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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Fuzzy-nets-based in-process surface roughness adaptive control system in end-milling operations
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Fuzzy-nets-based in-process surface roughness adaptive control system in end-milling operations

机译:端铣削中基于模糊网的过程中表面粗糙度自适应控制系统

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摘要

A fuzzy-nets-based in-process adaptive surface roughness control (FN-ASRC) system was developed to be able to adapt cutting parameters in-process and in a real time fashion to improve the surface roughness of machined parts when the surface roughness quality was not meeting customer requirements in the end-milling operations. The FN-ASRC system was comprised of two sub-systems: (1) fuzzy-nets in-process surface roughness recognition (FN-IPSRR); and (2) fuzzy-nets adaptive feed rate control (FN-AFRC) sub-system. To test the system, while the machining process was taking place, the FN-IPSRR system predicted the surface roughness, which was then compared to the desired surface roughness. If the desired surface roughness was not met, then, the FN-AFRC system proposed a new feed rate for the machining process. Once the feed rate was changed, and the cutting continued, the output of the surface roughness of the new feed rate was compared with the desired surface roughness. This proposed FN-ASRC system has been demonstrated to be successful using 25 experimental tests with 100% success rate.
机译:开发了一种基于模糊网络的过程中自适应表面粗糙度控制(FN-ASRC)系统,该系统能够在过程中实时地适应切削参数,从而在表面粗糙度达到一定质量时改善加工零件的表面粗糙度。在立铣刀操作中不能满足客户要求。 FN-ASRC系统由两个子系统组成:(1)模糊网过程中表面粗糙度识别(FN-IPSRR); (2)模糊网自适应进给速度控制(FN-AFRC)子系统。为了测试系统,在进行机械加工的同时,FN-IPSRR系统预测了表面粗糙度,然后将其与所需的表面粗糙度进行比较。如果未达到所需的表面粗糙度,则FN-AFRC系统会为加工过程提出新的进给速率。改变进给速度并继续切削后,将新进给速度的表面粗糙度输出与所需的表面粗糙度进行比较。这项拟议的FN-ASRC系统已通过25个实验测试获得了成功,成功率为100%。

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