Factors Influencing Consumer’s Adoption of Renewable Energy
Abstract
:1. Introduction
1.1. Consumer’s Renewable Energy
1.2. Renewable Energy in Thailand
2. Theoretical Framework
3. Formulation of Hypothesis
3.1. Perception of Self-Effectiveness
3.2. Environmental Concern
3.3. Cost of Renewable Energy Generation
3.4. Awareness
3.5. Renewable Energy Benefits Expectations
3.6. Risk and Trust Perception of Renewable Energy
- H1:
- Perception of self-effectiveness (SP) positively influences consumer adoption of renewable energy in Thailand
- H2:
- Environmental concern (EC) positively influences consumer adoption of renewable energy in Thailand
- H3:
- Cost of renewable energy (REC) generation negatively influences consumer adoption of renewable energy in Thailand
- H4:
- Awareness (REA) positively influences consumer adoption of renewable energy in Thailand
- H5:
- Beliefs about renewable energy benefits (BRE) positively influence consumer adoption of renewable energy in Thailand
- H6:
- Risk/trust perception (RTP) of renewable energy negatively influences consume adoption of renewable energy in Thailand.
4. Research Methods
4.1. Research Instrument
4.2. Measurement Scale and Data Collection
4.3. Data Analysis
5. Results and Analysis
5.1. Respondents Descriptive Statistics
5.2. Measureing Model Fitness
5.3. Structural Equation Modelling
6. Discussions
6.1. Association between Perception of Self-Effectiveness and Consumer Adoption of RE
6.2. Association between Environmental Concern and Consumer Adoption of RE
6.3. Association between Cost of Renewable Energy and Consumer Adoption of RE
6.4. Association between Awareness of Renewable Energy and Consumer Adoption of RE
6.5. Association between Beliefs about Renewable Energy and Consumer Adoption of RE
6.6. Association between Risk/Trust Perception of Renewable Energy and Consumer Adoption of RE
7. Conclusions and Recommendations
7.1. Implications
7.2. Policy Recommendations
7.3. Limitations of the Study
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Age | Frequency | Percent | |
---|---|---|---|
Age | 18–35 years | 87 | 22.4 |
36–55 years | 276 | 71.1 | |
56 and above | 25 | 6.4 | |
Gender | Male | 137 | 35.3 |
Female | 251 | 64.7 | |
Education | High school or lower | 9 | 2.3 |
Diploma | 268 | 69.1 | |
Graduate | 78 | 20.1 | |
Post Graduate | 33 | 8.5 | |
Occupation | self employed | 312 | 80.4 |
company employee | 29 | 7.5 | |
government officer | 24 | 6.2 | |
technical personnel | 13 | 3.4 | |
other | 10 | 2.6 | |
Monthly Income | <=10,000 Baht | 212 | 54.6 |
10,000–20,000 Baht | 91 | 23.5 | |
20,000–30,000 Baht | 47 | 12.1 | |
30,000–40,000 Baht | 7 | 1.8 | |
>=40,000 Baht | 31 | 8 | |
Residence | Urban | 242 | 62.3 |
Rural | 146 | 37.7 | |
Citizenship | Thai National | 322 | 82.9 |
Expatriate/Foreigner | 66 | 17.1 |
Constructs Items | Std. Loadings | CR | AVE | Cronbach’s Alpha | |
---|---|---|---|---|---|
Renewable Energy Awareness (REA) | 0.839 | 0.511 | 0.837 | ||
REA1 | I have interacted with renewable energy resources in the past | 0.714 | |||
REA2 | I am aware of renewable energy use and needs | 0.736 | |||
REA3 | I know different types of renewable energy that can be used | 0.671 | |||
REA4 | I know that renewable energy-based solutions are available in Thailand market | 0.701 | |||
REA5 | I am aware of the benefits of renewable energy utilization | 0.748 | |||
Self-effectiveness Perception (SP) | 0.872 | 0.578 | 0.870 | ||
SP1 | I possess the required knowledge to adopt renewable energy and its resources | 0.745 | |||
SP2 | I possess full control of consuming renewable energy resources | 0.787 | |||
SP3 | I know the experts to consults regarding renewable energy | 0.77 | |||
SP4 | I possess all resources of consuming renewable energy | 0.819 | |||
SP5 | I know where to find renewable energy products if I need them | 0.673 | |||
Environmental concern (EC) | 0.897 | 0.636 | 0.985 | ||
EC1 | I am anxious about pollution in the environment | 0.757 | |||
EC2 | Environmental pollution caused by energy is not good | 0.809 | |||
EC3 | I am anxious about environmental problems caused by energy sources | 0.833 | |||
EC4 | I am anxious about climate change and the associated hazardous effects | 0.774 | |||
EC5 | Utilization of renewable energy can improve the environment | 0.811 | |||
Renewable energy generation cost (REC) | 0.854 | 0.595 | 0.852 | ||
REC1 | The generation of renewable energy may cause additional cost | 0.761 | |||
REC2 | Renewable electricity is expensive as renewable energy projects need a heavy initial investment | 0.717 | |||
REC3 | Renewable energy consumption needs a high installation cost | 0.847 | |||
REC4 | The Recurrent cost of renewable energy may be quite high | 0.754 | |||
Belief about Renewable Energy benefits (BRE) | 0.886 | 0.608 | 0.885 | ||
BRE1 | The utilization of renewable energy reduces carbon emissions and improve energy structure | 0.766 | |||
BRE2 | Renewable energy would avail new environmental opportunities | 0.767 | |||
BRE3 | The utilization of renewable energy would improve public surroundings | 0.788 | |||
BRE4 | Energy supply would become improved with the utilization of RE | 0.813 | |||
BRE5 | Employment opportunities will be increased with the installation of new RE projects | 0.763 | |||
Intention to adopt renewable energy (IARE) | 0.890 | 0.618 | 0.889 | ||
IARE1 | I have the intention to adopt renewable energy | 0.78 | |||
IARE2 | The Energy-saving behavior encourage me to adopt renewable energy | 0.786 | |||
IARE3 | I am willing to be renewable energy adoption ambassador | 0.823 | |||
IARE4 | I have the intention to spend more on renewable energy than other sources of energy | 0.805 | |||
IARE5 | I strongly recommend others to adopt renewable energy | 0.734 | |||
Risk Perception of Renewable Energy (RTP) | 0.862 | 0.556 | 0.859 | ||
RTP1 | I believe that renewable energy is a risk-free source of energy | 0.724 | |||
RTP2 | I am aware of the risks associated with renewable energy | 0.719 | |||
RTP3 | I don’t think I am at risk when using renewable energy | 0.772 | |||
RTP4 | I trust renewable energy because it can provide for my best interests in mind | 0.823 | |||
RTP5 | I trust that using renewable energy would be a quick service | 0.684 |
Hypothesis | Relationship | β | Accept | ||
---|---|---|---|---|---|
H1 | SP | → | IARE | 0.327 *** | Yes |
H2 | EC | → | IARE | 0.100 *** | Yes |
H3 | REC | → | IARE | −0.025 | No |
H4 | REA | → | IARE | 0.283 *** | Yes |
H5 | BRE | → | IARE | 0.191 *** | Yes |
H6 | RTP | → | IARE | 0.050 | No |
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Wall, W.P.; Khalid, B.; Urbański, M.; Kot, M. Factors Influencing Consumer’s Adoption of Renewable Energy. Energies 2021, 14, 5420. https://doi.org/10.3390/en14175420
Wall WP, Khalid B, Urbański M, Kot M. Factors Influencing Consumer’s Adoption of Renewable Energy. Energies. 2021; 14(17):5420. https://doi.org/10.3390/en14175420
Chicago/Turabian StyleWall, William Philip, Bilal Khalid, Mariusz Urbański, and Michal Kot. 2021. "Factors Influencing Consumer’s Adoption of Renewable Energy" Energies 14, no. 17: 5420. https://doi.org/10.3390/en14175420
APA StyleWall, W. P., Khalid, B., Urbański, M., & Kot, M. (2021). Factors Influencing Consumer’s Adoption of Renewable Energy. Energies, 14(17), 5420. https://doi.org/10.3390/en14175420