Learning the flows of hybrid systems that have both continuous and discrete time dynamics is challenging. The existing method learns the dynamics in each discrete mode, which suffers from the combination of mode switching and discontinuities in the flows. In this work, we propose CHyLL (Continuous Hybrid System Learning in Latent Space), which learns a continuous neural representation of a hybrid system without trajectory segmentation, event functions, or mode switching. The key insight of CHyLL is that the reset map glues the state space at the guard surface, reformulating the state space as a piecewise smooth quotient manifold where the flow becomes spatially continuous. Building upon these insights and the embedding theorems grounded in differential topology, CHyLL concurrently learns a singularity-free neural embedding in a higher-dimensional space and the continuous flow in it. We showcase that CHyLL can accurately predict the flow of hybrid systems with superior accuracy and identify the topological invariants of the hybrid systems. Finally, we apply CHyLL to the stochastic optimal control problem.
翻译:学习同时具有连续和离散时间动态的混合系统的流具有挑战性。现有方法学习每个离散模式中的动态,但受到模式切换与流中不连续性组合的影响。在本工作中,我们提出CHyLL(潜在空间中的连续混合系统学习),它无需轨迹分割、事件函数或模式切换即可学习混合系统的连续神经表示。CHyLL的关键见解是重置映射在守卫表面粘合状态空间,将状态空间重新表述为分段光滑商流形,其中流在空间上变得连续。基于这些见解以及微分拓扑中的嵌入定理,CHyLL同时在更高维空间中学习无奇点的神经嵌入及其中的连续流。我们展示CHyLL能够以卓越的精度准确预测混合系统的流,并识别混合系统的拓扑不变量。最后,我们将CHyLL应用于随机最优控制问题。