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Modelling and prediction of machining errors using ARMAX and NARMAX structures

机译:使用ARMAX和NARMAX结构对加工误差进行建模和预测

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摘要

Forecasting compensatory control, which was first proposed by Wu [ASME J. Eng. Ind. 99 (1977) 708], has been successfully employed to improve the accuracy of workpieces in various machining operations. This low-cost approach is based on on-line stochastic modelling and error compensation. The degree of error improvement depends very much on the accuracy of the modelling technique, which can only be performed on-line in a real-time recursive manner. In this study, the effect of the control input (i.e. the cutting force) is considered in the development of the error models, and the formulation of recursive exogenous autoregressive moving average (ARMAX) models becomes necessary. The nonlinear ARMAX or NARMAX model is also used to represent this nonlinear process. ARMAX and NARMAX models of different autoregressive (AR), moving average (MA) and exogenous (X) orders are proposed and their identifications are based on the recursive extended least square (RELS) method and the neural network (NN) method, respectively. An analysis of the computational results has confirmed that the NARMAX model and the NN method are superior to the ARMAX model and the RELS method in forecasting future machining errors, as indicated by its higher combined coefficient of efficiency.
机译:预测补偿性控制,这是由Wu [ASME J. Eng。 Ind。99(1977)708]已成功地用于提高各种加工操作中工件的精度。这种低成本的方法基于在线随机建模和误差补偿。误差改善的程度在很大程度上取决于建模技术的准确性,该建模技术只能以实时递归方式在线执行。在这项研究中,在误差模型的开发中考虑了控制输入的影响(即切削力),因此有必要制定递归外生自回归移动平均(ARMAX)模型。非线性ARMAX或NARMAX模型也用于表示此非线性过程。提出了不同自回归(AR),移动平均(MA)和外生(X)阶的ARMAX和NARMAX模型,其识别分别基于递归扩展最小二乘(RELS)方法和神经网络(NN)方法。对计算结果的分析已经证实,NAARMAX模型和NN方法在预测未来加工误差方面优于ARMAX模型和RELS方法,这是因为它们的综合效率系数更高。

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