首页> 外文期刊>IEEE Transactions on Circuits and Systems. 1 >Pattern formation properties of autonomous Cellular Neural Networks
【24h】

Pattern formation properties of autonomous Cellular Neural Networks

机译:自主细胞神经网络的模式形成特性

获取原文
获取原文并翻译 | 示例
       

摘要

We use the Cellular Neural Network (CNN) to study the pattern formation properties of large scale spatially distributed systems. We have found that the Cellular Neural Network can produce patterns similar to those found in Ising spin glass systems, discrete bistable systems, and the reaction-diffusion system. A thorough analysis of a 1-D CNN whose cells are coupled to immediate neighbors allows us to completely characterize the patterns that can exist as stable equilibria, and to measure their complexity thanks to an entropy function. In the 2-D case, we do not restrict the symmetric coupling between cells to be with immediate neighbors only or to have a special diffusive form. When larger neighborhoods and generalized diffusion coupling are allowed, it is found that some new and unique patterns can be formed that do not fit the standard ferro-antiferromagnetic paradigms. We have begun to develop a theoretical generalization of these paradigms which can be used to predict the pattern formation properties of given templates. We give many examples. It is our opinion that the Cellular Neural Network model provides a method to control the critical instabilities needed for pattern formation without obfuscating parameterizations, complex nonlinearities, or high-order cell states, and which will allow a general and convenient investigation of the essence of the pattern formation properties of these systems.
机译:我们使用细胞神经网络(CNN)来研究大规模空间分布系统的模式形成特性。我们发现,细胞神经网络可以产生类似于在Ising自旋玻璃系统,离散双稳态系统和反应扩散系统中发现的模式。对其单元格耦合到直接邻居的一维CNN的透彻分析使我们能够完全表征可以作为稳定平衡存在的模式,并借助熵函数来测量其复杂性。在二维情况下,我们不将单元格之间的对称耦合限制为仅与直接邻居相邻或具有特殊的扩散形式。当允许更大的邻域和广义扩散耦合时,发现可以形成一些不适合标准铁-反铁磁范例的新的和独特的模式。我们已经开始开发这些范例的理论概括,可用于预测给定模板的图案形成特性。我们举很多例子。我们认为,细胞神经网络模型提供了一种方法,可以控制模式形成所需的关键不稳定性,而不会混淆参数设置,复杂的非线性或高阶单元状态,这将使常规且方便的研究模型的本质成为可能。这些系统的图案形成特性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号