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首页> 外文期刊>International Journal of Machine Tools & Manufacture: Design, research and application >Modification of a neural network utilizing hybrid filters for the compensation of thermal deformation in machine tools
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Modification of a neural network utilizing hybrid filters for the compensation of thermal deformation in machine tools

机译:利用混合滤波器对神经网络进行修改以补偿机床中的热变形

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摘要

This study proposes a modified method that combines feed-forward neural network (FNN) and hybrid filters to improve the accuracy and reduce computation times for the prediction of thermal deformation in a machine tool. The hybrid filter consists of the linear regression (LR), moving average (MA) and autoregression (AR). Their outputs serve as input of FNN, which are estimated by the static and dynamic relationships between the temperature distributions and thermal deformations. This modified method enables the propagation accuracy between input and output layers of a static FNN to be improved and the learning time to be reduced. Furthermore, the modified method is compared with other three ones, which are traditional ARMA, FNN, and FNN combined with LR by numerical analysis and practical experiments. In analysis, the error margins of various approaches are compared using a finite element model that is determined for the relationships between thermal deformation and temperature distribution. Also, practical experiments of these approaches for a grinding machine are realized to compare the deformation predications according to temperature measurements.
机译:这项研究提出了一种改进的方法,该方法结合了前馈神经网络(FNN)和混合滤波器,可以提高精度并减少用于预测机床热变形的计算时间。混合滤波器由线性回归(LR),移动平均值(MA)和自回归(AR)组成。它们的输出用作FNN的输入,通过温度分布与热变形之间的静态和动态关系来估算。这种改进的方法可以提高静态FNN的输入层和输出层之间的传播精度,并减少学习时间。此外,通过数值分析和实际实验,将改进后的方法与传统ARMA,FNN和结合LR的FNN进行了比较。在分析中,使用一种确定了热变形与温度分布之间关系的有限元模型比较了各种方法的误差容限。而且,实现了这些方法在研磨机上的实际实验,以根据温度测量结果比较变形预测。

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