A data-driven machine learning approach to predicting stacking faulting energy in austenitic steels

被引:0
|
作者
N. Chaudhary
A. Abu-Odeh
I. Karaman
R. Arróyave
机构
[1] Texas A&M University,Department of Materials Science and Engineering
[2] Texas A&M University,Department of Mechanical Engineering
来源
关键词
Stacking Fault Energy (SFE); Alloyed Austenitic Steels; Data-driven Machine Learning Approach; Generalized Stacking Fault Energy (GSFE); Partial Dislocation Separation;
D O I
暂无
中图分类号
学科分类号
摘要
Stacking fault energy (SFE) is an intrinsic material property whose value is crucial in determining different secondary deformation mechanisms in austenitic (face-centered cubic, fcc) steels. Considerable experimental and computational work suggests that the SFE itself is highly dependent—in a complex manner—on chemical composition and temperature. Over the past decades, there have been a large number of efforts focused on determining the composition dependence of SFE in austenitic steel alloys by means of experimental, theoretical or computational methods. Unfortunately, experimental methods suffer from the indirect nature of the methodologies used to estimate the value of SFE, while computational and/or theoretical approaches are either limited by the physics that they can incorporate into the predictions or have more practical limitations associated, for example, to the size of the systems that can be modeled or the assumptions that must be made. In this paper, we review the major experimental and computational approaches to determine SFE in austenitic steel alloys, and we discuss their limitations. We then demonstrate a data-driven machine learning technique to mine the literature of experimental SFE data in steels, while algorithms at the fore-front of machine learning have been used to visualize the SFE data and then construct a three-class classifier. The classifier is used then to predict likely secondary deformation mechanisms of untested compositions, while the classifier itself is presented as a valuable tool for the further development of austenitic steel alloys in which the specific secondary plastic deformation mechanisms are a feature to design for. The data as well as the entire analysis workflow are made available to the wider community through a public github repository.
引用
收藏
页码:11048 / 11076
页数:28
相关论文
共 50 条
  • [41] A Data-Driven, Machine Learning Approach for Predicting Textbook Outcome in Liver Surgery: Results from an International Cohort
    Wang, Jaeyun Jane
    Ganjouei, Amir Ashraf
    Romero-hernandez, Maria F.
    Hibi, Taizo
    Lluis, Nuria
    Calthorpe, Lucia M.
    Hoffman, Daniel
    Asbun, Horacio J.
    Adam, Mohamed
    Alseidi, Adnan A.
    [J]. JOURNAL OF THE AMERICAN COLLEGE OF SURGEONS, 2023, 237 (05) : S279 - S280
  • [42] Data-driven Machine Learning Approach for Predicting Volumetric Moisture Content of Concrete Using Resistance Sensor Measurements
    Thiyagarajan, Karthick
    Kodagoda, Sarath
    Ulapane, Nalika
    [J]. PROCEEDINGS OF THE 2016 IEEE 11TH CONFERENCE ON INDUSTRIAL ELECTRONICS AND APPLICATIONS (ICIEA), 2016, : 1288 - 1293
  • [43] Urban building energy performance prediction and retrofit analysis using data-driven machine learning approach
    Ali, Usman
    Bano, Sobia
    Shamsi, Mohammad Haris
    Sood, Divyanshu
    Hoare, Cathal
    Zuo, Wangda
    Hewitt, Neil
    O'Donnell, James
    [J]. ENERGY AND BUILDINGS, 2024, 303
  • [44] Urban building energy performance prediction and retrofit analysis using data-driven machine learning approach
    Ali, Usman
    Bano, Sobia
    Shamsi, Mohammad Haris
    Sood, Divyanshu
    Hoare, Cathal
    Zuo, Wangda
    Hewitt, Neil
    O'Donnell, James
    [J]. Energy and Buildings, 2024, 303
  • [45] Predicting Emotional States Using Behavioral Markers Derived From Passively Sensed Data: Data-Driven Machine Learning Approach
    Suekei, Emese
    Norbury, Agnes
    Perez-Rodriguez, M. Mercedes
    Olmos, Pablo M.
    Artes, Antonio
    [J]. JMIR MHEALTH AND UHEALTH, 2021, 9 (03):
  • [46] Data-driven approach for ontology learning
    Ocampo-Guzman, Isidra
    Lopez-Arevalo, Ivan
    Sosa-Sosa, Victor
    [J]. 2009 6TH INTERNATIONAL CONFERENCE ON ELECTRICAL ENGINEERING, COMPUTING SCIENCE AND AUTOMATION CONTROL (CCE 2009), 2009, : 463 - 468
  • [47] Predicting hospital disposition for trauma patients: application of data-driven machine learning algorithms
    Alrashidi, Nasser
    Alrashidi, Musaed
    Mejahed, Sara
    Eltahawi, Ahmed A.
    [J]. AIMS MATHEMATICS, 2024, 9 (04): : 7751 - 7769
  • [48] Predicting torsional capacity of reinforced concrete members by data-driven machine learning models
    Chen, Shenggang
    Chen, Congcong
    Li, Shengyuan
    Guo, Junying
    Guo, Quanquan
    Li, Chaolai
    [J]. FRONTIERS OF STRUCTURAL AND CIVIL ENGINEERING, 2024, 18 (03) : 444 - 460
  • [50] Data-Driven Machine Learning Intelligent Tools for Predicting Chromium Removal in an Adsorption System
    Zafar, Mohd
    Aggarwal, Ayushi
    Rene, Eldon R.
    Barbusinski, Krzysztof
    Mahanty, Biswanath
    Behera, Shishir Kumar
    [J]. PROCESSES, 2022, 10 (03)