4.2. Permeability Quality Evaluation Test Results
The permeability coefficient of three permeable asphalt mixtures with different cycles is shown in
Figure 8.
As shown in
Figure 8, it can be determined that the permeability coefficients of OGFC, SBS-OGFC, and COF-OGFC were 0.19 cm/s, 0.28 cm/s and 0.24 cm/s at the start of the clogging procedure. It is generally believed that, for permeable asphalt pavement, the smaller the asphalt content, the greater the number of connected pores and the better the permeability. The asphalt contents of OGFC, SBS-OGFC and COF-OGFC were 4.8%, 4.2%, and 5.18%, respectively. SBS-OGFC has the smallest asphalt content, so it has the largest permeability coefficient of the three asphalt mixtures. Interestingly, the asphalt content of COF-OGFC is higher than that of OGFC, but the permeability coefficient is larger than that of OGFC. This is because the oil shale waste has a large specific surface area, dense pore structure and various mesoporous shapes, which means a larger adsorption area and lower probability of redundant asphalt blocking the effective pore. The permeability coefficient of the three mixtures decreased rapidly with the increase of the spring clogging cycles. After eight spring clogging cycles, the permeability coefficients of the OGFC, SBS-OGFC, and COF-OGFC mixtures were 0.11 cm/s, 0.128 cm/s, and 0.122 cm/s, respectively. According to the technical requirements and practical experience of permeable asphalt mixture, it is recommended that the permeability coefficient of the surface layer should be greater than or equal to 0.12 cm/s. Thus, the permeable function of the three permeable asphalts no longer meets the requirements after approximately eight spring clogging cycles. It can be seen from
Figure 8b that the permeability coefficient of the three permeable asphalt mixtures decreases with the increase of summer clogging cycles, and the declining trend seems to taper. After 50 summer clogging cycles, the permeability coefficients of the OGFC, SBS-OGFC, and COF-OGFC mixtures were 0.062 cm/s, 0.057 cm/s, and 0.069 cm/s, respectively, and after 20 spring clogging cycles, the permeability coefficients of the OGFC, SBS-OGFC, and COF-OGFC mixtures were 0.064 cm/s, 0.057 cm/s, and 0.072 cm/s, respectively. This also showed that there is a significant difference between the spring clogging behavior and summer clogging behavior of permeable pavement in seasonally frozen regions. The spring clogging behavior belongs to a rapid clogging mechanism, while the summer clogging behavior belongs to a slow clogging mechanism. This may be related to the coverage density of clogging materials, the particle size distribution of the clogging materials, and the porosity change caused by a F-T environment.
The porosity of the three permeable asphalt mixtures with different cycles is shown in
Figure 9.
It can be readily observed from
Figure 9a that the porosities of OGFC, SBS-OGFC, and COF-OGFC were 19.8%, 22.8%, and 21.3%, respectively, before the physical clogging procedure, which met the requirements of the Chinese standard (i.e., porosity of permeable asphalt pavement ≥ 18%). The sequence of the porosity of the three asphalt mixtures before the physical clogging procedure was SBS-OGFC > COF-OGFC > OGFC, which is consistent with the results of the permeability coefficient. The porosity of the three permeable asphalt mixtures decreased rapidly with the increase of cycles. After 20 spring clogging cycles, the porosities of OGFC, SBS-OGFC, and COF-OGFC were 10.34%, 8.27%, and 9.97%, respectively. The decrease of the porosity of the three mixtures was mainly concentrated in the first eight spring clogging cycles, which is consistent with the declining trend of the permeability coefficient. This also indicated that the porosity of the permeable pavement has a significant correlation with the permeability coefficient. The largest decrease in the porosity of the the three asphalt mixtures was for SBS-OGFC. This is because SBS-OGFC has the largest porosity, and the probability of triggering the clogging behavior is much higher than for the other two mixtures. It can be seen from
Figure 9b that the porosity of the three mixtures decreased with the increase of summer clogging cycles. After 40 summer cycles, the porosity of the three asphalt mixtures began to stabilize, which indicated that the clogging materials in the permeable asphalt mixture almost reached saturation. After 50 summer clogging cycles, the porosities of OGFC, SBS-OGFC, and COF-OGFC were 11%, 8.23%, and 9.69%, respectively, and after 20 spring clogging cycles, the porosities of OGFC, SBS-OGFC, and COF-OGFC were 10.34%, 8.27%, and 9.97%, respectively. This indicated that after 20 spring clogging cycles, or 50 summer clogging cycles, the clogging materials in the permeable asphalt pavement reached saturation, which means the “End-of-Life” of the permeable asphalt pavement.
The dry weight of the three permeable asphalt mixtures with different cycles is shown in
Figure 10.
It can be seen from
Figure 10a that the dry weight of the three mixtures increased overall as the number of cycles increased. After 20 spring clogging cycles, the dry weights of OGFC, SBS-OGFC, and COF-OGFC mixtures increased by 7.86%, 9.59%, and 7.33%, respectively. The increase of the mass is due to the fact that the proportion of clogging materials remaining inside the permeable asphalt pavement is gradually increasing. The mass increase rate of SBS-OGFC was always higher than that of the other two asphalt mixtures during the physical clogging procedure. This is because the SBS-OGFC has a larger porosity and can accommodate more clogging materials. Moreover, due to the relatively excellent bonding properties between aggregates in SBS-OGFC, the phenomenon of quality degradation caused by aggregates falling off due to the dynamic water scouring does not occur easily. The dry mass of the OGFC decreased after 12 spring clogging cycles, which may be caused by the spalling of some aggregates on the surface of the specimen under the action of dynamic water scouring. The dry mass of the SBS-OGFC and COF-OGFC decreased after 16 spring clogging cycles, which also indicates that SBS-OGFC and COF-OGFC have better raveling resistance than OGFC. It can be seen from
Figure 10b that the dry weight of the three asphalt mixtures increases steadily with the increase of summer clogging cycles in the first 40 cycles, and then the dry weight began to stabilize, which is consistent with the permeability coefficient and porosity results. This also indicated that the clogging materials in the asphalt pavement reached saturation after 40 summer clogging cycles. The mass increase rate of SBS-OGFC is higher than that of COF-OGFC after 50 cycles, indicating that the larger the porosity, the more clogging materials can be accommodated. The mass change of the three asphalt mixtures during the summer clogging procedure is more stable than that during the spring clogging procedure. This is due to the influence of temperature, which was considered in the spring clogging procedure. The adhesive and adhesion properties of the asphalt binder deteriorated under the F-T cycles, resulting in a decrease in the overall properties of the asphalt mixture, which easily triggers the loosening of the asphalt mixture under hydrodynamic scouring. Moreover, the coefficient of variation (CV) of the above data was calculated, and the formula for CV is as follows.
where
is the data standard deviation and
is the data average. The
CV of test results for samples gradually increases with the cycles, and the
CV of the test results for samples is smallest when the cycle time is zero. This indicates that the physical clogging of the permeable asphalt mixture is a random phenomenon, and the longer the cycle time, the greater the discreteness of the test data. The CV of all test results measured in this paper is within 20%, which proves that the porosity test has good repeatability.
According to the grey system theory, the clogging coefficient of the three mixtures with different cycles is calculated, and the results are shown in
Figure 11.
As can be seen from
Figure 11a, the clogging coefficient of the three mixtures increases as the cycles increase, which indicates that the clogging state of the permeable pavement becomes increasingly serious. For the same cycles, the clogging coefficient of SBS-OGFC is always higher than that of the other two mixtures, which demonstrates that the larger the porosity of permeable asphalt pavement, the higher the probability that the clogging materials will enter the pores and cause the clogging behavior. The clogging coefficient of OGFC showed almost no charge after 12 cycles, which indicated that the rapid clogging process in spring was basically completed before 12 cycles, followed by the slow clogging process. The effect of the slow clogging process on the clogging coefficient index is not obvious. The clogging coefficient of COF-OGFC showed little change after 16 cycles, i.e., the rapid clogging process of COF-OGFC had been completed before 16 cycles. It can be seen from
Figure 11b that the clogging coefficient of three asphalt mixtures increases steadily with the increase of summer clogging cycles in the first 40 cycles, and then the clogging coefficient of three asphalt mixtures enters the stable stage, which is almost consistent with the permeability coefficient, porosity and dry weight change trend. This indicated that the clogging coefficient as an indicator for evaluating the clogging state of the actual permeable pavement is an objective and reliable application. The clogging coefficients of three permeable pavement are similar in each period. This is because the gradation of the three permeable pavements is the same. After 50 summer clogging cycles, the clogging coefficient of SBS-OGFC was higher than OGFC and COF-OGFC. This is because the porosity of SBS-OGFC is the largest, and it can accommodate more clogging materials. In the last 10 summer clogging cycles, the clogging coefficient of three asphalt mixtures has almost no change, which also shows that the clogging materials content of permeable pavement almost reached saturation after 40 summer clogging cycles.
4.3. Spring-Thawing Clogging Model of OGFC Based on the Mistcherlich Growth Model
After calculation, spring-thawing clogging model of three mixtures and model parameters are summarized in
Table 11 and
Figure 12.
It can be seen from
Table 11 that the determinant coefficient of each model is above 0.98, which indicates that the spring-thawing clogging model of the three mixtures has a higher prediction accuracy, and employing the Mistcherlich growth model is reasonable to describe the clogging process of the permeable asphalt pavement during the spring-thawing season. SBS-OGFC has the highest
a value among the three mixtures, which indicates that the maximum degree of clogging of SBS-OGFC is the largest among the three mixtures. This is due to the higher porosity of the SBS-OGFC, which is consistent with the above data. The sequence of the clogging rate (index
c) of the three asphalt mixtures during the spring-thawing season was OGFC > SBS-OGFC > COF-OGFC, respectively, which indicated that COF-OGFC not only has better pavement performance, but also has better permeability and resistance to rapid clogging behavior in the spring-thawing season. This may be due to the fact that oil shale waste adsorbs a large amount free asphalt, which reduces the probability that redundant asphalt blocks the effective pores, meaning that the generated pores are uniformly dispersed in the mixtures.
It can be seen from
Figure 12 that there is a significant difference in the maximum degree of clogging and clogging rate of the three permeable asphalt pavements under the summer clogging procedure. The OGFC has the largest maximum degree of clogging and the lowest clogging rate among the three mixes under the summer clogging procedure. This may be due to the OGFC having the smallest porosity, and the particle size of the clogging materials that can enter the interior of pavement is also relatively small, which reduces the probability that effective pores are directly blocked, and increases the possibility of deposition blockage. Thus, the clogging rate of OGFC is small and the maximum degree of clogging is large.
It also can be concluded that the maximum clogging degree of permeable pavement in summer is greater than that in spring, and the clogging rate in summer is much smaller than that in spring. This indicates that there is an essential difference in the clogging behavior of the permeable pavement in spring and summer. The maximum clogging degree of the permeable pavement in summer is about 40% higher than that in spring season, while the clogging rate is much lower than that in spring, at only about 14%, which indicates that the clogging behavior of the permeable asphalt pavement in spring is mostly in the rapid clogging mode, and that in summer is mostly in a slow deposition clogging mode.
According to the above analysis, it can be seen that the COF-OGFC has an excellent maximum clogging degree and clogging rate value in summer and spring seasons, which indicates that COF-OGFC can effectively resist different modes of clogging behavior and has strong applicability. This is because the oil shale waste has a large specific surface area, dense pore structure and various mesoporous shapes, which means a larger adsorption area and lower probability of redundant asphalt blocking the effective pore. The oil shale waste reshapes the pore structure of permeable asphalt pavement and enhances the permeability properties and resistance to the clogging behavior of permeable asphalt pavement.
4.4. Effect of Particle Size of Clogging Materials on Clogging of COF-OGFC Base on the Gray Relation Entropy Theory
Through the above analysis, it is seen that the spring clogging behavior of the permeable pavement in the seasonal frozen region is in a rapid clogging mode, which makes the permeable asphalt pavement quickly lose its permeable function in a short time. Therefore, the effect of particle size of clogging materials on spring clogging behavior of the permeable pavement was discussed in this section, which can provide a reference for the design of the permeable pavement.
In this study, the sieved fine sand is synthesized into four clogging materials with different gradation: powdery clogging materials, sandy clogging materials, gravelly clogging materials, and full-scale clogging materials, according to the above statistics on the particle size distribution of spring clogging materials. The gradation of powdery clogging materials, sandy clogging materials, gravelly clogging materials, and full-scale clogging materials is shown in
Table 12.
In this study, the spring physical clogging procedure was applied to evaluate the effect of the particle size of clogging materials on the clogging of COF-OGFC. In order to remain consistent with the above procedure, the simulated vehicle speed is 80 km/h, the water gun pressure is set to 2561.6 KPa, the rotation speed of the cylindrical structure is set to 420 rad/min, and the scouring time of one cycle is 4.8 min. The mass of the clogging materials deposited on the surface of the Marshall specimen before cycles is 43 g, and the dry weight, porosity and permeability coefficient of specimen are measured every 4 cycles for a total of 20 cycles. The permeability coefficient of COF-OGFC with different clogging materials is shown in
Figure 13.
It can be observed in
Figure 13 that the permeability coefficients of COF-OGFC with powdery clogging materials, sandy clogging materials, gravelly clogging materials, and full-scale clogging materials were reduced to 71%, 43%, 88%, and 30% of the initial value after 20 cycles. It can be seen that the gravelly clogging materials had the least influence on the permeability coefficient of COF-OGFC, which is because the large-size clogging materials are more easily embedded in the open pores of the surface and do not easily enter the pavement to form an accumulation. Moreover, the gap between the clogging materials embedded in the open pores of the surface is larger, which has little influence on the permeability of COF-OGFC. The full-scale clogging materials have the greatest influence on the permeability coefficient of COF-OGFC. This is because the large-size clogging materials are embedded in the interconnected pores, and the small-size clogging materials accumulate and fill the remaining pores, resulting in the complete blockage of the permeability path of COF-OGFC. The effect of powdery clogging materials on the permeability coefficient of COF-OGFC is also small. This is because the two-phase mixture containing the powdery clogging materials and the water flow can smoothly flow out of the pavement surface along the interconnected pores. The powdery clogging materials do not easily form an intrusion in the interconnected pores, and only the accumulation formed by powdery clogging materials has little effect on the permeability coefficient of COF-OGFC.
The porosity of COF-OGFC with different clogging materials is shown in
Figure 14.
Figure 14 shows that the porosities of COF-OGFC with powdery clogging materials, sandy clogging materials, gravelly clogging materials and full-scale clogging materials were reduced to 90%, 53%, 97% and 57% of the initial value after 20 cycles. This also indicates that powdery clogging materials and gravelly clogging materials have little effect on the porosity of OGFC, which is consistent with the permeability test results. The main reason for this is that the clogging materials with a larger size or smaller size cannot remain in the interior of the COF-OGFC, and sandy clogging materials are easily retained in the permeable pavement due to the proper size.
The dry weight of COF-OGFC with different clogging materials is shown in
Figure 15.
It can be seen from
Figure 15 that, as the cycles increase, the dry weight of COF-OGFC with different clogging materials increases. The increase in the dry weight of COF-OGFC with sandy clogging materials and full-scale clogging materials was quite obvious. After 20 cycles, the dry weight of COF-OGFC with sandy clogging materials and full-scale clogging materials increased by 148.27 g and 90.26 g, respectively. The dry weight change of COF-OGFC with powdery clogging materials and gravelly clogging materials was not significant, and after 20 cycles, the dry weight of COF-OGFC with powdery clogging materials and gravelly clogging materials increased by 37.73 g and 5.64 g, respectively. However, compared with the permeability coefficient and porosity index, the dry weight of COF-OGFC with powdery clogging materials changes more obviously, which may be due to the fact that the clogging materials with a small size can easily enter the pavement under the hydraulic gradient and dynamic water scouring, and the infiltrated clogging materials can only be attached to uneven grooves in the pores or in semi-connected pores. The accumulation of small-size clogging materials only causes a significant change in dry weight and does not affect the porosity and permeability coefficient of COF-OGFC. The dry weight of COF-OGFC with full-scale clogging materials was 1359.57 g after 16 cycles and 1320.96 g after 20 cycles. The dry weight of COF-OGFC with full-scale clogging materials suddenly decreased, but the porosity and permeability coefficient indexes did not fluctuate abnormally, and still increased steadily. This is because the aggregate on the surface of specimens falls off under the long-term scouring, and the abnormal mass change is ascribed to the aggregate falling from the surface, so it does not affect the porosity and permeability coefficient of COF-OGFC.
According to the calculation method of the clogging coefficient in
Section 4.1, the clogging coefficient COF-OGFC with different clogging materials was calculated and is summarized in
Figure 16.
In this study, the clogging coefficient of full-scale clogging materials is used as the characterization of the clogging state, i.e., the systematic characteristic behavior sequence in the grey entropy correlation analysis, the powdery clogging materials, sandy clogging materials, and gravelly clogging materials as the factor sequence. Thus, the correlation degree between the systematic characteristic behavior sequence and correlation factor sequences is calculated according to the gray relation entropy theory. The results are as shown in
Table 13.
As can be observed in
Table 13, the sequence of grey entropy correlation of three clogging materials was sandy clogging materials > powdery clogging materials > gravelly clogging materials, respectively, which indicates that gravelly clogging materials have the least influence on the clogging behavior of permeable pavement, and the particle size ranges from 1180 μm to 4750 μm. This may be because the large-size clogging materials are more easily embedded in the open pores of the surface, and do not easily enter the pavement to form an accumulation. Moreover, the gap between the clogging materials embedded in the open pores of the surface is larger, which has little influence on the permeability of COF-OGFC. The powdery clogging materials have a greater influence on the spring clogging process compared with gravelly clogging materials, and the particle size range is below 150 μm. This is because the size of clogging materials in this particle size range is small. The clogging materials could flow out of the surface along the interconnected pores under dynamic water scouring, but there are always some clogging materials which remain inside the pavement, which accumulate at the interconnected pores with smaller drops, affecting the permeability of the pavement. The most important influence on the spring clogging behavior is the sandy clogging materials, and the particle size ranges from 150 μm to 1180 μm. The size of the sandy clogging materials is moderate, and it can move to a deeper position inside the pavement under dynamic water scouring, forming an accumulation and blocking water flow, thus causing the permeability functional failure of permeable pavement.