil gun can add many cars in half an hour. However, it takes at least half an hour for an electric car...A charging pile can only fill one or two cars in an hour. In this way, the time spent in queuing and charging is a bit unacceptable. The most unacceptable thing is that I can’t afford the electric car that I like. |
White paper without words Zonciu | 4 April 2018 | Guangxi | Nanning | Zhihu | The driving range is not a big problem. The biggest problem is that the charging speed is slow. When the ICEV runs out of gasoline, it can start again immediately after refueling, and the PEV has to be charged slowly. |
Tiger Hero | 24 June 2020 | Sichuan | Chengdu | Xcar c | All public parking spaces can be quickly charged, which can solve the problem of running long distances. |
Jinxuan Xie | 9 April 2020 | Shanghai | Sina Weibo d | What if the community does not allow to install the charging piles, will the government come forward to coordinate? | |
_Pinocchio_ | 27 May 2020 | Shandong | Sina Weibo | Our community property does not allow to install charging piles in the underground parking spaces. What should I do? | |
Mr. Van Gogh CVN18 | 9 April 2020 | Beijing | Sina Weibo | The charging time of PEV is less than 30 min, or the actual driving range is more than 800 km when the air conditioner is turned on. Otherwise, it’s really troublesome to run out of power halfway. | |
Xiaoxiao smiles smiles | 4 September 2019 | Guangdong | Shenzhen | Autohome e | It’s enviable to be able to install a charging pile, so commuting is basically zero fuel consumption |
X puppet | 4 August 2019 | Guangdong | Shenzhen | Autohome | It is very good that the community can install charging piles, and it will be much more convenient to charge in the future. |
ak7m9ycm3 | 20 September 2019 | Sichuan | Chengdu | Autohome | As long as the charging pile is solved, the NEVs will work well. |
Shanghai Little Frog | 3 April 2020 | Shanghai | Autohome | On the premise that there is a place to charge and the driving range is long, PEVs are definitely better than ICEVs. But the ICEV refuels quickly and is convenient for long-distance driving. |
City Level | City Name |
---|---|
First-tier cities | Beijing, Shanghai, Guangzhou, Shenzhen |
New first-tier cities | Chengdu, Hangzhou, Chongqing, Wuhan, Xi’an, Suzhou, Tianjin, Nanjing, Changsha, Zhengzhou, Dongguan, Qingdao, Shenyang, Hefei, Foshan |
Second-tier cities | Wuxi, Ningbo, Kunming, Dalian, Fuzhou, Xiamen, Harbin, Jinan, Wenzhou, Nanning, Changchun, Quanzhou, Shijiazhuang, Guiyang, Nanchang, Jinhua, Changzhou, Nantong, Jiaxing, Taiyuan, Xuzhou, Huizhou, Zhuhai, Zhongshan, Taizhou, Yantai, Lanzhou, Shaoxing, Langfang, Baoding |
Third-tier cities | Weifang, Yangzhou, Haikou, Shantou, Luoyang, Urumqi, Linyi, Tangshan, Zhenjiang, Yancheng, Huzhou, Ganzhou, Taizhou, Jining, Hohhot, Xianyang, Zhangzhou, Jieyang, Jiangmen, Guilin, Handan, Wuhu, Sanya, Fuyang, Huai’an, Zunyi, Yinchuan, Hengyang, Shangrao, Liuzhou, Zibo, Putian, Mianyang, Zhanjiang, Shangqiu, Yichang, Cangzhou, Lianyungang, Nanyang, Jiujiang, Xinxiang, Xinyang, Xiangyang, Yueyang, Bengbu, Zhumadian, Chuzhou, Weihai, Suqian, Zhuzhou, Ningde, Xingtai, Chaozhou, Qinhuangdao, Zhaoqing, Jingzhou, Zhoukou, Maanshan, Qingyuan, Suzhou, Anshan, Anqing, Heze, Yichun, Huanggang, Tai’an, Nanchong, Lu’an, Daqing, Zhoushan |
Fourth-tier cities | Changde, Weinan, Xiaogan, Lishui, Yuncheng, Dezhou, Xuchang, Xiangtan, Jinzhong, Anyang, Sanming, Kaifeng, Chenzhou, Maoming, Shaoyang, Deyang, Longyan, Nanping, Huainan, Huangshi, Yingkou, Bozhou, Rizhao, Xining, Quzhou, Dongying, Jilin, Shaoguan, Zaozhuang, Baotou, Huaihua, Xuancheng, Linfen, Liaocheng, Meizhou, Panjin, Jinzhou, Yulin, Beihai, Baoji, Fuzhou, Jingdezhen, Yulin, Shiyan, Shanwei, Xianning, Yibin, Jiaozuo, Pingdingshan, Binzhou, Ji’an, Yongzhou, Yiyang, Qiannan, Dandong, Qujing, Leshan, Southeast Guizhou, Zhangjiakou, Huangshan, Ordos, Yangjiang, Luzhou, Enshi, Hengshui, Tongling, Chengde, Honghe, Dali, Datong, Luohe, Gourd Island, Heyuan, Loudi, Yanbian, Qiqihar, Yan’an, Fushun, Lhasa, Tongren, Changzhi, Dazhou, Ezhou, Xinzhou, Luliang, Huaibei, Puyang, Meishan, Chizhou, Jingmen |
Fifth-tier cities | Hanzhong, Liaoyang, Wuzhou, Yingtan, Baise, Bijie, Qinzhou, Yunfu, Jiamusi, Chaoyang, Guigang, Lijiang, Siping, Neijiang, Liupanshui, Anshun, Sanmenxia, Chifeng, Xinyu, Mudanjiang, Jincheng, Zigong, Benxi, Fangchenggang, Tieling, Suizhou, Guangan, Guangyuan, Tianshui, Suining, Pingxiang, Xishuangbanna, Suihua, Hebi, Xiangxi, Songyuan, Fuxin, Jiuquan, Zhangjiajie, Southwest Guizhou, Baoshan, Zhaotong, Karamay, Hulunbuir, Hezhou, Tonghua, Yangquan, Hechi, Laibin, Yuxi, Ankang, Tongliao, Dehong, Chuxiong, Shuozhou, Yili, Wenshan, Jiayuguan, Liangshan, Ziyang, Xilin Gol, Ya’an, Pu’er, Chongzuo, Anqing, Bayinguoleng, Ulanchabu, Baishan, Changji, Baicheng, Xing’an, Dingxi, Kashgar, Baiyin, Longnan, Zhangye, Shangluo, Heihe, Hami, Wuzhong, Panzhihua, Bayannaoer, Bazhong, Jixi, Wuhai, Lincang, Haidong, Shuangyashan, Aksu, Shizuishan, Alxa, Haixi, Pingliang, Liaoyuan, Linxia, Tongchuan, Jinchang, Hegang, Yichun, Linzhi, Guyuan, Mighty, Danzhou, Turpan, Ganzi, Zhongwei, Nujiang, Hotan, Diqing, Gannan, Aba, Daxinganling, Qitaihe, Shannan, Xigaze, Tacheng, Bortala, Qamdo, Altay, Yushu, Hainan, Kizilsu, Ali, Haibei, Huangnan, Guoluo, Nagqu, Sansha |
First-Tier Cities | New First-Tier Cities | Second-Tier Cities | Third-Tier Cities | Fourth-Tier Cities | Fifth-Tier Cities | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Words | Frequency | Words | Frequency | Words | Frequency | Words | Frequency | Words | Frequency | Words | Frequency |
charging | 6478 | charging | 3440 | Charging | 1629 | charging | 951 | charging | 825 | charging | 483 |
installation | 1771 | installation | 1167 | installation | 647 | installation | 410 | driving range | 286 | not bad | 229 |
question | 1728 | question | 1103 | driving range | 588 | buy | 318 | buy | 252 | driving range | 223 |
driving range | 1566 | battery | 964 | Battery | 471 | Hanteng | 312 | compare | 236 | feel | 191 |
battery | 1565 | driving range | 962 | Buy | 409 | driving range | 266 | installation | 231 | compare | 177 |
Buy | 1256 | buy | 782 | Km | 398 | compare | 228 | use | 178 | buy | 176 |
Km | 1209 | property | 769 | property | 394 | good | 215 | battery | 173 | think | 170 |
Need | 1181 | km | 708 | meters | 306 | battery | 202 | km | 165 | this | 170 |
parking space | 1162 | Tesla | 665 | model | 294 | property | 192 | design | 164 | design | 166 |
Tesla | 1061 | community | 631 | parking space | 293 | use | 188 | large | 162 | BYD | 152 |
owner | 1041 | use | 604 | community | 271 | model | 188 | convenient | 160 | Roewe | 144 |
property | 868 | parking space | 591 | good | 261 | design | 183 | parameters | 159 | like | 140 |
compare | 864 | technology | 505 | vehicle | 250 | feel | 179 | power | 153 | configuration | 138 |
community | 832 | meter | 476 | design | 246 | km | 175 | inquiry | 152 | model | 132 |
service | 807 | convenient | 466 | convenient | 238 | parking space | 171 | model | 150 | system | 124 |
vehicle | 800 | fast charge | 420 | choice | 238 | convenient | 165 | BYD | 150 | space | 123 |
Time | 761 | service | 415 | time | 221 | parameters | 161 | space | 142 | convenient | 121 |
parking lot | 737 | time | 408 | BYD | 219 | X5 | 157 | time | 129 | parameters | 121 |
company | 706 | parameters | 407 | mode | 216 | owner | 156 | like | 129 | large | 118 |
NIO | 703 | China | 404 | hours | 212 | configuration | 152 | fast charge | 126 | installation | 116 |
convenient | 700 | development | 400 | install | 212 | space | 151 | property | 124 | inquiry | 116 |
technology | 698 | Design | 394 | drive | 202 | inquiry | 147 | service | 123 | appearance | 116 |
hours | 695 | vehicle | 393 | power | 196 | power | 142 | choice | 122 | high | 115 |
not bad | 670 | NIO | 392 | parameters | 195 | meters | 134 | technology | 117 | use | 113 |
fast charging | 655 | charging station | 385 | function | 194 | community | 130 | situation | 116 | smart | 111 |
install | 646 | owner | 382 | fast charging | 193 | choice | 128 | drive | 113 | choice | 102 |
development | 643 | construction | 371 | space | 185 | system | 126 | security | 110 | km | 102 |
construction | 641 | inquiry | 371 | owner | 183 | hybrid | 125 | fuel | 105 | service | 101 |
parameter | 620 | model | 368 | inquiry | 180 | consumer | 123 | vehicle | 102 | power | 100 |
charging station | 612 | safety | 359 | hybrid | 179 | BYD | 123 | mode | 102 | Ei5 | 99 |
design | 596 | hours | 356 | capacity | 178 | like | 122 | this | 101 | Roewe ei5 | 99 |
model | 581 | system | 347 | Tesla | 177 | smart | 115 | development | 99 | function | 94 |
china | 569 | company | 339 | smart | 173 | fast charging | 115 | system | 95 | interior | 94 |
BYD | 562 | city | 338 | technology | 172 | company | 113 | hour | 93 | battery | 93 |
inquiry | 560 | mode | 335 | fully charged | 169 | travel | 110 | configuration | 93 | fast charging | 82 |
space | 545 | market | 334 | highway | 168 | install | 107 | community | 91 | new | 82 |
process | 543 | space | 319 | provide | 167 | model | 106 | city | 90 | brand | 80 |
beijing | 542 | drive | 311 | safe | 165 | vehicle | 103 | appearance | 89 | a car | 77 |
system | 540 | function | 310 | construction | 162 | display | 101 | fully charged | 88 | this car | 76 |
city | 539 | fuel | 306 | fuel | 161 | market | 100 | price | 88 | buy a car | 69 |
meter | 533 | hybrid | 306 | system | 160 | time | 97 | main | 87 | fuel | 69 |
drive | 513 | highway | 305 | charge | 156 | this | 97 | market | 86 | Euler | 69 |
fuel | 505 | dynamics | 301 | service | 156 | fuel | 96 | charge | 85 | friends | 68 |
home | 504 | brand | 296 | home | 148 | home | 95 | mile | 84 | experience | 66 |
free | 495 | power | 295 | drive | 148 | fully charged | 94 | owner | 84 | price | 65 |
find | 491 | lines | 295 | support | 147 | lines | 93 | functions | 83 | hours | 64 |
price | 474 | fully charged | 292 | City | 146 | appearance | 93 | home | 83 | worry | 62 |
safe | 468 | BYD | 291 | experience | 145 | subsidy | 92 | buy a car | 81 | drive | 62 |
mode | 468 | charge | 286 | pick up a car | 144 | support | 92 | friends | 81 | voice | 62 |
policy | 467 | subsidy | 284 | configuration | 143 | function | 92 | Roewe | 79 | body | 61 |
References
- MPS. The Number of Private Cars in the Country Exceeded 200 Million for the First Time. In The Number of Cars in 66 Cities Exceeded 1 Million; Ministry of Public Security of the People’s Republic of China: Beijing, China, 2020. Available online: https://www.mps.gov.cn/n2254314/n6409334/c6852472/content.html (accessed on 15 December 2020).
- EV-Volumes. Global BEV & PHEV Sales for 2019. 2020. Available online: http://www.ev-volumes.com/country/total-world-plug-in-vehicle-volumes/ (accessed on 15 December 2020).
- Kurani, K.S.; Turrentine, T.; Sperling, D. Demand for electric vehicles in hybrid households: An exploratory analysis. Transp. Policy 1994, 1, 244–256. [Google Scholar] [CrossRef] [Green Version]
- Lieven, T. Policy measures to promote electric mobility—A global perspective. Transp. Res. Part A 2015, 82, 78–93. [Google Scholar] [CrossRef] [Green Version]
- Sierzchula, W.; Bakker, S.; Maat, K.; Wee, B.V. The influence of financial incentives and other socio-economic factors on electric vehicle adoption. Energy Policy 2014, 68, 183–194. [Google Scholar] [CrossRef]
- Zhang, X.; Bai, X.; Zhong, H. Electric vehicle adoption in license plate-controlled big cities: Evidence from Beijing. J. Clean. Prod. 2018, 202, 191–196. [Google Scholar] [CrossRef]
- Axsen, J.; Kurani, K.S. Hybrid, plug-in hybrid, or electric-What do car buyers want? Energy Policy 2013, 61, 532–543. [Google Scholar] [CrossRef]
- Ou, S.Q.; Lin, Z.H.; He, X.; Przesmitzki, S.; Bouchard, J. Modeling charging infrastructure impact on the electric vehicle market in China. Transp. Res. Part D 2020, 81, 102248. [Google Scholar] [CrossRef]
- Patt, A.; Aplyn, D.; Weyrich, P.; Vliet, O.V. Availability of private charging infrastructure influences readiness to buy electric cars. Transp. Res. Part A 2019, 125, 1–7. [Google Scholar] [CrossRef]
- Pevec, D.; Babic, J.; Carvalho, A.; Ghiassi-Farrokhfal, Y.; Ketter, W.; Podobnik, V. A Survey-Based Assessment of How Existing and Potential Electric Vehicle Owners Perceive Range Anxiety. J. Clean. Prod. 2020, 276, 122779. [Google Scholar] [CrossRef]
- Plötz, P.; Funke, S.A. Mileage Electrification Potential of Different Electric Vehicles in Germany 1-8. 2017. Available online: http://publica.fraunhofer.de/dokumente/N-445569.html (accessed on 21 December 2020).
- Zhang, A.L.; Du, M.J.; Liu, B. The Implication of Regional Consumer Credit Behavior Difference in Supply Side: An Empirical Study Based on PVAR Model with 29 Provincial Panel Data. Financ. Econ. Res. 2016, 31, 40–48. Available online: http://www.cnki.com.cn/Article/CJFDTotal-JIRO201606004.htm (accessed on 20 July 2020).
- EVCIPA. National Electric Vehicle Charging Infrastructure Operation Status in December 2019. 2019. Available online: https://mp.weixin.qq.com/s/5tSlFCCVSv3SfBqWLQ5Etg (accessed on 15 December 2020).
- Dunckley, J.; Tal, G. Plug-In Electric Vehicle Multi-State Market and Charging Survey. In Proceedings of the 29th World Electric Vehicle Symposium and Exhibition (EVS29), Montreal, QC, Canada, 19–22 June 2016. [Google Scholar]
- Morrissey, P.; Weldon, P.; O’Mahony, M. Future standard and fast charging infrastructure planning: An analysis of electric vehicle charging behavior. Energy Policy 2016, 89, 257–270. [Google Scholar] [CrossRef]
- Skippon, S.; Garwood, M. Responses to battery electric vehicles: UK consumer attitudes and attributions of symbolic meaning following direct experience to reduce psychological distance. Transp. Res. Part D 2011, 16, 525–531. [Google Scholar] [CrossRef]
- Neaimeh, M.; Salisbury, S.D.; Hill, G.A.; Blythe, P.T.; Sco, D.R.; Francfort, J.E. Analysing the usage and evidencing the importance of fast chargers for the adoption of battery electric vehicles. Energy Policy 2017, 108, 474–486. [Google Scholar] [CrossRef]
- Zhang, Y.; Zhang, Q.; Farnoosh, A.; Chen, S.Y.; Li, Y. GIS-Based Multi-Objective Particle Swarm Optimization of charging stations for electric vehicles. Energy 2019, 169, 844–853. [Google Scholar] [CrossRef]
- Gao, H.Y. Western Economics (Micro Section), 5th ed.; China Renmin University Press: Beijing, China, 2011. [Google Scholar]
- Wang, T. Research on Online Channel Decision-Making Based on Consumer Utility; South China University of Technology: Guangzhou, China, 2018; Available online: http://cdmd.cnki.com.cn/Article/CDMD-10561-1019824078.htm (accessed on 5 July 2020).
- Globisch, J.; Plötz, P.; Dütschke, E.; Wietschel, M. Consumer preferences for public charging infrastructure for electric vehicles. Transp. Policy 2019, 81, 54–63. [Google Scholar] [CrossRef]
- Pagani, M.; Korosec, W.; Chokani, N.; Abhari, R.S. User behaviour and electric vehicle charging infrastructure: An agent-based model assessment. Appl. Energy 2019, 254, 113680. [Google Scholar] [CrossRef]
- Van der Kam, M.; Van Sark, W.; Alkemade, F. Multiple roads ahead: How charging behavior can guide charging infrastructure roll-out policy. Transp. Res. Part D 2020, 85, 102452. [Google Scholar] [CrossRef]
- Jiang, H.C.; Qiang, M.S.; Lin, P. Assessment of online public opinions on large infrastructure projects: A case study of the Three Gorges Project in China. Environ. Impact Assess. Rev. 2016, 61, 38–51. [Google Scholar] [CrossRef]
- García-Pablos, A.; Cuadros, M.; Linaza, M.T. Automatic analysis of textual hotel reviews. Inf. Technol. Tour. 2016, 16, 45–69. [Google Scholar] [CrossRef]
- Hou, Z.P.; Gui, F.S.; Meng, Y.H.; Lian, T.H.; Yu, C.H. Opinion mining from online travel reviews: A comparative analysis of Chinese major OTAs using semantic association analysis. Tour. Manag. 2019, 74, 276–289. [Google Scholar] [CrossRef]
- Sarkar, D. Text Analytics with Python: A Practical Real-World Approach to Gaining Actionable Insights from Your Data; Yan, C.L.; Gao, D.Q.; Li, J.T., Translators; China Machine Press: Beijing, China, 2016. [Google Scholar]
- Trstenjak, B.; Mikac, S.; Donko, D. KNN with TF-IDF Based Framework for Text Categorization. Procedia Eng. 2014, 69, 1356–1364. [Google Scholar] [CrossRef] [Green Version]
- EVCIPA. 2019–2020 China Charging Infrastructure Development Report. 2020. Available online: https://mp.weixin.qq.com/s/cOHUkUWx865Y3qM5qaK_eA (accessed on 15 December 2020).
- Bryden, T.S.; Hilton, G.; Cruden, A.; Holton, T. Electric vehicle fast charging station usage and power requirements. Energy 2018, 152, 322–332. [Google Scholar] [CrossRef]
- Fu, Z.T.; Dong, P.W.; Ju, Y.B. An intelligent electric vehicle charging system for new energy companies based on consortium blockchain. J. Clean. Prod. 2020, 261, 121219. [Google Scholar] [CrossRef]
- Hardman, S.; Jenn, A.; Tal, G.; Axsen, J.; Beard, G.; Daina, N.; Witkamp, B. A review of consumer preferences of and interactions with electric vehicle charging infrastructure. Transp. Res. Part D Transp. Environ. 2018, 62, 508–523. [Google Scholar] [CrossRef] [Green Version]
- D1EV. First Electric Survey: 88% of Electric Car Owners Are Hindered from Installing Private Charging Piles, and 36% of Resistance Comes from Property! 2019. Available online: https://www.d1ev.com/news/shuju/99914 (accessed on 20 December 2020).
No. | Word | Frequency | No. | Word | Frequency | No. | Word | Frequency |
---|---|---|---|---|---|---|---|---|
1 | charging | 27,790 | 11 | Not | 4616 | 21 | feeling | 4043 |
2 | driving range | 9932 | 12 | parameters | 4614 | 22 | develop | 4041 |
3 | battery | 7566 | 13 | service | 4506 | 23 | car owner | 4032 |
4 | install | 6178 | 14 | market | 4461 | 24 | China | 3965 |
5 | kilometer | 6143 | 15 | design | 4457 | 25 | electricity | 3848 |
6 | vehicle type | 6070 | 16 | Drive | 7679 | 26 | charging station | 3802 |
7 | buy | 5686 | 17 | technology | 4414 | 27 | system | 3685 |
8 | win | 5571 | 18 | enquiry | 4401 | 28 | new | 3616 |
9 | BYD | 4879 | 19 | Tesla | 4360 | 29 | want | 3603 |
10 | month | 4848 | 20 | Time | 4326 | 30 | high | 3561 |
Topic 1: Charging | Topic 2: Installation of Private Charging Piles | Topic 3: Driving Range | Topic 4: National Policy | ||||
---|---|---|---|---|---|---|---|
Keywords | Weights | Keywords | Weights | Keywords | Weights | Keywords | Weights |
charging | 0.0243 | install | 0.0094 | range | 0.0160 | market | 0.0093 |
charging pile | 0.0180 | service | 0.0089 | kilometer | 0.0096 | China | 0.0088 |
battery | 0.0120 | enterprise | 0.0071 | trip | 0.0054 | development | 0.0080 |
charging station | 0.0087 | property | 0.0060 | highway | 0.0046 | construction | 0.0078 |
model | 0.0065 | parking place | 0.0059 | solve | 0.0042 | subsidy | 0.0065 |
time | 0.0062 | community | 0.0052 | air conditioner | 0.0041 | city | 0.0062 |
fast charging | 0.0055 | electricity meter | 0.0041 | battery power | 0.0040 | policy | 0.0053 |
hour | 0.0054 | free | 0.0039 | drive | 0.0039 | future | 0.0052 |
place | 0.0048 | State Grid Corporation of China | 0.0030 | exceed | 0.0037 | country | 0.0042 |
fully charged | 0.0044 | apply for | 0.0030 | minute | 0.0035671 | facility | 0.0039 |
Cluster No. | Key Features |
---|---|
0 | can, electric vehicle, charging, still, not |
1 | new energy, car, charging, development, market |
2 | this, charging, problem, can, still |
3 | driving range, mileage, kilometer, charging, anxiety |
4 | installation, property, charging, meter, community |
5 | charge, can, question, convenient, not |
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. |
© 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Wang, Y.-Y.; Chi, Y.-Y.; Xu, J.-H.; Li, J.-L. Consumer Preferences for Electric Vehicle Charging Infrastructure Based on the Text Mining Method. Energies 2021, 14, 4598. https://doi.org/10.3390/en14154598
Wang Y-Y, Chi Y-Y, Xu J-H, Li J-L. Consumer Preferences for Electric Vehicle Charging Infrastructure Based on the Text Mining Method. Energies. 2021; 14(15):4598. https://doi.org/10.3390/en14154598
Chicago/Turabian StyleWang, Yuan-Yuan, Yuan-Ying Chi, Jin-Hua Xu, and Jia-Lin Li. 2021. "Consumer Preferences for Electric Vehicle Charging Infrastructure Based on the Text Mining Method" Energies 14, no. 15: 4598. https://doi.org/10.3390/en14154598
APA StyleWang, Y. -Y., Chi, Y. -Y., Xu, J. -H., & Li, J. -L. (2021). Consumer Preferences for Electric Vehicle Charging Infrastructure Based on the Text Mining Method. Energies, 14(15), 4598. https://doi.org/10.3390/en14154598