Transportation Network Companies: Drivers’ Perceptions of Ride-Sharing Regarding Climate Change and Extreme Weather
Abstract
:1. Introduction
2. Materials and Methods
2.1. Design and Sample
2.2. Data Collection
2.3. Measures for Climate Change Belief Categories
- “Climate change is not happening”, which included participants believing that the climate is not changing and denying a human cause;
- “Climate change is not human related” for cautious participants that are aware of climate change but do not believe in a human cause;
- “Unsure of climate change”, including disengaged participants that had no opinion on climate change or unaware of climate change;
- “Climate change is caused by humans” for alarmed and concerned participants that are aware of climate change and attributing a human cause to it;
- “Unclear data” to classify participants that made no clear statements in regard to their climate change beliefs.
2.4. Data Analysis
3. Results
3.1. Climate Change Beliefs
3.2. Climate Change Impacts on TNC Drivers’ Business
3.3. TNC Drivers’ and the Companies’ Role with Climate Change
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Question | Question Type | Answer Type |
---|---|---|
(1) Where are you from? | Closed-ended | Nevada/Other US state/International origin |
(2) How long have you been living in the Reno area? | Closed-ended | Numeric (Number of years) |
(3) Are you a full-time driver? … if no, 3a) what other occupation do you have? | Closed-ended Closed-ended | Yes/No Field of other occupation |
(4) How long have you been driving for (TNC name)? | Closed-ended | Numeric (Duration in months) |
(5) What do you think about the weather in the Reno area? | Open-ended | Open answer |
(6) Has the weather changed over the last 10 years? … if yes, 6a) tell me, how the weather has changed over the past 10 years? … if no, 6b) have you noticed more extreme weather events such as snowstorms, periods of droughts, heatwaves, wildfires? | Closed-ended Open-ended Closed-ended | Yes/No Open answer Yes/No + additional comments |
(7) Are you more or less busy as a (TNC name) driver during bad weather events such as snowstorms, drought periods or heat waves? | Closed-ended | More/Same/Less busy + additional comments |
(8) Have you heard of climate change? | Closed-ended | Yes/No + additional comments |
(9) How concerned are you about climate change? … 9a) and why? | Closed-ended Open-ended | Not at all/A little bit/A lot Open answer |
(10) How do you think driving a car contributes to climate change? | Open-ended | Open answer |
(11) Do you see specific characteristics through which sharing a car through (name of ride-share company) contributes or mitigates climate change differently than driving a car for private rides? | Open-ended | Open answer |
(12) Have you heard of any green- or climate change-related initiatives from (name of TNC)? … if yes, 12a) Tell me what you heard? | Closed ended Open-ended | Yes/No Open answer |
(13) Do you have any other climate change related thoughts and beliefs or statements regarding shared-ride companies in the relationship to climate change to note for this survey? | Open-ended | Open answer |
(14) Are you comfortable to write down your car type? | Closed-ended | Sedan/SUV/Pickup truck |
(15) What fuel type is this vehicle? | Closed-ended | Gas/Diesel/Electric/Hybrid |
(16) Are you comfortable sharing your age? | Closed-ended | Numeric (Age in years) |
(17) Could you share your experience as a (TNC name) driver during the COVID-19 pandemic? | Open-ended | Open answer |
(18) In your opinion, do you think climate change could cause pandemics like COVID-19? | Closed-ended | Yes/No + additional comments |
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Characteristics | Number (%) N = 75 | Mean (sd, Range) N = 75 |
---|---|---|
Age of participants a | – | 50.4 years (sd = 13.9, 23—79 years) |
Origin of participants | ||
Nevada | 17 (22.7%) | – |
Other US state | 44 (58.7%) | – |
Outside the US | 13 (17.3%) | – |
Refused | 1 (1.3%) | – |
Period in Washoe county area | – | 18.4 years (sd = 14.9, 0.05—59 years) |
Occupation of participants | ||
Full-time TNC driver | 32 (42.7%) | – |
Other occupation | 29 (38.7%) | – |
Retired | 14 (18.7%) | – |
Period driving for TNC b | – | 25.4 months (sd = 16.8, 0.25—60 months) |
Participants’ car type | ||
Sedan with gas | 31 (41.3%) | – |
With hybrid | 5 (6.7%) | – |
With electric | 2 (2.7%) | – |
SUV with gas | 33 (44.0%) | – |
Pickup truck with gas | 4 (5.3%) | – |
Day of week for sample collection | ||
Monday to Friday | 55 (73.3%) | – |
Saturday/Sunday | 20 (26.7%) | – |
Ride length for sample collection | ||
In minutes | – | 11.8 min (sd = 2.7, 8—23 min) |
In kilometers | – | 9.0 km (sd = 1.4, 5.3—14.8 km) |
Category (Number of Participants) | Definition of Category | Exemplar (dis)-Belief Statements |
---|---|---|
Political/ economic/ societal instrument (n = 20) | (Dis)-beliefs that people in power tell them to believe in climate change and act upon it for societal, educational, economical, or political reasons. | Political “It [climate change] is a tool used for politics.” “I believe in governments that manipulate the climate.” Economic “America is the best for following money and money is massive for climate change.” “Climate change is a profit program for certain companies.” Societal “People are brainwashed in school about climate change.” “Some people have no choice to care because they live by each paycheck.” |
Natural climate cycles (n = 18) | (Dis)-beliefs that current climate change is part of natural cycles of the climate. | “There is a history of thousands of years of cycles of ice ages. It is natural that the climate changes.” “Because I don’t think that our past 100 years move the needle for a planet that was around for millions of years.” |
Personal observations (n = 18) | (Dis)-beliefs are based on personal observations of climate change and weather impacts and phenomena. | “I really don’t observe climate change in this place, in 30 years it’s been the same.” “No doubt, it is hotter, there are weirder weather patterns, wildfires are more extreme in California.” |
Climate change sciences (n = 12) | (Dis)-beliefs are based on scientific data evidence. | “People should cut trees and look at treerings or ice cores to see what changes we had in the past.” “Scientists said things about future floods, ice ages and now climate change, I don’t believe them anymore.” |
Higher power reasoning (n = 7) | (Dis)-beliefs are based on religious beliefs and attributing higher power to Earth. | “God has made the planet much too powerful to be changed by humans.” “I believe in a higher power that decides when and how I die and what temperature is right for the Earth.” |
Bigger than individual actions (n = 7) | (Dis)-beliefs that individual actions have no influence on the climate. | “Climate change is real [...] But I believe that [individual] people cannot do much about it.” “We are all so short on Earth that we have so little influence.” |
Technologies/ innovations (n = 6) | (Dis)-beliefs that current or future technologies and innovations will allow to overcome/mitigate climate change impacts. | “It’s [climate] going to change for the younger generation. We adapt, we will be ok.” |
Information from grey sources (n = 5) | (Dis)-beliefs are based on their information from grey sources such as media, newspapers, friends, or social circle. | “My brother watches climate change a lot more than me [...], if you watch YouTube and all, Florida will be underwater”. |
Lack of information (n = 4) | (Dis)-beliefs are based on the person feeling that they do not have enough information. | “I am not concerned because I really don’t understand it. I only look at my own bubble.” |
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Brugger, S.O.; Watts, T. Transportation Network Companies: Drivers’ Perceptions of Ride-Sharing Regarding Climate Change and Extreme Weather. Climate 2021, 9, 131. https://doi.org/10.3390/cli9080131
Brugger SO, Watts T. Transportation Network Companies: Drivers’ Perceptions of Ride-Sharing Regarding Climate Change and Extreme Weather. Climate. 2021; 9(8):131. https://doi.org/10.3390/cli9080131
Chicago/Turabian StyleBrugger, Sandra Olivia, and Theresa Watts. 2021. "Transportation Network Companies: Drivers’ Perceptions of Ride-Sharing Regarding Climate Change and Extreme Weather" Climate 9, no. 8: 131. https://doi.org/10.3390/cli9080131
APA StyleBrugger, S. O., & Watts, T. (2021). Transportation Network Companies: Drivers’ Perceptions of Ride-Sharing Regarding Climate Change and Extreme Weather. Climate, 9(8), 131. https://doi.org/10.3390/cli9080131