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Article

Evaluation of the Resilient Modulus of Hot-Mix Asphalt Made with Recycled Concrete Aggregates from Construction and Demolition Waste

1
ETSI Caminos, Canales y Puertos, University of A Coruña, Campus de Elviña s/n, 15071 La Coruña, Spain
2
CIETI, ISEP-School of Engineering, Polytechnic of Porto, Rua Dr. António Bernardino de Almeida 431, 4249-015 Porto, Portugal
*
Author to whom correspondence should be addressed.
Sustainability 2020, 12(20), 8551; https://doi.org/10.3390/su12208551
Submission received: 3 September 2020 / Revised: 24 September 2020 / Accepted: 13 October 2020 / Published: 16 October 2020

Abstract

:
This paper reports the influence of the percentage of recycled aggregate (RCA) from construction and demolition waste (C&DW) together with the percentage of binder (L), curing time (t) and temperature (T) of the samples on the stiffness of a hot asphalt mixture. The study was carried out using the response surface methodology (RSM). The resilient modulus was chosen to estimate the stiffness of the mixture. The percentages of RCA studied were 0% (control), 5%, 10%, 20% and 30%, whilst 3.5%, 4% and 4.5% were those chosen for the binder content. Before compacting the samples, they were left into the oven to cure. Curing time, or pretreatment time, were set at 0 (control), 2 and 4 h. The samples were subjected to temperatures of 0, 10 and 20 °C. The natural aggregate is of the hornfels type. All the specimens studied showed high stiffness at low temperatures. According to this research, temperature proved to be the most influential factor on the decrease in the resilient modulus and, conversely, the percentage of recycled aggregate is not a significant factor in the range of values studied.

1. Introduction

According to the basis of circular economy, materials and products must be kept in use as long as possible in order to generate a sustainable European economic framework [1]. Recycling of construction and demolition waste is one of the mandatory aims of the European Union. The European commission itself states the following: “The Commission will take a series of actions to ensure recovery of valuable resources and adequate waste management in the construction and demolition sector and to facilitate assessment of the environmental performance of buildings” [1].
The partial or total replacement of natural aggregates by recycled ones from construction and demolition waste (C&DW) as recycled aggregate in the manufacture of road pavements could constitute a real possibility to reuse this kind of waste [2,3].
The use of C&D as a partial aggregate in hot bituminous mixes contributes to the reuse of construction and demolition waste. This reduces the energy consumption that would be necessary to dispose of this waste in a conventional way. For example, it is estimated that the waste industry in Great Britain emits around 250.3 Mt of CO2 per year. [4].
According to Chappat et al., [5], a sustainable pavement is “A safe efficient and environmentally-friendly pavement which meets the needs of present-day users without compromising those future generations”, for this purpose a sustainable pavement must optimize the use of natural resources and reduce the energy consumption in order to reduce the greenhouse emissions. All this must be achieved without reducing the comfort and safety of users. Several environmental studies found that the use of recycled aggregates reduces energy use and emissions [6,7].
Many of the road pavements, both in Europe and America, are made with hot-mix asphalt (HMA). In this type of mixture, the aggregates represent around of 95% in weight. Therefore, using a recycled aggregate, such as C&DW, instead of natural ones, not only helps to reuse the waste, but also to save natural resources. In addition to that, according to Saberian et al., the recycling of C&DW contributes to reducing the carbon emissions by around 65% [8]. In addition, the construction of pavements using C&DW not only contributes to the profitability of CD&W, but also to preserve natural resources. Therefore, the use of C&DW as a recycled material can be considered a viable and sustainable option.
In this regard, mention should be made to the works of Aljassar et al., on the use of C&D in hot-mix asphalt in Kwait [9], Paranavithana and Mohajerani report that hot-mix asphalt made with C&D shows a mechanical behavior similar to the conventional ones [10]. Two of the authors of the present paper, Pérez and Rodríguez Pasandín, designed a hot-mix asphalt for flexible sections of pavements for medium or low volumes of traffic. They had a performance comparable to the conventional HMA [11].

2. Aim and Scope Definition

The goal of this research was to estimate the influence of the percentage of recycled aggregate from C&DW (%RCA), temperature (T), curing time (t) and the percentage of the binder (%L), as well as the mutual influence between them on the stiffness of HMA.
Several metrics can be chosen for measuring the stiffness, such as complex modulus, dynamic modulus, or resilient modulus [12]. The latter was chosen for the present work.
The type of the mixture studied was an AC22 base 50/70 G. In Spain, this nomenclature means the following: An asphalt concrete mixture with a nominal maximum grain size of 22 mm used in base courses in road pavements with 50/70 bitumen penetration and with a coarse gradation (G). This mixture was chosen because less requirements are demanded according to the Spanish specifications [13].
A composite factorial design was implemented after conducting several laboratory tests in order to obtain a nonlinear regression model that makes it possible to determine the optimum level of the parameters mentioned above.

3. Materials and Methods

In a previous piece of research, the mechanical properties, such as the indirect tensile strength (ITS) and the effect of the water on cohesion (stripping) (ITSR) of a HMA manufactured with several percentages of C&DW as recycled aggregate were studied [14]. In the present paper, the resilient modulus was estimated to evaluate the stiffness of the mixture.
It is well known that the bituminous mixtures are not an elastic material, but instead they present a certain permanent deformation after each application of the load [15]. However, if the applied load is small compared to the strength of the material and is repeated for a sufficient number of cycles, the deformation that occurs under each load application is practically recoverable and proportional to the load. Therefore, the bituminous mixtures can be considered as viscoelastic material. The modulus of rigidity obtained, when the ratio between the deviator stress and the recoverable strain of a bituminous mixture remains constant after repetitive loads, is called the resilient modulus, MR.
The samples, the object of this study, were made using different percentages of recycled aggregate from C&DW: 0% (control), 5%, 10%, 20% and 30%. Before the specimens were compacted, they were left in the oven. Through this process, curing or pretreatment time, the aggregate will better absorb the bitumen. They are pretreated for 0 (control), 2 and 4 h in the stove. The experiment was carried out at three temperatures: 0, 10 and 20 °C.
The response surface methodology (RSM) was used to estimate the influence of the factors and interactions between them on the response variable. In order to obtain the maximum information at the cost of a limited number of experiments, a design of experiments was drawn. This methodology has been applied in a previous paper [14] and for other authors [16,17,18,19].

3.1. Materials

3.1.1. Natural Aggregates

Hornfels were used as a natural aggregate. This aggregate is normally used to produce HMA in Spain. According to X-ray fluorescence analysis, its main component is SiO2 (62.3%). It was supplied by a local contractor and it complies with Spanish specifications for roads, PG-3 [20].
Table 1 shows the properties of the natural aggregate, where LA is the Los Angeles abrasion coefficient, WA is the water absorption, FP is the fracture particles, ρ is the bulk specific gravity, SE is the sand equivalent and FI is the flakiness index.

3.1.2. Recycled Aggregates (RCA)

Construction and demolition waste (C&DW) were used as recycled aggregate (RCA) for manufacturing HMA. Previously, before using it, the RCA was crushed, washed, pollutant was removed, and it was sieved at the C&DW plant waste. The C&DW plant produces fractions of 0/40 mm. Figure 1 shows the gradation curve provided by the plant.
It can be seen in the graph that the fraction 0/40 mm has a continuous gradation, hence any fraction of RCA can be used to manufacture the HMA. In this work, only coarse RCA (>4 mm) was used for HMA manufacturing.
The composition of RCA in weight can be seen in Figure 2. It shows that the components in greater proportion are concrete and stone. The characteristics of RCA are displayed in Table 2. Both the flakiness index and sand equivalent meet the Spanish requirements. However, RCA does not comply with Los Angeles’ abrasion coefficient specification, for this reason the mix will not be designed for the wearing course.

3.1.3. Filler

The filler used in all types of mixtures was Portland cement. The Blaine surface area was 3350 cm2/g and the specific gravity was 3.12 g/cm3.

3.1.4. Asphalt Binder

The asphalt used was a conventional 50/70 penetration grade with a penetration grading of 69 × 10−1 mm and a softening point with the ring and ball method equal to 48.5 °C. Pfeiffer’s penetration index had a value of −0.8 with a density of 1.03 g/cm3. It was confirmed that the asphalt complied with all the Spanish specifications.

3.2. Methods

3.2.1. Manufacturing of the Samples

The AC22 base 50/70 G aggregate gradation was chosen according to the gradation limits established by PG-3 [12], as shown in Figure 3.
Marshall specimens were manufactured and compacted (101.5 mm in diameter, 63.5 high and 75 blows on each side) at 170 °C. They manufactured 3 series of 2 samples in each one, with bitumen contents of 3.0%, 3.5% and 4.0% (L). Additionally, in each series was employed 4 different percentages of recycled aggregates in the coarse fractions: 0% (control), 5%, 10%, 20% and 30% (RCA). In addition, the Marshall specimens were cured in an oven at 170 °C for 0, 2 and 4 h (t) before compaction. In this way, 90 samples were manufactured in order to carry out the resilient modulus test.

3.2.2. Stiffness

Stiffness was evaluated at the testing temperatures of 0, 10 and 20 °C by means of resilient modulus using the indirect tensile stiffness modulus (ITSM) in accordance with the standard UNE-EN-12697-26 Annex C [13].
A Cooper NU 14 tester was used to measure the ITSM. Using Equation (1), the resilient modulus can be determined as:
M R = F · ν + 0.27 z · h
where MR is the resilient modulus (MPa), F is the maximum applied load (N), z is the horizontal deformation (mm), h is the sample thickness (mm) and v is the Poisson’s ratio (the value of 0.35 was assumed for the HMA mixes for all the test temperatures). The resilient modulus jig test with the specimen is shown in Figure 4.
The maximum load was selected to achieve a maximum horizontal strain of 0.005% of the specimen diameter. The rise time was 124 ± 4 ms.

3.2.3. Response Surface Methodology

Response surface methodology (RSM) is useful for analyzing situations where the response is conditioned by several variables, as described in Equation (2) [21]
y =   β 0   + j = 1 k β j x j + j = 1 k β j j x j 2 + i = 1 j > 1 k β i j   x i x j + β i j l x i x j x l
where y is the response, xj are the factors, βj, βij and βjj are the regression coefficients of factors, interactions and quadratic terms, respectively, and k is the number of the variables or factors included in the factorial design. The quality of the regression was evaluated by determining the coefficient of determination, R2. In addition, the ANOVA of the regression model was also computed. Curing time of the sample (t), temperature of the samples cure (T), percentage of recycled aggregate (RCA) and percentage of bitumen (L) were chosen as independent factors for this study. In order to carry out an unbiased RSM, the variables must be coded from their original values. Table 3 shows the coded values as mean subtracted from the original ones and scaled by their half range.

4. Results and Discuss

Resilient Modulus (MR)

A total of 135 combinations of levels were set in order to obtain the resilient modulus, MR, in the following way: three levels of pretreatment time inside the oven at 170 °C (0, 2 and 4 h), three levels of temperature (0, 10, and 20 °C), five levels of recycled concrete aggregate percentage (0%, 5%, 10%, 20% and 30%) and three levels of binder percentage (3.5%, 4% and 4.5%). Two replicates were tested for each combination to estimate the variance of pure error. The results of MR for each sample are shown in Table 4 and Table 5.
Table 6 shows the analysis of variance of the least squares problem for the full regression model presented in Equation (2). A factorial design of experiments with at least three levels allows the prediction of coefficients for non-linear models with pure quadratic terms. The p-value related to the statistics F0 of the regression is significant, which means that there is at least one βj that is different from zero. In addition, R2 is 0.96, which indicates that only 4% of the total response variance is due to unexplained reasons. However, it is also concluded that the lack of fit test proves that there are missing terms important to the model.
In Figure 5, a plot of residuals versus the predicted values of the resilient modulus is presented. There is an indication of an outward-opening funnel in the plot, implying possible inequality of variance.
This inequality of the response variance was an indication to the authors that a transformation in the response is required. A log transformation was proposed to stabilize the variance of the response according to the general equation:
l n y =   β 0   + j = 1 k β j x j + j = 1 k β j j x j 2 + i = 1 j > 1 k β i j   x i x j
The scaled estimates and respective tests on individual regression coefficients are presented in Table 7. The H0 stands for the statement that the coefficient is null. The null hypothesis H0 presented in the last column of Table 5 stands for the statement that the coefficient is null, given the remaining are important for the model. In Table 7, “No” means that the null hypothesis must be rejected with a confidence level of 95% while “yes” means the opposite.
Excluding the RCA effect and its interactions as well as all pure quadratic terms but temperature, results in the following expression:
l n M R = 9.55 + 0.166 x 1 0.611 x 2 + 0.018 x 4 + 0.140 x 1 x 2 0.035 x 1 x 4 0.031 x 2 x 4 0.15 x 2 2
By the analysis of variance and the lack of fit test presented in Table 8, it can be concluded that Equation (4) models the data adequately well and no potential terms are missing in the model.
Furthermore, the R2 is 0.97 showing that only 3% of the response variance is due to random uncontrolled factors. The model, Equation (4), predicts an increase in the resilient modulus by increasing time of the pretreatment at higher temperatures. Conversely, the cure time influence is harmful at lower levels of temperature, revealing a minimum. This is due to the greater absorption of bitumen in the mixture when the sample stays in the oven long enough.
On the other hand, a temperature increase causes a significant decrease in the resilient modulus. This is an expected behavior since it is a known fact that the higher the temperature, the lower the stiffness of a material. At higher temperatures, the atomic vibration increases and with it the distance between the molecules that make up the material, thus the material expands because of the movement and the collisions between the molecules, and therefore the free volume becomes larger.
The binder has a weak influence in the resilient modulus, changing from positive to negative effect when temperature goes from low to high levels. The same trend is observed when cure time goes from low to high levels.
Figure 6 shows the response surface model as well as the experimental data. The asterisk means that the variables are represented by their coded values. A monotonic trend may be visualized in graphs (a) and (b). However, in graph (c), a saddle point can be identified. This is a result of the combined effect of temperature’s quadratic effect and the interaction between temperature and cure time.
To add more clarity to the discussed above, Figure 7 shows the contour plots of the significant coded variables studied. In graph (c), a single stationary point can be pointed out at the coordinates (1.6; −1.2), approximately corresponding to a predicted resilient modulus of more than 2.3 × 104 MPa. This saddle point is the combination of a maximum along the approximate direction of temperature axis and a minimum in the orthogonal direction.

5. Conclusions

The influence of the pretreatment time, temperature of the test, percentage of recycled aggregate and percentage of binder on the value of the resilient modulus has been studied by response surface methodology (RSM). Hornfels and construction and demolition waste were used as natural and recycled aggregates, respectively. Marshall samples type AC22 base 50/70 G were tested in a Cooper NU 14 tester.
According to RSM model, temperature is the most influential parameter. As the temperature increases, the rigidity of the mixture decreases. On the other hand, pretreatment time is a positive factor in increasing the resilient modulus at high temperatures. Samples that were in the oven longer behaved more rigidly. However, at low temperatures, the cure time seems to be harmful to the stiffness of the material.
It was observed that the percentage of the binder has a slight influence on the resilient modulus, with the range of values of cure time and temperature depending on the direction of its influence.
This work shows that the percentage of recycled aggregate, in the range between 0% and 30%, does not influence the rigidity of the HMA.
The results obtained show that hot mixes made with CD are not suitable for use as a wearing course. Therefore, they cannot be used as new surfaces in road pavement rehabilitation.
This research studies only technical aspects of hot asphalt mixes with recycled aggregates. No market study has been carried out to find out the commercialization possibilities. However, it can be stated that this type of asphalt mix is economically profitable, as shown by the results of a project carried out by a consortium of several leading companies in the Spanish sector [22].
The present research should be complemented by the study of resistance to permanent deformation, using a uniaxial compression test and a rutting test.

Author Contributions

Both I.P. and A.R.P. designed the laboratory study, L.M.S. and J.J.G. analyzed the data and all authors wrote and revised the article. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Acknowledgments

The authors gratefully acknowledge financial support of this research work through Fundação para a Ciência e Tecnologia (FCT)-UIDB/04730/2020 project and the scholarship awarded in the 2018–2019 academic year by the IACOBUS program.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. European Commission. Closing the Loop—An EU Action Plan for the Circular Economy. COM (2015) 614 Final. 2015. Available online: https://eur-lex.europa.eu/resource.html?uri=cellar:8a8ef5e8-99a0-11e5-b3b7-01aa75ed71a1.0012.02/DOC_1&format=PDF (accessed on 13 October 2020).
  2. Pereira, P.A.; Oliveira, J.; Santos, L.P. Mechanical Characterisation of Hot Mix Recycled Materials. Int. J. Pavement Eng. 2004, 5, 211–220. [Google Scholar] [CrossRef]
  3. Pérez, I.P.; Pasandin, A.R.; Gallego, J. Stripping in hot mix asphalt produced by aggregates from construction and demolition waste. Waste Manag. Res. 2012, 30, 3–11. [Google Scholar] [CrossRef] [PubMed]
  4. Mah, C.M.; Fujiwara, T.; Ho, C.S. Environmental impacts of construction and demolition waste management alternatives. Chem. Eng. Trans. 2018, 63, 343–348. [Google Scholar]
  5. Chappat, M.; Bilal, J. Energy “Consumption and Greenhouse Gas Emissions”. Sustainable Developmentethe Environmental Road of the Future; Colas Group: Paris, France, 2003. [Google Scholar]
  6. Lee, N.; Chou, C.-P.; Chen, K.-Y. Benefits in energy savings and CO2 reduction by using reclaimed asphalt pavement. In Proceedings of the Transportation Research Board 91st Annual Meeting, Washington, DC, USA, 22–26 January 2012. [Google Scholar]
  7. Aurangzeb, Q.; Al-Qadi, I.; Hasan, M.; Yang, R. Hybrid life cycle assessment for asphalt mixtures with high RAP content. Resour. Conserv. Recycl. 2014, 83, 77–86. [Google Scholar] [CrossRef]
  8. Saberian, M.; Li, J.; Nguyen, B.T.; Setunge, S. Estimating the resilient modulus of crushed recycled pavement materials containing crumb rubber using the Clegg impact value. Resour. Conserv. Recycl. 2019, 141, 301–307. [Google Scholar] [CrossRef]
  9. Aljassar, A.H.; Al-Fadala, K.B.; Ali, M.A. Recycling building demolition waste in hot-mix asphalt concrete: A case study in Kuwait. J. Mater. Cycles Waste Manag. 2005, 7, 112–115. [Google Scholar] [CrossRef]
  10. Paranavithana, S.; Mohajerani, A. Effects of recycled concrete aggregates on properties of asphalt concrete. Resour. Conserv. Recycl. 2006, 48, 1–12. [Google Scholar] [CrossRef] [Green Version]
  11. Pérez, I.P.; Pasandin, A.R.; Medina, L. Hot mix asphalt using C&D waste as coarse aggregates. Mater. Des. 2012, 36, 840–846. [Google Scholar] [CrossRef] [Green Version]
  12. Mamlouk, M.; Sarofim, R.T. Modulus of asphalt mixtures-an unresolved dilemma. Transp. Res. Rec. 1988, 1171, 193–198. [Google Scholar]
  13. AENOR. Asociación Española de Normalización y Certificación. UNE-EN 12697-23 “Bituminous Mixtures; Test Methods for Hot Mix Asphalt; Stiffness: Madrid, Spain, 2006. [Google Scholar]
  14. Galan, J.J.; Silva, L.M.S.; Pérez, I.P.; Pasandin, A.R. Mechanical Behavior of Hot-Mix Asphalt Made with Recycled Concrete Aggregates from Construction and Demolition Waste: A Design of Experiments Approach. Sustainability 2019, 11, 3730. [Google Scholar] [CrossRef] [Green Version]
  15. Huang, B.; Shu, X.; Tang, Y. Comparison of Semi-Circular Bending and Indirect Tensile Strength Tests for HMA Mixtures. Soil Dyn. Symp. Profr. Richard D. Woods 2005, 1–12. [Google Scholar] [CrossRef]
  16. Haghshenas, H.; Khodaii, A.; Khedmati, M.; Tapkın, S. A mathematical model for predicting stripping potential of Hot Mix Asphalt. Constr. Build. Mater. 2015, 75, 488–495. [Google Scholar] [CrossRef]
  17. Chávez-Valencia, L.; Manzano-Ramírez, A.; Luna-Bárcenas, G.; Alonso-Guzmán, E. Modelling of the performance of asphalt pavement using response surface methodology. Build. Environ. 2005, 40, 1140–1149. [Google Scholar] [CrossRef]
  18. Nassar, A.I.; Thom, N.; Parry, T. Optimizing the mix design of cold bitumen emulsion mixtures using response surface methodology. Constr. Build. Mater. 2016, 104, 216–229. [Google Scholar] [CrossRef]
  19. Hamzah, M.O.; Teh, S.Y.; Golchin, B.; Voskuilen, J. Use of imaging technique and direct tensile test to evaluate moisture damage properties of warm mix asphalt using response surface method. Constr. Build. Mater. 2017, 132, 323–334. [Google Scholar] [CrossRef]
  20. Dirección General de Carreteras. Pliego de Prescripciones Técnicas Generales Para Obras de Carreteras y Puentes PG-3; Ediciones Liteam: Madrid, Spain, 2002. [Google Scholar]
  21. Montgomery, D. Design and Analysis of Experiments, 8th ed.; Joh Wiley and Sons: London, UK, 2013; pp. 478–496. [Google Scholar]
  22. Available online: https://www.zicla.com/en/project/concrete-recycled-aggregates/ (accessed on 1 September 2020).
Figure 1. Gradation curve of recycled aggregate (RCA).
Figure 1. Gradation curve of recycled aggregate (RCA).
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Figure 2. Composition of recycled aggregate (RCA) in weight.
Figure 2. Composition of recycled aggregate (RCA) in weight.
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Figure 3. Gradation curve of AC-22 base G.
Figure 3. Gradation curve of AC-22 base G.
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Figure 4. Resilient modulus test equipment.
Figure 4. Resilient modulus test equipment.
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Figure 5. Plot of residuals versus predicted resilient modulus (MR) for a full second order model.
Figure 5. Plot of residuals versus predicted resilient modulus (MR) for a full second order model.
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Figure 6. Response surface of ln(MR) as function of two scaled predictors at the center of the excluded one: (a) temperature (T*) and binder content (L*); (b) cure time (t*) and binder content (L*); (c) cure time (t*) and temperature (T*). The experimental data are represented as square markers.
Figure 6. Response surface of ln(MR) as function of two scaled predictors at the center of the excluded one: (a) temperature (T*) and binder content (L*); (b) cure time (t*) and binder content (L*); (c) cure time (t*) and temperature (T*). The experimental data are represented as square markers.
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Figure 7. Contour plots of the ln(MR) at the plane of two scaled predictor coordinates at the center of the excluded third one: (a) temperature (T*) and binder content (L*); (b) cure time (t*) and binder content (L*); (c) cure time (t*) and temperature (T*).
Figure 7. Contour plots of the ln(MR) at the plane of two scaled predictor coordinates at the center of the excluded third one: (a) temperature (T*) and binder content (L*); (b) cure time (t*) and binder content (L*); (c) cure time (t*) and temperature (T*).
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Table 1. Characterization of the natural aggregate.
Table 1. Characterization of the natural aggregate.
Fraction
TestStandardPG-30/22/44/6.35/6.34/86.3/12.510/1616/31.5
LA (%)EN-1097-2<25-------14.2
WA (%)EN-1097-6-0.791.671.25-1.080.920.600.62
FP (%)EN-933-5100100100100-100100100100
ρ(g/cm3)EN-1097-6-2.742.782.78 2.792.792.772.79
SE (%)EN-933-8>5061-------
FI (%)EN-933-3<35---24----
Table 2. Characterization of the recycled aggregate (RCA).
Table 2. Characterization of the recycled aggregate (RCA).
RCA Fraction
TestStandardPG-30/40
LA (%)EN-1097-2<2534
WA (%)EN-1097-6-6.1
FP (%)EN-933-5100100
ρ (g/cm3)EN-1097-6-2.63
SE (%)EN-933-8>5067
Flakiness index (%)EN-933-3<3534
Table 3. Variables coded levels.
Table 3. Variables coded levels.
FactorxiOriginal ValueCode Level
tx10 h−1
2 h0
4 h+1
Tx20 °C−1
10 °C0
20 °C+1
RCAx30%−13/15
5%−8/15
10%−3/15
20%+7/15
30%+17/15
Lx43.5%−1
4%0
4.5%+1
Table 4. Resilient modulus (MR) data.
Table 4. Resilient modulus (MR) data.
Temperature
0 °C10 °C20 °C
Binder
3.5%4%4.5%3.5%4%4.5%3.5%4%4.5%
t(h)Resilient Modulus (MPa)
RCA 0% (Control)
0sample 124,394.023,616.023,213.015,932.013,259.012,938.05214.05281.04879.0
sample 220,144.022,515.022,120.012,761.010,607.212,665.04634.05338.04828.0
2sample 120,564.024,496.024,107.013,913.013,491.016,979.07252.06436.07412.0
sample 222,443.023,852.026,186.012,913.013,809.016,668.05802.06034.07569.0
4sample 121,574.020,097.024,526.016,472.018,186.016,611.09515.010,694.08747.0
sample 219,122.019,922.024,393.013,787.014,548.816,379.07612.09596.06997.6
RCA 5%
0sample 120,021.021,268.022,417.010,302.012,224.012,902.03926.04673.04780.0
sample 219,896.020,654.022,754.010,975.011,874.012,816.03647.04297.04719.0
2sample 122,131.023,579.021,669.012,756.014,500.011,617.06402.06394.05157.0
sample 223,145.022,817.020,556.013,370.014,427.011,921.06394.06593.05642.0
4sample 126,774.025,614.023,808.019,155.018,946.014,679.011,692.010,182.08195.0
sample 221,609.027,637.023,646.019,124.017,017.014,064.011,564.08473.67660.0
RCA 10%
0sample 119,995.021,540.022,661.010,550.011,570.015,358.04308.04694.05495.0
sample 219,177.021,116.020,702.010,248.011,561.012,951.04027.04603.05285.0
2sample 122,345.025,288.022,395.014,593.015,417.014,722.06416.06872.06583.0
sample 220,060.022,082.022,847.012,174.014,660.013,704.06021.06899.06192.0
4sample 123,416.025,694.022,981.016,128.016,879.017,863.010,014.08052.09603.0
sample 221,351.024,291.024,378.016,478.016,615.017,516.09874.06441.69514.0
Table 5. Resilient modulus (MR) data.
Table 5. Resilient modulus (MR) data.
Temperature
0 °C10 °C20 °C
Binder
3.5%4%4.5%3.5%4%4.5%3.5%4%4.5%
t(h)Resilient Modulus (MPa)
RCA 20%
0sample 120,398.021,603.020,706.012,176.011,972.011,961.05722.05164.04719.0
sample 220,432.021,655.021,663.011,601.011,749.012,379.05537.04717.04916.0
2sample 123,229.020,612.025,917.012,625.013,425.014,925.05727.05477.06762.0
sample 219,042.020,745.025,708.012,130.012,056.015,402.05167.05664.06878.0
4sample 120,964.021,830.025,537.015,793.016,584.016,863.010,015.07660.09277.0
sample 220,659.021,498.025,949.016,083.017,992.016,487.09703.07317.08765.0
RCA 30%
0sample 121,039.022,633.022,110.011,232.011,352.013,745.06006.04497.05036.0
sample 219,588.019,132.022,588.011,182.010,384.013,324.05320.04037.05137.0
2sample 120,604.019,502.024,873.013,294.015,891.015,523.07044.06390.07368.0
sample 219,600.020,557.023,415.013,781.015,155.015,891.07182.06140.07368.0
4sample 123,312.021,594.021,525.017,048.015,378.014,201.012,941.09239.07622.0
sample 221,746.021,151.021,157.016,648.014,841.013,428.010,453.08836.07793.0
Table 6. Analysis of variance and lack of fit test for a full second order model.
Table 6. Analysis of variance and lack of fit test for a full second order model.
Source of VariationSum of SquaresDegrees of FreedomMean SquareF0p-Value
Regression1.14 × 1010148.16 × 1084.16 × 102<0.0001
Residual5.00 × 1082551.96 × 106
Lack of fit3.85 × 1081203.21 × 1063.77<0.0001
Pure error1.15 × 1081358.50 × 105
Total1.19 × 10102694.43 × 107
Table 7. Scaled estimates and t-test on individual regression coefficients.
Table 7. Scaled estimates and t-test on individual regression coefficients.
xiβjStandard Errort-Testp-ValueH0
independent9.520.02525.40.0000No
x11.66 × 10−17.54 × 10−321.98<0.0001No
x2−6.11 × 10−17.54 × 10−3−81.06<0.0001No
x3−1.32 × 10−29.67 × 10−3−1.370.1726Yes
x41.82 × 10−27.54 × 10−32.420.0163No
x1x21.40 × 10−19.24 × 10−315.17<0.0001No
x1.x3−4.63 × 10−31.05 × 10−2−0.440.6596Yes
x1x4−3.46 × 10−29.24 × 10−3−3.750.0002No
x2x32.30 × 10−21.05 × 10−22.190.0296No
x2.x4−3.07 × 10−29.24 × 10−3−3.330.0010No
x3x4−5.72 × 10−31.05 × 10−2−0.540.5866Yes
x125.97 × 10−31.31 × 10−20.460.6479Yes
x22−1.53 × 10−11.31 × 10−2−11.71<0.0001No
x321.97 × 10−21.54 × 10−21.280.2023Yes
x421.55 × 10−21.31 × 10−21.190.2368Yes
Table 8. Analysis of variance and lack of fit test for the incomplete log transformation model.
Table 8. Analysis of variance and lack of fit test for the incomplete log transformation model.
Source of VariationSum of SquaresDegrees of FreedomMean SquareF0p-Value
Regression76.3710.91.06 × 103<0.0001
Residual2.712620.01
Lack of fit0.30190.0161.600.0569
Pure error2.412430.010
Total79.012690.294
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Galan, J.J.; Silva, L.M.; Pasandín, A.R.; Pérez, I. Evaluation of the Resilient Modulus of Hot-Mix Asphalt Made with Recycled Concrete Aggregates from Construction and Demolition Waste. Sustainability 2020, 12, 8551. https://doi.org/10.3390/su12208551

AMA Style

Galan JJ, Silva LM, Pasandín AR, Pérez I. Evaluation of the Resilient Modulus of Hot-Mix Asphalt Made with Recycled Concrete Aggregates from Construction and Demolition Waste. Sustainability. 2020; 12(20):8551. https://doi.org/10.3390/su12208551

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Galan, Juan J., Luís M. Silva, Ana R. Pasandín, and Ignacio Pérez. 2020. "Evaluation of the Resilient Modulus of Hot-Mix Asphalt Made with Recycled Concrete Aggregates from Construction and Demolition Waste" Sustainability 12, no. 20: 8551. https://doi.org/10.3390/su12208551

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