Determination of the California Bearing Ratio of the Subgrade and Granular Base Using Artificial Neural Networks
Jose Manuel Palomino Ojeda,
Billy Alexis Cayatopa Calderon,
Lenin Quiñones Huatangari
et al.
Abstract:The objective of the research is to estimate the value of the California bearing ratio (CBR) through the application of ANN. The methodology consists of creating a database with soil index and CBR variables of the subgrades and granular base of pavements in Jaen, Peru, carried out in the soil mechanics laboratories of the city and the National University of Jaen. In addition, the Python library Seaborn is for variable selection and relevance, and the scikit-learn and Keras libraries were used for the learning,… Show more
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