Computers and Concrete
Volume 31, Number 4, 2023, pages 307-314
DOI: 10.12989/cac.2023.31.4.307
Coupling numerical modeling and machine-learning for back analysis of cantilever retaining wall failure
Amichai Mitelman and Gili Lifshitz Sherzer
Abstract
In this paper we back-analyze a failure event of a 9 m high concrete cantilever wall subjected to earth loading. Granular soil was deposited into the space between the wall and a nearby rock slope. The wall segments were not designed to carry lateral earth loading and collapsed due to excessive bending. As many geotechnical programs rely on the Mohr-Coulomb (MC) criterion for elastoplastic analysis, it is useful to apply this failure criterion to the concrete material. Accordingly, the backanalysis is aimed to search for the suitable MC parameters of the concrete. For this study, we propose a methodology for
accelerating the back-analysis task by automating the numerical modeling procedure and applying a machine-learning (ML) analysis on FE model results. Through this analysis it is found that the residual cohesion and friction angle have a highly
significant impact on model results. Compared to traditional back-analysis studies where good agreement between model and
reality are deemed successful based on a limited number of models, the current ML analysis demonstrate that a range of possible combinations of parameters can yield similar results. The proposed methodology can be modified for similar calibration and back-analysis tasks.
Key Words
back-analysis; cantilever wall; concrete; failure; machine-learning; Mohr-Coulomb
Address
Department of Civil Engineering, Ariel University, Ramat Hagolan 65, Ariel, Israel