A Machine Learning-Based Approach for Predicting Installation Torque of Helical Piles from SPT Data

Author:

Peres Marcelo Saraiva1ORCID,Schiavon José Antonio1ORCID,Ribeiro Dimas Betioli1ORCID

Affiliation:

1. Civil Engineering Division, Aeronautics Institute of Technology, Praça Marechal Eduardo Gomes, 50, São José dos Campos 12228-900, SP, Brazil

Abstract

Helical piles are advantageous alternatives in constructions subjected to high tractions in their foundations, like transmission towers. Installation torque is a key parameter to define installation equipment and the final depth of the helical pile. This work applies machine learning (ML) techniques to predict helical pile installation torque based on information from 707 installation reports, including Standard Penetration Test (SPT) data. It uses this information to build three datasets to train and test eight machine-learning techniques. Decision tree (DT) was the worst technique for comparing performances, and cubist (CUB) was the best. Pile length was the most important variable, while soil type had little relevance for predictions. Predictions become more accurate for torque values greater than 8 kNm. Results show that CUB predictions are within 0.71,1.59 times the real value with a 95% confidence. Thus, CUB successfully predicted the pile length using SPT data in a case study. One can conclude that the proposed methodology has the potential to aid in the helical pile design and the equipment specification for installation.

Funder

Coordination of Superior Level Staff Improvement

Publisher

MDPI AG

Reference31 articles.

1. Mitsch, M.P., and Clemence, S.P. (1985). Uplift Behavior of Anchor Foundations in Soil, American Society of Civil Engineers (ASCE).

2. Uplift behavior of screw anchors in sand. I: Dry sand;Ghaly;J. Geotech. Eng.-ASCE,1991

3. Lutenegger, A. (2019, January 27–28). Screw piles and helical anchors—What we know and what we don’t know: An academic perspective—2019. Proceedings of the ISSPEA 2019: 1st International Symposium on Screw Piles for Energy Applications, Dundee, Scotland.

4. Axial compressive capacity of helical piles from field tests and numerical study;Elsherbiny;Can. Geotech. J.,2013

5. Hoyt, R., and Clemence, S. (1989, January 13–18). Uplift capacity of helical anchors in soil. Proceedings of the 12th International Conference on Soil Mechanics and Foundation Engineering, Rio de Janeiro, Brazil.

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