网络动力系统的组合神经证书

Songyuan Zhang, Yumeng Xiu, Guannan Qu, Chuchu Fan
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引用次数: 2

摘要

为大型网络动态系统开发稳定控制器是至关重要的,但由于两个关键障碍:可认证性和可扩展性,长期以来一直具有挑战性。在本文中,我们提出了一个通用框架来解决这些挑战,使用基于ISS(输入到状态稳定性)Lyapunov函数的组合神经证书。具体而言,我们将大型网络动力系统视为较小子系统的互连,并开发了可以为每个子系统找到分散控制器和ISS Lyapunov函数的方法;后者可以被集合起来证明系统的全局稳定性。为了确保我们方法的可扩展性,我们开发了可推广和健壮的ISS Lyapunov函数,其中单个函数可以跨不同子系统使用,我们为小型系统制作的证书可以推广到具有类似结构的大型系统上。我们将ISS Lyapunov函数和控制器编码为神经网络,并提出了一种新的训练方法来处理ISS Lyapunov条件下的逻辑,该方法对与相邻子系统的互连进行编码。我们在系统中展示了我们的方法,包括排,无人机编队控制和动力系统。实验结果表明,与RL算法相比,该框架在大规模网络系统中的跟踪误差降低了75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compositional Neural Certificates for Networked Dynamical Systems
Developing stable controllers for large-scale networked dynamical systems is crucial but has long been challenging due to two key obstacles: certifiability and scalability. In this paper, we present a general framework to solve these challenges using compositional neural certificates based on ISS (Input-to-State Stability) Lyapunov functions. Specifically, we treat a large networked dynamical system as an interconnection of smaller subsystems and develop methods that can find each subsystem a decentralized controller and an ISS Lyapunov function; the latter can be collectively composed to prove the global stability of the system. To ensure the scalability of our approach, we develop generalizable and robust ISS Lyapunov functions where a single function can be used across different subsystems and the certificates we produced for small systems can be generalized to be used on large systems with similar structures. We encode both ISS Lyapunov functions and controllers as neural networks and propose a novel training methodology to handle the logic in ISS Lyapunov conditions that encodes the interconnection with neighboring subsystems. We demonstrate our approach in systems including Platoon, Drone formation control, and Power systems. Experimental results show that our framework can reduce the tracking error up to 75% compared with RL algorithms when applied to large-scale networked systems.
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