[1] J. Grenfell, N. Ahmad, Y. Liu, A. Apeagyei, D. Large, and G. Airey, "Assessing asphalt mixture moisture susceptibility through intrinsic adhesion, bitumen stripping and mechanical damage," Road Materials and Pavement Design, vol. 15, no. 1, pp. 131-152, 2014.
[2] R. A. Tarefder and M. Ahmad, "Evaluating the relationship between permeability and moisture damage of asphalt concrete pavements," Journal of Materials in Civil Engineering, vol. 27, no. 5, p. 04014172, 2015.
[3] S. Caro, E. Masad, A. Bhasin, and D. N. Little, "Moisture susceptibility of asphalt mixtures, Part 2: characterisation and modelling," International Journal of Pavement Engineering, vol. 9, no. 2, pp. 99-114, 2008.
[4] S. Caro, E. Masad, A. Bhasin, and D. N. Little, "Moisture susceptibility of asphalt mixtures, Part 1: mechanisms," International Journal of Pavement Engineering, vol. 9, no. 2, pp. 81-98, 2008.
[5] A. Diab, Z. You, X. Yang, and M. R. Mohd Hasan, "Towards an alternate evaluation of moisture-induced damage of bituminous
materials," Applied Sciences, vol. 7, no. 10, p. 1049, 2017.
[6] R. K. Veeraragavan, N. M. Kottayi, R. B. Mallick, M. K. Nirala, and S. Sarkar, "Application of artificial intelligence to predict moisture damage of hot-mix asphalt mixes," in Proceedings of the Institution of Civil Engineers-Transport, 2021, vol. 174, no. 3: Thomas Telford Ltd, pp. 197-206.
[7] C. Ling, "Developing evaluation method of moisture susceptibility for cold mix asphalt," 2013.
[8] R. K. Veeraragavan, N. MK, and R. B. Mallick, "Accurate identification of pavement materials that are susceptible to moisture damage with the
use of advanced conditioning and test methods and the use of machine learning techniques," SN Applied Sciences, vol. 1, pp. 1-7, 2019.
[9] M. G. Zamani, K. Saniei, B. Nematollahi, Z. Zahmatkesh, M. M. Poor, and M. R. Nikoo, "Developing sustainable strategies by LID optimization in response to annual climate change impacts," Journal of Cleaner Production, vol. 416, p. 137931, 2023.
[10] S. Ranjbar, F. M. Nejad, H. Zakeri, and A. H. Gandomi, "Computational intelligence for modeling of asphalt pavement surface distress," in New Materials in Civil Engineering: Elsevier, 2020, pp. 79-116.
[11] R. B. Mallick, N. Madankara Kottayi, R. K. Veeraragavan, E. Dave, C. DeCarlo, and J. E. Sias, "Suitable tests and machine learning approach to predict moisture susceptibility of hot-mix asphalt," Journal of Transportation Engineering, Part B: Pavements, vol. 145, no. 3, p. 04019030, 2019.
[12] R. Sezavar, G. Shafabakhsh, and S. Mirabdolazimi, "New model of moisture susceptibility of nano silica-modified asphalt concrete using GMDH algorithm," Construction and Building Materials, vol. 211, pp. 528-538, 2019.
[13] N. D. Lagaros, "Artificial neural networks applied in civil engineering," vol. 13, ed: MDPI, 2023, p. 1131.
[14] R. Babagoli and M. Rezaei, "Development of prediction models for moisture susceptibility of asphalt mixture containing combined SBR, waste CR and ASA using support vector regression and artificial neural network methods," Construction and Building Materials, vol. 322, p. 126430, 2022.
[15] R. Babagoli and M. Rezaei, "Using Artificial Neural Network Methods for Modeling Moisture Susceptibility of Asphalt Mixture Modified by Nano TiO 2," Journal of Materials in Civil Engineering, vol. 34, no. 6, p. 04022108, 2022.
[16] F. J. Rebelo, F. F. Martins, H. M. Silva, and J. R. Oliveira, "Use of data mining techniques to explain the primary factors influencing water sensitivity of asphalt mixtures," Construction and Building Materials, vol. 342, p. 128039, 2022.
[17] Q. Cao, I. L. Al-Qadi, and L. Abufares, "Pavement moisture content prediction: A deep residual neural network approach for analyzing ground penetrating radar," IEEE Transactions on Geoscience and Remote Sensing, vol. 60, pp. 1-11, 2022.
[18] H. Majidifard, B. Jahangiri, W. G. Buttlar, and A. H. Alavi, "New machine learning-based prediction models for fracture energy of asphalt mixtures," Measurement, vol. 135, pp. 438-451, 2019.
[19] V. N. M. Gilani, S. M. Hosseinian, H. Behbahani, and G. H. Hamedi, "Prediction and pareto-based multi-objective optimization of moisture and fatigue damages of asphalt mixtures modified with nano hydrated lime," Construction and Building Materials, vol. 261, p. 120509, 2020.
[20] H. Behbahani, G. H. Hamedi, and V. N. M. Gilani, "Predictive model of modified asphalt mixtures with nano hydrated lime to increase resistance to moisture and fatigue damages by the use of deicing agents," Construction and Building Materials, vol. 265, p. 120353, 2020.
[21] N. Esmaeili, G. H. Hamedi, and M. Khodadadi, "Determination of the stripping process of asphalt mixtures and the effective mix design and SFE parameters on its different phases," Construction and Building Materials, vol. 213, pp. 167-181, 2019.
[22] ASTM International, “Astm D4318-17,” Stand. Test Methods Liq. Limit, Plast. Limit, Plast. Index Soils, pp. 1–10, 2017, doi: 10.1520/D4318-17E01.1.9.
[23] T. AASHTO, “283; Standard Method of Test for Resistance of Compacted Asphalt Mixtures to Moisture-Induced Damage,” Am. Assoc. State Highw. Transp. Off. Washington, DC, USA, 2014.
[24] G. H. Hamedi and F. Moghadas Nejad, "Using energy parameters based on the surface free energy concept to evaluate the moisture susceptibility of hot mix asphalt," Road Materials and Pavement Design, vol. 16, no. 2, pp. 239-255, 2015.
[25] D. W. Christensen and R. F. Bonaquist, Volumetric requirements for Superpave mix design. Transportation Research Board, 2006.
[26] G. H. Hamedi and F. Moghadas Nejad, "Evaluating the effect of mix design and thermodynamic parameters on moisture sensitivity of hot mix asphalt," Journal of Materials in Civil Engineering, vol. 29, no. 2, p. 04016207, 2017.
[27] B. Huang, L. N. Mohammad, A. Raghavendra, and C. Abadie, "Fundamentals of permeability in asphalt mixtures," Journal of the Association of Asphalt Paving Technologists, vol. 68, 1999.
[28] A. W. Hefer, Adhesion in bitumen-aggregate systems and quantification of the effects of water on the adhesive bond. Texas A&M University, 2004.
[29] C. J. Van Oss, M. K. Chaudhury, and R. J. Good, "Interfacial Lifshitz-van der Waals and polar interactions in macroscopic systems," Chemical reviews, vol. 88, no. 6, pp. 927-941, 1988.
[30] M. N. Yalghouzaghaj, A. Sarkar, G. H. Hamedi, and P. Hayati, "Application of the surface free energy method on the mechanism of low-temperature cracking of asphalt mixtures," Construction and Building Materials, vol. 268, p. 121194, 2021.
[31] D. Cheng, D. N. Little, R. L. Lytton, and J. C. Holste, "Surface energy measurement of asphalt and its application to predicting fatigue and healing in asphalt mixtures," Transportation Research Record, vol. 1810, no. 1, pp. 44-53, 2002.
[32] R. J. Good and C. J. van Oss, "The modern theory of contact angles and the hydrogen bond components of surface energies," in Modern approaches to wettability: theory and applications: Springer, 1992, pp. 1-27.
[33] A. Bhasin, "Development of methods to quantify bitumen-aggregate adhesion and loss of adhesion due to water," Texas A&M University, 2007.
[34] G. H. Hamedi, A. H. Asadi, and J. Zarrinfam, "Investigating the effect of fundamental properties of materials on the mechanisms of thermal cracking of asphalt mixtures," Construction and Building Materials, vol. 411, p. 134426, 2024.
[35] H. Naseri, H. Jahanbakhsh, F. Moghadas Nejad, and A. Golroo, "Developing a novel machine learning method to predict the compressive strength of fly ash concrete in different ages," َ
AUT Journal of Civil Engineering, vol. 4, no. 4, pp. 423-436, 2020.
[36] M. Ehsani, M. Ostovari, S. Mansouri, H. Naseri, H. Jahanbakhsh, and F. M. Nejad, "Machine learning for predicting concrete carbonation depth: A comparative analysis and a novel feature selection," Construction and Building Materials, vol. 417, p. 135331, 2024.
[37] S. Ranjbar, F. M. Nejad, and H. Zakeri, "Image-based severity analysis of Asphalt pavement bleeding using a metaheuristic-boosted fuzzy classifier," Automation in Construction, vol. 166, p. 105655, 2024.
[38] M. Dargi, E. Khamehchi, and J. Mahdavi Kalatehno, "Optimizing acidizing design and effectiveness assessment with machine learning for predicting post-acidizing permeability," Scientific Reports, vol. 13, no. 1, p. 11851, 2023.
[39] A. Lissovoi and P. S. Oliveto, "Computational complexity analysis of genetic programming," Theory of Evolutionary Computation: Recent Developments in Discrete Optimization, pp. 475-518, 2020.
[40] D. Searson, "GPTIPS genetic programming & symbolic regression for MATLAB user guide," ed: Natick, MA: MathWorks, 2009.
[41] D. P. Searson, D. E. Leahy, and M. J. Willis, "GPTIPS: an open source genetic programming toolbox for multigene symbolic regression," in Proceedings of the International multiconference of engineers and computer scientists, 2010, vol. 1: Citeseer, pp. 77-80.
[42] B. Choubane, G. C. Page, and J. A. Musselman, "Effects of water saturation level on resistance of compacted hot-mix asphalt samples to moisture-induced damage," Transportation Research Record, vol. 1723, no. 1, pp. 97-106, 2000.
[43] H. A. Omar, N. I. M. Yusoff, M. Mubaraki, and H. Ceylan, "Effects of moisture damage on asphalt mixtures," Journal of Traffic and Transportation Engineering (English Edition), vol. 7, no. 5, pp. 600-628, 2020.
[44] B. Sengoz and E. Agar, "Effect of asphalt film thickness on the moisture sensitivity characteristics of hot-mix asphalt," Building and environment, vol. 42, no. 10, pp. 3621-3628, 2007.