基于特征的圆柱和铣削零件分类与自动提取方法

Sathish Kumar Adapa, D. Sreeramulu, Jagadish
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引用次数: 0

摘要

本文报告了传统加工零件中各种圆柱和铣削特征的分类和自动提取。在这项工作中,各种算法,如孔识别算法(HRA)和铣削特征识别算法(MFRA),已被用于识别不同的圆柱和铣削特征。基于特定的逻辑规则识别圆柱特征,基于边的凹分解概念识别铣削特征。使用内部开发的JAVA程序编写算法,并通过两个实例对算法进行验证。HRA和MFRA算法精确地提取圆柱形特征(通孔、盲孔、锥形孔和凸台)和铣削特征(槽、盲槽、台阶、盲步、凹坑)。目前的工作非常适合于提取传统加工零件的特征,从而改进工艺规划、CAPP、CAM等下游应用。
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Classification and Automatic Feature-Based Extraction Approach for Cylindrical and Milling Parts
This paper reports classification and automatic extraction of various cylindrical and milling features in conventional machining process parts. In this work, various algorithms like hole recognition algorithm (HRA) and milling feature recognition algorithm (MFRA) have been used for identification of different cylindrical and milling features. A cylindrical feature is identified based on specific logical rules, and milling feature is identified based on the concept of concave decomposition of edges. In-house developed JAVA program is used to write algorithm, and then validation of the algorithm is done through two case studies. The HRA and MFRA algorithms extract the cylindrical features (through holes, blind holes, taper holes, and bosses) and milling features (slot, blind slot, step, blind step, pockets) precisely. The current work is well suitable to extract the features in conventional machining parts and thereby improve the downstream applications likes process planning, CAPP, CAM, etc.
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CiteScore
2.70
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0.00%
发文量
21
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