In this paper, we focus on the construction of a hybrid scheme for the approximation of non-Maxwellian kinetic models with uncertainties. In the context of multiagent systems, the introduction of a kernel at the kinetic level is useful to avoid unphysical interactions. The methods here proposed, combine a direct simulation Monte Carlo (DSMC) in the phase space together with stochastic Galerkin (sG) methods in the random space. The developed schemes preserve the main physical properties of the solution together with accuracy in the random space. The consistency of the methods is tested with respect to surrogate Fokker-Planck models that can be obtained in the quasi-invariant regime of parameters. Several applications of the schemes to non-Maxwellian models of multiagent systems are reported.
翻译:在本文中,我们侧重于构建一个混合计划,以近似具有不确定性的非Maxwellian动能模型;在多试剂系统方面,在动能层面采用内核有助于避免无形的相互作用;此处提议的方法是,在阶段空间直接模拟蒙特卡洛(DSMC)与随机空间的随机空间的随机合成加勒金(sG)方法相结合;发达的计划保留了溶液的主要物理特性以及随机空间的准确性;在参数准变异制度中可以取得的代孕Fokker-Planck模型方面,对方法的一致性进行了测试;报告了计划对非Maxwellian多剂系统模型的若干应用情况。