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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Thermal positioning error modeling of machine tools using a bat algorithm-based back propagation neural network
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Thermal positioning error modeling of machine tools using a bat algorithm-based back propagation neural network

机译:基于BAT算法的后传播神经网络的机床热定位误差建模

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摘要

Thermal error of a machine tool is one of the main reasons affecting the machining accuracy. Heat production and heat transfer of a machine tool are too complicated to predict the generated thermal error accurately. According to the nonlinear and time-varying characteristics of thermal error, the back propagation (BP) neural network is perfectly suitable for thermal error modeling, which has been extensively used to map the nonlinear relationship. However, traditional BP neural network usually has poor prediction performance under different operating conditions. Therefore, a new swarm intelligent optimization algorithm, bat algorithm (BA), is introduced to optimize BP neural network and improve its performance. The focus of this paper is the application of the combined algorithm (bat algorithm-based back propagation neural network) to solve the problem of thermal error modeling. Thermal positioning error experiments were conducted on a three-axis experiment bench. The experimental results show that thermal positioning error model built by BA-BP neural network is more stable and has high prediction accuracy and strong robustness, which can provide a candidate method for thermal error modeling.
机译:机床的热误差是影响加工精度的主要原因之一。热量生产和机床的传热太复杂,以准确地预测产生的热误差。根据热误差的非线性和时变特性,后传播(BP)神经网络是完全适用于热误差建模的,这已广泛用于映射非线性关系。然而,传统的BP神经网络通常在不同的操作条件下预测性能差。因此,介绍了一种新的Swarm智能优化算法,BAT算法(BA),以优化BP神经网络并提高其性能。本文的重点是应用组合算法(基于BAT算法的后传播神经网络)来解决热误差建模问题。在三轴实验台上进行热定位误差实验。实验结果表明,BA-BP神经网络构建的热定位误差模型更稳定,具有高的预测精度和强大的鲁棒性,可以提供用于热误差建模的候选方法。

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