Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS Sensors

The fast development of wireless sensor networks and MEMS make it possible to set up today real-time wireless geotechnical monitoring. To handle interferences and noises from the output data, Kalman filter can be selected as a method to achieve a more realistic estimate of the observations. In this...

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Main Authors: Cheng Li, Rafig Azzam, Tomás M. Fernández-Steeger
Format: Article
Language:English
Published: MDPI AG 2016-07-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/16/7/1109
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spelling doaj-8f600904046b408e93034b081e504bee2020-11-24T22:16:08ZengMDPI AGSensors1424-82202016-07-01167110910.3390/s16071109s16071109Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS SensorsCheng Li0Rafig Azzam1Tomás M. Fernández-Steeger2Chengdu Engineering Corporation Limited, Chengdu 610072, ChinaDepartment of Engineering Geology and Hydrogeology, RWTH Aachen University, Aachen 52064, GermanyDepartment of Applied Geosciences, TU Berlin University, Berlin 10587, GermanyThe fast development of wireless sensor networks and MEMS make it possible to set up today real-time wireless geotechnical monitoring. To handle interferences and noises from the output data, Kalman filter can be selected as a method to achieve a more realistic estimate of the observations. In this paper, a one-day wireless measurement using accelerometers and inclinometers was deployed on top of a tunnel section under construction in order to monitor ground subsidence. The normal vectors of the sensors were firstly obtained with the help of rotation matrices, and then be projected to the plane of longitudinal section, by which the dip angles over time would be obtained via a trigonometric function. Finally, a centralized Kalman filter was applied to estimate the tilt angles of the sensor nodes based on the data from the embedded accelerometer and the inclinometer. Comparing the results from two sensor nodes deployed away and on the track respectively, the passing of the tunnel boring machine can be identified from unusual performances. Using this method, the ground settlement due to excavation can be measured and a real-time monitoring of ground subsidence can be realized.http://www.mdpi.com/1424-8220/16/7/1109Kalman filterground subsidencerotation matricesaccelerometerinclinometer
collection DOAJ
language English
format Article
sources DOAJ
author Cheng Li
Rafig Azzam
Tomás M. Fernández-Steeger
spellingShingle Cheng Li
Rafig Azzam
Tomás M. Fernández-Steeger
Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS Sensors
Sensors
Kalman filter
ground subsidence
rotation matrices
accelerometer
inclinometer
author_facet Cheng Li
Rafig Azzam
Tomás M. Fernández-Steeger
author_sort Cheng Li
title Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS Sensors
title_short Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS Sensors
title_full Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS Sensors
title_fullStr Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS Sensors
title_full_unstemmed Kalman Filters in Geotechnical Monitoring of Ground Subsidence Using Data from MEMS Sensors
title_sort kalman filters in geotechnical monitoring of ground subsidence using data from mems sensors
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2016-07-01
description The fast development of wireless sensor networks and MEMS make it possible to set up today real-time wireless geotechnical monitoring. To handle interferences and noises from the output data, Kalman filter can be selected as a method to achieve a more realistic estimate of the observations. In this paper, a one-day wireless measurement using accelerometers and inclinometers was deployed on top of a tunnel section under construction in order to monitor ground subsidence. The normal vectors of the sensors were firstly obtained with the help of rotation matrices, and then be projected to the plane of longitudinal section, by which the dip angles over time would be obtained via a trigonometric function. Finally, a centralized Kalman filter was applied to estimate the tilt angles of the sensor nodes based on the data from the embedded accelerometer and the inclinometer. Comparing the results from two sensor nodes deployed away and on the track respectively, the passing of the tunnel boring machine can be identified from unusual performances. Using this method, the ground settlement due to excavation can be measured and a real-time monitoring of ground subsidence can be realized.
topic Kalman filter
ground subsidence
rotation matrices
accelerometer
inclinometer
url http://www.mdpi.com/1424-8220/16/7/1109
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AT rafigazzam kalmanfiltersingeotechnicalmonitoringofgroundsubsidenceusingdatafrommemssensors
AT tomasmfernandezsteeger kalmanfiltersingeotechnicalmonitoringofgroundsubsidenceusingdatafrommemssensors
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