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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Using artificial neural networks for the prediction of dimensional error on inclined surfaces manufactured by ball-end milling
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Using artificial neural networks for the prediction of dimensional error on inclined surfaces manufactured by ball-end milling

机译:使用人工神经网络预测通过球头铣削制造的倾斜表面上的尺寸误差

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摘要

Industrial demand for models and simulation tools that can predict dimensional errors in manufacturing processes is vigorous. One example of these processes is ball-end finishing of inclined surfaces, which is a very complex task, due to the high number of variables that may influence dimensional errors during a cutting process and their different nature. This work firstly analyses the potential of semiempirical models to address the ball-end milling finishing, to conclude that these models are unable to process and to replicate the full range of milling strategies and slope combinations. Secondly, it goes on to analyse the possibilities of artificial neural networks as a means of overcoming this limitation. Two types of neural networks, multilayer perceptron (MLP) and radial basis functions (RBF), are tested. The results show that RBFs predict better than MLPs in all cases, achieving a precision of 1.83 mu m in root mean squared error (RMSE) and a correlation coefficient of 0.897 with a 10 x 10 cross-validation scheme. Their training and tuning times are also 2.5 times shorter in all cases. Finally, the use of 3D figures, generated from the best RBF model, yields interesting industrial results in the field of process engineering.
机译:工业上对可预测制造过程中尺寸误差的模型和仿真工具的需求非常强烈。这些过程的一个示例是对倾斜表面进行球头精加工,这是一项非常复杂的任务,这归因于数量众多的变量可能会影响切割过程中的尺寸误差及其不同性质。这项工作首先分析了半经验模型解决球头铣削精加工的潜力,得出的结论是这些模型无法处理并无法复制铣削策略和坡度组合的全部范围。其次,它继续分析了人工神经网络作为克服这一局限性的手段的可能性。测试了两种类型的神经网络,即多层感知器(MLP)和径向基函数(RBF)。结果表明,在所有情况下,RBF的预测均优于MLP,采用10 x 10交叉验证方案时,均方根误差(RMSE)的精度为1.83μm,相关系数为0.897。在所有情况下,它们的训练和调整时间也缩短了2.5倍。最后,从最佳RBF模型生成的3D图形的使用在过程工程领域产生了有趣的工业成果。

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