3.8 Article

Hybridizing Neural Network with Trend-Adjusted Exponential Smoothing for Time-Dependent Resistance Forecast of Stabilized Fine Sands Under Rapid shearing

Journal

TRANSPORTATION INFRASTRUCTURE GEOTECHNOLOGY
Volume 10, Issue 1, Pages 62-81

Publisher

SPRINGERNATURE
DOI: 10.1007/s40515-021-00198-z

Keywords

Zeolite; Undrained shear strength; Trend-adjusted exponential smoothing; Hybrid artificial neural networks

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This study investigates the relationship between undrained shear strength and B-ratio, void ratio, confinement pressure, and principal stress difference in zeolite-lime-treated fine sands through comprehensive experimental research. Based on the experimental evidence, a novel trend-adjusted (TA) growth forecast is performed to extend the curing ages beyond the experimental program conditions. Furthermore, a hybrid artificial neural network (ANN) model is proposed, which shows improved optimization and high accuracy in predicting undrained shear resistance considering extended curing periods. Results of variable importance and sensitivity analysis highlight the significant impact of underlying degree of saturation on shear resistance, followed by void ratio, confinement pressure, and zeolite content.
A comprehensive experimental research was undertaken to investigate the association of undrained shear strength with B-ratio, void ratio, confinement pressure, and principal stress difference at failure of zeolite-lime-treated fine sands. For this purpose, a series of undrained triaxial shearing tests were performed on samples comprising several lime-activated zeolites. With regard to the experimental evidence, a novel trend-adjusted (TA) growth forecast was performed with exponential smoothing to extend curing ages beyond the conditions of the experimental program. Then, hybridization of the artificial neural network (ANN) was done by feeding the network with feature adjusted shear resistance values against void ratio, B-ratio, confining pressure, and binding agents over extension of projected curing period. The proposed TA-ANN model showed a boosted optimization in input selection and high accuracy and confidence rate in predicting undrained shear resistance while including extended curing periods. Finally, results of variable importance and sensitivity analysis indicate a significant impact of underlying degree of saturation to the final shear resistance followed by void ratio, confinement pressure, and zeolite content.

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