A new approach for evaluating the compressibility of remoulded clays using the evolutionary polynomial regression
(EPR) and optimization methods is proposed. An efficient hybrid real-coded genetic algorithm (RCGA) with
a new hybrid strategy combined with a self-adaptive mutation is first developed. Then, the enhanced RCGA is
applied to construct the EPR procedure for compression index. To highlight the performance of the RCGA in
the proposed procedure, three other excellent optimization algorithms are selected and compared. All comparisons
between predictions and measurements demonstrate that the EPR-based modelling of clay compressibility
using the enhanced RCGA gives a more accurate and reliable correlation between the compression index and
physical properties of remoulded clays.