大齿轮磨削加工在线检测系统对中方法分析
Machinery Design and Manufacture(2012)
School of Mechatronics Engineering
Abstract
大型齿轮在机械行业有着广泛的应用.随着大型齿轮加工制造水平逐渐提高,同时对齿轮检测精度的要求也越来越高.传统的大型齿轮测量方法需要对齿轮进行二次或多次拆装,严重影响了齿轮加工精度,而且传统测量还存在测量精度低和测量范围小等局限性与不足,已经不能满足大型齿轮高精度制造的要求.大型齿轮在线测量方法,操作可行,且易于实现,在不影响加工的前提下保证了测量的准确性.设计了在线检测的总体方案,分析了在线测量原理和校正对中方法.该技术的应用提高了大型齿轮加工效率,保证了齿轮精度,具有一定的现实意义.
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