Exploring foci of:
arXiv (Cornell University)
Distributed Koopman Learning using Partial Trajectories for Control
December 2024 • Wenjian Hao, Zehui Lu, Devesh Upadhyay, Shaoshuai Mou
This paper proposes a distributed data-driven framework for dynamics learning, termed distributed deep Koopman learning using partial trajectories (DDKL-PT). In this framework, each agent in a multi-agent system is assigned a partial trajectory offline and locally approximates the unknown dynamics using a deep neural network within the Koopman operator framework. By exchanging local estimated dynamics rather than training data, agents achieve consensus on a global dynamics model without sharing their private train…
Computer Science
Algorithm
Artificial Intelligence
Deep Learning