神经网络辅助的精密玻璃热成型

IF 4.9
Yuzhou Zhang , Mohan Hua , Jinan Liu , Haihui Ruan
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引用次数: 0

摘要

许多玻璃产品需要高精度的热成型几何形状。然而,通过试验和错误开发热成型工艺的传统方法会造成大量的时间和资源浪费,并且通常无法产生成功的结果。因此,有必要开发一种有效的预测模型,以取代昂贵的模拟或实验,以辅助精密玻璃热成型的设计。在这项工作中,我们报告了一个基于无量纲反向传播神经网络(BPNN)的代理模型,该模型可以充分预测形状误差,从而使用几何特征和工艺参数作为输入来补偿模具设计中的这些误差。通过仿真和工业数据的试验表明,该替代模型可以较准确地预测成形误差。虽然感知误差(模具设计师的决策)和模具制造误差使得工业训练数据不如仿真数据可靠,但我们的初步训练和测试结果仍然与工业数据达到了合理的一致性,这表明代理模型在玻璃制造业中是可以直接实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Precision glass thermoforming assisted by neural networks
Many glass products require thermoformed geometry with high precision. However, the traditional approach of developing a thermoforming process through trials and errors can cause a large waste of time and resources and often fails to produce successful outcomes. Hence, there is a need to develop an efficient predictive model, replacing the costly simulations or experiments, to assist the design of precision glass thermoforming. In this work, we report a surrogate model, based on a dimensionless back-propagation neural network (BPNN), that can adequately predict the form errors and thus compensate for these errors in mold design using geometric features and process parameters as inputs. Our trials with simulation and industrial data indicate that the surrogate model can predict forming errors with adequate accuracy. Although perception errors (mold designers’ decisions) and mold fabrication errors make the industrial training data less reliable than simulation data, our preliminary training and testing results still achieved a reasonable consistency with industrial data, suggesting that the surrogate models are directly implementable in the glass-manufacturing industry.
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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