| Literature DB >> 30473587 |
Ayça Berfu Ünal1, Linda Steg1, Madelijne Gorsira2.
Abstract
Eco-driving can be an effective strategy to save fuel and reduce CO2 emissions on the road. In the current study, we reason that personal norms are important predictors of eco-driving, and that they are activated when people are aware of environmental problems caused by behavior (problem awareness) and believe that they can contribute to the solution of the problem by changing behavior (outcome efficacy). Extending previous research, we aim at testing two antecedents of this norm activation process: values and environmental knowledge. Results revealed that in comparison with knowledge, values-in particular biospheric values-were strongly associated with the intention to eco-drive by being highly related to awareness of problems caused by car use, which in turn was associated with stronger outcome efficacy beliefs and personal norms for eco-driving. Findings indicate that values are more likely to be a motivational force for pro-environmental intentions than is environmental knowledge.Entities:
Keywords: eco-driving; environmental knowledge; norm activation model; personal norm; values
Year: 2017 PMID: 30473587 PMCID: PMC6207993 DOI: 10.1177/0013916517728991
Source DB: PubMed Journal: Environ Behav ISSN: 0013-9165
Percentages of Correctly and Incorrectly Given Responses on Knowledge Statements.
| Correct | Incorrect | No idea | Missing | |
|---|---|---|---|---|
| General knowledge of causes of global warming | ||||
| 1. The cutting of trees enhances global warming | 81.5 | 11.1 | 6.2 | 1.2 |
| 2. Intensive pig farms contribute to global warming | 72.8 | 4.9 | 21 | 1.2 |
| 3. Methane emissions by car use contribute to global warming | 34.6 | 17.3 | 46.9 | 1.2 |
| 4. CO2 emissions have the biggest contribution to global warming | 65.4 | 9.9 | 23.5 | 1.2 |
| 5. The use of fossil fuels, such as oil, coal, and gas, contributes to global warming | 87.7 | 1.2 | 9.9 | 1.2 |
| General knowledge of consequences of global warming | ||||
| 1. According to most scientists, greenhouse gas emissions by humans lead to climate change | 85.2 | 8.6 | 3.7 | 2.5 |
| 2. Global warming leads to floods | 74.1 | 13.6 | 11.1 | 1.2 |
| 3. According to most of the scientists, global warming leads to extreme weather conditions | 72.8 | 14.8 | 9.9 | 2.5 |
| 4. Global warming leads to the extinction of species | 76.5 | 7.4 | 14.8 | 1.2 |
| 5. Deserts get bigger as a consequence of global warming | 55.6 | 18.5 | 24.7 | 1.2 |
| 6. Global warming leads to the formation of holes in the ozone[ | 21 | 67.9 | 11.1 | - |
| 7. Acid rain is a direct consequence of the greenhouse effect[ | 35.8 | 55.6 | 7.4 | 1.2 |
| Specific knowledge of CO2 emissions and particulate matter resulting from car use | ||||
| 1. Old generation cars have higher CO2 emissions than the same type of new generation cars | 88.9 | 4.9 | 3.7 | 2.5 |
| 2. Particulate filters reduce CO2 emission by cars[ | 69.1 | 17.3 | 11.1 | 2.5 |
| 3. Cars that run on biofuels emit no CO2 | 58 | 14.8 | 24.7 | 2.5 |
| 4. Driving 2 times with the car means 2 times more CO2 emissions[ | 71.6 | 12.3 | 14.8 | 1.2 |
| 5. The weight of the car does not matter for the amount of CO2 that the car emits[ | 34.6 | 60.5 | 3.7 | 1.2 |
| 6. In general, diesel cars emit less particulate matter than benzene cars[ | 71.6 | 11.1 | 17.3 | — |
Indicates that the statement is false, and therefore, a correct response on these statements would be to indicate that it is a false statement.
Figure 1.The chain model in the VBN theory and KBN theory.
Note. VBN = value–belief–norm; KBN = knowledge–belief–norm.
Correlations Between Variables.
| 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | |
|---|---|---|---|---|---|---|---|---|---|
| 1. General knowledge–causes | 1.00 | ||||||||
| 2. Specific knowledge | .38 | ||||||||
| 3. General knowledge–consequences | .36 | .39 | |||||||
| 4. Egoistic | −.03 | .18 | .09 | ||||||
| 5. Altruistic | .13 | −.16 | .07 | .001 | |||||
| 6. Biospheric | .10 | −.09 | −.02 | .06 | .65 | ||||
| 7. Problem awareness | .15 | .02 | .28 | −.10 | .37 | .57 | |||
| 8. Outcome efficacy | .25 | .18 | .13 | −.03 | .37 | .58 | .50 | ||
| 9. Personal norm | .02 | .01 | .15 | −.11 | .26 | .51 | .46 | .42 | |
| 10. Intention | .19[ | .14 | .25 | −.10 | .29 | .44 | .32 | .50 | .69 |
Note. General knowledge–causes indicates “general knowledge of causes of global warming.” Specific knowledge indicates “specific knowledge of CO2 emissions and particulate matter resulting from car use.” General knowledge–consequences indicates “general knowledge of consequences of global warming.”
Marginally significant at p = .08.
p < .05. **p < .01. ***p < .001.
Multiple Regression Analyses Testing Whether Intention to Eco-Drive Would Be Predicted by a Process of Value-Triggered Norm Activation.
| β |
| Adjusted |
|
|
| |
|---|---|---|---|---|---|---|
| DV: Intention to eco-drive | ||||||
| Step 1 | .47 | 72.15 | 1, 79 | .000 | ||
| PN (eco-driving) | .69 | 8.49 | ||||
| Step 2 | .51 | 14.58 | 5, 74 | .000 | ||
| PN (eco-driving) | .61 | 6.34 | ||||
| OE (eco-driving) | .28 | 2.74 | ||||
| PA (car use) | −.12 | −1.17 | ||||
| Egoistic | −.03 | −0.41 | ||||
| Altruistic | .08 | 0.80 | ||||
| Biospheric | −.02 | −0.11 | ||||
| DV: PN (eco-driving) | ||||||
| Step 1 | .17 | 17.32 | 1, 79 | .000 | ||
| OE (eco-driving) | .42 | 4.16 | ||||
| Step 2 | .29 | 7.44 | 4, 75 | .000 | ||
| OE (eco-driving) | .13 | 1.09 | ||||
| PA (car use) | .19 | 1.61 | ||||
| Egoistic | −.11 | −1.19 | ||||
| Altruistic | −.13 | −1.01 | ||||
| Biospheric | .41 | 2.70 | ||||
| DV: OE (eco-driving) | ||||||
| Step 1 | .24 | 26.72 | 1, 79 | .000 | ||
| PA (car use) | .50 | 5.17 | ||||
| Step 2 | .35 | 11.86 | 3, 76 | .000 | ||
| PA (car use) | .25 | 2.24 | ||||
| Egoistic | −.03 | −0.35 | ||||
| Altruistic | −.02 | −0.18 | ||||
| Biospheric | .46 | 3.40 | ||||
| DV: PA (car use) | ||||||
| Step 1 | .31 | 13.16 | 3, 77 | .000 | ||
| Egoistic | −.13 | −1.44 | ||||
| Altruistic | −.01 | −0.07 | ||||
| Biospheric | .58 | 4.76 | ||||
Note. PN = personal norms; OE = outcome efficacy; PA = problem awareness; DV = dependent variable.
p < .05. **p < .01. ***p < .001.
Multiple Regression Analyses Testing Whether Intention to Eco-Drive Would Be Predicted by a Process of Knowledge-Triggered Norm Activation.
|
|
| Adjusted |
|
|
| |
|---|---|---|---|---|---|---|
| DV: Intention to eco-drive | ||||||
| Step 1 | .47 | 72.15 | 1, 79 | .000 | ||
| PN (eco-driving) | .69 | 8.49 | ||||
| Step 2 | .53 | 16.17 | 5, 74 | .000 | ||
| PN (eco-driving) | .62 | 6.94 | ||||
| OE (eco-driving) | .27 | 2.79 | ||||
| PA (car use) | .–15 | −1.50 | ||||
| General knowledge of causes of global warming | .09 | 1.07 | ||||
| General knowledge of consequences of global warming | .13 | 1.45 | ||||
| Specific knowledge of CO2 emissions and particulate matter resulting from car use | .00 | −0.004 | ||||
| DV: PN (eco-driving) | ||||||
| Step 1 | .17 | 17.32 | 1, 79 | .000 | ||
| OE (eco-driving) | .42 | 4.16 | ||||
| Step 2 | .23 | 5.67 | 4, 75 | .000 | ||
| OE (eco-driving) | .30 | 2.51 | ||||
| PA (car use) | .30 | 2.53 | ||||
| General knowledge of causes of global warming | −.12 | −1.06 | ||||
| General knowledge of consequences of global warming | .08 | 0.73 | ||||
| Specific knowledge of CO2 emissions and particulate matter resulting from car use | −.04 | −0.33 | ||||
| DV: OE (eco-driving) | ||||||
| Step 1 | .24 | 26.72 | 1, 79 | .000 | ||
| PA (car use) | .50 | 5.17 | ||||
| Step 2 | .27 | 8.39 | 3, 76 | .000 | ||
| PA (car use) | .51 | 5.09 | ||||
| General knowledge of causes of global warming | .16 | 1.46 | ||||
| General knowledge of consequences of global warming | −.13 | −1.16 | ||||
| Specific knowledge of CO2 emissions and particulate matter resulting from car use | .16 | 1.44 | ||||
| DV: PA (car use) | ||||||
| Step 1 | .06 | 2.61 | 3, 77 | .06 | ||
| General knowledge of causes of global warming | .10 | 0.79 | ||||
| General knowledge of consequences of global warming | .29 | 2.40 | ||||
| Specific knowledge of CO2 emissions and particulate matter resulting from car use | −.13 | −1.03 | ||||
Note. PN = personal norms; OE = outcome efficacy; PA = problem awareness, DV = dependent variable.
p < .05. **p < .01. ***p < .001.