基于FC的神经网络局部人工粘度分配冲击动力学求解器

Oscar P. Bruno , Jan S. Hesthaven , Daniel V. Leibovici
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引用次数: 6

摘要

本文给出了在任意边界条件下非周期域中非线性守恒定律数值解的谱格式。该方法依赖于使用傅立叶连续(FC)方法来表示非周期函数的谱,以及通过冲击检测神经网络(SDNN)产生的平滑局部人工粘度分配。与以前的冲击捕获方案和人工粘性技术一样,组合的FC-SDNN策略有效地控制了不连续附近的杂散振荡。由于该算法使用了局部但平滑的人工粘性项,其支持仅限于流动不连续点附近,因此该算法具有频谱精度和较低的流动不连续耗散,并且在这些区域,它产生了平滑的数值解——正如水平集线中基本不存在虚假振荡所证明的那样。FC-SDNN粘度分配不需要使用与问题相关的算法参数,与其他方法(包括以前熵粘度方法的傅立叶谱版本)相比,其总体耗散显著较低。通过一维和二维非周期空间域中线性平流、Burgers和Euler方程的各种数值结果说明了该算法的特点。
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FC-based shock-dynamics solver with neural-network localized artificial-viscosity assignment

This paper presents a spectral scheme for the numerical solution of nonlinear conservation laws in non-periodic domains under arbitrary boundary conditions. The approach relies on the use of the Fourier Continuation (FC) method for spectral representation of non-periodic functions in conjunction with smooth localized artificial viscosity assignments produced by means of a Shock-Detecting Neural Network (SDNN). Like previous shock capturing schemes and artificial viscosity techniques, the combined FC-SDNN strategy effectively controls spurious oscillations in the proximity of discontinuities. Thanks to its use of a localized but smooth artificial viscosity term, whose support is restricted to a vicinity of flow-discontinuity points, the algorithm enjoys spectral accuracy and low dissipation away from flow discontinuities, and, in such regions, it produces smooth numerical solutions—as evidenced by an essential absence of spurious oscillations in level set lines. The FC-SDNN viscosity assignment, which does not require use of problem-dependent algorithmic parameters, induces a significantly lower overall dissipation than other methods, including the Fourier-spectral versions of the previous entropy viscosity method. The character of the proposed algorithm is illustrated with a variety of numerical results for the linear advection, Burgers and Euler equations in one and two-dimensional non-periodic spatial domains.

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来源期刊
Journal of Computational Physics: X
Journal of Computational Physics: X Physics and Astronomy-Physics and Astronomy (miscellaneous)
CiteScore
6.10
自引率
0.00%
发文量
7
期刊最新文献
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