Vehicular Fuel Consumption and CO2 Emission Estimation Model Integrating Novel Driving Behavior Data Using Machine Learning
Abstract
:1. Introduction
2. Methodology
2.1. Novel Driving Behavior Data
2.2. Multiple Feature Sets
2.2.1. Estimation for All Vehicle Categories
- Base features (Base feature set) consisted of the total driving time and total driving distance.
- D features consisted of driving distance on expressways, national highways, and local roads.
- B features consisted of dangerous driving behavior data on expressways, national highways, and local roads.
- S features consisted of specification of the vehicles (model, vehicle name, and engine type).
- BaseD feature set consisted of Base and D features.
- BaseB feature set consisted of Base and B features.
- BaseS feature set consisted of Base and S features
- BaseDB feature set consisted of Base, D, and B features
- BaseDS feature set consisted of Base, D, and S features.
- BaseBS feature set consisted of Base, B, and S features.
- BaseDBS feature set consisted of Base, D, B, and S features.
2.2.2. Estimation for Each Vehicle Category
2.3. Dimensionality Reduction for Data Visualization
3. Regression Models
4. Results and Discussion
4.1. Data Visualization
4.2. Correlation Analysis
4.3. Machine Learning Regression Results
- The BaseD, BaseB, BaseS feature sets outperformed the Base feature set.
- The BaseDB feature set outperformed both the BaseD and BaseB feature sets.
- The BaseDS feature set outperformed both the BaseD and BaseS feature sets.
- The BaseBS feature set outperformed both the BaseB and BaseS feature sets.
- The BaseDBS feature set outperformed all the other feature sets.
5. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
IEA | International Energy Agency |
EPA | The U.S. Environmental Protection Agency |
CARB | California Air Resources Board |
RPM | Revolutions per minute |
HEV | Hybrid electric vehicle |
Base | Total driving time and driving distance |
D | Driving distances on expressways, national highways, and local roads |
B | Dangerous driving behavior data on expressways, national highways, and local roads |
S | Specification of the vehicles (model, vehicle name, and engine type) |
BaseD | Base and D features |
BaseB | Base and B features |
BaseS | Base and S features |
BaseDB | Base, D and B features |
BaseDS | Base, D, and S features |
BaseBS | Base, B, and S features |
BaseDBS | Base, D, B, and S features |
PCA | Principal component analysis |
t-SNE | t-distributed Stochastic Neighbor Embedding |
UMAP | Uniform Manifold Approximation and Projection |
MLR | Multiple linear regression |
RFR | Random forest regression |
Coefficient of determination | |
RMSE | Root mean squared error |
MAE | Mean absolute error |
IQR | Interquartile range |
Monthly driving distance | |
Monthly fuel consumption | |
Monthly emission | |
y | Target variable |
Predicted target variable | |
n | Sequence length of the target variable |
Average value of y spanning the n data points | |
i | i-th value in a variable sequence |
References
- European Commission. Road Transport: Reducing CO2 Emissions from Vehicles. 2020. Available online: https://climate.ec.europa.eu/eu-action/transport-emissions/road-transport-reducing-co2-emissions-vehicles_en (accessed on 24 January 2024).
- Wei, F.; Zhang, X.; Chu, J.; Yang, F.; Yuan, Z. Energy and environmental efficiency of China’s transportation sectors considering CO2 emission uncertainty. Transp. Res. Part D Trans. Environ. 2021, 97, 102955. [Google Scholar] [CrossRef]
- Eco-Mo Foundation. 2020 Transport and Environment in Japan. 2020. Available online: https://www.ecomo.or.jp/english/pdf/tej2020.pdf (accessed on 21 January 2024).
- International Energy Agency. Cars and Vans. Available online: https://www.iea.org/energy-system/transport/cars-and-vans (accessed on 29 January 2024).
- Karczewski, M.; Chojnowski, J.; Szamrej, G. A Review of Low-CO2 Emission Fuels for a Dual-Fuel RCCI Engine. Energies 2021, 14, 5067. [Google Scholar] [CrossRef]
- Dziubak, T.; Karczewski, M. Experimental Studies of the Effect of Air Filter Pressure Drop on the Composition and Emission Changes of a Compression Ignition Internal Combustion Engine. Energies 2022, 15, 4815. [Google Scholar] [CrossRef]
- Dziubak, T. Theoretical and Experimental Studies of Uneven Dust Suction from a Multi-Cyclone Settling Tank in a Two-Stage Air Filter. Energies 2021, 14, 8396. [Google Scholar] [CrossRef]
- Dziubak, T.; Karczewski, M. Experimental Study of the Effect of Air Filter Pressure Drop on Internal Combustion Engine Performance. Energies 2022, 15, 3285. [Google Scholar] [CrossRef]
- Tian, X.; Geng, Y.; Zhong, S.; Wilson, J.; Gao, C.; Chen, W.; Yu, Z.; Hao, H. A bibliometric analysis on trends and characters of carbon emissions from transport sector. Transp. Res. Part D Trans. Environ. 2018, 59, 1–10. [Google Scholar] [CrossRef]
- Sperling, D.; Gordon, D. Two Billion Cars: Driving toward Sustainability; Oxford University Press: Oxford, UK, 2009. [Google Scholar]
- Sterner, T. Fuel taxes: An important instrument for climate policy. Energy Policy 2007, 35, 3194–3202. [Google Scholar] [CrossRef]
- Dargay, J.; Gately, D.; Sommer, M. Vehicle ownership and income growth, worldwide: 1960–2030. Energy J. 2007, 28, 143–170. [Google Scholar] [CrossRef]
- Ministry of Economy, Trade and Industry. J-Credit Scheme. 2022. Available online: https://japancredit.go.jp/english/ (accessed on 1 June 2023).
- United Nations Framework Convention on Climate Change. The Paris Agreement. Available online: https://unfccc.int/process-and-meetings/the-paris-agreement (accessed on 16 December 2023).
- Zhang, K.; Batterman, S. Near-road air pollutant concentrations of CO and PM2.5: A comparison of MOBILE6. 2/CALINE4 and generalized additive models. Atmos. Environ. 2010, 44, 1740–1748. [Google Scholar] [CrossRef]
- California. Air Resources Board. EMFAC7F; The Board: Sacramento, CA, USA, 1993.
- Oduro, S.D.; Metia, S.; Duc, H.; Ha, Q.P. CO2 vehicular emission statistical analysis with instantaneous speed and acceleration as predictor variables. In Proceedings of the 2013 International Conference on Control, Automation and Information Sciences (ICCAIS), Nha Trang, Vietnam, 25–28 November 2013; pp. 158–163. [Google Scholar]
- Ahn, K.; Rakha, H.; Trani, A.; Van Aerde, M. Estimating vehicle fuel consumption and emissions based on instantaneous speed and acceleration levels. Period. Polytech. Trans. Eng. 2002, 128, 182–190. [Google Scholar] [CrossRef]
- Maroju, R.; Nishimura, S.; Wang, Z.; Matsuhashi, R. Estimating Vehicular Fuel Consumption and CO2 Emissions by Machine Learning Using Only Speed and Acceleration. J. Jpn. Soc. 2023, 44, 30–38. [Google Scholar]
- Wróblewski, P. An Innovative Approach to Data Analysis in The Field of Energy Consumption and Energy Conversion Efficiency in Vehicle Drive Systems—The Impact of Operational and Utility Factors. In Proceedings of the 37th International Business Information Management Association (IBIMA), Cordoba, Spain, 30–31 May 2021; pp. 1–2. [Google Scholar]
- Saxena, S.; Phadke, A.; Gopal, A. Understanding the fuel savings potential from deploying hybrid cars in China. Appl. Energy 2014, 113, 1127–1133. [Google Scholar] [CrossRef]
- Lois, D.; Wang, Y.; Boggio-Marzet, A.; Monzon, A. Multivariate analysis of fuel consumption related to eco-driving: Interaction of driving patterns and external factors. Transp. Res. Part D Trans. Environ. 2019, 72, 232–242. [Google Scholar] [CrossRef]
- Jiménez, J.L.; Valido, J.; Molden, N. The drivers behind differences between official and actual vehicle efficiency and CO2 emissions. Transp. Res. Part D Trans. Environ. 2019, 67, 628–641. [Google Scholar] [CrossRef]
- Mane, A.; Djordjevic, B.; Ghosh, B. A data-driven framework for incentivising fuel-efficient driving behaviour in heavy-duty vehicles. Transp. Res. Part D Trans. Environ. 2021, 95, 102845. [Google Scholar] [CrossRef]
- Grote, M.; Williams, I.; Preston, J.; Kemp, S. Including congestion effects in urban road traffic CO2 emissions modelling: Do Local Government Authorities have the right options? Transp. Res. Part D Trans. Environ. 2016, 43, 95–106. [Google Scholar] [CrossRef]
- Sharifi, F.; Birt, A.G.; Gu, C.; Shelton, J.; Farzaneh, R.; Zietsman, J.; Fraser, A.; Chester, M. Regional CO2 impact assessment of road infrastructure improvements. Transp. Res. Part D Trans. Environ. 2021, 90, 102638. [Google Scholar] [CrossRef]
- Samaras, C.; Tsokolis, D.; Toffolo, S.; Magra, G.; Ntziachristos, L.; Samaras, Z. Improving fuel consumption and CO2 emissions calculations in urban areas by coupling a dynamic micro traffic model with an instantaneous emissions model. Transp. Res. Part D Trans. Environ. 2018, 65, 772–783. [Google Scholar] [CrossRef]
- Zhang, L.; Zhu, Z.; Zhang, Z.; Song, G.; Zhai, Z.; Yu, L. An improved method for evaluating eco-driving behavior based-on speed-specific vehicle-specific power distributions. Transp. Res. Part D Trans. Environ. 2022, 113, 103476. [Google Scholar] [CrossRef]
- Jahirul, M.I.; Masjuki, H.H.; Saidur, R.; Kalam, M.A.; Jayed, M.H.; Wazed, M.A. Comparative engine performance and emission analysis of CNG and gasoline in a retrofitted car engine. Appl. Therm. Eng. 2010, 30, 2219–2226. [Google Scholar] [CrossRef]
- Vitliemov, P.; Kolev, N.; Marinov, M. Economic evaluation of the implementation of policy actions in the field of energy efficiency. Int. J. Energy Econ. Policy 2019, 9, 106–113. [Google Scholar] [CrossRef]
- Van der Maaten, L.; Hinton, G. Visualizing Data Using t-SNE. 2008. Available online: https://www.jmlr.org/papers/volume9/vandermaaten08a/vandermaaten08a.pdf?fbcl (accessed on 21 January 2024).
- McInnes, L.; Healy, J.; Melville, J. Umap: Uniform manifold approximation and projection for dimension reduction. arXiv 2018, arXiv:1802.03426. [Google Scholar] [CrossRef]
- Scikit-Learn Developers. Sklearn.Decomposition.PCA. Available online: https://scikit-learn.org/stable/modules/generated/sklearn.decomposition.PCA.html (accessed on 16 December 2023).
- Scikit-Learn Developers. Sklearn.Manifold.TSNE. Available online: https://scikit-learn.org/stable/modules/generated/sklearn.manifold.TSNE.html (accessed on 17 January 2024).
- McInnes, L.; Healy, J. UMAP: Uniform Manifold Approximation and Projection for Dimension Reduction—Umap 0.5 Documentation. 2018. Available online: https://umap-learn.readthedocs.io/en/latest/index.html (accessed on 29 January 2024).
Category | Model | Vehicle Name | Engine Type | Count | Percentage (%) |
---|---|---|---|---|---|
1 | 1 | 8 | 1 | 16,101 | 7.05 |
2 | 1 | 9 | 1 | 3218 | 1.41 |
3 | 2 | 5 | 1 | 3938 | 1.73 |
4 | 3 | 2 | 2 | 3262 | 1.43 |
5 | 4 | 4 | 2 | 13,045 | 5.72 |
6 | 5 | 16 | 2 | 7279 | 3.19 |
7 | 6 | 3 | 2 | 5061 | 2.22 |
8 | 7 | 14 | 2 | 8562 | 3.75 |
9 | 8 | 18 | 1 | 6383 | 2.80 |
10 | 9 | 4 | 1 | 12,418 | 5.44 |
11 | 10 | 18 | 1 | 8532 | 3.74 |
12 | 11 | 19 | 1 | 6825 | 2.99 |
13 | 12 | 18 | 2 | 25,106 | 11.00 |
14 | 13 | 19 | 2 | 15,632 | 6.85 |
15 | 14 | 19 | 2 | 4525 | 1.98 |
16 | 15 | 7 | 2 | 9943 | 4.36 |
17 | 16 | 16 | 1 | 12,487 | 5.47 |
18 | 17 | 6 | 2 | 8918 | 3.91 |
19 | 18 | 13 | 1 | 3962 | 1.74 |
20 | 19 | 11 | 2 | 5388 | 2.36 |
21 | 20 | 17 | 2 | 21,196 | 9.29 |
22 | 21 | 12 | 2 | 4374 | 1.92 |
23 | 22 | 13 | 2 | 11,266 | 4.94 |
24 | 23 | 10 | 2 | 1804 | 0.79 |
25 | 23 | 15 | 2 | 1590 | 0.70 |
26 | 24 | 1 | 2 | 7466 | 3.27 |
Total | 228,281 | 100.00 |
Driving Behavior Data (Monthly) |
---|
Total driving time [s] |
Total driving distance [m] |
Counts of dangerous speeding on expressways [times] |
Counts of dangerous sudden accelerating on expressways [times] |
Counts of dangerous sudden braking on expressways [times] |
Driving distance on expressways [m] |
Counts of dangerous speeding on national highways [times] |
Counts of dangerous sudden accelerating on national highways [times] |
Counts of dangerous sudden braking on national highways [times] |
Driving distance on national highways [m] |
Counts of dangerous speeding on local roads [times] |
Counts of dangerous sudden accelerating on local roads [times] |
Counts of dangerous sudden braking on local roads [times] |
Driving distance on local roads [m] |
Category | MLR | RFR | ||||
---|---|---|---|---|---|---|
R2 | RMSE | MAE | R2 | RMSE | MAE | |
1 | 0.967 | 23.394 | 15.977 | 0.975 | 20.378 | 14.255 |
2 | 0.961 | 24.458 | 15.875 | 0.957 | 25.751 | 17.176 |
3 | 0.976 | 17.357 | 11.315 | 0.973 | 18.448 | 11.826 |
4 | 0.973 | 11.233 | 7.838 | 0.972 | 11.466 | 7.665 |
5 | 0.946 | 18.996 | 12.069 | 0.963 | 15.696 | 10.162 |
6 | 0.970 | 12.238 | 8.297 | 0.963 | 13.526 | 8.725 |
7 | 0.946 | 16.323 | 7.842 | 0.935 | 17.922 | 8.191 |
8 | 0.972 | 11.808 | 7.821 | 0.969 | 12.387 | 7.485 |
9 | 0.967 | 10.342 | 6.800 | 0.967 | 10.426 | 6.671 |
10 | 0.967 | 18.246 | 12.771 | 0.969 | 17.629 | 11.880 |
11 | 0.948 | 12.364 | 6.423 | 0.967 | 9.815 | 6.259 |
12 | 0.947 | 16.269 | 7.706 | 0.954 | 15.126 | 7.800 |
13 | 0.924 | 12.658 | 6.803 | 0.962 | 8.949 | 5.443 |
14 | 0.943 | 12.370 | 7.078 | 0.961 | 10.252 | 6.799 |
15 | 0.946 | 13.702 | 9.927 | 0.941 | 14.318 | 9.660 |
16 | 0.943 | 10.689 | 6.835 | 0.951 | 9.995 | 6.560 |
17 | 0.971 | 15.696 | 9.266 | 0.979 | 13.278 | 8.673 |
18 | 0.978 | 8.598 | 5.670 | 0.977 | 8.967 | 5.638 |
19 | 0.980 | 12.789 | 9.036 | 0.979 | 13.067 | 8.911 |
20 | 0.915 | 17.889 | 8.531 | 0.964 | 11.642 | 8.001 |
21 | 0.940 | 13.100 | 8.406 | 0.965 | 10.055 | 6.582 |
22 | 0.944 | 13.121 | 9.734 | 0.947 | 12.825 | 8.308 |
23 | 0.954 | 12.760 | 8.532 | 0.958 | 12.202 | 8.235 |
24 | 0.935 | 19.747 | 14.499 | 0.912 | 22.972 | 15.189 |
25 | 0.909 | 20.356 | 14.581 | 0.906 | 20.678 | 14.283 |
26 | 0.962 | 11.472 | 8.166 | 0.954 | 12.658 | 8.254 |
Average | 0.953 | 14.922 | 9.531 | 0.958 | 14.247 | 9.178 |
Feature Sets | MLR | RF | ||||
---|---|---|---|---|---|---|
R2 | RMSE | MAE | R2 | RMSE | MAE | |
Base | 0.632 | 50.933 | 33.875 | 0.642 | 50.232 | 33.452 |
BaseD | 0.654 | 49.418 | 33.090 | 0.676 | 47.836 | 31.956 |
BaseB | 0.647 | 49.879 | 33.396 | 0.686 | 47.034 | 31.439 |
BaseS | 0.826 | 34.994 | 23.498 | 0.965 | 15.671 | 9.963 |
BaseDB | 0.660 | 48.972 | 32.851 | 0.703 | 45.771 | 30.486 |
BaseDS | 0.839 | 33.741 | 22.713 | 0.972 | 14.116 | 8.965 |
BaseBS | 0.835 | 34.139 | 22.992 | 0.972 | 13.934 | 8.820 |
BaseDBS | 0.842 | 33.387 | 22.456 | 0.975 | 13.293 | 8.329 |
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Wang, Z.; Mae, M.; Nishimura, S.; Matsuhashi, R. Vehicular Fuel Consumption and CO2 Emission Estimation Model Integrating Novel Driving Behavior Data Using Machine Learning. Energies 2024, 17, 1410. https://doi.org/10.3390/en17061410
Wang Z, Mae M, Nishimura S, Matsuhashi R. Vehicular Fuel Consumption and CO2 Emission Estimation Model Integrating Novel Driving Behavior Data Using Machine Learning. Energies. 2024; 17(6):1410. https://doi.org/10.3390/en17061410
Chicago/Turabian StyleWang, Ziyang, Masahiro Mae, Shoma Nishimura, and Ryuji Matsuhashi. 2024. "Vehicular Fuel Consumption and CO2 Emission Estimation Model Integrating Novel Driving Behavior Data Using Machine Learning" Energies 17, no. 6: 1410. https://doi.org/10.3390/en17061410
APA StyleWang, Z., Mae, M., Nishimura, S., & Matsuhashi, R. (2024). Vehicular Fuel Consumption and CO2 Emission Estimation Model Integrating Novel Driving Behavior Data Using Machine Learning. Energies, 17(6), 1410. https://doi.org/10.3390/en17061410