Raster Angle Prediction of Additive Manufacturing Process Using Machine Learning Algorithm

被引:3
|
作者
Ulkir, Osman [1 ]
Bayraklilar, Mehmet Said [2 ]
Kuncan, Melih [3 ]
机构
[1] Mus Alparslan Univ, Dept Elect & Energy, TR-49210 Mus, Turkiye
[2] Siirt Univ, Dept Civil Engn, TR-56100 Siirt, Turkiye
[3] Siirt Univ, Dept Elect & Elect Engn, TR-56100 Siirt, Turkiye
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 05期
关键词
additive manufacturing; machine learning; FDM; raster angle; prediction; GAUSSIAN PROCESS REGRESSION;
D O I
10.3390/app14052046
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
As additive manufacturing (AM) processes become integrated with artificial intelligence systems, the time and cost of the fabrication process decrease. In this study, the raster angle, an important parameter in the manufacturing process, was examined using fused deposition modeling (FDM), an AM method. The optimal value of this parameter varies depending on the designed product geometry. By changing the raster angle, the distribution of stresses and strains within the printed object can be modified, potentially influencing the mechanical behavior of the object. Thus, the correct estimation of the raster angle is essential for obtaining parts with high mechanical properties. The focus of this study is to reduce the fabrication time and cost of products by intertwining machine learning (ML) systems with mechanical systems. Its novelty is that ML has never been applied for FDM raster angle estimation. The estimation and modeling of the raster angle were performed using five different ML algorithms. These algorithms include a support vector machine (SVM), Gaussian process regression (GPR), an artificial neural network (ANN), decision tree regression (DTR), and random forest regression (RFR). Data for training were generated using various shapes and geometries, then trained in the MATLAB software, and a prediction model between the input parameters and the raster angle was created. The predicted model was evaluated using five performance criteria. The RFR model predicts the raster angle in the FDM test data with R-squared (R2) = 0.92, an explained variance score (EVS) = 0.92, a mean absolute error (MAE) = 0.012, a root mean square error (RMSE) = 0.056, and a mean squared error (MSE) = 0.0032. These values are R2 = 0.93, EVS = 0.93, MAE = 0.010, RMSE = 0.051, and MSE0.0025 for the training data. RFR is significantly superior to the other prediction algorithms. The proposed model predicts the optimum raster angle for any geometry.
引用
收藏
页数:16
相关论文
共 50 条
  • [41] A machine learning approach for the prediction of melting efficiency in wire arc additive manufacturing
    Barrionuevo, German O.
    Sequeira-Almeida, Pedro M.
    Rios, Sergio
    Ramos-Grez, Jorge A.
    Williams, Stewart W.
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2022, 120 (5-6): : 3123 - 3133
  • [42] Prediction of surface roughness in extrusion-based additive manufacturing with machine learning
    Li, Zhixiong
    Zhang, Ziyang
    Shi, Junchuan
    Wu, Dazhong
    ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING, 2019, 57 : 488 - 495
  • [43] Machine Learning Approach for the Prediction of Defect Characteristics in Wire Arc Additive Manufacturing
    Muralimohan Cheepu
    Transactions of the Indian Institute of Metals, 2023, 76 : 447 - 455
  • [44] Smart additive manufacturing empowered by a closed-loop machine learning algorithm
    Razaviarab, Nariman
    Sharifi, Safura
    Banadaki, Yaser M.
    NANO-, BIO-, INFO-TECH SENSORS AND 3D SYSTEMS III, 2019, 10969
  • [45] Advancements in machine learning for material design and process optimization in the field of additive manufacturing
    Hao-ran Zhou
    Hao Yang
    Huai-qian Li
    Ying-chun Ma
    Sen Yu
    Jian shi
    Jing-chang Cheng
    Peng Gao
    Bo Yu
    Zhi-quan Miao
    Yan-peng Wei
    China Foundry, 2024, 21 (02) : 101 - 115
  • [46] Advancements in machine learning for material design and process optimization in the field of additive manufacturing
    Zhou, Hao-ran
    Yang, Hao
    Li, Huai-qian
    Ma, Ying-chun
    Yu, Sen
    Shi, Jian
    Cheng, Jing-chang
    Gao, Peng
    Yu, Bo
    Miao, Zhi-quan
    Wei, Yan-peng
    CHINA FOUNDRY, 2024, 21 (02) : 101 - 115
  • [47] Advancements in machine learning for material design and process optimization in the field of additive manufacturing
    Hao-ran Zhou
    Hao Yang
    Huai-qian Li
    Ying-chun Ma
    Sen Yu
    Jian Shi
    Jing-chang Cheng
    Peng Gao
    Bo Yu
    Zhi-quan Miao
    Yan-peng Wei
    China Foundry, 2024, 21 : 101 - 115
  • [48] Process capability analysis of additive manufacturing process: a machine learning-based predictive model
    Abdolahi, Alireza
    Soroush, Hossein
    Khodaygan, Saeed
    RAPID PROTOTYPING JOURNAL, 2025,
  • [49] Bankruptcy prediction using machine learning and Shapley additive explanations
    Nguyen, Hoang Hiep
    Viviani, Jean-Laurent
    Ben Jabeur, Sami
    REVIEW OF QUANTITATIVE FINANCE AND ACCOUNTING, 2023,
  • [50] A Recommender System for the Additive Manufacturing of Component Inventories Using Machine Learning
    Ghiasian, Seyedeh Elaheh
    Lewis, Kemper
    JOURNAL OF COMPUTING AND INFORMATION SCIENCE IN ENGINEERING, 2022, 22 (01)