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An approach to information propagation in 1-D cellular neuralnetworks-Part I: Local diffusion

机译:一维细胞神经网络中信息传播的方法-第一部分:局部扩散

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This is the first of two companion papers devoted to a deep analysis of the dynamics of information propagation in the simplest nontrivial Cellular Neural Network (CNN), which is one-dimensional and has connections between nearest neighbors only. We will show that two behaviors are possible: local diffusion of information between neighboring cells and global propagation through the entire array. This paper deals with local diffusion, of which we will first give an accurate definition, before computing the template parameters for which the CNN has this behavior. Next we will compute the number of stable equilibria, before examining the convergence of any trajectory toward them, for three different kinds of boundary conditions: fixed Dirichlet, reflective, and periodic
机译:这是致力于深度分析最简单的非平凡细胞神经网络(CNN)中信息传播动态的两篇相伴论文中的第一篇,该论文是一维的,并且仅在最近的邻居之间具有连接。我们将证明两种行为是可能的:相邻单元之间信息的局部扩散和整个阵列的全局传播。本文涉及局部扩散,在计算CNN具有此行为的模板参数之前,我们将首先对其进行精确定义。接下来,我们将针对三种不同的边界条件,在检查任何轨迹朝其收敛之前,将计算稳定均衡的数量:固定狄利克雷,反射和周期性

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