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Analysis of Accuracy in Predicting Stability of Piers Evaluated by Impact Load Test충격하중실험으로 평가한 교각 기초의 안정성 예측에 대한 정확도 분석

Other Titles
충격하중실험으로 평가한 교각 기초의 안정성 예측에 대한 정확도 분석
Authors
윤동후유민택박정준김기현이명재이일화
Issue Date
Jul-2021
Publisher
한국철도학회
Keywords
Machine learning; Pier safety; Permutation importance; Safety prediction; Support vector machine; 머신러닝; 교각안전성; 순열중요도; 안전성 예측; 서포트 벡터 머신
Citation
한국철도학회논문집, v.24, no.7, pp.581 - 589
Journal Title
한국철도학회논문집
Volume
24
Number
7
Start Page
581
End Page
589
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/87604
DOI
10.7782/JKSR.2021.24.7.581
ISSN
1738-6225
Abstract
The safety of piers is predicted through machine learning based on a database built from impact load tests on piers. However, since the amount of data is insufficient to learn the algorithm using only field experiment data, the accuracy of the algorithm is analyzed by constructing 1,159 data sets of a model experiment and numerical analysis data. Among machine learning algorithms, the accuracy of safety diagnosis prediction is studied using three algorithms: Support Vector Machine (SVM), Decision Tree (DT), and Logistic Regression. The algorithm is evaluated using an evaluation index according to a confusion matrix and, as a result, the highest accuracy is shown at 95.9% when the support vector machine, a binary classification model that predicts the boundary line between the two classes of safety and poor, is used. © 2021 The Korean Society for Railway. All rights reserved.
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