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复杂形面零件快速逆向建模及成型技术

Manufacture Information Engineering of China(2009)

China Academe of Engineering Physics

Cited 1|Views8
Abstract
针对高效率的复杂形面零件的仿制和创新设计制造要求,利用三维光学扫描仪获得复杂形面零件的数据点,提出采用多种软件组成建模、设计及加工一体化系统来对零件数据进行处理,缩短产品研制开发周期,最终实现零件的快速制造。着重研究了软件系统间的数据耦合和实施过程,验证了整个快速原型系统的可行性。
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Key words
Numerical Model,NC Machining,Reverse Rngineering
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