Many real-world dynamical systems are associated with first integrals (a.k.a. invariant quantities), which are quantities that remain unchanged over time. The discovery and understanding of first integrals are fundamental and important topics both in the natural sciences and in industrial applications. First integrals arise from the conservation laws of system energy, momentum, and mass, and from constraints on states; these are typically related to specific geometric structures of the governing equations. Existing neural networks designed to ensure such first integrals have shown excellent accuracy in modeling from data. However, these models incorporate the underlying structures, and in most situations where neural networks learn unknown systems, these structures are also unknown. This limitation needs to be overcome for scientific discovery and modeling of unknown systems. To this end, we propose first integral-preserving neural differential equation (FINDE). By leveraging the projection method and the discrete gradient method, FINDE finds and preserves first integrals from data, even in the absence of prior knowledge about underlying structures. Experimental results demonstrate that FINDE can predict future states of target systems much longer and find various quantities consistent with well-known first integrals in a unified manner.
翻译:许多实际世界动态系统与第一批集成物(a.k.a. 变异数量)相关,其数量随时间而保持不变。发现和理解第一批集成物是自然科学和工业应用中的基本和重要主题。第一个集成物来自系统能源、动力和质量的养护法以及国家的限制;它们通常与治理方程的具体几何结构有关。旨在确保这类集成物的现有神经网络在根据数据建模时显示出极准确性。然而,这些模型包含了内在结构,在大多数神经网络学习未知系统的情况下,这些结构也是未知的。科学发现和建模未知系统需要克服这一限制。为此,我们提出第一个整体保留神经差异方程式(FINDE)。通过利用投影法和离散梯法,FICE发现并保存了数据的第一个集成物,即使事先对基本结构缺乏了解。实验结果表明,FICE能够预测未来目标系统的状况,并以统一的方式找到与已知的第一批集成物一致的各种数量。