LGAIFeb 7, 2022

Artificial Intelligence based tool wear and defect prediction for special purpose milling machinery using low-cost acceleration sensor retrofits

arXiv:2202.03068v12 citations
Originality Synthesis-oriented
AI Analysis

This work addresses predictive maintenance for specialized industrial machinery, offering a low-cost retrofit solution, though it is incremental as it applies existing methods to a new domain.

The paper tackles tool wear and defect prediction for special purpose milling machinery by retrofitting low-cost acceleration sensors, achieving practical condition monitoring for various failure modes like blade wear and breakage.

Milling machines form an integral part of many industrial processing chains. As a consequence, several machine learning based approaches for tool wear detection have been proposed in recent years, yet these methods mostly deal with standard milling machines, while machinery designed for more specialized tasks has gained only limited attention so far. This paper demonstrates the application of an acceleration sensor to allow for convenient condition monitoring of such a special purpose machine, i.e. round seam milling machine. We examine a variety of conditions including blade wear and blade breakage as well as improper machine mounting or insufficient transmission belt tension. In addition, we presents different approaches to supervised failure recognition with limited amounts of training data. Hence, aside theoretical insights, our analysis is of high, practical importance, since retrofitting older machines with acceleration sensors and an on-edge classification setup comes at low cost and effort, yet provides valuable insights into the state of the machine and tools in particular and the production process in general.

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