关节轴承安装工具关键特征仿真研究与试验验证
Journal of Harbin Bearing(2023)
南京航空航天大学
Abstract
本文主要以关节轴承UC6-GJB269-87/5安装在材料为30CrMnSiA的基座零件上为研究对象,基于有限元环境,采用不同规格的安装工具进行轴承收口仿真分析,研究关节轴承对收口工具的敏感性,得到最佳收口工具参数,并进行实物试验验证.试验结果和仿真结果基本相符,验证了理论分析的正确性,也为实际工程中关节轴承的收口提供了重要的理论支撑.
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Key words
joint bearing,closing up tools,finite element analysis,experimental verification
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