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Analysis and prediction of printable bridge length in fused deposition modelling based on back propagation neural network

机译:基于反向传播神经网络的融合沉积建模中可打印桥梁长度的分析与预测

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摘要

In recent years, additive manufacturing has been developing rapidly mainly due to the ease of fabricating complex components. However, complex structures with overhangs inevitably require support materials to prevent collapse and reduce warping of the part. In this paper, the effects of process parameters on printable bridge length (PBL) are investigated. An optimisation is conducted to maximise the distance between support points, thus minimising the support usage. The orthogonal design method is employed for designing the experiments. The samples are then used to train a neural network for predicting the nonlinear relationships between PBL and process parameters. The results show that the established neural network can correctly predict the longest PBL which can be integrated into support generation process in additive manufacturing for maximising the distance between support points, thus reducing support usage. A framework for integrating the findings of this paper into support generation process is proposed.
机译:近年来,添加剂制造业一直在迅速发展,主要是由于易于制造的复杂组分。然而,具有悬垂的复杂结构不可避免地需要支撑材料来防止崩溃并减少部分翘曲。本文研究了研究过程参数对可打印桥梁长度(PBL)的影响。进行优化以最大化支撑点之间的距离,从而最小化支持使用。正交设计方法用于设计实验。然后使用样本来训练神经网络以预测PBL和工艺参数之间的非线性关系。结果表明,已建立的神经网络可以正确地预测最长的PBL,这可以集成到添加剂制造中的支持生成过程中,以便最大化支撑点之间的距离,从而减少支持使用。提出了一种将本文调查结果集成到支持生成过程中的框架。

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