首页> 外文会议>4th International Conference on Nanochannels, Microchannels and Minichannels 2006(ICNMM2006) pt.A >ACCELERATION METHODS FOR COARSE-GRAINED NUMERICAL SOLUTION OF THE BOLTZMANN EQUATION
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ACCELERATION METHODS FOR COARSE-GRAINED NUMERICAL SOLUTION OF THE BOLTZMANN EQUATION

机译:玻尔兹曼方程粗粒度数值解的加速方法

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We present a coarse-grained steady state solution framework for the Boltzmann kinetic equation based on a Newton-Broyden iteration. This approach is an extension of the equation-free framework proposed by Kevrekidis and coworkers, whose objective is the use of fine-scale simulation tools to directly extract coarse-grained, macroscopic information. Our current objective is the development of efficient simulation tools for modeling complex microanoscale flows. The iterative method proposed and used here consists of a short Boltzmann transient evolution step and a Newton-Broyden contraction mapping step based on the Boltzmann solution; the latter step only solves for the macroscopic field of interest (e.g. flow velocity). The predicted macroscopic field is then used as an initial condition for the Boltzmann solver for the next iteration. We have validated this approach for isothermal, one-dimensional flows in the low Knudsen number regime. We find that the Newton-Broyden iteration converges in O(10) iterations, starting from arbitrary guess solutions and a Navier-Stokes based initial Jacobian. This results in computational savings compared to time-explicit integra- tion to steady states when the time to steady state is longer than O(40) mean collision times.
机译:我们提出了基于牛顿-布罗登迭代的玻尔兹曼动力学方程的粗粒度稳态解框架。此方法是Kevrekidis及其同事提出的无方程式框架的扩展,其目的是使用精细仿真工具直接提取粗粒度的宏观信息。我们当前的目标是开发高效的仿真工具,以对复杂的微观/纳米尺度的流进行建模。本文提出和使用的迭代方法包括一个短的Boltzmann瞬态演化步骤和一个基于Boltzmann解的Newton-Broyden收缩映射步骤。后面的步骤仅解决感兴趣的宏观领域(例如流速)。然后将预测的宏观视野用作玻尔兹曼求解器的下一个迭代的初始条件。我们已经针对低Knudsen数形式的等温一维流验证了这种方法。我们发现,从任意猜测解和基于Navier-Stokes的初始Jacobian算子开始,Newton-Broyden迭代在O(10)迭代中收敛。当达到稳态的时间比O(40)平均碰撞时间长时,与稳态的时间显式积分相比,这可以节省计算时间。

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