Abnormal event detection of city slope monitoring data based on multi-sensor information fusion

To prevent and control the loss of people's lives and property caused by sudden urban geological disasters, China has deployed a large number of sensors for urban geological disaster-prone areas to perceive changes in urban underground space. In this article, based on the characteristics of slo...

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Main Authors: Gang Liu, Lixin Ye, Qiyu Chen, Genshen Chen, Wenyao Fan
Format: Article
Language:zho
Published: Editorial Department of Bulletin of Geological Science and Technology 2022-03-01
Series:地质科技通报
Subjects:
Online Access:https://dzkjqb.cug.edu.cn/en/article/doi/10.19509/j.cnki.dzkq.2022.0060
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author Gang Liu
Lixin Ye
Qiyu Chen
Genshen Chen
Wenyao Fan
author_facet Gang Liu
Lixin Ye
Qiyu Chen
Genshen Chen
Wenyao Fan
author_sort Gang Liu
collection DOAJ
description To prevent and control the loss of people's lives and property caused by sudden urban geological disasters, China has deployed a large number of sensors for urban geological disaster-prone areas to perceive changes in urban underground space. In this article, based on the characteristics of slope monitoring data and the analysis technology of time series data, aiming at problems such as noise mixtures in monitoring data, the difficulty of mode analysis and the uncertainty of early warning thresholds, a method of abnormal event detection in slope monitoring data based on multisensor information fusion is proposed. The results show that: ① Aiming at the disadvantage that the optimal estimation of the Kalman filter requires known noise information, the attenuation memory factor is introduced, and the centralized attenuation memory Kalman filter is used to fuse the multisensor slope monitoring data, which reduces the influence of noise and improves the reliability of slope monitoring data. ② The change mode of slope monitoring data can be summed up as the superposition of periodic term, trend term and noise term. The period is 24 hours, and the trend term can be approximately regarded as the classic Newtonian motion. Based on this, the deformation motion model can be constructed to provide theoretical support for the state transfer of the Kalman filter. ③ The penalty coefficient is introduced to make the improved DTW have a better measurement effect for the periodic sequence. On this basis, anomaly detection is carried out on the slope monitoring data based on K-means clustering, and local anomaly factors are used to analyse the abnormal conditions of the monitoring data. This method can distinguish the time series data of thenormal mode and abnormal mode better, detect abnormal slope monitoring data effectively, and provide guarantees for disaster prevention. Therefore, in view of the insufficiency of slope monitoring data processing and analysis processes, different information fusion technologies are adopted to improve the reliability and robustness of slope monitoring data. The feasibility of the proposed method is verified by slope monitoring data in Shenzhen.
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spelling doaj.art-a6b759ac8ded4d95baa77a5416a3baf52024-03-05T03:01:58ZzhoEditorial Department of Bulletin of Geological Science and Technology地质科技通报2096-85232022-03-01412132510.19509/j.cnki.dzkq.2022.0060dzkjtb-41-2-13Abnormal event detection of city slope monitoring data based on multi-sensor information fusionGang Liu0Lixin Ye1Qiyu Chen2Genshen Chen3Wenyao Fan4School of Computer Science, China University of Geosciences(Wuhan), Wuhan 430078, ChinaSchool of Computer Science, China University of Geosciences(Wuhan), Wuhan 430078, ChinaSchool of Computer Science, China University of Geosciences(Wuhan), Wuhan 430078, ChinaSchool of Computer Science, China University of Geosciences(Wuhan), Wuhan 430078, ChinaSchool of Computer Science, China University of Geosciences(Wuhan), Wuhan 430078, ChinaTo prevent and control the loss of people's lives and property caused by sudden urban geological disasters, China has deployed a large number of sensors for urban geological disaster-prone areas to perceive changes in urban underground space. In this article, based on the characteristics of slope monitoring data and the analysis technology of time series data, aiming at problems such as noise mixtures in monitoring data, the difficulty of mode analysis and the uncertainty of early warning thresholds, a method of abnormal event detection in slope monitoring data based on multisensor information fusion is proposed. The results show that: ① Aiming at the disadvantage that the optimal estimation of the Kalman filter requires known noise information, the attenuation memory factor is introduced, and the centralized attenuation memory Kalman filter is used to fuse the multisensor slope monitoring data, which reduces the influence of noise and improves the reliability of slope monitoring data. ② The change mode of slope monitoring data can be summed up as the superposition of periodic term, trend term and noise term. The period is 24 hours, and the trend term can be approximately regarded as the classic Newtonian motion. Based on this, the deformation motion model can be constructed to provide theoretical support for the state transfer of the Kalman filter. ③ The penalty coefficient is introduced to make the improved DTW have a better measurement effect for the periodic sequence. On this basis, anomaly detection is carried out on the slope monitoring data based on K-means clustering, and local anomaly factors are used to analyse the abnormal conditions of the monitoring data. This method can distinguish the time series data of thenormal mode and abnormal mode better, detect abnormal slope monitoring data effectively, and provide guarantees for disaster prevention. Therefore, in view of the insufficiency of slope monitoring data processing and analysis processes, different information fusion technologies are adopted to improve the reliability and robustness of slope monitoring data. The feasibility of the proposed method is verified by slope monitoring data in Shenzhen.https://dzkjqb.cug.edu.cn/en/article/doi/10.19509/j.cnki.dzkq.2022.0060time series datamultisensor information fusionkalman filterdynamic time warpingabnormal event detection of slope monitoring data
spellingShingle Gang Liu
Lixin Ye
Qiyu Chen
Genshen Chen
Wenyao Fan
Abnormal event detection of city slope monitoring data based on multi-sensor information fusion
地质科技通报
time series data
multisensor information fusion
kalman filter
dynamic time warping
abnormal event detection of slope monitoring data
title Abnormal event detection of city slope monitoring data based on multi-sensor information fusion
title_full Abnormal event detection of city slope monitoring data based on multi-sensor information fusion
title_fullStr Abnormal event detection of city slope monitoring data based on multi-sensor information fusion
title_full_unstemmed Abnormal event detection of city slope monitoring data based on multi-sensor information fusion
title_short Abnormal event detection of city slope monitoring data based on multi-sensor information fusion
title_sort abnormal event detection of city slope monitoring data based on multi sensor information fusion
topic time series data
multisensor information fusion
kalman filter
dynamic time warping
abnormal event detection of slope monitoring data
url https://dzkjqb.cug.edu.cn/en/article/doi/10.19509/j.cnki.dzkq.2022.0060
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AT lixinye abnormaleventdetectionofcityslopemonitoringdatabasedonmultisensorinformationfusion
AT qiyuchen abnormaleventdetectionofcityslopemonitoringdatabasedonmultisensorinformationfusion
AT genshenchen abnormaleventdetectionofcityslopemonitoringdatabasedonmultisensorinformationfusion
AT wenyaofan abnormaleventdetectionofcityslopemonitoringdatabasedonmultisensorinformationfusion