Evaluation of Selected Empirical Models for Asphalt Pavement Temperature Prediction in a Tropical Climate: The Case of Ghana
Abstract
:1. Introduction
2. Asphalt Pavement Temperature Prediction
2.1. Models Selected for Evaluation
2.1.1. The BELLS 3 Model
- Pavement temperature at desired depth (°C),
- IR = Infrared-measured pavement surface temperature (°C),
- d = Depth at which pavement temperature is required (mm),
- Mean of maximum and minimum air temperature on the day before FWD testing (°C),
- sin = Sine function on an 18 h clock system (one 18 h cycle equals 2π radians), and
- = Time of day in 24 h (converted to 18 h asphalt concrete rise and fall cycle).
2.1.2. The Diefenderfer Model
- Predicted maximum pavement temperature (°C),
- Daily maximum air temperature (°C),
- Daily solar radiation (kJ/m2 day), and
- Depth from pavement surface (m).
2.1.3. The Taamneh Model
- = Predicted maximum pavement temperature (°C),
- Daily maximum air temperature (°C),
- = Depth below pavement surface (m),
- WS = Daily wind speed (m/s), and
- = Daily solar radiation (kJ/m2 day).
2.1.4. The Park Model
- = Asphalt pavement temperature at depth, z (°C),
- = Asphalt pavement surface temperature (°C),
- d = Depth where pavement temperature is required (cm), and
- t = Time at surface temperature measurement (days).
2.1.5. The Asefzadeh Model
- Predicted daily maximum pavement temperature (°C),
- = Daily maximum air temperature (°C),
- = Daily solar radiation (kJ/m2 day), and
- = Depth from pavement surface (m).
3. Materials and Methods
3.1. Study Area
3.2. Data Collection
3.3. Data Analysis
4. Results and Discussion
4.1. Model Evaluation Based on Statistical Significance Testing
- i.
- ii.
- For Tamale, the asphalt pavement temperatures predicted by the Park [10] model had an equal mean to the measured asphalt pavement temperature (p > 0.05).
- iii.
- The rest of the model-predicted asphalt pavement temperatures had means that were statistically different from the means of their corresponding measured asphalt pavement temperatures (p < 0.05).
Location | Model | df | t | p-Value |
---|---|---|---|---|
Kumasi | BELLS 3 [9] | 2780.9 | −8.704 | <0.0001 |
Park [10] | 2676.1 | 1.602 | 0.1092 | |
Diefenderfer [11] | 59.6 | −1.635 | 0.1074 | |
Taamneh [12] | 67.1 | 8.596 | <0.0001 | |
Asefzadeh [13] | 62.6 | 17.326 | <0.0001 | |
Tamale | BELLS 3 [9] | 2766.9 | −9.762 | <0.0001 |
Park [10] | 2660.9 | 0.014 | 0.989 | |
Diefenderfer [11] | 63.9 | −3.799 | 0.0003 | |
Taamneh [12] | 83.3 | 9.359 | <0.0001 | |
Asefzadeh [13] | 67.668 | 19.775 | <0.0001 |
4.2. Model Evaluation Based on Error Statistics
4.3. Model Evaluation Based on the Line of Equality and the Coefficient of Determination
4.4. Summary of Model Evaluation Results
5. Conclusions and Recommendations
- The Park model showed the highest accuracy in predicting asphalt pavement temperature for both the Forest and Savannah zones.
- Asphalt pavement temperature predicted by the BELLS 3, Taamneh, and Asefzadeh models were significantly different from the measured pavement temperatures in both climatic zones. The BELLS 3 model under-predicted, while the Taamneh and Asefzadeh models over-predicted asphalt pavement temperatures, in both climatic zones.
- The Diefenderfer model significantly under-predicted asphalt pavement temperature for the Savannah zone and was poorly fitted for prediction in the Forest zone.
- The Park model is recommended for asphalt pavement temperature prediction in both the Forest and Savannah zones of Ghana pending locally developed models. The implication of using the Park model for asphalt pavement temperature prediction in Ghana above 47 °C could result in over-prediction errors, the reason a local model will be needed for a wide range of temperatures.
- The findings of this study may be generally applicable to countries with similar climatic characteristics as the Forest and Savannah climatic zones of Ghana, particularly nearby West African countries such as Togo, Benin, Nigeria, Cote D’Ivoire, Liberia, Sierra Leone, and Burkina Faso.
- This study’s findings are directly applicable to newer asphalt pavements and non-shaded pavement surfaces. Future model improvement efforts should consider pavement conditions other than these.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Road | City | AC Layer Thickness (mm) | Distance from GMet Station (km) | Latitude of GMet Station (°) |
---|---|---|---|---|
Mango Road | Kumasi | 76 | 0.8 | 6.68 |
RSM Road | Tamale | 70 | 1.9 | 9.58 |
Month | May 2022 | June 2022 | July 2022 | August 2022 | September 2022 | October 2022 | November 2022 | December 2022 |
---|---|---|---|---|---|---|---|---|
Week No. | 4 | 4 | 1 | 2 | 1 | 4 | 4 | 3 |
Data Collection Period | 23rd–29th | 22nd–28th | 4th–10th | 8th–14th | 1st–7th | 24th–30th | 22nd–28th | 15th–21st |
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Ntramah, S.; Tutu, K.A.; Tuffour, Y.A.; Adams, C.A.; Adanu, E.K. Evaluation of Selected Empirical Models for Asphalt Pavement Temperature Prediction in a Tropical Climate: The Case of Ghana. Sustainability 2023, 15, 15846. https://doi.org/10.3390/su152215846
Ntramah S, Tutu KA, Tuffour YA, Adams CA, Adanu EK. Evaluation of Selected Empirical Models for Asphalt Pavement Temperature Prediction in a Tropical Climate: The Case of Ghana. Sustainability. 2023; 15(22):15846. https://doi.org/10.3390/su152215846
Chicago/Turabian StyleNtramah, Simon, Kenneth A. Tutu, Yaw A. Tuffour, Charles A. Adams, and Emmanuel Kofi Adanu. 2023. "Evaluation of Selected Empirical Models for Asphalt Pavement Temperature Prediction in a Tropical Climate: The Case of Ghana" Sustainability 15, no. 22: 15846. https://doi.org/10.3390/su152215846
APA StyleNtramah, S., Tutu, K. A., Tuffour, Y. A., Adams, C. A., & Adanu, E. K. (2023). Evaluation of Selected Empirical Models for Asphalt Pavement Temperature Prediction in a Tropical Climate: The Case of Ghana. Sustainability, 15(22), 15846. https://doi.org/10.3390/su152215846