Determination and Monitoring of Key Construction Control Indices for Low-Temperature Performance of Asphalt Mixtures Based on BIM Platform

School of Civil Engineering, Shandong Jiaotong University, Jinan 250357, China School of Transportation, Southeast University, Nanjing 211189, China College of Information Engineering, Fuyang Normal University, Fuyang 236041, China College of Civil Science and Engineering, Yangzhou University, Yangzhou 225127, China School of Highway and Architecture, Shandong Transport Vocational College, Weifang 261206, China


Introduction
Low-temperature (transverse) cracking is one of the main distresses of asphalt pavement [1]. After the low-temperature cracks appear in the pavement, the main problem is that water will enter the pavement structure through the cracks. It will stay inside the pavement structure, weaken the strength of the base layer and the subgrade, accelerate the road damage, and reduce the driving quality [2,3]. rough investigation, it was found that the construction quality issue of asphalt layer is an important reason for the lowtemperature cracking of asphalt pavement [4,5]. e construction process control of the asphalt layers is mainly conducted according to the asphalt pavement construction specifications [6,7]. ese specifications specify the items and frequency of quality inspection in the construction process, and give the requirements of the extreme value or range of the inspection items. However, these specifications do not clarify which construction control indices are related to a certain performance of the asphalt layer and the degree of influence, which causes blindness of construction. e construction control indices mainly include the raw material properties, gradation of asphalt mixture, asphaltstone ratio, rolling temperature, rolling passes, degree of compaction, thickness of asphalt layer, and evenness [6,7]. From the perspective of construction, the main factors affecting the construction quality can be summarized as the gradation of asphalt mixture, asphalt-stone ratio, rolling temperature, rolling passes, and thickness of the asphalt layer. Furthermore, under the same conditions, the volume parameters of the asphalt mixture are also determined by these factors.
ere are many studies on various factors affecting the low-temperature performance of the asphalt mixture. Li et al. [8] analyzed the influence of different aging conditions on the low-temperature properties of asphalt mixtures. Dong et al. [9] studied the effects of traffic level, overlay thickness, mixture type, intensity of surface preparation before overlay, pavement thickness, and freeze index on transverse cracks based on the Long-Term Pavement Performance (LTPP) data. e National Cooperative Highway Research Program (NCHRP) report 9-22 [10] investigated the influencing factors of rutting, fatigue cracking, and lowtemperature cracking, including the factors related to construction process. However, the abovementioned influencing factors' analysis is not aimed at the construction of asphalt layers, and the range of the influencing factors is different from the actual construction of the asphalt layer. Moreover, these studies have not systematically and comprehensively compared the effects of the variations of different construction indices on the low-temperature performance of the asphalt layers. erefore, it is necessary to investigate the relationship between the construction control indices and the low-temperature cracking of pavement to clarify the key construction indices of the lowtemperature performance.
After determining which indices need to be controlled, the following problem is how to achieve the real-time monitoring of the construction indices. In the asphalt mixture plant, the digital image processing technology [11][12][13][14] or online detection [6,7] was used to measure the gradation of asphalt mixture in real time. e asphalt content of the asphalt mixture can be measured in real time by the online detection of the asphalt mixture plant [6,7]. Moreover, the ground-penetrating radar can be used to determine the air voids and the thicknesses of the asphalt layers in real time [15].
After determining the real-time detection methods of the construction indices, it is also necessary to solve the monitoring problem of these construction indices. At present, the construction control of the asphalt layer is still conducted by the manual inspection and manual recording in China, which cannot meet the requirements of construction process control. Furthermore, these data are static and isolated, causing great inconvenience to road construction parties for monitoring, searching, and analyzing data. At the same time, paper documents are easy to lose and difficult to store. So, the intensity and timeliness of construction control decreased. In the field of building construction, Building Information Modeling (BIM) technology has been used to solve these problems [16][17][18][19]. Ding and Xu [20] established the BIM cloud storage system to solve a large number of problems such as data processing, information security, and cost in BIM model applications. Das et al. [21] put forward a web service framework for the integration and management of the construction supply chain data. Chen et al. [22] proposed a cloud-based framework that provides web-based services for viewing, storing, and analyzing BIM model data. Lin et al. [23] established a web-based BIM model process management system to improve the efficiency of contractors for sharing the construction information and tracking the construction project. Based on the natural languageprocessing method, Lin et al. [24] proposed an intelligent data retrieval method for cloud BIM applications, which is used to solve the contradiction between construction-related parties in finding the required information from a large amount of information. Sattineni and Azhar [25] integrated BIM models and Radio Frequency Identification (RFID) technology to monitor the construction personnel, equipment, and material status in real time. Conde et al. [26] investigated the advantages of the use of BIM with photogrammetry support in small projects. Most of the software is used for the modeling and designing of roads and bridges. Few BIM platforms can monitor the construction quality of roads and bridges in real time. erefore, it is necessary to develop BIM platforms to display the construction information in real time. e objective of this study was to investigate the effects of the variations of different construction indices on the lowtemperature performance of asphalt mixtures and give the monitoring method for these construction indices. Semicircular bend (SCB) test was used to evaluate the lowtemperature performance of asphalt mixtures. A new prediction model of critical strain energy release rate was proposed to evaluate the low-temperature performance of the asphalt layer. Moreover, the BIM platform was developed to monitor the construction quality of asphalt layer in real time.

Experimental Program and BIM Platform
e key construction control indices were determined using the laboratory tests, and the BIM platform was developed in this study, as shown in Figure 1.

Raw Materials.
Styrene-butadiene-styrene (SBS) modified asphalt concrete-13 (AC-13) was selected as the research object in this study. e raw materials were provided by a highway construction project in China.

Asphalt.
In this paper, the binder of SBS modified asphalt (I-C) was used. e basic performance can meet the requirements of JTG F40-2004 [6]. e results of performance tests according to JTG E20-2011 are shown in respectively. e properties of these aggregates are shown in Table 2. e properties of the limestone filler are presented in Table 3. e tests shown in Tables 2 and 3 were carried out  according to JTG E42-2005 [28], and the requirements for these tests were determined based on JTG F40-2004 [6].

Mixture Design.
To study the influence of construction control indexes on the low-temperature performance of the asphalt mixture, the mixture design should be done firstly. e gradation of AC-13 asphalt mixture is shown in Figure 2.
e optimum asphalt-aggregate ratio (OAR) was determined by the Marshall Design method [6]. e molding temperature of specimens was 160°C. e results of the mixture deign is presented in Table 4.

Gradation, Asphalt-Aggregate Ratio, and Rolling
Temperature. From the above analysis, the main factors affecting the construction quality are gradation, asphaltaggregate ratio, rolling temperature, rolling passes, and thickness of the asphalt layer. e number of rolling passes can be well controlled by using the Global Positioning System-Real Time Kinematic (GPS-RTK) technology [29]. e control of the thickness of the asphalt layer is relatively easy, for example, by manual detection [6]. erefore, the mainly considered factors for the low-temperature performance of asphalt mixture in this research were gradation, asphalt-aggregate ratio, and rolling temperature of the asphalt mixture. In the plant of the asphalt mixture, the allowable range of gradation fluctuation for asphalt mixture is presented in Figure 3 [6]. e allowable fluctuation degree in asphalt-aggregate ratio is the design value ± 0.3% [6]. In this study, the molding (or rolling) temperature was determined by the range of design value ± 15°C. e effects of variations of these factors on the low-temperature performance of the asphalt mixture were then estimated.
To study the influence of gradation variation on the lowperformance of asphalt mixtures, there is a need to accurately obtain the set gradation. erefore, the aggregates in different sizes of 13.   Advances in Civil Engineering 3 produced by using these sieved aggregates. e air void of asphalt mixture for each group was determined by Marshall Compaction method, as shown in Table 5.

Gradation Segregation and Temperature
Segregation. e gradation segregation and temperature segregation easily occurs during the processes of production,     transportation, and paving for asphalt mixtures. Existing studies prove that the gradation segregation and temperature segregation have adverse influence on the performance of asphalt mixture [30][31][32][33][34]. But, most of the studies only involve the simulation of large-area segregation, namely, the width of segregation area is near or larger than the rolling width of the roller, as shown in Figure 4(a). However, the large-area segregation rarely occurs during normal construction process of asphalt layers. Furthermore, when the width of segregation area is smaller than the rolling width, the performance of asphalt mixture in the segregation area is not clear, as shown in Figure 4(b). erefore, this paper mainly focuses on investigating the performance of the asphalt mixture in small-area segregation.
In this study, four levels of gradation segregation were designed, which are shown in Figure 5. e asphalt-aggregate ratio of the control group is obviously inappropriate for the asphalt mixtures with gradation segregation. e most practical method to determine the asphalt-aggregate ratio is by taking the cores from the segregation area of the asphalt pavement. However, this method will destroy the structure of the asphalt pavement. Moreover, there is another method: loose asphalt mixture is separated by passing through different sizes of sieves, such as the 9.5 mm and the 4.75 mm sieves [35]. e asphalt mixtures with different gradation segregation and asphalt-aggregate ratio can be obtained by proportioning these parts. But, the loose modified asphalt mixture agglomerates seriously, which is difficult to adjust the proportion of coarse and fine particles. So, the method to obtain the segregated asphalt mixture by sieves has blindness in adjusting the degree of gradation segregation. e effective thickness of the asphalt film for control group can be calculated according to the information in Tables 6 and 7   Advances in Civil Engineering 7.59 μm. Since the gradation-segregated asphalt mixture was derived from the controlled asphalt mixture, the effective thickness of asphalt film for gradation-segregated asphalt mixture was considered to be approximately equal to that of the control group for the test groups (TGs) 1-4. If the effective thickness of the asphalt film is known, the effective asphalt content can be determined by back calculation. en, the asphalt content can be calculated by using Equations (2) Roller Segregation area     [6]., where DA is the effective thickness of the asphalt film (μm); P be is the effective asphalt content (%); c b is the specific gravity of asphalt (25°C/25°C); SA is the specific surface area of the combined aggregate (m 2 /kg); P ba is the proportion of asphalt absorbed into the aggregate (asphaltaggregate ratio) (%); c se is the effective specific gravity of the combined aggregate; c sb is the bulk specific gravity of the combined aggregate; P b is the asphalt content (%); P s is the ratio of the mass of the aggregates to the mass of the asphalt mixture (%).
e calculated asphalt-aggregate ratio can be corrected by [36].
where y is the corrected asphalt-aggregate ratio (%) and x is the calculated asphalt-aggregate ratio (%). e asphaltaggregate ratios of TGs 1-4 are presented in Table 8.
Two levels of temperature segregation were considered in this study, the temperatures of which were set to 145°C (TG 5) and 130°C (TG 6). e surface texture ratio can be used to assess the degree of gradation segregation according to NCHRP report 441 [32]. TG 1 belonged to the low-level segregation, and the segregation level of TG 2 was high. Correspondingly, TGs 3 and 4 belonged to the low-level and high-level segregation, respectively. According to the range of temperature differences by NCHRP report 441 [32], TGs 5 and 6 belonged to the low-level and high-level segregation, respectively.

Determination of Air Voids of Segregated Asphalt
Mixture. According to JTG F40-2004 [6], the OAR was determined using the Marshall design method in China. Because the results of this research were applied to the actual construction project in China, the Marshall design method was adopted for the OAR. However, compared with the Marshall compaction test, the compaction effect of the specimen made by the gyratory compaction test is more close to that of the actual core sample [37]. erefore, the air voids of segregated asphalt mixtures were determined by using the Superpave compaction method. e influence of nonsegregation area on segregation area was considered in this research. e mesh mold is shown in Figure 6. Firstly, the mass of nonsegregated and segregated asphalt mixtures should be determined for molding specimens. e relationship between the height of the specimen (or air voids) and the gyration number was obtained from the records of Superpave Gyratory Compactor. For road construction projects, the air void of asphalt mixture after being paved is approximately 10% [38]. e numbers of gyrations were 11 and 63, respectively, to achieve the air voids of 10% and 3.7% (the designed air voids). Since the segregated and nonsegregated asphalt mixtures have the same thickness after being paved, the height of the specimen for segregated asphalt mixture subjected to 11 gyrations should be same as that of nonsegregated asphalt mixture. e mass of the segregated asphalt mixture is determined based on the height. Next, the nonsegregated and segregated asphalt mixtures with the predetermined mass were placed on two sides of the partition, respectively. e mesh mold was marked according to the position of the partition. When the asphalt mixtures on both sides of the partition reached the predetermined molding temperature, the partition was taken out, and the mesh mold with the asphalt mixtures was put into the Superpave Gyratory Compactor for molding. After 63 gyrations, the mesh mold was removed from the Superpave Gyratory Compactor. e specimen was cut into two pieces according to the mark. e air voids of the cut specimens were measured in accordance with T 0705-2011 (JTG E20-2011) [27], and the results are presented in Table 9. In this study, the ratio of the segregation area to the nonsegregation area was set as 1 : 1. Different ratios can be obtained by adjusting the width and position of the partition.

Specimen Preparation and Testing Procedure.
e SCB test was selected to evaluate the low-temperature performance of asphalt mixture in accordance with ASTM D8044-16 [39]. e test temperature used here was −10°C. e index of SCB test was J c value, the calculation method of which is shown in Equations (5) and (6) [39].
where J c is the critical strain energy release rate (kJ/m 2 ); b is the thickness of specimen (m); a is the incision depth (m); U is the failure strain energy (kJ); dU/da is the change rate of strain energy with an incision depth (kJ/m); P i is the force applied by the i loading step (kN); P i+1 is the force applied by the i + 1 loading step (kN); u i is the displacement of the loading rod detected by the instrument during i loading step (m); u i+1 is the displacement of the loading rod detected by the instrument during i loading step (m).

Advances in Civil Engineering
In this paper, the OT method was used to evaluate the influences of the variations of aggregate gradation, asphaltaggregate ratio, and initial rolling temperature on lowtemperature performance of the asphalt mixture. e effects of gradation segregation and rolling times on low-temperature performance were considered separately.

BIM Platform.
In this study, a BIM platform was developed to monitor the construction quality of the asphalt pavement intuitively and in real time. ere are 4 parts to build a BIM platform: three-dimensional (3D) model of roads and bridges, terrain data, monitoring information, and platform functions. ree-dimensional models can directly show the shape of roads and bridges, and is the carrier of construction information. Terrain data were obtained by oblique photography [40]. e key construction monitoring indices were determined according to the results of the laboratory tests. Construction control information was obtained through different sensors. e functions of the BIM platform were mainly related to the analysis and display of detected data. e building process of the BIM platform is presented in Figure 7.

ree-dimensional Structure of the Asphalt Pavement.
ree-dimensional structure of the asphalt pavement was drawn by the software of Autodesk Revit, which can be imported into this BIM platform. e asphalt pavement includes surface course and base course. Based on the location of the start and end of the paving for a truck of asphalt mixture, the 3D structure of the asphalt pavement was divided into many components. e starting point of the component was the starting paving position of the asphalt mixture of a truck. e BIM model of the asphalt pavement is shown in Figure 8.

Building BIM Platform.
e monitoring of construction information was based on the BIM platform developed by the authors, which is presented in Figure 9. e terrain data were obtained using the oblique photography, as shown in Figure 9. e construction control indices were measured by different types of sensors in the process of asphalt pavement construction. e detected data were uploaded to the background data processing center through the 4G network.
e detected data are shown on the components of road and bridge in the BIM platform [41]. When you click the component, the test data are displayed. Moreover, the detected data can be analyzed and displayed by the background data processing center. For example, the BIM platform can show the trend of the asphalt-aggregate ratio with time. Software users can log in to the system from anywhere. ey can also view and modify the information and models according to their permissions.

Influence of Gradation, Asphalt-Aggregate Ratio, and
Rolling Temperature on Low-Temperature Performance

Range Analysis.
e OT results and range analysis of low-temperature performance of the asphalt mixture are shown in Table 10.
In Table 10, I j is the sum of J c of level 1 for column j (j � 1, 2, and 3); II j , is the sum of J c of level 2 for column j (j � 1, 2, and 3); III j is the sum of J c of level 3 for column j (j � 1, 2, and 3). R j is the difference between the maximum and minimum values among I j /3, II j /3, and III j /3.
According to the results of Table 10, the order of influence of various factors on the low-temperature performance of the asphalt mixture from strong to weak is asphaltaggregate ratio, gradation, and rolling temperature. erefore, in the mixing process of the asphalt mixture, special attention should be paid to the fluctuation of asphaltaggregate ratio to ensure the low-temperature performance of the asphalt mixture. e effect of each factor level on J c value is shown in Figure 10. It can be seen from the figure that for a given level of influencing factors, the J c value increases first and then decreases as the gradation becomes coarser. is is because when compared with the upper limit and lower limit of fluctuation, the asphalt mixture with design gradation has a higher degree of compactness, smaller air voids, and less internal defects, so that the low-temperature performance is better while the other conditions are the same. e J c value increases as the asphalt-aggregate ratio increases. e reason is that as the asphalt-aggregate ratio increases, the stiffness modulus of the asphalt mixture decreases and the stress relaxation performance increases. Under low-temperature conditions, the failure of the asphalt mixture requires more energy. e J c value increases weakly with the increase of the

Advances in Civil Engineering
rolling temperature when the other conditions are the same. Increasing the rolling temperature will improve the viscosity of asphalt and promote the compaction. On the other hand, the increase effect is not obvious because the three rolling temperatures are at a higher level.

Variance
Analysis. e variance analysis results are presented in Tables 11 and 12., where Y i is the average value of J c for each group; Q T is the total sum of squares of deviations.
For α � 5%, F α (2, 2) is 19. So F-value of factor B is higher than F α (2, 2), while F-values of factors A and C are less than F α (2, 2), which indicates that the factor B significantly affects the low-temperature of the asphalt mixture, and the influence of factors A and C on evaluation index is not obvious. erefore, to ensure the low-temperature performance of the asphalt mixture, the asphalt mixture plant should focus on monitoring the fluctuation of asphalt-aggregate ratio, especially when the asphalt-aggregate ratio is lower than the set value.

Influence of Segregation on Low Temperature
Performance.
e SCB test results of segregated asphalt mixture are shown in Figure 11.
As shown in Figure 11, for the segregated asphalt mixture, the low-temperature performance decreases as the gradation becomes coarse. is is because the internal defects increases, the asphalt content decreases, and the stiffness modulus increases when the gradation of asphalt mixture becomes coarse. As the gradation becomes fine, the low-temperature performance of asphalt mixture increases. e reason is that the increase of the asphalt content is advantageous for improving the low-temperature performance, and the lower void ratio reduces the internal defects in the mixture. It should be pointed out that the gradation becoming fine and the increase of asphalt content can increase the risk of rutting during hot summers. e selection of types of the asphalt binder can be considered to balance the low-temperature and high-temperature performances of the asphalt mixture. As the degree of temperature segregation increases, the low-temperature performance of the asphalt mixture declines. is is because the asphalt mixture has low degree of compaction and more internal defects, and the asphalt content is relatively reduced, so the adhesion of the asphalt mixture is poor, resulting in a decrease in lowtemperature performance.    Figure 10: Influence of factor levels on low-temperature performance.

Comprehensive Analysis of Various Factors on Low-Temperature Performance.
To compare the influence degree of various factors on the low-temperature performance in the construction process of the asphalt mixture, it is necessary to add a supplementary test group to reflect the difference of low-temperature performance between the asphalt mixture with gradation of lower limit of fluctuation and the control group, as shown in Table 13. e difference of low-temperature performance between asphalt mixture in OT 4, TG 2, TG 4, TG 6, and the control group can, respectively, reflect the influence of the asphalt-aggregate ratio in the mixing process, the coarser and finer gradation due to segregation, and temperature segregation on the lowtemperature performance of the asphalt mixture. For the construction process of the asphalt layer, the effects of various factors on the low-temperature performance of asphalt mixture are shown in Table 14.
According to  Figure 11: SCB test results of the segregated asphalt mixture.  the considered factors for the low-temperature performance from large to small is the gradation coarsening due to segregation, temperature segregation, the reduction of asphalt-aggregate ratio in the mixing process, and the gradation coarsening in the mixing process. e finer gradation due to segregation has a beneficial effect on the lowtemperature performance of the asphalt mixture. erefore, to ensure the low-temperature performance of the asphalt mixture, it is important to monitor the gradation coarsening and temperature variation caused by the segregation.

Prediction Model of Critical Strain Energy Release
Rate. e critical strain energy release rate is related to the lowtemperature cracking of the asphalt pavement. erefore, it can be used to characterize the low-temperature performance of asphalt mixtures. e low-temperature performance of asphalt mixtures is related to the properties of raw materials, asphalt-aggregate ratio, and volume parameters [42]. According to the construction process of asphalt layers, the volume parameters also mainly depend on mineral graduation, asphalt-stone ratio, rolling temperature, and so on. ese construction indices can be detected in real time by the sensors. Consequently, it is necessary to find out how to use these data to evaluate the low-temperature performance of the asphalt layers during the construction process. In this study, a new prediction model of critical strain energy release rate was established according to Tables 10, 13, and 14, which is shown in Equation (8). Based on these real-time detection data, the construction quality for the lowtemperature performance can be evaluated by this prediction model [43].
, where J cd is the designed critical strain energy release rate, which is a fixed value for a specific project (kJ/m 2 ); P a is the detected asphalt-stone ratio; P ad is the designed asphaltstone ratio; T is the rolling temperature (°C); T d is the designed rolling temperature (°C); CA is coarse aggregate ratio; FA c is fine aggregate coarse fraction ratio; FA f is fine aggregate fine fraction ratio. With the development of realtime detection technology, the establishment of the model can consider more factors to improve the accuracy and applicability of prediction. Figure 12 presents the estimated J c based on Tables 10, 13, and 14, and Equation (8), compared with the measured J c shown in Table 14. As presented in Figure 12, Equation (8) has high R-square values, which indicate how well the measured and estimated values of J c correlate linearly. After the prediction model of critical strain energy release rate is established, it needs to be verified based on road construction projects. Figure 13 and Table 15 present the gradations and asphalt-stone ratios of the asphalt mixture sampled from the highway construction project in China by the extraction tests (ETs), respectively. e asphalt mixture was prepared according to the results of the ETs. e molding temperature is shown in Table 16, which is measured by the infrared temperature sensors. e applicability of the prediction model of critical strain energy release rate was evaluated by using the deviation between the estimated and the measured values of each extraction test group. According to Figure 14, the average deviation between the predicted and the measured values of critical strain energy release rate of the extraction groups is −1.46%. e maximum deviation of these extraction test groups is 12.25%. Overall, the deviation between the predicted and measured values of the critical strain energy release rate of these extraction test groups is relatively small, indicating that the prediction model of the critical strain energy release rate established in this study has good applicability for AC-13. According to Report FHWA/LA.14/ 558 [44], the minimum J c values of 0.6 and 0.5 kJ/m 2 are  proposed as the cracking performance criteria to ensure acceptable cracking performance of Level 2 and Level 1 asphalt mixtures, respectively. In this research, if the estimated J c value exceeds 0.6 kJ/m 2 , the low-temperature performance of the asphalt layer is considered as qualified.

Gradation and Asphalt-Aggregate Ratio of the Asphalt
Mixture. e gradation of the asphalt mixture in the mixing stage can be obtained in real time by digital image processing technology [11,12,45] or online detection of asphalt mixture plant [6,7]. e asphalt-aggregate ratio in the mixing stage can also be measured by online detection of the asphalt mixture plant [6]. To date, for a pot of asphalt mixture, the information collection system of the asphalt mixture plant can collect the mass of asphalt and hot aggregates for mixing. erefore, the asphalt-aggregate ratio for each pot can be accurately determined, as shown in Table 17. Moreover, the gradation of a pot of asphalt mixture can be calculated based on the aggregate gradation of each bin. For the highway     Table 17. e online test results show that the fluctuation of asphalt-stone ratio is very small. e real-time gradation of a pot of asphalt mixture is presented in Figure 15.

Initial Rolling
Temperature. e infrared temperature sensor can be used to determine the initial rolling temperature. e roller with the infrared temperature sensor is shown in Figure 16. When using the infrared temperature sensor for collecting temperature data, the temperature data and the     asphalt pavement location will be uploaded to the background data processing center. In the background data processing center, the collected temperature values are matched with the asphalt pavement location, as shown in Table 18. e average initial rolling temperature was 155°C for the paving unit of K11 + 986.2 to K12 + 44.1. en, the temperature data are released to the BIM platform in a timely manner.

Real-Time Monitoring of Construction Indices.
e measured or predicted values of key construction control indices were uploaded to the BIM platform in real time, which were associated with the BIM components of road or bridge through the BIM platform. When a BIM component is clicked with the mouse, the construction information will be displayed near the BIM component. Construction workers can log in to the system to view the 3D models and monitor the data of construction quality at any location and time. Figure 17 shows the construction information of a BIM composition. e passing of 2.36 mm sieve can be used to distinguish between fine-and coarse-graded mixtures for AC-13 (AASHTO M 323-17) [46], which is the primary control sieve. erefore, the passing of the 2.36 mm sieve was used to characterize the gradation of the asphalt mixture. e pile numbers of BIM components were determined by GPS-RTK technology [29]. According to Equation (8), the estimated value of J c was 1.870 kJ/m 2 for this BIM component. Table 19 presents the allowable ranges of fluctuation for these construction indices. In addition, the measured values of construction indices can also be analyzed centrally.

Conclusions
In this study, the influences of the fluctuations of the construction indices on the low-temperature performance of the asphalt mixture were estimated to determine the key construction indices. Based on the SCB test, the index of J c was used to characterize the low-temperature performance of asphalt mixtures. A new prediction model of critical strain energy release rate was developed to evaluate the construction quality of the asphalt layer. Five factors were considered for the lowtemperature performance of asphalt mixtures in this research. Furthermore, the BIM platform was built to monitor the construction quality of the asphalt layer. On the basis of the results and analysis, the following conclusions can be drawn: (i) For the set factor levels, the order of importance of factors affecting the low-temperature performance of asphalt mixtures is asphalt-aggregate ratio, gradation, and molding temperature. erefore, special attention should be paid to the fluctuation of the asphalt-stone ratio to ensure the low-temperature performance of the asphalt mixture in the asphalt mixture plant.
(ii) For the set factor levels, the J c value of the asphalt mixtures increases with the increase of the asphaltstone ratio. In the asphalt mixing plant, when the asphalt-stone ratio is less than the design value, the construction workers should pay more attention to this case. (iii) e J c value of the asphalt mixtures decreases because of gradation coarsening due to segregation. e J c value of the asphalt mixtures increases as the gradation becoming finer due to segregation. (iv) e J c value of the asphalt mixtures decreases with the increase in the degree of temperature segregation. And, the J c value of the asphalt mixtures drops about 6.3%-23.6% for the set temperature segregation. (v) For the single factor, the gradation coarsening due to segregation and the temperature segregation have a worse effect on the low-temperature performance of asphalt mixtures in the construction process of the asphalt layer. (vi) Based on the results of the extraction test, the deviation between the predicted and measured values of critical strain energy release rate is small, which indicates that the prediction model of critical strain energy release rate has good applicability for AC-13. (vii) e BIM platform was developed to monitor the real-time detection data from the construction process of the asphalt layer. e construction workers can grasp the construction quality of the asphalt layer in time based on this platform.

Data Availability
e data used to support the findings of this study are included within the article.

Conflicts of Interest
e authors declared that there are no conflicts of interest.