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Synthetically Modeling of Thermal Error and Grinding Force Induced Error on a Precision NC Cylindrical Grinding Machine

机译:精密NC圆柱磨床上的热误差和研磨力引起误差的综合建模

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Thermal errors and force-induced errors are two most significant sources of the NC grinding machine inaccuracy. And error compensation technique is an effective way to improve the manufacturing accuracy of the NC machine tools. Effective compensation relies on an accurate error model that can predict the errors exactly during machining. In this paper, a PSO-BP neural network modeling technique has been developed to build the model of the dynamic and highly nonlinear thermal errors and grinding force induced errors. The PSO-BP neural network modeling technique not only enhances the prediction accuracy of the model but also reduces the training time of the neural networks. The radial error of a grinding machine has been reduced from 27 to 8 fan after compensating its thermal error and force-induced error in this paper.
机译:热误差和力引起的误差是NC磨床不准确的两个最重要的来源。误差补偿技术是提高NC机床的制造精度的有效方法。有效的补偿依赖于准确的误差模型,可以在加工过程中预定预测错误。本文开发了一种PSO-BP神经网络建模技术,用于构建动态和高度非线性热误差和研磨力引起的误差的模型。 PSO-BP神经网络建模技术不仅提高了模型的预测准确性,而且还降低了神经网络的训练时间。在补偿本文中补偿其热误差和力引起的误差后,磨床的径向误差从27到8风扇减少。

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