A comparative study to estimate the mode I fracture toughness of rocks using several soft computing techniques
Abstract
Fracture toughness is an important phenomenon to reveal the actual strength of fractured
rock materials. It is, therefore, crucial to use the fracture toughness models principally for
simulating the performance of fractured rock medium. In this study, the mode-I fracture
toughness (KIC) was investigated using several soft computing techniques. For this purpose,
an extensive literature survey was carried out to obtain a comprehensive database that
includes simple and widely used mechanical rock parameters such as uniaxial compressive
strength (UCS) and Brazilian tensile strength (BTS). Several soft computing techniques such
as artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFIS), gene
expression programming (GEP), and multivariate adaptive regression spline (MARS) were
attempted to reveal the availability of these methods to estimate the KIC. Among these
techniques, it was determined that ANN presents the best prediction capability. The
correlation of determination value (R2) for the proposed ANN model is 0.90, showing its
relative success. In this manner, the present study can be declared a case study, indicating the
applicability of several soft computing techniques for the evaluation of KIC. However, the
number of samples for different rock types should be increased to improve the established
predictive models in future studies.