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Stochastic modelling of turbulent combustion for design optimization of gas turbine combustors.

机译:湍流燃烧的随机模型,用于优化燃气轮机燃烧器的设计。

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The present work covers the development and the implementation of an efficient algorithm for the design optimization of gas turbine combustors. The purpose is to explore the possibilities and indicate constructive suggestions for optimization techniques as alternative methods for designing gas turbine combustors. The algorithm is general to the extent that no constraints are imposed on the combustion phenomena or on the combustor configuration.; The optimization problem is broken down into two elementary problems: the first is the optimum search algorithm, and the second is the turbulent combustion model used to determine the combustor performance parameters. These performance parameters constitute the objective and physical constraints in the optimization problem formulation. The examination of both turbulent combustion phenomena and the gas turbine design process suggests that the turbulent combustion model represents a crucial part of the optimization algorithm. The basic requirements needed for a turbulent combustion model to be successfully used in a practical optimization algorithm are discussed. In principle, the combustion model should comply with the conflicting requirements of high fidelity, robustness and computational efficiency. To that end, the problem of turbulent combustion is discussed and the current state of the art of turbulent combustion modelling is reviewed. According to this review, turbulent combustion models based on the composition PDF transport equation are found to be good candidates for application in the present context. However, these models are computationally expensive.; To overcome this difficulty, two different models based on the composition PDF transport equation were developed: an improved Lagrangian Monte Carlo composition PDF algorithm and the generalized stochastic reactor model. Improvements in the Lagrangian Monte Carlo composition PDF model performance and its computational efficiency were achieved through the implementation of time splitting, variable stochastic fluid particle mass control, and a second order time accurate (predictor-corrector) scheme used for solving the stochastic differential equations governing the particles evolution. The model compared well against experimental data found in the literature for two different configurations: bluff body and swirl stabilized combustors.; The generalized stochastic reactor is a newly developed model. This model relies on the generalization of the concept of the classical stochastic reactor theory in the sense that it accounts for both finite micro- and macro-mixing processes. (Abstract shortened by UMI.)
机译:本工作涵盖了用于燃气轮机燃烧器设计优化的高效算法的开发和实现。目的是探索可能性,并提出优化技术的建设性建议,作为设计燃气轮机燃烧器的替代方法。该算法是通用的,其程度是对燃烧现象或燃烧器配置没有限制。优化问题分为两个基本问题:第一个是最优搜索算法,第二个是用于确定燃烧器性能参数的湍流燃烧模型。这些性能参数构成了优化问题表述中的客观和物理约束。对湍流燃烧现象和燃气轮机设计过程的研究表明,湍流燃烧模型代表了优化算法的关键部分。讨论了在实际的优化算法中成功使用湍流燃烧模型所需的基本要求。原则上,燃烧模型应符合高保真度,鲁棒性和计算效率的矛盾要求。为此,讨论了湍流燃烧的问题,并回顾了湍流燃烧建模的最新技术。根据这篇评论,发现基于组分PDF传输方程的湍流燃烧模型是当前应用的良好候选者。然而,这些模型在计算上是昂贵的。为了克服这一困难,开发了两种基于组分PDF传输方程的模型:改进的Lagrangian Monte Carlo组分PDF算法和广义随机反应堆模型。拉格朗日蒙特卡罗合成PDF模型的性能及其计算效率的改进是通过实现时间分割,可变随机流体颗粒质量控制以及用于解决随机微分方程控制的二阶时间精确(预测-校正)方案来实现的粒子的进化。该模型与文献中针对两种不同构造的实验数据进行了很好的比较:钝体和涡流稳定燃烧室。广义随机反应堆是一种新近开发的模型。该模型依赖于经典随机反应器理论的概论,因为它考虑了有限的微观和宏观混合过程。 (摘要由UMI缩短。)

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