Result data of tool wear estimation and life prediction in milling
收藏科学数据银行2022-11-07 更新2026-04-23 收录
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Table 1 lists the experimental workpiece materials and processing parameters, including spindle speed nt (rpm), workpiece feed f (mm/rev) and tool milling depth ap (mm). The milling cutter is an end milling cutter with 70mm diameter and 6-flute indexable inserts. The overall dimension of the workpiece is 483mm × 178mm × 51mm.Table 2 lists the wear coefficients calculated based on the experimental wear data under each working condition according to the aforementioned wear model. According to the experimental data of tool wear, through the comparison between Experiment 2/Experiment 14 and Experiment 3/Experiment 13, under the same processing conditions, when the workpiece material is alloy steel, the wear coefficients A, C, KA2, KC2 and KD1 are greater than those of cast iron. The wear trend analysis shows that using alloy steel as workpiece material will cause more rapid tool wear. Comparing the wear coefficients obtained in experiment 2 and experiment 9, the tool wear increases with the increase of milling depth ap.
提供机构:
合肥物质科学研究院; Kunpeng Zhu; Xianyin Duan; 中国科学院合肥智能机械研究所; 中国科学技术大学
创建时间:
2022-10-31



