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A fuzzy-nets-based in-process surface roughness prediction system in turning operations

机译:基于模糊网的车削过程中表面粗糙度预测系统

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A Fuzzy-Nets-based in-process surface roughness prediction (FISRP) system was developed to predict surface roughness in turning operations in a real time fashion. The input variables of the FISRP system were machining parameters, such as feed rate, spindle speed, depth of cut, and machining vibration per revolution. An accelerometer was employed to gather real-time vibration signals. Two groups of data were collected for two cutter bits with nose radii of 0.016 and 0.031 inches, respectively. Fuzzy nets theory was implemented to use the experimental data in developing the system for real-time prediction. The fuzzy nets theory is a five-step learning procedure for developing a knowledge base to predict surface roughness in real time. This FISRP system was tested to have an average prediction accuracy of 95.70%.
机译:开发了基于模糊网络的过程中表面粗糙度预测(FISRP)系统,以实时方式预测车削过程中的表面粗糙度。 FISRP系统的输入变量是加工参数,例如进给速度,主轴转速,切削深度和每转加工振动。加速度计用于收集实时振动信号。对于两个刀头半径分别为0.016和0.031英寸的刀具,收集了两组数据。运用模糊网络理论将实验数据用于开发实时预测系统。模糊网络理论是一个五步学习程序,用于开发知识库以实时预测表面粗糙度。经测试,该FISRP系统的平均预测准确度为95.70%。

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