4.6 Article

Comparative Analysis of Machine Learning Methods for Predicting Robotized Incremental Metal Sheet Forming Force

期刊

SENSORS
卷 22, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/s22010018

关键词

incremental sheet forming; failure prevention; friction force; robotized manufacturing; prediction model

资金

  1. European Regional Development Fund [01.2.2-LMT-K-718-05-0076]
  2. Research Council of Lithuania

向作者/读者索取更多资源

This paper proposes a method for extracting information from the parameters of a single point incremental forming (SPIF) process and develops a force prediction model using machine learning algorithms. The study identifies Artificial Neural Network (ANN) and Gaussian process regression (GPR) as the most efficient methods for this purpose.
This paper proposes a method for extracting information from the parameters of a single point incremental forming (SPIF) process. The measurement of the forming force using this technology helps to avoid failures, identify optimal processes, and to implement routine control. Since forming forces are also dependent on the friction between the tool and the sheet metal, an innovative solution has been proposed to actively control the friction forces by modulating the vibrations that replace the environmentally unfriendly lubrication of contact surfaces. This study focuses on the influence of mechanical properties, process parameters and sheet thickness on the maximum forming force. Artificial Neural Network (ANN) and different machine learning (ML) algorithms have been applied to develop an efficient force prediction model. The predicted forces agreed reasonably well with the experimental results. Assuming that the variability of each input function is characterized by a normal distribution, sampling data were generated. The applicability of the models in an industrial environment is due to their relatively high performance and the ability to balance model bias and variance. The results indicate that ANN and Gaussian process regression (GPR) have been identified as the most efficient methods for developing forming force prediction models.

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