论文标题
Bunsen型火焰的非线性火焰响应通过多层感知器建模
Modeling of the nonlinear flame response of a Bunsen-type flame via multi-layer perceptron
论文作者
论文摘要
本文展示了神经网络可靠地学习层状预热火焰的非线性火焰响应的能力,同时仅进行一个不稳定的CFD模拟。该系统用宽带,低通滤波的速度信号激发,该信号在预定范围内表现出均匀的幅度分布。在火焰上游和热释放速率波动上游获得的流速度的时间序列用于使用多层感知器来训练非线性模型。训练了几种具有变化的超参数的型号,并将辍学策略用作常规器,以避免过度拟合。最佳性能模型随后用于使用单频激发来计算火焰描述功能(FDF)。除了准确预测FDF外,受过训练的神经网络模型还捕获了火焰响应中较高谐波的存在。结果,当与声学求解器结合使用时,获得的神经网络模型比经典的FDF模型更适合,以预测以多个频率为特征的极限循环振荡。在本研究的最后一部分中证明了后者。我们表明,预测的声振荡的RMS值以及相关的主要频率与CFD参考数据非常吻合。
This paper demonstrates the ability of neural networks to reliably learn the nonlinear flame response of a laminar premixed flame, while carrying out only one unsteady CFD simulation. The system is excited with a broadband, low-pass filtered velocity signal that exhibits a uniform distribution of amplitudes within a predetermined range. The obtained time series of flow velocity upstream of the flame and heat release rate fluctuations are used to train the nonlinear model using a multi-layer perceptron. Several models with varying hyperparameters are trained and the dropout strategy is used as regularizer to avoid overfitting. The best performing model is subsequently used to compute the flame describing function (FDF) using mono-frequent excitations. In addition to accurately predicting the FDF, the trained neural network model also captures the presence of higher harmonics in the flame response. As a result, when coupled with an acoustic solver, the obtained neural network model is better suited than a classical FDF model to predict limit cycle oscillations characterized by more than one frequency. The latter is demonstrated in the final part of the present study. We show that the RMS value of the predicted acoustic oscillations together with the associated dominant frequencies are in excellent agreement with CFD reference data.