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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >A Universal Concept Based on Cellular Neural Networks for Ultrafast and Flexible Solving of Differential Equations
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A Universal Concept Based on Cellular Neural Networks for Ultrafast and Flexible Solving of Differential Equations

机译:基于细胞神经网络的通用概念,用于快速,灵活地求解微分方程

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摘要

This paper develops and validates a comprehensive and universally applicable computational concept for solving nonlinear differential equations (NDEs) through a neurocomputing concept based on cellular neural networks (CNNs). High-precision, stability, convergence, and lowest-possible memory requirements are ensured by the CNN processor architecture. A significant challenge solved in this paper is that all these cited computing features are ensured in all system-states (regular or chaotic ones) and in all bifurcation conditions that may be experienced by NDEs.One particular quintessence of this paper is to develop and demonstrate a solver concept that shows and ensures that CNN processors (realized either in hardware or in software) are universal solvers of NDE models. The solving logic or algorithm of given NDEs (possible examples are: Duffing, Mathieu, Van der Pol, Jerk, Chua, Rössler, Lorenz, Burgers, and the transport equations) through a CNN processor system is provided by a set of templates that are computed by our comprehensive templates calculation technique that we call nonlinear adaptive optimization. This paper is therefore a significant contribution and represents a cutting-edge real-time computational engineering approach, especially while considering the various scientific and engineering applications of this ultrafast, energy-and-memory-efficient, and high-precise NDE solver concept. For illustration purposes, three NDE models are demonstratively solved, and related CNN templates are derived and used: the periodically excited Duffing equation, the Mathieu equation, and the transport equation.
机译:本文通过基于细胞神经网络(CNN)的神经计算概念,开发并验证了用于求解非线性微分方程(NDE)的综合且通用的计算概念。 CNN处理器体系结构确保了高精度,稳定性,收敛性和最低可能的内存要求。本文解决的一个重大挑战是,在所有系统状态(常规或混沌状态)以及NDE可能遇到的所有分叉条件下,确保所有这些引用的计算功能都得到保证。显示并确保CNN处理器(通过硬件或软件实现)是NDE模型的通用求解器的求解器概念。给定NDE的求解逻辑或算法(可能的示例是:Duffing,Mathieu,Van der Pol,Jerk,Chua,Rösler,Lorenz,Burgers和运输方程)由一组模板提供,这些模板包括:通过我们综合的模板计算技术(称为非线性自适应优化)进行计算。因此,本文是一项重要的贡献,代表了一种前沿的实时计算工程方法,特别是在考虑这种超快速,节能和高效,高精度NDE求解器概念的各种科学和工程应用的同时。为了说明的目的,说明性地解决了三个NDE模型,并推导并使用了相关的CNN模板:周期性激发的Duffing方程,Mathieu方程和传输方程。

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