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Research Articles

Experimental evaluation of fatigue and recovery properties of a bituminous mixture during cyclic loading and rest tests

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Pages 137-152 | Received 01 Mar 2023, Accepted 11 Mar 2023, Published online: 27 Mar 2023
 

Abstract

Research has shown that reversible phenomena such as non-linearity, self-heating and thixotropy occur during laboratory fatigue testing on bituminous mixes. This work aims to develop a test protocol to separate and quantify the recovery of reversible phenomena and the restoration of damage. Besides proposing some adjustments to the protocol, in the present paper, its repeatability is evaluated by comparing the results obtained for several samples of the same bituminous mixture. The test procedure is composed of two parts: short complex modulus tests (200 cycles at 10 Hz) at temperatures ranging from 8°C to 14°C with strain amplitudes ranging from 50 to 110 µm/m are used and five partial fatigue tests (at 10°C) are carried out at 100,000 cycles, 100 µm/m and 10 Hz. Each fatigue lag is followed by a 48-h rest period which consists of short complex modulus tests. The test protocol appears to show reliability and provide repeatable results.

Acknowledgements

The authors would like to express their sincere gratitude to Ferhat Hammoum (Université Gustave Eiffel) for providing the mixtures.

Disclosure statement

No potential conflict of interest was reported by the author(s).

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