Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement Results

It is necessary to assess damage properly for the safe use of a structure and for the development of an appropriate maintenance strategy. Although many efforts have been made to measure the vibration of a structure to determine the degree of damage, the accuracy of evaluation is not high enough, so...

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Main Authors: Pang-jo Chun, Tatsuro Yamane, Shota Izumi, Naoya Kuramoto
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/10/2780
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spelling doaj-cc55c2af47e342cda1a28c7c0e52273f2020-11-25T03:12:47ZengMDPI AGSensors1424-82202020-05-01202780278010.3390/s20102780Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement ResultsPang-jo Chun0Tatsuro Yamane1Shota Izumi2Naoya Kuramoto3Department of Civil Engineering, The University of Tokyo, Tokyo 113-8656, JapanDepartment of International Studies, The University of Tokyo, Chiba 277-8561, JapanDepartment of Civil and Environmental Engineering, Ehime University, Ehime 790-8577, JapanYokogawa Techno-Information Service Inc., Tokyo 108-0023, JapanIt is necessary to assess damage properly for the safe use of a structure and for the development of an appropriate maintenance strategy. Although many efforts have been made to measure the vibration of a structure to determine the degree of damage, the accuracy of evaluation is not high enough, so it is difficult to say that a damage evaluation based on vibrations in a structure has not been put to practical use. In this study, we propose a method to evaluate damage by measuring the acceleration of a structure at multiple points and interpreting the results with a Random Forest, which is a kind of supervised machine learning. The proposed method uses the maximum response acceleration, standard deviation, logarithmic decay rate, and natural frequency to improve the accuracy of damage assessment. We propose a three-step Random Forest method to evaluate various damage types based on the results of these many measurements. Then, the accuracy of the proposed method is verified based on the results of a cross-validation and a vibration test of an actual damaged specimen.https://www.mdpi.com/1424-8220/20/10/2780artificial intelligencemachine learningRandom Forestvibrationdamage detectiondamage evaluation
collection DOAJ
language English
format Article
sources DOAJ
author Pang-jo Chun
Tatsuro Yamane
Shota Izumi
Naoya Kuramoto
spellingShingle Pang-jo Chun
Tatsuro Yamane
Shota Izumi
Naoya Kuramoto
Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement Results
Sensors
artificial intelligence
machine learning
Random Forest
vibration
damage detection
damage evaluation
author_facet Pang-jo Chun
Tatsuro Yamane
Shota Izumi
Naoya Kuramoto
author_sort Pang-jo Chun
title Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement Results
title_short Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement Results
title_full Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement Results
title_fullStr Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement Results
title_full_unstemmed Development of a Machine Learning-Based Damage Identification Method Using Multi-Point Simultaneous Acceleration Measurement Results
title_sort development of a machine learning-based damage identification method using multi-point simultaneous acceleration measurement results
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-05-01
description It is necessary to assess damage properly for the safe use of a structure and for the development of an appropriate maintenance strategy. Although many efforts have been made to measure the vibration of a structure to determine the degree of damage, the accuracy of evaluation is not high enough, so it is difficult to say that a damage evaluation based on vibrations in a structure has not been put to practical use. In this study, we propose a method to evaluate damage by measuring the acceleration of a structure at multiple points and interpreting the results with a Random Forest, which is a kind of supervised machine learning. The proposed method uses the maximum response acceleration, standard deviation, logarithmic decay rate, and natural frequency to improve the accuracy of damage assessment. We propose a three-step Random Forest method to evaluate various damage types based on the results of these many measurements. Then, the accuracy of the proposed method is verified based on the results of a cross-validation and a vibration test of an actual damaged specimen.
topic artificial intelligence
machine learning
Random Forest
vibration
damage detection
damage evaluation
url https://www.mdpi.com/1424-8220/20/10/2780
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AT shotaizumi developmentofamachinelearningbaseddamageidentificationmethodusingmultipointsimultaneousaccelerationmeasurementresults
AT naoyakuramoto developmentofamachinelearningbaseddamageidentificationmethodusingmultipointsimultaneousaccelerationmeasurementresults
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