Stochastic partial differential equations (SPDEs) are significant tools for modeling dynamics in many areas including atmospheric sciences and physics. Neural Operators, generations of neural networks with capability of learning maps between infinite-dimensional spaces, are strong tools for solving parametric PDEs. However, they lack the ability to modeling SPDEs which usually have poor regularity due to the driving noise. As the theory of regularity structure has achieved great successes in analyzing SPDEs and provides the concept model feature vectors that well-approximate SPDEs' solutions, we propose the Neural Operator with Regularity Structure (NORS) which incorporates the feature vectors for modeling dynamics driven by SPDEs. We conduct experiments on various of SPDEs including the dynamic Phi41 model and the 2d stochastic Navier-Stokes equation, and the results demonstrate that the NORS is resolution-invariant, efficient, and achieves one order of magnitude lower error with a modest amount of data.
翻译:神经操作员是几代神经网络,具有在无限空间之间学习地图的能力,是解决参数PDE的强大工具,然而,它们缺乏能力模拟由于驱动噪音而通常不太正常的SPDE。由于常规结构理论在分析SPDE方面取得了巨大成功,并且提供了概念模型特征矢量,这种模型特征矢量非常接近SPDE的解决方案,因此我们建议由常规结构组成的神经操作员(NORS)纳入由SPDEs驱动的模型动力的特性矢量。我们对各种SPDE进行了实验,包括动态Phi41模型和2d Stocheatic Navier-Stokes方程,结果显示NORS是分辨率变量,效率很高,并且用少量数据达到一个低级大小的错误。