Bagged ensemble of ANN for predicting laminar flame speed of toluene reference fuels and syngas blends in SI engines

IF 5 Q2 ENERGY & FUELS
Vijay Raj Giri , Jaesung Kwon , Doohyun Kim
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引用次数: 0

Abstract

Laminar Flame Speed (LFS) is a critical parameter that determines the burn rate in Spark Ignited (SI) engines, as it influences the laminar burnup process of air/fuel mixture entrained by turbulent flame. For various SI engine modeling approaches, accurate prediction of LFS under engine-relevant conditions is crucial. Syngas, often created from various renewable feedstocks, offers significant potential for mitigating engine knock and engine-out emissions. This study introduces a novel approach using ensembles of neural networks as a non-linear regression method to predict LFS of gasoline surrogates and syngas blends under engine-relevant conditions. To address the scarcity of experimental data, we performed 1-D flame simulations to generate a sufficiently large LFS dataset (225,200 cases in total) which was supplemented by available experimental data in literature. To mitigate the potential bias associated with chemical mechanism selection, multiple kinetic mechanisms were utilized for the flame simulations. Considering the thermodynamic conditions during flame propagation in SI engines, the dataset covers conditions from 300 K to 1000 K, 1 bar to 50 bar, and equivalence ratios from 0.8 to 1.2. Moreover, a large number of Toluene Reference Fuel (mixtures of iso-octane, n-heptane, toluene)/syngas blends up to 11,140 mixtures were explored. After evaluating multiple ML models, a two-hidden-layer neural network was selected for optimal performance. To improve robustness of predicted LFS, the neural network was further refined by employing ensembles of five such neural networks, each separately trained on 80 % of the dataset. The model developed in this study represents a substantial advancement in accurate and computationally efficient LFS prediction. It also introduces an effective approach to account for mechanism-associated bias by utilizing multiple chemical mechanisms.
用于预测甲苯参考燃料和合成气混合燃料在SI发动机层流火焰速度的袋装神经网络集合
层流火焰速度(LFS)影响着湍流火焰夹带空气/燃料混合物的层流燃烧过程,是决定火花点火(SI)发动机燃烧速率的关键参数。对于各种发动机建模方法,准确预测发动机相关条件下的LFS是至关重要的。合成气通常由各种可再生原料制成,在减少发动机爆震和发动机熄火排放方面具有巨大的潜力。本研究提出了一种新颖的方法,利用神经网络集成作为非线性回归方法来预测发动机相关条件下汽油替代品和合成气混合物的LFS。为了解决实验数据的缺乏问题,我们进行了一维火焰模拟,以生成足够大的LFS数据集(总共225,200例),并辅以文献中可用的实验数据。为了减轻化学机制选择带来的潜在偏差,采用了多种动力学机制进行火焰模拟。考虑到SI发动机火焰传播过程中的热力学条件,数据集涵盖了300 K至1000 K, 1 bar至50 bar,等效比为0.8至1.2的条件。此外,还探索了大量甲苯参考燃料(异辛烷、正庚烷、甲苯的混合物)/合成气混合物,最多可达11140种混合物。在对多个ML模型进行评估后,选择了性能最优的两隐层神经网络。为了提高预测LFS的鲁棒性,神经网络通过使用五个这样的神经网络的集合进一步改进,每个神经网络分别在80%的数据集上进行训练。本研究开发的模型在精确和计算效率高的LFS预测方面取得了实质性进展。它还介绍了一种有效的方法来解释机制相关的偏见,利用多种化学机制。
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CiteScore
4.20
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