Using Machine Learning to Predict Axial Pile Capacity
Baturalp Ozturk,
Antonio Kodsy,
Magued Iskander
Abstract:Accurate estimation of the ultimate axial load bearing capacity of piles is necessary to ensure the safety of the supported structures and to prevent cost overruns. Traditional mechanics-based design methods do not always predict pile capacity accurately, or precisely, leaving room for improvement. This study focuses on the potential of machine learning (ML) in estimating pile capacity. A dataset of 546 load tests was compiled from three databases. The baseline performance of traditional design methods was fir… Show more
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