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Equivalence and stability of two-layered cellular neural network solving saint venant ID equation

机译:两层细胞神经网络的等价性和稳定性求解圣维南ID方程

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Cellular Neural Network (CNN) has been used for solving Partial Differential Equations (PDE). However, the equivalence and stability of system should be considered carefully in a particular problem. In this paper, we introduce the model CNN for solving set of two PDEs describing water flow channels (called Saint Venant equation). We analyze the approximation and topological equivalence issues between Cellular Partial Difference Differential Equation (CPDDE) and its original PDEs. The stability of CNN system is also proved from discovering the equilibrium of the state and output of each cell. The paper has 4 parts. After introduction, part 2 gives a two-layered CNN ID model for solving PDE Saint Venant equation. In the part 3 the equivalence and stability of the CNN model are proved, then simulation using FPGA. The conclusions are given in the last part.
机译:细胞神经网络(CNN)已用于求解偏微分方程(PDE)。但是,在特定问题中,应仔细考虑系统的等效性和稳定性。在本文中,我们介绍了用于求解两个描述水流通道的PDE集合的CNN模型(称为Saint Venant方程)。我们分析了细胞偏微分方程(CPDDE)与原始PDE之间的近似和拓扑等价问题。通过发现每个单元的状态和输出的平衡,也证明了CNN系统的稳定性。本文分为四个部分。在介绍之后,第2部分给出了用于求解PDE Saint Venant方程的两层CNN ID模型。在第3部分中,证明了CNN模型的等效性和稳定性,然后使用FPGA进行了仿真。结论在最后一部分给出。

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