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首页> 外文期刊>International Journal of Precision Engineering and Manufacturing >Determination of Cutting Parameters in End Milling Operation based on the Optical Surface Roughness Measurement
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Determination of Cutting Parameters in End Milling Operation based on the Optical Surface Roughness Measurement

机译:基于光学表面粗糙度测量的立铣刀中切削参数的确定

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摘要

In this study, a milling system based on the in-line surface roughness measurement during machining process is developed using Artificial Neural Network (ANN) technique. In the proposed system, optimum feed rate and cutting speed are determined by ANN so as to provide the desired surface roughness, which is an important criterion for high quality surface. For this purpose, firstly an algorithm determining the operating principle of the system is developed. According to this algorithm, the optimum cutting parameters are predicted for end milling (finishing) operation by measuring semi-finish machining surface roughness via an optical sensor and then end milling operation is performed with the cutting parameters determined by the system. In the experimental part of this study, surface quality is observed for the milling process before and after the intervention of the system and the results is compared. The experimental results show that the system can be integrated with the modern machining systems in order to obtain the desired surface quality levels.
机译:在这项研究中,使用人工神经网络(ANN)技术开发了一种基于在线表面粗糙度测量的铣削系统。在提出的系统中,最佳进给速度和切削速度由ANN确定,以提供所需的表面粗糙度,这是高质量表面的重要标准。为此,首先开发确定系统的工作原理的算法。根据该算法,通过光学传感器测量半精加工表面粗糙度,预测用于端铣(精加工)操作的最佳切削参数,然后使用系统确定的切削参数执行端铣操作。在本研究的实验部分中,在系统干预之前和之后观察铣削过程的表面质量,并比较结果。实验结果表明,该系统可以与现代加工系统集成在一起,以获得所需的表面质量水平。

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