Modeling of soil shear strength using multiple linear regression (MLR)‎ at Penang, Malaysia

Joint Authors

Balarabe, Bala
Bery, Andy Anderson

Source

Journal of Engineering Research

Issue

Vol. 9, Issue 3 A (30 Sep. 2021), pp.40-51, 12 p.

Publisher

Kuwait University Academic Publication Council

Publication Date

2021-09-30

Country of Publication

Kuwait

No. of Pages

12

Main Subjects

Agriculture

Abstract EN

This paper presents multiple linear regression (MLR) soil shear strength models developed from electrical resistivity and seismic refraction tomography data.

The MLR technique is used to estimate the value of dependent variables of soil shear strength based on the value of two independent variables, namely, resistivity and velocity.

These parameters were regressed using regression statistics technique for generating MLR model.

The results of MLR model, which is based on the estimation of model dependent parameters (Logio resistivity and Logio velocity), calculated for p-value, are less than 0.05 and VIF value less than 10 for cohesion and friction angle models.

This result shows that there is a statistically significant relationship between cohesion and friction angle with geophysical parameters (independent variables).

The estimation accuracy of the MLR models is also conducted for verification, and the result shows that RMSE value for predicted cohesion and predicted friction angle is 0.77 kN/m² and 1.73 which is close to zero.

Meanwhile, MAPE value was found to be 4.57 % and 7.61 %, indicating highly accurate estimation for the MLR models of predicted cohesion and predicted friction angle.

Based on the application of near surface, the study area was successfully classified into two regions, namely, medium and hard clayey sand.

Thus, it is concluded that MLR method is suitable in estimating the subsurface characterization that covered more regions compared to the traditional method (laboratory test).

American Psychological Association (APA)

Balarabe, Bala& Bery, Andy Anderson. 2021. Modeling of soil shear strength using multiple linear regression (MLR) at Penang, Malaysia. Journal of Engineering Research،Vol. 9, no. 3 A, pp.40-51.
https://search.emarefa.net/detail/BIM-1494887

Modern Language Association (MLA)

Balarabe, Bala& Bery, Andy Anderson. Modeling of soil shear strength using multiple linear regression (MLR) at Penang, Malaysia. Journal of Engineering Research Vol. 9, no. 3 A (Sep. 2021), pp.40-51.
https://search.emarefa.net/detail/BIM-1494887

American Medical Association (AMA)

Balarabe, Bala& Bery, Andy Anderson. Modeling of soil shear strength using multiple linear regression (MLR) at Penang, Malaysia. Journal of Engineering Research. 2021. Vol. 9, no. 3 A, pp.40-51.
https://search.emarefa.net/detail/BIM-1494887

Data Type

Journal Articles

Language

English

Notes

Includes appendices : p. 51

Record ID

BIM-1494887