碳化钨
撞击坑
钨
材料科学
冶金
天体生物学
物理
作者
Abd El Hedi Gabsi,Safa Mathlouthi,Chokri Ben Aissa
出处
期刊:Tribology - Materials, Surfaces & Interfaces
日期:2024-03-28
卷期号:18 (2): 104-114
被引量:2
标识
DOI:10.1177/17515831241241947
摘要
In this study, artificial intelligence (AI) tools were utilised to predict and analyse the progression of crater wear in cutting tools made of tungsten carbide during machining of aluminium 7075 alloy with a CNC lathe. The study investigated the impact of corner radius, feed rate, cutting speeds, and cut depth on the wear of the tools. Thirty experiments were conducted, with 24 used for training 11 independent AI models and the remaining 6 used for testing. This study stands out for its novelty as it pioneers the evaluation of 11 distinct AI models for the prediction of tool wear. With a high level of accuracy and a lower average deviation, the most effective model identified in this study was the gradient boosting model. By integrating AI algorithms into manufacturing processes, the monitoring of tool wear becomes more efficient, leading to reduce experiments, minimise testing costs, predict tool life, prevent failures, and boost productivity.
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