机械加工
人工神经网络
路由器
材料科学
数控
表面粗糙度
机械工程
工程制图
生物系统
复合材料
计算机科学
工程类
人工智能
冶金
生物
作者
Ali Çakmak,Abdülkadir Malkoçoğlu,Şükrü Özşahin
标识
DOI:10.1080/02670836.2023.2180901
摘要
This study aims to determine the optimal CNC (Computer Numerical Control) machining conditions using an artificial neural network. For this purpose, Fagus orientalis, Castanea sativa, Pinus sylvestris, and Picea orientalis wood samples at 8%, 12%, and 15% moisture content (MC) were machined on a CNC router in both across and along the grain directions. Based on the experimental data of surface roughness and cutting power analyses, a total of 16 models were used. These were selected in hundreds of models that have the lowest error. The spindle speed, feed rate, and the number of cutter teeth were chosen to be different with the literature based on the length of cutter mark. As a result, optimum machining parameters were determined for each wood MC.
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