Investigating the Material Properties of Nodular Cast Iron from a Data Mining Perspective

被引:8
作者
Fragassa, Cristiano [1 ]
机构
[1] Alma Mater Studiorum Univ Bologna, Dept Ind Engn, Viale Risorgimento 2, I-40136 Bologna, Italy
关键词
material properties; experimental mechanics; cast iron; solidification; data mining; machine learning; Orange Data Mining; AUSTEMPERED DUCTILE IRON; CLASSIFICATION; MACHINE; PREDICTION; PARAMETERS; SPECIMENS; QUALITY; GROWTH;
D O I
10.3390/met12091493
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Cast iron is a very common and useful metal alloy, characterized by its high carbon content (>4%) in the allotropic state of graphite. The correct shape and distribution of graphite are essential for ensuring that the material has the right properties. The present investigation examines the metallurgical and mechanical characterization of a spheroidal (nodular) cast iron, an alloy that derives its name and its excellent properties from the presence of graphite as spheroidal nodules. Experimental data are detected and considered from a data mining perspective, with the scope to extract new and little-known information. Specifically, a machine learning toolkit (i.e., Orange Data Mining) is used as a means of permitting supervised learners/classifiers (such as neural networks, k-nearest neighbors, and many others) to understand related metallurgical and mechanical features. An accuracy rate of over 90% can be considered as representative of the method. Finally, interesting considerations emerged regarding the dimensional effect on the variation in the solidification rates, microstructure, and properties.
引用
收藏
页数:26
相关论文
共 49 条
[1]  
Angus HT., 1976, Cast Iron: Physical and Engineering Properties, V2, DOI [10.1016/C2013-0-01035-3, DOI 10.1016/C2013-0-01035-3]
[2]  
[Anonymous], ASTM Standard (A 247-19) Standard Test Method for Evaluating the Microstructure of Graphite in Iron Castings, DOI [10.1520/A0247-19, DOI 10.1520/A0247-19]
[3]  
[Anonymous], 2016, E2567164A ASTM ASTM, DOI [10.1520/e2567-16a, DOI 10.1520/E2567-16A]
[4]  
[Anonymous], 2016, E8E8M16 ASTM INT, DOI [10.1520/E0008_E0008M-16, DOI 10.1520/E0008_E0008M-16]
[5]  
ASTMA, 2022, ASTMA327A327M22
[6]   A comprehensive survey on machine learning for networking: evolution, applications and research opportunities [J].
Boutaba, Raouf ;
Salahuddin, Mohammad A. ;
Limam, Noura ;
Ayoubi, Sara ;
Shahriar, Nashid ;
Estrada-Solano, Felipe ;
Caicedo, Oscar M. .
JOURNAL OF INTERNET SERVICES AND APPLICATIONS, 2018, 9 (01)
[7]  
BS EN, 2018, 15632018 BS EN
[8]   A novel committee machine to predict the quantity of impurities in hot metal produced in blast furnace [J].
Cardoso, Wandercleiton ;
Di Felice, Renzo .
COMPUTERS & CHEMICAL ENGINEERING, 2022, 163
[9]   Development of Data-Driven Machine Learning Models for the Prediction of Casting Surface Defects [J].
Chen, Shikun ;
Kaufmann, Tim .
METALS, 2022, 12 (01)
[10]   The coefficient of determination R-squared is more informative than SMAPE, MAE, MAPE, MSE and RMSE in regression analysis evaluation [J].
Chicco, Davide ;
Warrens, Matthijs J. ;
Jurman, Giuseppe .
PEERJ COMPUTER SCIENCE, 2021,