Abstract

This paper focuses on the prediction of soil shear strength (SSS), which is one of the most fundamental parameters in geotechnical engineering. Consisting of 12 influential factors, namely depth of sample, percentage of sand, percentage of loam, percentage of clay, percentage of moisture content, wet density, dry density, void ratio, liquid limit, plastic limit, plastic Index, and liquidity index as input variables, as well as the shear strength as the desired output, the dataset is provided through a field survey in Vietnam. Thereafter, as for used intelligent techniques, the main focus of the current study is on evaluating the efficiency of three novel optimization techniques for optimizing an artificial neural network (ANN) in predicting the SSS. To this end, the dragonfly algorithm (DA), whale optimization algorithm (WOA), and invasive weed optimization (IWO) are synthesized with ANN to prevail its computational drawbacks. The complexity of the models is optimized by sensitivity analysis. The results confirmed the effectiveness of all three applied algorithms, as the learning error was reduced by nearly 17%, 27%, and 32%, respectively by functioning the DA, WOA, and IWO. As for the testing phase, the IWO and DA achieved a close prediction accuracy. Overall, due to the superiority of the IWO-ANN ensemble, this model could be a promising alternative to traditional methods of shear strength determination.

Highlights

  • Soil shear strength (SSS) is defined as the resistance of soil against shear stresses [1]

  • The present research investigates the applicability of three metaheuristic algorithms, namely dragonfly algorithm (DA), whale optimization algorithm (WOA), and invasive weed optimization (IWO) in optimizing the performance of an artificial neural network for estimating the shear strength of the soil

  • The literature review shows the high capability of the artificial neural network (ANN) for estimating various scientific phenomena, utilizing these models has been associated with some computational drawbacks such as getting trapped in local minima

Read more

Summary

Introduction

Soil shear strength (SSS) is defined as the resistance of soil against shear stresses [1]. It is one of the most determinant parameters in the designing process of geotechnical engineering projects [2]. For designing high and massive structures, proper analysis of the SSS is very important, as the load is directly applied to the soil underneath. This parameter enables the engineers to decide about the foundation type, and whether terrain improvement measures are required or not [3].

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call