Sentiments of Rural U.S. Communities on Electric Vehicles and Infrastructure: Insights from Twitter Data
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods
3.1. Data
3.1.1. Transportation Data
3.1.2. Twitter Data
3.2. Methodology
3.2.1. Generalized Linear Model (GLM)
3.2.2. Hierarchical Linear Model (HLM)
3.2.3. Geographically Weighted Regression (GWR) Model
4. Results
4.1. GLM Results
4.2. HLM Results
4.3. GWR Model Results
5. Conclusions and Discussions
5.1. Conclusion
- Twitter data as a source: Twitter provides real-time and large-scale perceptions on EVs, allowing us to explore public sentiment across various geographical locations.
- Structure model as a method: Model performances are enhanced when accounting for the clustering observations. The GWR model reveals spatial heterogeneity in sentiment and its relationship with variables across different U.S. regions.
- Sentiment influencing factors:
- (1)
- Topics discussing EV cost benefits and infrastructure investments in rural areas tended to evoke positive sentiment.
- (2)
- Having more EV charging stations in a county was also associated with a more positive sentiment.
- (3)
- Higher numbers of EV accidents in a county led to more negative sentiment.
- (4)
- The sex of tweet senders played a role in shaping sentiment. Male tweeters tended to be more optimistic about EV usage than female tweeters.
- (5)
- The tweet sender’s age did not seem to show a significant difference in sentiment.
5.2. Discussion
5.3. Final Remarks
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Level | N | Type | Mean | STD | Min | Max | |
---|---|---|---|---|---|---|---|
Sentiment (Positive = 1) | Individual | 11,630 | Binary | 0.37 | 0.48 | 0 | 1 |
Tweet Topics (1, 2, 3, 4) | Individual | 11,630 | Discrete | 2.82 | 1.03 | 1 | 4 |
Sender Sex (Male = 1) | Individual | 11,630 | Binary | 0.72 | 0.45 | 0 | 1 |
Sender Age | Individual | 11,630 | Continuous | 35.58 | 10.37 | 13 | 79 |
Number of EV stations | County | 2038 | Continuous | 17.98 | 98.75 | 0 | 3638 |
Number of EV accidents | County | 2038 | Continuous | 1.18 | 7.77 | 0 | 317 |
Rural indicator (Yes = 1) | County | 2038 | Binary | 0.25 | 0.44 | 0 | 1 |
Topic | Message | Sentiment | Gamma |
---|---|---|---|
Topic 1: EV charging experience in rural areas | “An EV driver’s desperate search to find electricity to charge his car in rural Cecil County, Maryland-A drama that unfolded on Dec. 7, 1908, exactly 110 years ago today. #rangeanxiety #onthisday pluginsites.org/1908-fritchle-\x85” | Neutral | 0.157 |
“Western States Try To Weasel Their Way Out Of Rural EV Charging: “ data-medium-file=“cleantechnica.com/files/2022/05/\x85” data-large-file=“cleantechnica.com/files/2022/05/\x85”/>In a previous article, I covered the aggressive plan the Biden Administration has\x85 dlvr.it/SSXTYf #Renewable #Energy https://t.co/0iJ9IiBWav” | Neutral | 0.157 | |
Topic 2: EV driving cost-benefit performance in rural areas | “@Locke_Wiggins It absolutely is. That said, so is the gas tax. I think the mileage tax would work for electric vehicles and as we eventually transition completely to them, it would replace the gas tax. Adding a mileage tax on top of gas tax would unfairly burden the rural economy.” | Neutral | 0.157 |
“Anywhere, but especially in NV, a tax on miles driven is a bad, regressive tax that places the greatest share of the burden on working families in rural communities. If #nvleg wants to recapture the 1% or so of the gas tax lost to EVs, a flat, $50 to $100 reg fee is way to go.” | Neutral | 0.156 | |
Topic 3: EV infrastructure investments toward rural communities | “Why America doesn’t have enough EV charging stations: Gas stations spar with utility companies, rural areas predict years of losses on chargers, spotty equipment threatens reliability: The U.S. EV charging network is a mess. dlvr.it/SdZ3Nd ^WSJ #Business #Finance #CFO https://t.co/W95huPTsmK” | Negative | 0.159 |
“From the ample funding for rural water projects & wildfire risk reduction efforts to infrastructure for EV charging stations, we couldn’t be more excited to see this incredible feat of bipartisanship come into fruition.\n\n#TesterGettingIt Done #CleanEnergyforAll#mtpol#mtnews” | Positive | 0.158 | |
Topic 4: Policy equity (energy, economic, environment, technology) on EV infrastructure | “A coalition of industry, finance, labor and public interest groups released its guiding principles on how to build the EV charging network we need. A top priority: ensuring charging stations get built in poor, disadvantaged and rural communities. \n\nMore:evcharginginitiative.com/principles” | Positive | 0.153 |
“How can advocates make sure equity focus grows w/#EV charging infrastructure in rural & urban areas? Zach Henkin @ForthMobility, Darren Epps @SouthernCompany, Terea Macomber @GRID, Philip Pugliese @GOCARTA, & Richard Steinberg @ElectrifyAm work to find out #SUMC19 pic.twitter.com/wOnyfa2KP8” | Neutral | 0.163 |
Estimate β | Std. Error | t Value | Pr(>|t|) * | |
---|---|---|---|---|
(Intercept) | −0.560 | 0.390 | −1.437 | 0.151 |
SexM | 0.186 | 0.108 | 1.716 | 0.079 |
Age | 0.004 | 0.003 | 0.955 | 0.386 |
Top2 | 0.350 | 0.169 | 2.072 | 0.038 |
Top3 | 0.465 | 0.167 | 2.779 | 0.005 |
Top4 | 0.310 | 0.164 | 1.884 | 0.060 |
Sta | 3.566 | 0.778 | 4.583 | <0.001 |
Acc | −2.771 | 1.074 | −2.580 | 0.010 |
Rur | 0.566 | 0.433 | 1.306 | 0.191 |
Sta:Rur | 3.914 | 0.930 | 4.207 | <0.001 |
Acc:Rur | −2.978 | 1.311 | −2.271 | 0.023 |
AIC = 2580 | ||||
AICc = 2786 | ||||
Residual sum of square = 1802.81 |
Fixed Effects | Estimate γ | Std. Error | t Value | Pr(>|t|) * |
---|---|---|---|---|
Intercept | 0.304 | 0.107 | 2.848 | 0.005 |
SexM | 0.042 | 0.024 | 1.768 | 0.077 |
Age | 0.001 | 0.001 | 1.022 | 0.669 |
Top2 | 0.077 | 0.036 | 2.119 | 0.034 |
Top3 | 0.101 | 0.036 | 2.816 | 0.005 |
Top4 | 0.071 | 0.035 | 2.024 | 0.043 |
Sta | 0.660 | 0.233 | 2.833 | 0.005 |
Acc | −0.640 | 0.285 | −2.245 | 0.026 |
Rur | 0.066 | 0.124 | 0.535 | 0.593 |
Sta:Rur | 0.709 | 0.277 | 2.559 | 0.012 |
Acc:Rur | −0.689 | 0.353 | −1.952 | 0.053 |
Random effects | Groups | Name | Variance | Std.Dev. |
County | (Intercept) | 0.010 | 0.100 | |
Residual | 0.214 | 0.463 | ||
AIC = 2751 | ||||
AICc = 2776 | ||||
Residual sum of square = 420.71 |
Global β(u, v) | Min | 1st Qu. | Median | 3rd Qu. | Max | |
---|---|---|---|---|---|---|
Intercept | 0.414 | 0.231 | 0.332 | 0.362 | 0.408 | 0.437 |
SexM | 0.040 | 0.004 | 0.021 | 0.029 | 0.055 | 0.075 |
Age | 0.001 | −0.003 | −0.001 | 0.001 | 0.002 | 0.003 |
Top2 | 0.074 | 0.043 | 0.073 | 0.078 | 0.094 | 0.123 |
Top3 | 0.099 | 0.020 | 0.055 | 0.092 | 0.116 | 0.133 |
Top4 | 0.065 | 0.033 | 0.059 | 0.067 | 0.075 | 0.089 |
Sta | 0.841 | 0.472 | 0.711 | 0.761 | 0.830 | 0.866 |
Acc | −0.570 | −1.062 | −0.737 | −0.581 | −0.544 | −0.286 |
Rur | 0.163 | −0.081 | 0.046 | 0.098 | 0.130 | 0.162 |
Sta:Rur | 0.915 | 0.584 | 0.748 | 0.848 | 0.907 | 0.979 |
Acc:Rur | −0.601 | −1.347 | −0.900 | −0.675 | −0.599 | −0.485 |
Adaptive quantile (optimal bandwidth) = 0.297 | ||||||
AIC = 2716 | ||||||
AICc = 2741 | ||||||
Residual sum of squares: 447.39 |
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Share and Cite
Wang, M.; Zhao, L.; Cochran, A.L. Sentiments of Rural U.S. Communities on Electric Vehicles and Infrastructure: Insights from Twitter Data. Sustainability 2024, 16, 4871. https://doi.org/10.3390/su16114871
Wang M, Zhao L, Cochran AL. Sentiments of Rural U.S. Communities on Electric Vehicles and Infrastructure: Insights from Twitter Data. Sustainability. 2024; 16(11):4871. https://doi.org/10.3390/su16114871
Chicago/Turabian StyleWang, Ming (Bryan), Li Zhao, and Abigail L. Cochran. 2024. "Sentiments of Rural U.S. Communities on Electric Vehicles and Infrastructure: Insights from Twitter Data" Sustainability 16, no. 11: 4871. https://doi.org/10.3390/su16114871
APA StyleWang, M., Zhao, L., & Cochran, A. L. (2024). Sentiments of Rural U.S. Communities on Electric Vehicles and Infrastructure: Insights from Twitter Data. Sustainability, 16(11), 4871. https://doi.org/10.3390/su16114871