Pavement technical condition detection and evaluation is one of the basic tasks in road maintenance management, which plays a key role in the scientific allocation of maintenance resources. The road infrastructure in developed countries was built earlier and has entered a stage of large-scale maintenance. Many countries and international organizations have successively established their own pavement evaluation models and further improved the formation of standard specifications for the evaluation of the technical condition of road infrastructures. Representative models include the Present Serviceability Rating (PSR) proposed by AASHTO [
1], Japan’s Maintenance Control Index (MCI) model [
2,
3], the PCI model developed by the U.S. Army Corps of Engineers [
4], and the World Bank’s Universal Crack Index (UCI) [
5].
The system of road condition indicators used varies from region to region. The evaluation indicators used in Ontario, Canada, are the pavement Distress Rate (DR), International Roughness Index (IRI), and Rutting Depth Index (RDI) [
6]. New York State in the United States uses similar indicators [
7], including the Pavement Condition Index (PCI), IRI, and RDI. The idea of a comprehensive evaluation of multiple indicators is also adopted in China’s current Highway Performance Assessment Standards (JTG 5210–2018), including PCI, Pavement Riding Quality Index (RQI), RDI, Pavement Skidding Resistance Index (SRI), Pavement Bumping Index (PBI), Pavement Surface Wearing Index (PWI), and Pavement Structural Strength Index (PSSI) [
8]. Summarizing the evaluation indicators of different countries (regions), it can be seen that pavement damage, roughness, and rutting are the most frequently used indicators for pavement performance evaluation. Among them, rutting is mainly an indicator of concern for high-grade roads, while pavement damage and roughness are generally applicable for all grades of roads. Especially for low-grade roads, these two indicators are mainly concerned. Therefore, this paper focuses on these two indicators.
1.1. Pavement Damage and Roughness Indicators
PCI is used to characterize pavement damage, which mainly depends on the Distress Rate (DR). It was originally developed by the U.S. Army and later standardized by the ASTM [
9]. PCI can comprehensively reflect the damage type, severity, and density of pavement and is considered to be a well-established comprehensive index of pavement damage. China has also incorporated it into the specification and redefined the specific damage types and weights based on the actual situation of Chinese roads. According to the current Chinese standard [
8], asphalt pavement damage types include alligator cracking, block cracking, transverse cracking, longitudinal cracking, subsidence, rutting and shoving, potholes, bleeding, raveling, and patching. PCI is a numerical index ranging from 0 to 100 [
10]. The higher the score, the better the road condition, and 100 points represents the ideal condition without damage. Both the U.S. and China use the deduction method to calculate the PCI, where the U.S. standard classifies the PCI into seven grades [
11], and the Chinese standard divides it into five grades, excellent, good, medium, inferior, and poor [
8].
According to ASTM, traveled surface roughness is the vertical deviation of the pavement surface from the ideal plane, which affects the dynamic characteristics of the vehicle, ride quality, dynamic loads on the surface, and drainage [
12]. Pavement roughness is usually measured by IRI, a standardized indicator used to characterize the longitudinal profile of a traveled wheel track, measured as the ratio of the cumulative suspension movement to the distance traveled by a standard vehicle [
13]. The IRI was initially developed by Gillespie et al. and then adopted and popularized by the World Bank [
14,
15]. Most highway agencies around the world routinely measure the IRI. AASHTO has stipulated the grading standards for roughness and classified IRI into five grades.
Compared to the IRI, the PCI also includes deformation inspection, which overlaps with the IRI to a certain extent. Therefore, in the case of limited resources, if the relationship between PCI and IRI can be quantified with a high degree of confidence, data on roughness can be obtained easily based on the pavement damage data. This will greatly reduce the cost of pavement condition detection and promote more scientific and reasonable maintenance management and decision-making in transportation departments. Therefore, many scholars have begun to conduct exploratory research on the relationship between pavement damage and roughness. Aultman-Hall et al. [
16] studied the correlation between IRI and pavement damage including rutting and cracking based on data from the Connecticut Department of Transportation. The correlation between them was found to be relatively weak, with a maximum coefficient of determination (R
2) value of only 0.299. Bryce et al. [
17] studied the relationship between PCI and PSR based on LTPP road sections and found that there was little correlation between them. However, the R
2 reached 0.66 after adding the parameters about the patched area, the lengths of transverse and longitudinal cracks, and the rut depth to the PSR prediction equation. This study proved the speculation that there is a correlation between pavement damage and roughness. Kirbas [
18] studied the effect of some typical pavement damages such as cracking, bleeding, and corrugation on IRI through regression analysis and found that the overall R
2 reached 0.745. Adeli et al. [
19] used linear regression analysis to establish a model based on IRI to predict PCI, with an R
2 of 0.76. Mactutis et al. [
20] studied the relationship between IRI and cracks and ruts, and they suggested that better models and methods need to be developed to improve the prediction accuracy of IRI. Park et al. [
21] studied the correlation between PCI and IRI using a power regression model based on data from the LTPP database and obtained an R
2 value of 0.59. Piryonesi and El-Diraby [
22] studied the correlation between PCI and IRI in asphalt pavements using linear regression analysis based on the LTPP database, and the overall R
2 value was only 0.301. However, the R
2 exceeded 0.7 in some cases after dividing the data into groups based on location and functional class. Makendran and Murugasan [
23] used a linear regression analysis to develop the relationship between pavement roughness and cracks and potholes with an R
2 value of 0.814, but the validity of the model was limited to roads with very low traffic conditions. Amarendra et al. [
24] developed the relationship between IRI and a variety of pavement damages by using multiple linear regression analysis. It was found that different pavement distresses affect roughness differently. For Indian roads, potholes and raveling dominated.
In recent years, with the rapid development of various research methods such as deep learning and artificial neural networks, scholars have conducted more quantitative studies on the relationship between pavement damage and roughness. Liu et al. [
25] developed the relationship between PCI and IRI using artificial neural network techniques, and the R
2 reached 0.998. Chandra et al. [
26] developed the relationship between pavement roughness and potholes, patching, rutting, raveling, and cracking using linear regression, nonlinear regression, and artificial neural network methods based on the data of four highways in India. The model built by an artificial neural network had the highest accuracy. Elhadidy et al. [
27] utilized an artificial neural network to build a model between PCI and IRI based on the LTPP database, and the R
2 reached 0.86. It showed that IRI could be accurately predicted from the PCI collected in the LTPP database. Ali et al. [
28] used multiple linear regression and artificial neural network methods to develop a model for predicting IRI from pavement age and nine types of pavement damage. The results showed that the neural network model has higher accuracy.
Most studies have shown that there is a correlation between pavement damage and roughness, so it should be feasible to predict roughness based on pavement damage data. However, most of the studies use specific pavement damage and IRI to establish a relationship model, and there are very few studies that directly investigate the correlation between PCI and IRI. In addition, most studies usually use data from different regions, and the pavement damage, traffic volume, road grade, etc., are very different, but generally only a single model is established, so the model is not very explanatory to the data.
1.2. Pavement Damage and Roughness Inspection Method
With the development of pavement detection technology and the improvement of pavement performance evaluation methods, many countries have developed pavement inspection methods suitable for their own needs. For example, the Pavement Condition Evaluation Service (PCES) system and the Automated Roadway Inspection System (ARIS) in the U.S. [
29,
30], the Komatsu system in Japan [
31], the Portable Application for Vehicle Underground Evaluation (PAVUE) system in Sweden [
32], and the Crack Recognition Holographic System (CREHOS) in Switzerland [
33].
In recent years, with the expansion of the road network and the improvement of maintenance and management requirements, road inspection has become more and more popular. The industry’s increasing demand for low-cost inspection techniques has led to the emergence of some simple and fast road inspection methods. For example, Aleadelat et al. [
34] used a 3D accelerometer of a smartphone to collect the vertical acceleration data of a vehicle to obtain roughness data. Ersoz et al. [
35] developed an Unmanned Aerial Vehicle (UAV)-based pavement crack recognition system to obtain crack features of concrete pavements by capturing images from a UAV, which was used to train the Support Vector Machine (SVM) model. It provides an alternative solution for monitoring the changes of cracks in cement concrete pavements. Yan et al. [
36] developed a low-cost Video-based Movement Abnormality Detection System (VPADS) by analyzing video image data collected by a consumer-grade video camera mounted on the front of a car. The VPADS system replaces the traditional on-site inspection or high-end multi-sensor pavement assessment system. Kumar et al. [
37] proposed a smartphone-based community sensor network for monitoring pavement conditions. Smartphone applications were distributed to volunteers who participated in acquiring pavement quality data and benefited from information on the general condition of the road. Huang et al. [
38] proposed a low-cost data collection system for road condition assessment using an Intel RS-D435 camera, a consumer-grade RGB-D sensor, and an NVIDIA Jetson TX2 computing device that is mounted on a vehicle for data collection. Combined with various deep coding techniques and data fusion methods, potholes can be successfully detected even when the scene is dark (i.e., not bright enough).
The most commonly obtained indicators for these detection methods are pavement damage and roughness, which are also the crucial indicators used in road condition evaluation [
39,
40]. At present, for pavement damage detection, simple image equipment can provide stable results consistent with the actual road condition trend, and the price is low. For roughness detection, although some low-cost methods can be used, the detection results are obviously not accurate for rural roads with poor conditions. Now, the more mature and stable technology is mainly Laser Profilometer, which is also not suitable for these roads. Moreover, most transportation departments today still rely on IRI for road maintenance and rehabilitation planning [
41]. For large-scale inspection, the cost of IRI is relatively high, ranging from
$1.40 to
$6.20 per kilometer [
42]. In addition, IRI inspection requires calibrated equipment and professionally trained personnel. Even with the new and advanced technologies, transportation departments cannot fully afford the time and expense required, much less the cost of inspection at a higher frequency than once a year. For rural roads, the challenges are even more evident. Due to the lack of sophisticated equipment and professionals, accurately measuring road roughness becomes particularly difficult. This not only affects the quality of the data, but also makes the maintenance and management of such roads more challenging. Therefore, finding an economic and accurate method for obtaining road roughness in a resource-limited environment is an important challenge currently facing transportation departments.
In China, compared to specific damage and IRI, PCI and RQI data are often easier to obtain in the actual road maintenance management database, especially when historical data are needed. The RQI includes the content of roughness evaluation, and it can be calculated according to the IRI. The calculation formula of RQI is shown in Equation (1). According to the current Chinese standard, RQI is similar to PCI, which also takes the value of 0–100 and is divided into five grades: excellent, good, medium, inferior, and poor [
8]. So, this paper focuses on the relationship between PCI and RQI.
where
and
are constants. For expressways and first-class roads,
is 0.026,
is 0.65, and for other classes of roads,
is 0.0185, and
is 0.58. In summary, based on a large amount of pavement inspection data from various provinces (cities) in China, this study uses a nonlinear regression analysis method to establish mathematical models of the PCI and RQI for roads with different pavement damage levels and different technical grades. In addition, this paper attempts to quantify the effects of different pavement damage levels on the decay rate of RQI. This study is divided into five sections.
Section 1: Data preparation, which mainly includes data profile and data preprocessing.
Section 2: Data analysis. Correlation analysis was first performed on PCI and RQI to prove their correlation. Then, regression analysis was carried out to obtain the mathematical model between the two.
Section 3: Model prediction effect assessment. The prediction effect of the regression model was evaluated using the reserved sample data.
Section 4: Quantitative analysis of the effect of different pavement damage levels on the decay of RQI.
Section 5: Model validation. The prediction accuracy of the model proposed in this paper was verified based on actual engineering inspection data.