2021
DOI: 10.21203/rs.3.rs-229749/v1
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Tool Wear Inspection and Classification by Artificial Neural Network Based on Vision System and Cutting Force Signal.

Abstract: The current work focuses on the cutting tool condition monitoring of end milling based on direct and indirect approach in machining AISI H13 alloy steel. Indirect process parameters such as cutting force signals are measured as responses using force sensor. In order to successfully inspect the milling tool life online for direct approaches, an automated machine vision system was used for tool condition monitoring. The image processing algorithms are developed to extract different features of rotating milling t… Show more

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