Parametric time-dependent systems are of a crucial importance in modeling real phenomena, often characterized by non-linear behaviors too. Those solutions are typically difficult to generalize in a sufficiently wide parameter space while counting on limited computational resources available. As such, we present a general two-stages deep learning framework able to perform that generalization with low computational effort in time. It consists in a separated training of two pipe-lined predictive models. At first, a certain number of independent neural networks are trained with data-sets taken from different subsets of the parameter space. Successively, a second predictive model is specialized to properly combine the first-stage guesses and compute the right predictions. Promising results are obtained applying the framework to incompressible Navier-Stokes equations in a cavity (Rayleigh-Bernard cavity), obtaining a 97% reduction in the computational time comparing with its numerical resolution for a new value of the Grashof number.
翻译:参数依赖时间的系统在模拟真实现象方面至关重要,这些现象通常也以非线性行为为特征。这些解决方案通常很难在足够宽的参数空间中概括,同时依靠有限的计算资源。因此,我们提出了一个一般的两阶段深层次学习框架,能够以低计算努力来进行这种概括化。它包含对两个管道线预测模型的单独培训。首先,对一些独立的神经网络进行培训,从参数空间的不同子集中采集数据集。后来,第二个预测模型专门用来适当结合第一阶段的猜测和计算正确的预测。通过将无法压缩的导航-斯托克斯等式(Rayleoigh-Bernard cavility)框架应用于一个孔状(RayLigh-Bernard cavity),在计算时间上比其数值分辨率减少97%,以得出Grasiof数字的新值。