The complexity of real-world geophysical systems is often compounded by the fact that the observed measurements depend on hidden variables. These latent variables include unresolved small scales and/or rapidly evolving processes, partially observed couplings, or forcings in coupled systems. This is the case in ocean-atmosphere dynamics, for which unknown interior dynamics can affect surface observations. The identification of computationally-relevant representations of such partially-observed and highly nonlinear systems is thus challenging and often limited to short-term forecast applications. Here, we investigate the physics-constrained learning of implicit dynamical embeddings, leveraging neural ordinary differential equation (NODE) representations. A key objective is to constrain their boundedness, which promotes the generalization of the learned dynamics to arbitrary initial condition. The proposed architecture is implemented within a deep learning framework, and its relevance is demonstrated with respect to state-of-the-art schemes for different case-studies representative of geophysical dynamics.
翻译:实际地球物理系统的复杂性往往由于以下事实而变得更加复杂:观测到的测量结果取决于隐藏的变量,这些潜在变量包括尚未解决的小尺度和/或迅速演变的过程,部分观测到的结合,或结合系统中的强迫作用。海洋-大气动态就是这种情况,其中未知的内部动态可能影响地表观测。因此,确定这种部分观测到的高度非线性系统的计算相关表示方式具有挑战性,而且往往局限于短期预测应用。在这里,我们调查物理学对隐含的动态嵌入、利用神经普通差异方程式(NODE)的利用等式(NODE)的学习。一个关键目标是限制其界限性,将所学到的动态概括到任意初始状态。拟议的结构是在深层次的学习框架内实施的,其相关性体现在对不同地球物理动态的案例研究进行的最新计划上。