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Modeling and optimization of tool vibration and surface roughness in boring of steel using RSM, ANN and SVM

机译:RSM,ANN和SVM钢镗型工具振动和表面粗糙度的建模与优化

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In this paper, statistical models were developed to investigate effect of cutting parameters on surface roughness and root mean square of work piece vibration in boring of stainless steel. A mixed level design of experiments was prepared with process variables of nose radius, cutting speed and feed rate. According to design of experiments, eighteen experiments were conducted on AISI 316 stainless steel with PVD coated carbide tools. Surface roughness, tool wear and vibration of work piece were measured in each experiment. A laser Doppler vibrometer was used to measure vibration of work piece in the form of acousto optic emission signals. These signals were processed and transformed in to different frequency zones using a fast Fourier transformer. Analysis of variance was used to identify significant cutting parameters on surface roughness and root mean square of work piece vibration. Predictive models like response surface methodology, artificial neural network and support vector machine were used to predict the surface roughness and root mean square of work piece vibration. Cutting parameters were optimized for minimum surface roughness and root mean square of work piece vibration using a multi response optimization technique.
机译:在本文中,开发了统计模型,以研究切削参数对不锈钢镗型工件振动的表面粗糙度和根均线的影响。使用鼻径半径,切割速度和进料速率的工艺变量制备实验的混合水平设计。根据实验的设计,通过PVD涂层硬质合金工具在AISI 316不锈钢上进行了18个实验。在每个实验中测量了工件的表面粗糙度,工具磨损和振动。激光多普勒振动计用于测量以声光发射信号的形式测量工件的振动。使用快速傅里叶变压器处理和转换这些信号并转换为不同的频率区域。方差分析用于识别工件振动的表面粗糙度和根均线的显着切削参数。用于响应面方法,人工神经网络和支持向量机的预测模型用于预测工件振动的表面粗糙度和根均方。使用多响应优化技术优化切割参数,针对工件振动的最小表面粗糙度和均方根方形进行了优化。

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