Predicting surface roughness of hardened AISI 1040 based on cutting parameters using neural networks and multiple regression

被引:0
|
作者
İlhan Asiltürk
机构
[1] University of Selcuk,Faculty of Technology
关键词
Intelligent control; Neural network; CNC turning; Surface roughness; Regression model;
D O I
暂无
中图分类号
学科分类号
摘要
In this study, models for predicting the surface roughness of AISI 1040 steel material using artificial neural networks (ANN) and multiple regression (MRM) are developed. The models are optimized using cutting parameters as input and corresponding surface roughness values as output. Cutting parameters considered in this study include cutting speed, feed rate, depth of cut, and nose radius. Surface roughness is characterized by the mean (Ra) and total (Rt) of the recorded roughness values at different locations on the surface. A total of 81 different experiments were performed, each with a different setting of the cutting parameters, and the corresponding Ra and Rt values for each case are measured. Input–output pairs obtained through these 81 experiments are used to train an ANN is achieved at the 200,00th epoch. Mean squared error of 0.002917120% achieved using the developed ANN outperforms error rates reported in earlier studies and can also be considered admissible for real-time deployment of the developed ANN algorithm for robust prediction of the surface roughness in industrial settings.
引用
收藏
页码:249 / 257
页数:8
相关论文
共 50 条
  • [41] Optimization of cutting parameters for surface roughness in turning of studs manufactured from AISI 5140 steel using the Taguchi method
    Kahraman, Funda
    MATERIALS TESTING, 2017, 59 (01) : 77 - 80
  • [42] Cutting tool condition monitoring by analyzing surface roughness, work piece vibration and volume of metal removed for AISI 1040 steel in boring
    Rao, K. Venkata
    Murthy, B. S. N.
    Rao, N. Mohan
    MEASUREMENT, 2013, 46 (10) : 4075 - 4084
  • [43] Optimization of cutting parameters for desirable surface roughness in end-milling hardened AISI H13 steel under a certain metal removal rate
    Ding, T. C.
    Zhang, S.
    Li, Z. M.
    Wang, Y. W.
    HIGH SPEED MACHINING, 2011, 188 : 307 - +
  • [44] Predictive modeling of surface roughness and tool wear in hard turning using regression and neural networks
    Özel, T
    Karpat, Y
    INTERNATIONAL JOURNAL OF MACHINE TOOLS & MANUFACTURE, 2005, 45 (4-5): : 467 - 479
  • [45] Analysis and optimization of the process parameters on surface roughness in ball burnishing of AISI O2 hardened steel
    Cica, Djordje
    Kramar, Davorin
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2023, 128 (1-2): : 345 - 356
  • [46] Evaluation of machined surface of the hardened AISI 4340 steel through roughness and residual stress parameters in turning and grinding
    Leonardo Roberto da Silva
    Diovani Antônio Couto
    Francisco Vieira dos Santo
    Fernando Júnio Duarte
    Rafael Siqueira Mazzaro
    Gustavo Valadares Veloso
    The International Journal of Advanced Manufacturing Technology, 2020, 107 : 791 - 803
  • [47] Analysis and optimization of the process parameters on surface roughness in ball burnishing of AISI O2 hardened steel
    Djordje Cica
    Davorin Kramar
    The International Journal of Advanced Manufacturing Technology, 2023, 128 : 345 - 356
  • [48] Predicting rice yield based on weather variables using multiple linear, neural networks, and penalized regression models
    Setiya, Parul
    Satpathi, Anurag
    Nain, Ajeet Singh
    THEORETICAL AND APPLIED CLIMATOLOGY, 2023, 154 (1-2) : 365 - 375
  • [49] Evaluation of machined surface of the hardened AISI 4340 steel through roughness and residual stress parameters in turning and grinding
    da Silva, Leonardo Roberto
    Couto, Diovani Antonio
    dos Santo, Francisco Vieira
    Duarte, Fernando Junio
    Mazzaro, Rafael Siqueira
    Veloso, Gustavo Valadares
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2020, 107 (1-2): : 791 - 803
  • [50] Predicting rice yield based on weather variables using multiple linear, neural networks, and penalized regression models
    Parul Setiya
    Anurag Satpathi
    Ajeet Singh Nain
    Theoretical and Applied Climatology, 2023, 154 : 365 - 375