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Developing deterministic and probabilistic prediction models to evaluate high-temperature performance of modified bitumens.

Authors :
Ehsani, Mehrdad
Hajikarimi, Pouria
Esfandiar, Masoud
Rahi, Mohammad
Rasouli, Behzad
Yousefi, Yousef
Moghadas Nejad, Fereidoon
Source :
Construction & Building Materials. Oct2023, Vol. 401, pN.PAG-N.PAG. 1p.
Publication Year :
2023

Abstract

• Predicting J nr and %R of modified bitumens deterministically by using MGGP based on MSCR test results. • Predicting probability of different traffic levels by using logistic regression technique. • Determining the critical dosages of crumb rubber, SBS, and PPA modifiers that alter the traffic levels. This study aims to develop deterministic and probabilistic prediction models for the multiple stress creep and recovery (MSCR) test. For this purpose, crumb rubber, polyphosphoric acid, and styrene–butadiene–styrene bitumen modifiers have been used with different dosages to modify high-temperature performance of PG 58–28 and PG 64–22 base bitumens. The MSCR test has been performed at different temperatures. Deterministic models are developed by the multi-gene genetic programming technique for each modifier individually, and the non-recoverable creep compliance (J nr) and percent recovery (R) parameters are predicted. The accuracy of deterministic models is suitable and the performance of R models has been better than J nr models. Furthermore, a comprehensive probabilistic model has been developed by using the logistic regression technique to predict different traffic levels. The accuracy of the probabilistic model is 0.85. The sensitivity analysis has been performed on this model and the effect of changes in the modifier dosage and temperature on the traffic levels have been investigated. Results show that using the probabilistic model, it is possible to find a range of modifier's dosage in which the traffic level is desired. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09500618
Volume :
401
Database :
Academic Search Index
Journal :
Construction & Building Materials
Publication Type :
Academic Journal
Accession number :
170085941
Full Text :
https://doi.org/10.1016/j.conbuildmat.2023.132808