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SURFACE ROUGHNESS MODELING IN PERIPHERAL MILLING PROCESSES

机译:周边铣削过程中的表面粗糙度建模

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Surface roughness (Ra) is widely used as an index of product quality, currently a strict technical requirement for many mechanical products. This paper introduces two models for Ra in peripheral milling processes: a) a statistical regression model based on cutting parameters, able to predict Ra in advance of the operation (off-line), and b) a novel artificial neural network (ANN) model based on cutting parameters and process variables that estimates Ra during the operation (on-line). Both models incorporate a soft sensor of the cutting tool wear condition (CTWC), which improves the Ra estimation. The soft sensor is represented by a hidden Markov model that integrates the Mel Frequency Cepstrum Coefficients of process signals. A principal component analysis (PCA) is used to reduce the complexity of the data.
机译:表面粗糙度(RA)广泛用作产品质量指标,目前对许多机械产品的严格技术要求。本文在外围铣削过程中介绍了两个用于RA的模型:a)基于切割参数的统计回归模型,能够在操作(离线)的前提之前预测RA,B)一种新的人工神经网络(ANN)模型基于切割参数和过程变量,在操作期间估计RA(在线)。两种型号都包含了切削刀具磨损条件(CTWC)的软传感器,从而提高了RA估计。软传感器由隐马尔可夫模型表示,该模型集成了过程信号的MEL频率谱系数。主要成分分析(PCA)用于降低数据的复杂性。

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