Collaborative Indirect Influencing and Control on Graphs using Graph Neural Networks
Max L. Gardenswartz, Brandon C. Fallin, Cristian F. Nino, Warren E. Dixon
- Year
- 2025
- Access
- Open access
Abstract
This paper presents a novel approach to solving the indirect influence problem in networked systems, in which cooperative nodes must regulate a target node with uncertain dynamics to follow a desired trajectory. We leverage the message-passing structure of a graph neural network (GNN), allowing nodes to collectively learn the unknown target dynamics in real time. We develop a novel GNN-based backstepping control strategy with formal stability guarantees derived from a Lyapunov-based analysis. Numerical simulations are included to demonstrate the performance of the developed controller.
Keywords
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