Efficiently reducing models of chemically reacting flows is often challenging because their characteristic features such as sharp gradients in the flow fields and couplings over various time and length scales lead to dynamics that evolve in high-dimensional spaces. In this work, we show that online adaptive reduced models that construct nonlinear approximations by adapting low-dimensional subspaces over time can predict well latent dynamics with properties similar to those found in chemically reacting flows. The adaptation of the subspaces is driven by the online adaptive empirical interpolation method, which takes sparse residual evaluations of the full model to compute low-rank basis updates of the subspaces. Numerical experiments with a premixed flame model problem show that reduced models based on online adaptive empirical interpolation accurately predict flame dynamics far outside of the training regime and in regimes where traditional static reduced models, which keep reduced spaces fixed over time and so provide only linear approximations of latent dynamics, fail to make meaningful predictions.
翻译:有效减少化学反应流模型往往具有挑战性,因为它们的特点,如流场的急剧梯度和不同时间和长度的结合等特点导致高维空间的动态变化。在这项工作中,我们表明,通过对低维次空间进行随时间变化而构建非线性近似的在线适应性减少模型可以预测与化学反应流所发现的特性相似的潜伏性动态。亚空间的适应性调整是由在线适应性实证内插法驱动的,该方法对全模型进行了稀少的剩余评价,以计算子空间的低空基更新。预先混合的火焰模型问题的数值实验表明,基于在线适应性实验性内插法的减少模型准确预测了远离培训制度和传统静态减少模型的火焰动态,这些模型将减少的空间固定在时间上,因此只能提供潜在动态的线性近似,因此无法做出有意义的预测。