Systematic literature review on data-driven models for predictive maintenance of railway track: Implications in geotechnical engineering
Conventional planning of maintenance and renewal work for railway track is based on
heuristics and simple scheduling. The railway industry is now collecting a large amount of …
heuristics and simple scheduling. The railway industry is now collecting a large amount of …
Time series data mining for railway wheel and track monitoring: a survey
A Lourenço, D Ribeiro, M Fernandes… - Neural Computing and …, 2024 - Springer
The railway sector has witnessed a significant surge in condition-based maintenance,
thanks to the proliferation of sensing technologies and data-driven methodologies, such as …
thanks to the proliferation of sensing technologies and data-driven methodologies, such as …
Development of a two-phase adaptive MCMC method for efficient Bayesian model updating of complex dynamic systems
The fundamental problem of Bayesian model updating is identifying the posterior probability
density function (PDF) of uncertain model parameters. Markov chain Monte Carlo (MCMC) …
density function (PDF) of uncertain model parameters. Markov chain Monte Carlo (MCMC) …
Bayesian damage identification based on autoregressive model and MH-PSO hybrid MCMC sampling method
Bayesian damage identification method, due to its ability to consider the uncertainties, has
attracted much attention from researchers. However, there are two key issues to ensure the …
attracted much attention from researchers. However, there are two key issues to ensure the …
A Bayesian methodology for detection of railway ballast damage using the modified Ludwik nonlinear model
MO Adeagbo, HF Lam, YQ Ni - Engineering Structures, 2021 - Elsevier
In this paper, an improved nonlinear model of railway ballast is proposed based on the
modified Ludwik model. The accuracy of model-based structural damage detection relies on …
modified Ludwik model. The accuracy of model-based structural damage detection relies on …
Dynamic characteristics of the railway ballast bed under water-rich and low-temperature environments
Studying the dynamic characteristics and evolution laws of the ballast bed under low-
temperature, rain and snow environments has practical significance for the driving stability of …
temperature, rain and snow environments has practical significance for the driving stability of …
CA mortar void identification for slab track utilizing time-domain Markov chain Monte Carlo-based Bayesian approach
Q Hu, YJ Shen - Structural Health Monitoring, 2023 - journals.sagepub.com
This paper investigates the feasibility and practicability study on the use of Markov chain
Monte Carlo (MCMC)-based Bayesian approach for identifying the cement-emulsified …
Monte Carlo (MCMC)-based Bayesian approach for identifying the cement-emulsified …
An enhanced sequential sensor optimization scheme and its application in the system identification of a rail-sleeper-ballast system
HF Lam, MO Adeagbo - Mechanical Systems and Signal Processing, 2022 - Elsevier
The problem of optimal sensor placement for system identification and damage detection is
addressed by the development of a robust method based on Bayesian theory. Information …
addressed by the development of a robust method based on Bayesian theory. Information …
Time-domain Markov chain Monte Carlo–based Bayesian damage detection of ballasted tracks using nonlinear ballast stiffness model
HF Lam, MO Adeagbo, YB Yang - Structural Health …, 2021 - journals.sagepub.com
This article reports the development of a methodology for detecting ballast damage under a
sleeper based on measured sleeper vibration following the Bayesian statistical system …
sleeper based on measured sleeper vibration following the Bayesian statistical system …
[HTML][HTML] A Bayesian finite element model updating with combined normal and lognormal probability distributions using modal measurements
The present work is associated with Bayesian finite element (FE) model updating using
modal measurements based on maximizing the posterior probability instead of any sampling …
modal measurements based on maximizing the posterior probability instead of any sampling …