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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >Estimation of thermal deformation in machine tools using the hybrid autoregressive moving-average - neural network model
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Estimation of thermal deformation in machine tools using the hybrid autoregressive moving-average - neural network model

机译:基于混合自回归滑动平均-神经网络模型的机床热变形估计。

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摘要

A hybrid model, which is composed of an autoregressive moving-average (ARMA) filter and a feedforward neural network (FNN), is proposed to increase prediction accuracy and to reduce learning time for the estimation of thermal deformations in a machine tool. The ARMA filter is used to yield state variables which establish the relationship between the present and past states of thermal deformations for the reservation of the influences of past temperatures and deformation. Otherwise, the quantity of FNN inputs is very vast because of the data needed for the non-linear system. These state variables, which are estimated by past measured temperatures and past estimated deformation, serve as inputs of the FNN. The algorithms of this hybrid model are presented and verified by the experimental results; also, the prediction accuracy is compared with the ARMA and FNN independently for the same learning iterations.
机译:提出了一种混合模型,该模型由自回归移动平均(ARMA)滤波器和前馈神经网络(FNN)组成,以提高预测精度并减少用于估计机床热变形的学习时间。 ARMA过滤器用于产生状态变量,该状态变量建立热变形的当前状态与过去状态之间的关系,以保留过去的温度和变形的影响。否则,由于非线性系统所需的数据,FNN输入的数量非常庞大。这些状态变量(由过去测得的温度和过去估计的变形估算)用作FNN的输入。提出并验证了该混合模型的算法。同样,对于相同的学习迭代,将预测精度分别与ARMA和FNN进行比较。

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