喷墨印刷过程的神经网络建模

Pyung Moon, C. E. Kim, Dongjo Kim, Jooho Moon, I. Yun
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引用次数: 1

摘要

喷墨打印技术因其成本低、制造方便、应用广泛等优点,近年来受到半导体显示行业的广泛关注。本文利用误差反向传播神经网络,研究了显示器滤色片喷墨打印过程的模型。通过对控制过程变量的预筛选提取输入因子。提取液滴直径和液滴速度作为输出响应,表征喷墨打印过程。在训练误差和测试误差的基础上,对液滴直径和液滴速度的建模结果进行了研究。然后利用响应面图对所提出的神经网络模型进行分析。
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Ink-jet printing process modeling using neural networks
Inkjet printing process is recently interested in semiconductor display industry because of the advantages such as low-cost, ease of manufacture and diversity of applications. In this paper, the models of inkjet printing process for color filter using displays are investigated using the error back propagation neural networks. The input factors are extracted by prescreening among controlled process variables. The drop diameter and drop velocity are extracted as the output responses to characterize inkjet printing process. The modeling results for the drop diameter and the drop velocity are investigated based on the training and the testing errors. The proposed neural network models are then analyzed using the response surface plot.
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