Neural Network-Based Prediction of Amplification Factors for Nonlinear Soil Behaviour: Insights into Site Proxies DOI Creative Commons
Ahmed Boudghene Stambouli, Lotfi Guizani

Applied Sciences, Journal Year: 2025, Volume and Issue: 15(7), P. 3618 - 3618

Published: March 26, 2025

The identification of the most pertinent site parameters to classify soils in terms their amplification seismic ground motions is still prime interest earthquake engineering and codes. This study investigates many options for improving soil classifications order reduce deviation between “exact” predictions using wave propagation method used codes based on (site) factors. To this end, an exhaustive parametric carried out obtain nonlinear responses sets 324 clay sand columns constitute database neuronal network methods predict regression equations factors parameters. A wide variety combinations are considered study, namely, depth, shear velocity, stiffness underlaying bedrock, intensity frequency content excitation. AFs profiles under multiple records with different intensities contents obtained by propagation, where nonlinearity accounted through equivalent linear model iterative procedure. Then, a Generalized Regression Neural Network (GRNN) determine significant affecting AFs. second neural network, Radial Basis Function (RBF) develop simple practical prediction equations. Both whole period range specific short-, mid-, long-period ranges associated AFs, Fa, Fv, Fl, respectively, considered. results indicate that factor arbitrary profile can be satisfactorily approximated limited number sites record (two six). best parameter pair (PGA; resonance frequency, f0), which leads standard reduction at least 65%. For improved performance, we propose triplet PGA;Vs30;f0 Vs30 being average velocity within upper 30 m below foundation. Most other relevant include fact long periods (Fl) significantly higher than those short or mid soft soils. Finally, it recommended further refine including additional such as spatial configuration adopting more refined models.

Language: Английский

Data-driven and physics-informed neural network for predicting tunnelling-induced ground deformation with sparse data of field measurement DOI
Yingbin Liu, Shaoming Liao, Yaowen Yang

et al.

Tunnelling and Underground Space Technology, Journal Year: 2024, Volume and Issue: 152, P. 105951 - 105951

Published: July 5, 2024

Language: Английский

Citations

7

A physics-informed machine learning solution for landslide susceptibility mapping based on three-dimensional slope stability evaluation DOI
Yunhao Wang, Luqi Wang, Wengang Zhang

et al.

Journal of Central South University, Journal Year: 2024, Volume and Issue: unknown

Published: Aug. 5, 2024

Language: Английский

Citations

7

Data-driven forward and inverse analysis of two-dimensional soil consolidation using physics-informed neural network DOI
Yu Wang, Chao Shi,

Jiangwei Shi

et al.

Acta Geotechnica, Journal Year: 2024, Volume and Issue: 19(12), P. 8051 - 8069

Published: May 23, 2024

Language: Английский

Citations

6

A Review of Deep Learning Applications in Tunneling and Underground Engineering in China DOI Creative Commons

Chunsheng Su,

Qijun Hu, Zifan Yang

et al.

Applied Sciences, Journal Year: 2024, Volume and Issue: 14(5), P. 1720 - 1720

Published: Feb. 20, 2024

With the advent of era big data and information technology, deep learning (DL) has become a hot trend in research field artificial intelligence (AI). The use methods for parameter inversion, disease identification, detection, surrounding rock classification, disaster prediction, other tunnel engineering problems also new recent years, both domestically internationally. This paper briefly introduces development process learning. By reviewing number published papers on application over past 20 this discusses intelligent algorithms engineering, including collapse risk assessment, water inrush crack structural stability evaluation, seepage erosion mountain tunnels, urban subway subsea tunnels. Finally, it explores future challenges prospects engineering.

Language: Английский

Citations

5

Data-Based postural prediction of shield tunneling via machine learning with physical information DOI

Jiaqi Chang,

Hongwei Huang, Markus Thewes

et al.

Computers and Geotechnics, Journal Year: 2024, Volume and Issue: 174, P. 106584 - 106584

Published: July 13, 2024

Language: Английский

Citations

5

Quantitative analysis and modification of dynamic p-y curve model for offshore wind turbines considering earthquake history effect based on deep learning DOI
Zhongchang Zhang, Jing Zhang,

Xiaofeng Wu

et al.

Ocean Engineering, Journal Year: 2024, Volume and Issue: 299, P. 117372 - 117372

Published: March 6, 2024

Language: Английский

Citations

4

Physics-informed and data-driven machine learning of rock mass classification using prior geological knowledge and TBM operational data DOI
Chenhao Zhang, Yu Wang,

Lei-jie Wu

et al.

Tunnelling and Underground Space Technology, Journal Year: 2024, Volume and Issue: 152, P. 105923 - 105923

Published: July 4, 2024

Language: Английский

Citations

4

Physics-guided neural network-based framework for 3D modeling of slope stability DOI
Zilong Zhang, Bowen Wang, Zheng‐Wei Li

et al.

Computers and Geotechnics, Journal Year: 2024, Volume and Issue: 176, P. 106801 - 106801

Published: Oct. 5, 2024

Language: Английский

Citations

4

Physics-based neural networks for the characterization and behavior assessment of construction materials DOI
Ahed Habib, M. Talha Junaid, Salah Altoubat

et al.

Journal of Building Engineering, Journal Year: 2025, Volume and Issue: 100, P. 111788 - 111788

Published: Jan. 8, 2025

Language: Английский

Citations

0

Upward propagation of ground disturbance induced by water–sand inrush into a defective tunnel in a dual-stratum geological condition DOI
Zhifu Shen, Yixin Zhao, Yang Lv

et al.

Tunnelling and Underground Space Technology, Journal Year: 2025, Volume and Issue: 158, P. 106422 - 106422

Published: Jan. 25, 2025

Language: Английский

Citations

0