2021
DOI: 10.36001/ijphm.2020.v11i2.2923
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Structure Fatigue Crack Length Estimation and Prediction Using Ultrasonic Wave Data Based on Ensemble Linear Regression and Paris’s Law

Abstract: This paper presents methods for the 2019 PHM Conference Data Challenge developed by the team named "Angler". This Challenge aims to estimate the fatigue crack length of a type of aluminum structure using ultrasonic signals at the current load cycle and to predict the crack length at multiple future load cycles (multiple-step-ahead prediction) as accurately as possible. For estimating crack length, four crack-sensitive features are extracted from ultrasonic signals, namely, the first peak value, root mean squar… Show more

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Cited by 3 publications
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“…However, the relationship between the input features and target variable can be considered as a hyperplane with higher dimensions. The optimization method can find the coefficients that minimize the error between the predicted output “ ” and the actual output “ y ” [ 32 , 33 ].…”
Section: Analysis Processmentioning
confidence: 99%
“…However, the relationship between the input features and target variable can be considered as a hyperplane with higher dimensions. The optimization method can find the coefficients that minimize the error between the predicted output “ ” and the actual output “ y ” [ 32 , 33 ].…”
Section: Analysis Processmentioning
confidence: 99%