首页> 外文期刊>Combustion and Flame >Joint probability density function models for multiscalar turbulent mixing
【24h】

Joint probability density function models for multiscalar turbulent mixing

机译:多标量湍流混合的联合概率密度函数模型

获取原文
获取原文并翻译 | 示例
           

摘要

Modeling multicomponent turbulent mixing is essential for simulations of turbulent combustion, which is controlled by mixing of fuel, oxidizer, combustion products, and intermediate species. One challenge is to find functions that can reproduce the joint probability density function (PDF) of scalar mixing states using only a small number of parameters. Even for mixing with only two independent scalars, several statistical distributions, including the Dirichlet, Connor-Mosimann (CM), five-parameter bivariate beta (BVB5), and statistically-most-likely distributions, have previously been proposed for this purpose, with minimal physical justification. This work uses the concept of statistical neutrality to relate these distributions to each other, relate the distributions to physical mixing configurations, and develop a systematic approach to model selection. This approach is validated by comparing the ability of these distributions to reproduce the evolution of the scalar PDF from Direct Numerical Simulations of three-component passive scalar mixing in isotropic turbulence with 11 different initial conditions that are representative of a wide range of mixing conditions of interest. The approach correctly identifies whether the Dirichlet, CM, and BVB5 distributions, which are increasingly complex bivariate generalizations of the beta distribution, can accurately model the joint PDFs, but knowledge of the mixing configuration is required to select the appropriate distribution. The statistically-most-likely distribution is generally less accurate than the appropriate bivariate beta distribution but still gives reasonable predictions and does not require knowledge of the mixing configuration, so it is a suitable model when no single mixing configuration can be identified. (C) 2018 The Combustion Institute. Published by Elsevier Inc. All rights reserved.
机译:模拟多组分湍流混合对于模拟湍流燃烧至关重要,湍流燃烧通过燃料,氧化剂,燃烧产物和中间物质的混合来控制。一个挑战是找到仅使用少量参数即可重现标量混合状态的联合概率密度函数(PDF)的函数。即使仅与两个独立的标量混合,也已为此提出了一些统计分布,包括Dirichlet,Connor-Mosimann(CM),五参数双变量beta(BVB5)和统计学上最可能的分布。最小的物理理由。这项工作使用统计中立性的概念将这些分布彼此关联,将这些分布与物理混合配置关联,并开发出系统的模型选择方法。通过比较这些分布的能力来重现标量PDF的演变,这些能力是通过在11种不同初始条件下各向同性湍流中的三组分被动标量混合的直接数值模拟来表示的,这些初始条件代表了所关注的各种混合条件。该方法可以正确识别Dirichlet,CM和BVB5分布(它们是beta分布的日益复杂的双变量概括)是否可以准确地对联合PDF进行建模,但是需要了解混合配置才能选择合适的分布。统计上最可能的分布通常不如适当的双变量β分布准确,但仍然给出合理的预测,并且不需要了解混合配置,因此当无法识别单个混合配置时,它是一个合适的模型。 (C)2018年燃烧研究所。由Elsevier Inc.出版。保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号