IEEE Access (Jan 2024)

Automatized End Mill Wear Inspection Using a Novel Illumination Unit and Convolutional Neural Network

  • Muhenad Bilal,
  • Ranadheer Podishetti,
  • Leonid Koval,
  • Mahmoud A. Gaafar,
  • Daniel Grossmann,
  • Markus Bregulla

DOI
https://doi.org/10.1109/ACCESS.2024.3454692
Journal volume & issue
Vol. 12
pp. 124282 – 124297

Abstract

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Ensuring cutting tools are in optimal condition is essential for achieving peak machining performance, given their direct impact on both workpiece quality and process efficiency. However, accurately assessing wear on end mills, especially those with complex geometries, pose a significant challenge due to their reflective surfaces and varied wear patterns. Presented here is a novel method that addresses this challenge by employing a customized illumination unit in conjunction with a convolutional neural network (CNN) for end mill wear analysis. This innovative approach involves utilizing the specially designed illumination unit to capture high-quality images, enabling precise examination of material wear on helically shaped end mills. Notably, this method is tailored to illuminate reflective surfaces and represents a pioneering application in the realm of wear testing.We validate the viability of this approach by employing CNN-based models to segment wear on complex-shaped end mills coated with titanium carbonitride (TiCN) and titanium nitride (TiN). We achieved remarkable mean Intersection over Union (mIoU) results in wear detection on a test dataset: 0.99 for tool segmentation, 0.78 for abnormal wear, and 0.71 for normal wear segmentation.

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