Discover Artificial Intelligence (Sep 2022)

Recursive quality optimization of a smart forming tool under the use of perception based hybrid datasets for training of a Deep Neural Network

  • S. Feldmann,
  • M. Schmiedt,
  • J. M. Schlosser,
  • W. Rimkus,
  • T. Stempfle,
  • C. Rathmann

DOI
https://doi.org/10.1007/s44163-022-00034-4
Journal volume & issue
Vol. 2, no. 1
pp. 1 – 14

Abstract

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Abstract In industrial metal forming processes, the generation of datasets for inline and optical quality assessment is expensive and time-consuming. Within the research project SimKI, conventional metal forming plants were digitalized under the use of perception-based 3D-sensors in combination with a completely redesigned forming tool. The integration of optical quality observation methods connected with a retrofitting approach of the press tool provides the opportunity to generate an information-feedback loop that predicts part defects before their occurrence. Additionally, the SimKI-method combines conventional statistical measurement methods with AI-based defect detection algorithms that are trained by generic datasets of a finite-element simulation, real component images of a 3D imaging device, and a combination of both. The generated datasets are used to accelerate the training of a DNN-based algorithm to identify the position and deviation from the agreed quality. The high degree of innovation is based on obtaining real-time component quality information under the use of AI-based optical quality assessment, which in turn provides information to the control algorithm of the smart forming tool.

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