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A Fourier Series-Neural Network Based Real-Time Compensation Approach for Geometric and Thermal Errors of CNC Milling Machines

机译:基于傅立叶神经网络的数控铣床几何和热误差实时补偿方法

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摘要

In order to improve the accuracy and efficiency of the real-time error compensation, a Fourier Series-Neural Network (FS-NN) based compensation methodology is developed to reduce the thermally induced geometric errors of CNC milling machines under varying conditions. Firstly, an error model is presented based on the principle of Fourier series with fast calculation and higher precision, which is regarded as the error base of original geometric errors. Secondly, the relationships between the slopes related to different error curves and the temperatures of key thermal points are figured out by using neural networks when concerning thermal effects. Then, a combined error model is established which is suitable for reducing axis positioning errors at any thermal status. Finally, a real-time dynamic error compensation system is developed featuring automatic error modeling and multiaxis synchronous compensation. The experimental results prove that the proposed methodology has satisfactory modeling accuracy and robustness to frequently changing working conditions.
机译:为了提高实时误差补偿的准确性和效率,开发了一种基于傅立叶级数神经网络(FS-NN)的补偿方法,以减少变化条件下CNC铣床的热诱导几何误差。首先,基于傅立叶级数原理提出了一种误差模型,该模型具有快速的计算精度和较高的精度,可作为原始几何误差的误差基础。其次,在考虑热效应时,利用神经网络计算出与不同误差曲线有关的斜率与关键温度点之间的关系。然后,建立一个组合误差模型,该模型适用于减少任何热状态下的轴定位误差。最后,开发了具有自动误差建模和多轴同步补偿功能的实时动态误差补偿系统。实验结果证明,该方法对频繁变化的工作条件具有令人满意的建模精度和鲁棒性。

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