首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Web tension control of multispan roll-to-roll system by artificial neural networks for printed electronics
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Web tension control of multispan roll-to-roll system by artificial neural networks for printed electronics

机译:印刷神经网络的人工跨神经网络控制卷跨张力

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摘要

The mass production of printed electronic devices can be achieved by roll-to-roll system that requires highly regulated web tension. This highly regulated tension is required to minimize printing register error and maintain proper roughness and thickness of the printed patterns. The roll-to-roll system has a continuous changing roll diameter and a strong coupling exists between the spans. The roll-to-roll system is a multi-input-multi-output, time variant, and nonlinear system. The conventional proportional-integral-derivative control, used in industry, is not able to cope with roll-to-roll system for printed electronics. In this study, multi-input-single-output decentralized control scheme is used for control of a multispan roll-to-roll system by applying regularized variable learning rate backpropagating artificial neural networks. Additional inputs from coupled spans are given to regularized variable learning rate backpropagating artificial neural network control to decouple the two spans. Experimental results show that the self-learning algorithm offers a solution to decouple speed and tension in a multispan roll-to-roll system.
机译:印刷电子设备的批量生产可以通过卷对卷系统实现,该系统需要高度调节的卷筒纸张力。需要这种高度调节的张力以最小化印刷套准误差并保持适当的粗糙度和印刷图案的厚度。卷对卷系统具有连续变化的卷径,并且跨距之间存在牢固的耦合。卷对卷系统是一个多输入多输出,时变和非线性系统。工业上使用的常规比例-积分-微分控制无法应对印刷电子产品的卷对卷系统。在这项研究中,通过应用正则化可变学习率反向传播人工神经网络,将多输入单输出分散控制方案用于多跨滚动系统的控制。来自耦合跨度的其他输入被提供给正则化可变学习率反向传播人工神经网络控制,以解耦两个跨度。实验结果表明,自学习算法为多跨卷对卷系统中的速度和张力解耦提供了解决方案。

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