A new machine learning-based evaluation of ductile fracture

被引:4
|
作者
Aviles-Cruz, Carlos [1 ]
Aguilar-Sanchez, Miriam [2 ]
Vargas-Arista, Benjamin [3 ]
Garfias-Garcia, Elizabeth [2 ]
机构
[1] Autonomous Metropolitan Univ, Dept Elect, Ave San Pablo 420,Col Nueva Rosario, Mexico City 02128, Mexico
[2] Autonomous Metropolitan Univ, Dept Mat, Ave San Pablo 420,Col Nueva Rosario, Mexico City 02128, Mexico
[3] Tecnol Nacl Mexico, Inst Tecnol Tlalnepantla, Dept Met Mecan, Tecnol s-n,Col Comun, Mexico City 54070, Mexico
关键词
Ductile fracture; Texture features; Void classification; Skewness; Co-occurrence matrix; FAILURE ANALYSIS; FRACTOGRAPHY;
D O I
10.1016/j.engfracmech.2024.110072
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
Ductile fracture occurs with large plastic deformation prior to fracture and is primarily characterized by voids of varying sizes. In this work, a new approach based on machine learning is proposed for the characterization of ductile fractures. The method is based on the application of a pre-processing of the fractographies, followed by a processing that includes the generation of a mask through a mathematical morphology, a classification is made according to their size in micrometers to later make a histogram of the size of the cavity in relation respect to its frequency of repetition in each fractography. Besides, the histogram is then normalized to generate a Probability Density Function (PDF). Based on the PDF, a third-order statistical metric known as Fractography Skewness (FS) is used to evaluate fracture susceptibility and is related to the Degree of Fracture Susceptibility (DFS). If the FS is negative (indicating a left-skewed PDF), the fractography is characterized by large voids and is assigned a DFS of 1, indicating low susceptibility. Conversely, a positive FS (indicating a right-skewed PDF) indicates the presence of small voids, resulting in a DFS of 3, indicating high susceptibility. The proposed quantitative methodology demonstrates a higher accuracy than the most advanced current techniques based on deep learning and the subjectivity of the specialist.
引用
收藏
页数:15
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