An Analysis of the Driving Factors Related to Energy Consumption in the Road Transport Sector of the City of Douala, Cameroon
Abstract
:1. Introduction
- The growth in road transportation activity leads to an increase in the number of vehicles and energy consumption, more specifically fossil fuels (resulting in negative externalities on the environment). It is therefore necessary to design sustainable transportation planning that can reduce energy consumption and reduce greenhouse gas emissions and thus save energy. This implies a comprehensive understanding of the fleet of vehicles in circulation, for which it is important to analyze two aspects: First, the aspect of “vehicle energy intensity”, to analyze the performance of the vehicle fleet and to rationalize energy consumption. The second aspect refers to “vehicle intensity” in order to analyze the structure of the transport system;
- The development of countries and cities around the world is due to technological advances and growth of industries which ultimately lead to economic advancement. In such an environment, we observe the flow of urban mobility. Hence, it is important to highlight the “economic growth” aspect in order to analyze its contribution to the variation in energy consumption;
- The growing demand for urban mobility has a strong correlation with the evolution of population and urbanization. This implies knowledge of the “population effect” in terms of its contribution to the variation in energy consumption. After these three remarks were noted, followed by a review of the literature, we chose four driving factors behind the increase in energy consumption involved in road transport.
2. Literature Review
3. Energy Consumption of Road Transport in the City of Douala
4. Data and Methodology
4.1. Source of Data
4.2. Data
4.2.1. The Energy Intensity of Vehicles
4.2.2. Vehicle Intensity
4.2.3. Economic Growth and Motorization
4.2.4. Population Growth and Urbanization
4.3. Methodology
- VFI represents the energy intensity of vehicles, defined as the energy demand per vehicle;
- VI is the intensity of vehicles translating the demand for vehicles for a unit of GDP;
- GDP represents the economic growth per inhabitant and makes it possible to better understand the evolution of the motorization rate, and to assess the impact on the use of vehicles and energy consumption;
- POP represents the population of the city of Douala, which helps to understand the impact of population growth on energy consumption.
- The change in the energy intensity of vehicles , with effect coefficient ;
- The variation in the intensity of vehicles , with effect coefficient ;
- Change in economic activity, with effect coefficient ;
- Population change, with effect coefficient
5. Results and Discussion
5.1. Effect of Vehicle Energy Intensity
5.2. Vehicle Intensity Effect
5.3. Effect of Economic Growth
5.4. Demographic Effect
6. Conclusions
- Consider regulatory restrictions for the importation of vehicles;
- Monitor the impact of economic developments on the environment;
- Reduce energy intensity by promoting the conversion of road transport to rail and water transport;
- Check the quality of the fuel in circulation;
- Control the emission standards of vehicles in circulation;
- Promote public transport by limiting the growth of private vehicles which will lead to a reduction in the intensity of vehicles;
- Urban planning and transport.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Years | Fuel Type | Fuel Consumption (Ktoe) | Annual Growth Rate (%) |
---|---|---|---|
2010 | Gasoline | 40.123 | 7.77 |
Diesel | 25.985 | ||
2011 | Gasoline | 52.104 | 15.91 |
Diesel | 24.528 | ||
2012 | Gasoline | 72.723 | 28.38 |
Diesel | 25.659 | ||
2013 | Gasoline | 85.437 | 15.73 |
Diesel | 28.425 | ||
2014 | Gasoline | 85.835 | 2.19 |
Diesel | 30.523 | ||
2015 | Gasoline | 93.174 | 9.83 |
Diesel | 34.622 | ||
2016 | Gasoline | 99.813 | 7.14 |
Diesel | 37.115 | ||
2017 | Gasoline | 107.234 | 7.1 |
Diesel | 39.421 | ||
2018 | Gasoline | 117.905 | 9.34 |
Diesel | 42.459 | ||
2019 | Gasoline | 135.104 | 12.45 |
Diesel | 45.232 |
Road Vehicles Fleet | Years | Average Annual Growth Rate (%) | |
---|---|---|---|
2010 | 2019 | ||
Cars | 9702 | 18,892 | 8.41 |
Motorcycles | 20,800 | 52,000 | 10.87 |
Bus | 500 | 810 | 4.23 |
Trucks | 770 | 1075 | 4.49 |
Total vehicles | 31,772 | 72,777 | 9.5 |
Year | |||||
---|---|---|---|---|---|
2010–2011 | 10.543 | 7.067 | −0.644 | 0.848 | 3.272 |
2011–2012 | 21.722 | 10.415 | 5.728 | 1.554 | 4.025 |
2012–2013 | 15.485 | 7.31 | −0.147 | 3.446 | 4.877 |
2013–2014 | 2.346 | −13.816 | 7.325 | 3.572 | 5.265 |
2014–2015 | 11.557 | −1.045 | 5.644 | 1.336 | 5.622 |
2015–2016 | 9.087 | −9.612 | 12.015 | 0.641 | 6.087 |
2016–2017 | 9.797 | 0.623 | 2.526 | 0.064 | 6.539 |
2017–2018 | 13.696 | 2.537 | 2.494 | 1.628 | 7.036 |
2018–2019 | 19.854 | 11,431 | 0.771 | 1.58 | 6.072 |
2010–2019 | 114.087 | 14.91 | 35.712 | 14.669 | 48.795 |
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Bissai, F.D.; Fouda Mbanga, B.G.; Adiang Mezoue, C.; Nguiya, S. An Analysis of the Driving Factors Related to Energy Consumption in the Road Transport Sector of the City of Douala, Cameroon. Sustainability 2023, 15, 11743. https://doi.org/10.3390/su151511743
Bissai FD, Fouda Mbanga BG, Adiang Mezoue C, Nguiya S. An Analysis of the Driving Factors Related to Energy Consumption in the Road Transport Sector of the City of Douala, Cameroon. Sustainability. 2023; 15(15):11743. https://doi.org/10.3390/su151511743
Chicago/Turabian StyleBissai, Fontaine Dubois, Bienvenu Gael Fouda Mbanga, Cyrille Adiang Mezoue, and Séverin Nguiya. 2023. "An Analysis of the Driving Factors Related to Energy Consumption in the Road Transport Sector of the City of Douala, Cameroon" Sustainability 15, no. 15: 11743. https://doi.org/10.3390/su151511743
APA StyleBissai, F. D., Fouda Mbanga, B. G., Adiang Mezoue, C., & Nguiya, S. (2023). An Analysis of the Driving Factors Related to Energy Consumption in the Road Transport Sector of the City of Douala, Cameroon. Sustainability, 15(15), 11743. https://doi.org/10.3390/su151511743