Stochastic low-order modelling of hydrogen autoignition in a turbulent non-premixed flow

IF 5.3 2区 工程技术 Q2 ENERGY & FUELS
Salvatore Iavarone , Savvas Gkantonas , Epaminondas Mastorakos
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引用次数: 3

Abstract

Autoignition risk in initially non-premixed flowing systems, such as premixing ducts, must be assessed to help the development of low-NOx systems and hydrogen combustors. Such situations may involve randomly fluctuating inlet conditions that are challenging to model in conventional mixture-fraction-based approaches. A Computational Fluid Dynamics (CFD)-based surrogate modelling strategy is presented here for fast and accurate predictions of the stochastic autoignition behaviour of a hydrogen flow in a hot air turbulent co-flow. The variability of three input parameters, i.e., inlet fuel and air temperatures and average wall temperature, is first sampled via a space-filling design. For each sampled set of conditions, the CFD modelling of the flame is performed via the Incompletely Stirred Reactor Network (ISRN) approach, which solves the reacting flow governing equations in post-processing on top of a Large Eddy Simulation (LES) of the inert hydrogen plume. An accurate surrogate model, namely a Gaussian Process, is then trained on the ISRN simulations of the burner, and the final quantification of the variability of autoignition locations is achieved by querying the surrogate model via Monte Carlo sampling of the random input quantities. The results are in agreement with the observed statistics of the autoignition locations. The methodology adopted in this work can be used effectively to quantify the impact of fluctuations and assist the design of practical combustion systems.

湍流非预混流中氢自燃的随机低阶模型
在最初的非预混流动系统(如预混管道)中,必须评估自燃风险,以帮助开发低nox系统和氢燃烧器。这种情况可能涉及随机波动的进口条件,这在传统的基于混合分数的方法中是具有挑战性的。本文提出了一种基于计算流体动力学(CFD)的代理建模策略,用于快速准确地预测热空气湍流共流中氢气流动的随机自燃行为。首先通过空间填充设计对三个输入参数(即进口燃料和空气温度以及平均壁温)的可变性进行采样。对于每个采样条件,火焰的CFD建模通过不完全搅拌反应器网络(ISRN)方法进行,该方法在惰性氢羽流的大涡模拟(LES)的基础上求解后处理中的反应流控制方程。然后在燃烧器的ISRN模拟上训练一个精确的代理模型,即高斯过程,并通过对随机输入量进行蒙特卡罗采样来查询代理模型,从而最终量化自燃位置的可变性。结果与观测到的自燃位置的统计量一致。在这项工作中采用的方法可以有效地用于量化波动的影响和辅助实际燃烧系统的设计。
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来源期刊
Proceedings of the Combustion Institute
Proceedings of the Combustion Institute 工程技术-工程:化工
CiteScore
7.00
自引率
0.00%
发文量
420
审稿时长
3.0 months
期刊介绍: The Proceedings of the Combustion Institute contains forefront contributions in fundamentals and applications of combustion science. For more than 50 years, the Combustion Institute has served as the peak international society for dissemination of scientific and technical research in the combustion field. In addition to author submissions, the Proceedings of the Combustion Institute includes the Institute''s prestigious invited strategic and topical reviews that represent indispensable resources for emergent research in the field. All papers are subjected to rigorous peer review. Research papers and invited topical reviews; Reaction Kinetics; Soot, PAH, and other large molecules; Diagnostics; Laminar Flames; Turbulent Flames; Heterogeneous Combustion; Spray and Droplet Combustion; Detonations, Explosions & Supersonic Combustion; Fire Research; Stationary Combustion Systems; IC Engine and Gas Turbine Combustion; New Technology Concepts The electronic version of Proceedings of the Combustion Institute contains supplemental material such as reaction mechanisms, illustrating movies, and other data.
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