Computational issues based on neural networks for a class of systems of conservation laws

D. Danciu, D. Popescu, E. Bobaşu
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引用次数: 4

Abstract

The aim of the present paper is to numerically solve a class of systems of conservation laws, modeled by hyperbolic partial differential equations (hPDEs). Our approach considers a novel computational procedure which relies on using the repetitive structure induced by a convergent Method of Lines for assigning a cell-based recurrent neural network to perform the numerics. Emphasizing that the Method of Lines is more a concept than a specific procedure, our approach ensures the convergence of the approximation and preserves the basic properties of the solution of the initial hPDE problem, i.e. existence, uniqueness, data dependence and stability in the sense of Lyapunov. The procedure is applied on a bilinear control system arising from the process of combined heat-electricity generation. Simulation results are provided.
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一类守恒律系统的神经网络计算问题
本文的目的是数值求解一类用双曲型偏微分方程(hPDEs)建模的守恒律系统。我们的方法考虑了一种新的计算过程,它依赖于使用由收敛线法引起的重复结构来分配基于细胞的循环神经网络来执行数值。强调线法是一个概念而不是一个具体的过程,我们的方法保证了逼近的收敛性,并保留了初始hPDE问题解的基本性质,即Lyapunov意义上的存在性、唯一性、数据依赖性和稳定性。将该方法应用于热电联产过程中产生的双线性控制系统。给出了仿真结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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