Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy Deconvolution

The new generation of smartphones, equipped with various sensors, such as a three-axis accelerometer, has shown potential as an intelligent, low-cost monitoring platform over the past few years. This paper reports the results of an analytical and experimental study on a proposed SDOF model-based noi...

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Main Authors: Amin Moghadam, Rodrigo Sarlo
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Advances in Civil Engineering
Online Access:http://dx.doi.org/10.1155/2021/6654723
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spelling doaj-177ca903a91f4cd990b3e40b7ac8e2dd2021-04-05T00:00:44ZengHindawi LimitedAdvances in Civil Engineering1687-80942021-01-01202110.1155/2021/6654723Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy DeconvolutionAmin Moghadam0Rodrigo Sarlo1Department of Civil and Environmental EngineeringDepartment of Civil and Environmental EngineeringThe new generation of smartphones, equipped with various sensors, such as a three-axis accelerometer, has shown potential as an intelligent, low-cost monitoring platform over the past few years. This paper reports the results of an analytical and experimental study on a proposed SDOF model-based noisy deconvolution (SMND) coupled with a deechoing technique to estimate pavement profiles and to modify their geometry using a smartphone inside a vehicle. In the analytical study, the acceleration response of the car was obtained, where the input was a road profile with an arbitrary pattern. Two different methods, classical band-pass filter and wavelet-denoising technique, were used for denoising the acceleration response. In a 2-step deconvolution process coupled with a deechoing technique, the pavement profile was extracted and compared with the original pavement profile, demonstrating good agreement. In the next step, a parametric study was performed to evaluate the effect of vehicle characteristics and speeds. Then, a case study was conducted in Blacksburg, VA, to evaluate the capability of the proposed method in identifying profile types such as potholes and speed bumps. The acceleration-versus-time responses in vertical direction were recorded using smartphone accelerometers located in a moving vehicle. Then, the proposed approach was applied to remove the echo and vehicle dynamics effects to obtain the pavement profiles and to modify their geometry. The results showed that the proposed approach can remove the echo and vehicle dynamics effect from the response to obtain the pavement profile even if the vehicle characteristics and speed are changed.http://dx.doi.org/10.1155/2021/6654723
collection DOAJ
language English
format Article
sources DOAJ
author Amin Moghadam
Rodrigo Sarlo
spellingShingle Amin Moghadam
Rodrigo Sarlo
Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy Deconvolution
Advances in Civil Engineering
author_facet Amin Moghadam
Rodrigo Sarlo
author_sort Amin Moghadam
title Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy Deconvolution
title_short Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy Deconvolution
title_full Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy Deconvolution
title_fullStr Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy Deconvolution
title_full_unstemmed Application of Smartphones in Pavement Profile Estimation Using SDOF Model-Based Noisy Deconvolution
title_sort application of smartphones in pavement profile estimation using sdof model-based noisy deconvolution
publisher Hindawi Limited
series Advances in Civil Engineering
issn 1687-8094
publishDate 2021-01-01
description The new generation of smartphones, equipped with various sensors, such as a three-axis accelerometer, has shown potential as an intelligent, low-cost monitoring platform over the past few years. This paper reports the results of an analytical and experimental study on a proposed SDOF model-based noisy deconvolution (SMND) coupled with a deechoing technique to estimate pavement profiles and to modify their geometry using a smartphone inside a vehicle. In the analytical study, the acceleration response of the car was obtained, where the input was a road profile with an arbitrary pattern. Two different methods, classical band-pass filter and wavelet-denoising technique, were used for denoising the acceleration response. In a 2-step deconvolution process coupled with a deechoing technique, the pavement profile was extracted and compared with the original pavement profile, demonstrating good agreement. In the next step, a parametric study was performed to evaluate the effect of vehicle characteristics and speeds. Then, a case study was conducted in Blacksburg, VA, to evaluate the capability of the proposed method in identifying profile types such as potholes and speed bumps. The acceleration-versus-time responses in vertical direction were recorded using smartphone accelerometers located in a moving vehicle. Then, the proposed approach was applied to remove the echo and vehicle dynamics effects to obtain the pavement profiles and to modify their geometry. The results showed that the proposed approach can remove the echo and vehicle dynamics effect from the response to obtain the pavement profile even if the vehicle characteristics and speed are changed.
url http://dx.doi.org/10.1155/2021/6654723
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