TY - JOUR
T1 - Comparative Analysis of Three Modeling Approaches for Predicting Pavement Conditions
AU - Wang, Jing
AU - Comert, Gurcan
AU - Begashaw, Negash
AU - Huynh, Nathan
AU - Kouyate, Amara
AU - Mullen, Robert
AU - Gassman, Sarah
AU - Pierce, Charles
PY - 2024/10/1
Y1 - 2024/10/1
N2 - States, counties, and municipalities rely on pavement performance models to forecast future pavement conditions in their jurisdictions. Accurate prediction is essential for budget planning and the identification of candidates for rehabilitation. This study compares the performance of three different approaches to predict pavement conditions: (1) a sigmoidal or S-shaped curve; (2) a grey system model (GM); and (3) Gaussian process regression (GPR). All three models are trained on the same dataset for two types of pavements, asphalt with and without overlay and composite (i.e., asphalt over concrete), with each having two types of maintenance activities frequently performed by the South Carolina Department of Transportation. The trained models are then applied to separate test datasets. The prediction results indicate that GPR is the best model in three out of four cases using mean absolute error as the performance metric; the exception is the case involving the prediction of pavement serviceability index for asphalt pavement with mill-and-replace 1–2 in. + overlay 400 pounds per square yard rehabilitation treatment. When using mean absolute percentage error and root mean squared error as the performance metrics, the GPR model is the better model for predicting conditions of composite pavements, while the (Formula presented.) model is the better model for predicting conditions of asphalt pavements.
AB - States, counties, and municipalities rely on pavement performance models to forecast future pavement conditions in their jurisdictions. Accurate prediction is essential for budget planning and the identification of candidates for rehabilitation. This study compares the performance of three different approaches to predict pavement conditions: (1) a sigmoidal or S-shaped curve; (2) a grey system model (GM); and (3) Gaussian process regression (GPR). All three models are trained on the same dataset for two types of pavements, asphalt with and without overlay and composite (i.e., asphalt over concrete), with each having two types of maintenance activities frequently performed by the South Carolina Department of Transportation. The trained models are then applied to separate test datasets. The prediction results indicate that GPR is the best model in three out of four cases using mean absolute error as the performance metric; the exception is the case involving the prediction of pavement serviceability index for asphalt pavement with mill-and-replace 1–2 in. + overlay 400 pounds per square yard rehabilitation treatment. When using mean absolute percentage error and root mean squared error as the performance metrics, the GPR model is the better model for predicting conditions of composite pavements, while the (Formula presented.) model is the better model for predicting conditions of asphalt pavements.
KW - infrastructure
KW - infrastructure management and system preservation
KW - pavement management systems
KW - performance modeling
UR - https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85189016529&origin=inward
UR - https://www.scopus.com/inward/citedby.uri?partnerID=HzOxMe3b&scp=85189016529&origin=inward
U2 - 10.1177/03611981241234924
DO - 10.1177/03611981241234924
M3 - Article
SN - 0361-1981
VL - 2678
SP - 547
EP - 560
JO - Transportation Research Record
JF - Transportation Research Record
IS - 10
ER -