Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction Dynamics
The dynamic interaction between vehicle, roughness, and foundation is a fundamental problem in road management and also a complex problem, with their coupled and nonlinear behavior. Thus, in this study, the vehicle–pavement–foundation interaction model was formulated to incorporate the mass inertia...
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doaj-37c79649e4ac4fca967ea5efe76144332020-11-25T03:59:59ZengMDPI AGSensors1424-82202020-11-01206263626310.3390/s20216263Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction DynamicsRobin Eunju Kim0Department of Civil and Environmental Engineering, Hanyang University, Seoul 04763, KoreaThe dynamic interaction between vehicle, roughness, and foundation is a fundamental problem in road management and also a complex problem, with their coupled and nonlinear behavior. Thus, in this study, the vehicle–pavement–foundation interaction model was formulated to incorporate the mass inertia of the vehicle, stochastic roughness, and non-uniform and deformable foundation. Herein, a quarter-car model was considered, a filtered white noise model was formulated to represent the road roughness, and a two-layered foundation was employed to simulate the road structure. To represent the non-uniform foundation, stiffness and damping coefficients were assumed to vary either in a linear or in a quadratic manner. Subsequently, an augmented state-space representation was formulated for the entire system. The time-varying equation governing the covariance of the response was solved to examine the vehicle response, subject to various foundation properties. Finally, a linear discriminant analysis method was employed for classifying the foundation types. The performance of the classifier was validated by test sets, which contained 100 cases for each foundation type. The results showed an accuracy of over 90%, indicating that the machine learning-based classification of the foundation had the potential of using vehicle responses in road managements.https://www.mdpi.com/1424-8220/20/21/6263machine learning-based classificationnon-uniform foundationstochastic analysisvehicle–pavement–foundation interaction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Robin Eunju Kim |
spellingShingle |
Robin Eunju Kim Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction Dynamics Sensors machine learning-based classification non-uniform foundation stochastic analysis vehicle–pavement–foundation interaction |
author_facet |
Robin Eunju Kim |
author_sort |
Robin Eunju Kim |
title |
Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction Dynamics |
title_short |
Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction Dynamics |
title_full |
Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction Dynamics |
title_fullStr |
Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction Dynamics |
title_full_unstemmed |
Classification of Variable Foundation Properties Based on Vehicle–Pavement–Foundation Interaction Dynamics |
title_sort |
classification of variable foundation properties based on vehicle–pavement–foundation interaction dynamics |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2020-11-01 |
description |
The dynamic interaction between vehicle, roughness, and foundation is a fundamental problem in road management and also a complex problem, with their coupled and nonlinear behavior. Thus, in this study, the vehicle–pavement–foundation interaction model was formulated to incorporate the mass inertia of the vehicle, stochastic roughness, and non-uniform and deformable foundation. Herein, a quarter-car model was considered, a filtered white noise model was formulated to represent the road roughness, and a two-layered foundation was employed to simulate the road structure. To represent the non-uniform foundation, stiffness and damping coefficients were assumed to vary either in a linear or in a quadratic manner. Subsequently, an augmented state-space representation was formulated for the entire system. The time-varying equation governing the covariance of the response was solved to examine the vehicle response, subject to various foundation properties. Finally, a linear discriminant analysis method was employed for classifying the foundation types. The performance of the classifier was validated by test sets, which contained 100 cases for each foundation type. The results showed an accuracy of over 90%, indicating that the machine learning-based classification of the foundation had the potential of using vehicle responses in road managements. |
topic |
machine learning-based classification non-uniform foundation stochastic analysis vehicle–pavement–foundation interaction |
url |
https://www.mdpi.com/1424-8220/20/21/6263 |
work_keys_str_mv |
AT robineunjukim classificationofvariablefoundationpropertiesbasedonvehiclepavementfoundationinteractiondynamics |
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1724452092712583168 |