油墨印刷系统建模与分析的神经网络模型

M. Verkhola, U. Panovyk, I. Huk
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引用次数: 2

摘要

本文提出了一种构建动态递归神经网络模型的方法,用于研究和分析油墨印刷系统中油墨的圆周和轴向分布和传递过程。建立了考虑油墨印刷系统各要素参数、给墨子系统和配墨子系统工作模式的神经网络结构模型和数学模型;振荡器、极板和偏置气缸。提出了一种基于突触权值随时间反向传播修正的递归神经网络训练过程的信息模型。神经网络的训练是基于物理实验和表单数据得到的印痕输入区域分布参数和相应区域的油墨厚度。将训练好的网络用于油墨印刷系统中油墨分布和传递过程的建模和研究。此外,该网络还适用于不同结构、不同填充密度的打印表单的输入分布参数的确定。基于九区测试形式的神经网络的认可。仿真结果和物理实验的收敛性证实了神经网络的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Network Model for Modeling and Analysis of Ink Printing Systems
This paper proposes a method for constructing a dynamic recursive neural network model for research and analysis the processes of ink circular and axial distribution and transfer in ink printing systems. The structural and mathematical model of the neural network is developed, which takes into account the parameters of the ink printing system elements and the operating modes of the ink feeder and ink distributing subsystems; the oscillator, plate and offset cylinders. The informational model of the training process the recursive neural network of the ink print system is presented, which is based on the correction of synaptic weights by the method of backpropagation through time. Training of the neural network is based on the parameters of the input zonal distribution and the ink thickness in the corresponding zones of the imprints obtained as a result of the physical experiment and the form data. Trained network is used for modeling and researching the processes of the ink distribution and transfer in the ink printing system. In addition, this network is suitable for determining the parameters of the input distribution for printing forms with different structure and density of filling their printing elements. The approbation of the neural network based on the nine-zone test form. The efficiency of the neural network is confirmed by the convergence of the simulation results and the physical experiment.
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