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Machine Learning Based Predictive Modeling of Ball Nose End Milling using Exogeneous Autoregressive Moving Average Approach

机译:基于机器学习的球形鼻铣削预测建模使用异质自回转平均方法

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Ball nose end milling is widely used for achieving high precision surface finish of free form aerospace components. Accurate predictive modeling is essential for effective control and automation of such high precision machining processes. In the present work, an LM6 aluminum alloy was ball nose end milled under varying machining conditions and the resultant surface roughness was recorded. This multi input single output machining system was modeled using the ARMAX (autoregressive moving average with exogenous inputs) structures as per the system identification methodology. Machine learning was employed for optimum parameter estimation of the ARMAX models. All derived models were validated on the basis of FIT%, FPE (final prediction errors), MSE (mean squared errors) and the number of model parameters. The ARMAX 6520 model emerged as the best performing structure with a FIT of 84.83%, FPE 1.61, MSE 0.02729 and 23 parameters. This predictive model can be utilised for closed loop control of ball nose end milling for precision aluminum alloy aerospace components.
机译:球鼻铣削广泛用于实现自由形式航空航天部件的高精度表面光洁度。精确的预测建模对于这种高精度加工过程的有效控制和自动化是必不可少的。在本作工作中,LM6铝合金是在不同加工条件下研磨的球鼻末端,记录所得表面粗糙度。根据系统识别方法,使用ARMAX(自回归移动平均线)结构建模这种多输入单输出加工系统。机器学习用于ARMAX模型的最佳参数估计。所有派生模型都是根据拟合%,FPE(最终预测错误),MSE(均方平方误差)和模型参数数的验证。 ARMAX 6520模型作为最佳性能的结构,适用于84.83%,FPE 1.61,MSE 0.02729和23参数。该预测模型可用于闭环控制球鼻器端铣削,用于精密铝合金航空航天部件。

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