Hybrid FE-ML model for turning of 42CrMo4 steel

被引:0
作者
Laakso, Sampsa Vili Antero [1 ]
Mityakov, Andrey [1 ]
Niinimaeki, Tom [1 ]
Ribeiro, Kandice Suane Barros [1 ]
Bessa, Wallace Moreira [1 ]
机构
[1] Univ Turku, Fac Technol, Dept Mech & Mat Engn, Joukahaisenkatu 3, Turku 20520, Finland
关键词
Hybrid modelling; FEM; CEL; Machine learning; Deep neural networks; Machining; Turning; Cutting force; Simulation; 42CrMo4; steel; Cubic boron nitride; CUTTING FORCE PREDICTION; SURFACE-ROUGHNESS; NEURAL-NETWORK; TOOL; SPEED; TEMPERATURES; SIMULATION; FINISH;
D O I
10.1016/j.cirpj.2024.10.003
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Metal cutting processes contribute significant share of the added value of industrial products. The need for machining has grown exponentially with increasing demands for quality and accuracy, and despite of more than a century of research in the field, there are no reliable and accurate models that describe all the physical phenomena needed to optimize the machining processes. The scientific community has begun to explore hybrid methods instead of expanding the capabilities of individual modelling schemes, which has been more efficient than efficacious direction. Following this trend, we propose a hybrid finite element - machine learning method (FEML) for modelling metal cutting. The advantages of the FEML method are reduced need for experimental data, reduced computational time and improved prediction accuracy. This paper describes the FEML model, which uses a Coupled Eulerian Lagrangian (CEL) formulation and deep neural networks (DNN) from the TensorFlow Python library. The machining experiments include forces, chip morphology and surface roughness. The experimental data was divided into training dataset and validation dataset to confirm the model predictions outside the experimental data range. The hybrid FEML model outperformed the DNN and FEM models independently, by reducing the computational time, improving the average prediction error from 23% to 13% and reduced the need for experimental data by half.
引用
收藏
页码:333 / 346
页数:14
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