机械加工
碳化钨
可加工性
材料科学
表面粗糙度
人工神经网络
碳化物
炸薯条
锡
钨
表面光洁度
刀具
冶金
复合材料
机械工程
计算机科学
工程类
人工智能
电信
作者
Nikhil Singh,A. Bharatish,G. R. Rajkumar,G. Satheesh Babu
出处
期刊:Applied research
日期:2022-12-14
卷期号:2 (4)
被引量:1
标识
DOI:10.1002/appl.202200082
摘要
Abstract Enhancing the machining efficiency of hardened steel using four‐layer coated tungsten carbide tools has gained a lot of interest among manufacturing engineers. This paper reports the machining performance of AISI 4140 steel using TiN/Al 2 O 3 /TiCN/TiOCN multilayer coated tungsten carbide tool inserts. The impact of cutting speed, depth of cut, and the nose radius on machining force, tool chip interface temperature, surface roughness, and chip forms was ascertained using full factorial machining experiments and artificial neural network (ANN) methodology. The machining force evaluated using Logistic Sigmoid activation function resulted in the highest root mean square error (RMSE) of 4.076 and regression value of 0.998. The maximum error between the ANN predicted results and experimental results for machining force, cutting temperature and surface roughness was about 2.4%, 5.3%, and 2.07%, respectively. The best architecture for ANN was “3‐6‐4” which had a coefficient of regression value of 0.97. However, in case of chip form, some of the ANN predicted values could not be mapped to ISO standard chip form and hence prediction accuracy of 80% was achieved.
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