Cutting Parameters and Material Classification Using Multinomial Logistic Regression

被引:0
|
作者
Bonacini, Leonardo [1 ]
Argote Pedraza, Ingrid Lorena [1 ]
Senni, Alexandre Padilha [1 ]
Tronco, Mario Luiz [1 ]
机构
[1] Univ Sao Paulo, Sao Carlos Sch Engn, Av Trabalhador Sao Carlense 200, Sao Carlos, SP, Brazil
关键词
Monitoring; Temperature sensors; Temperature measurement; Integrated circuit modeling; Machining; Logistics; IEEE transactions; Manufacturing; Acceleration; Sound; Temperature; Supervised Machine Learning; ECONOMIC-DEVELOPMENT; SYSTEM;
D O I
10.1109/TLA.2022.9905736
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In the context of the new industrial revolution - Industry 4.0, the smart factory concept brought, to manufacturing, the idea of using large amounts of data acquired from a machining process and a set of mathematical techniques, discovering correlations, patterns, or trends in this database. Thus, machine tools are the focus of research in order to monitor and analyze the quality of the machining process based on data from embedded sensors. Based on this strategy, a signature process was created, that consists in capturing behavior patterns of a machine, such as machining conditions, machining quality, or tool wear. This article deal with a comparison between three Multinomial Logistic Regressions: the first using only time domain data, the second using only frequency domain data, and finally, the third using time and frequency domain data to identify the pattern of feed rate, depth of cut, and material being machined. It was observed that the methods had a precision of 96.25%, 37.92%, and 99.58%, respectively, showing that this methodology has great predictive efficiency and could be used to monitor the cutting parameters and material studied in this paper.
引用
收藏
页码:2471 / 2477
页数:7
相关论文
共 50 条
  • [22] Predicting Local Crime Clusters Using (Multinomial) Logistic Regression
    Andresen, Martin A.
    [J]. CITYSCAPE, 2015, 17 (03) : 249 - 261
  • [23] Pliable lasso for the multinomial logistic regression
    Asenso, Theophilus Quachie
    Zhang, Hai
    Liang, Yong
    [J]. COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2022, 51 (11) : 3596 - 3611
  • [24] Maximal Uncorrelated Multinomial Logistic Regression
    Lei, Dajiang
    Zhang, Hongyu
    Liu, Hongtao
    Li, Zhixing
    Wu, Yu
    [J]. IEEE ACCESS, 2019, 7 : 89924 - 89935
  • [25] Multinomial Logistic Regression in Workers' Health
    Grilo, Luis M.
    Grilo, Helena L.
    Goncalves, Sonia P.
    Junca, Ana
    [J]. PROCEEDINGS OF THE INTERNATIONAL CONFERENCE OF COMPUTATIONAL METHODS IN SCIENCES AND ENGINEERING 2017 (ICCMSE-2017), 2017, 1906
  • [26] Modelling of land-use change in Thailand using binary logistic regression and multinomial logistic regression
    Buya, Suhaimee
    Tongkumchum, Phattrawan
    Owusu, Bright Emmanuel
    [J]. ARABIAN JOURNAL OF GEOSCIENCES, 2020, 13 (12)
  • [27] Modelling of land-use change in Thailand using binary logistic regression and multinomial logistic regression
    Suhaimee Buya
    Phattrawan Tongkumchum
    Bright Emmanuel Owusu
    [J]. Arabian Journal of Geosciences, 2020, 13
  • [28] Novel Classification Technique for Hyperspectral Imaging using Multinomial Logistic Regression and Morphological Profiles with Composite Kernels
    Shah, Syed Taimoor Hussain
    Javed, Syed Gibran
    Majid, Abdul
    Shah, Syed Adil Hussain
    Qureshi, Shahzad Ahmad
    [J]. PROCEEDINGS OF 2019 16TH INTERNATIONAL BHURBAN CONFERENCE ON APPLIED SCIENCES AND TECHNOLOGY (IBCAST), 2019, : 419 - 424
  • [29] Damage classification after the 2009 L'Aquila earthquake using multinomial logistic regression and neural networks
    Aloisio, Angelo
    Rosso, Marco Martino
    De Leo, Andrea Matteo
    Fragiacomo, Massimo
    Basi, Maria
    [J]. INTERNATIONAL JOURNAL OF DISASTER RISK REDUCTION, 2023, 96
  • [30] Logistic Regression Multinomial for Arrhythmia Detection
    Behadada, Omar
    Trovati, Marcello
    Chikh, M. A.
    Bessis, Nik
    Korkontzelos, Yannis
    [J]. 2016 IEEE 1ST INTERNATIONAL WORKSHOPS ON FOUNDATIONS AND APPLICATIONS OF SELF* SYSTEMS (FAS*W), 2016, : 133 - 137