Neural Operators for Boundary Stabilization of Stop-and-go Traffic
Yihuai Zhang, Ruiguo Zhong, Huan Yu

TL;DR
This paper presents neural operator-based methods for boundary control of traffic flow modeled by PDEs, offering faster and simpler control design with practical stability guarantees, outperforming traditional PI controllers.
Contribution
Introduces neural operator schemes for PDE boundary control in traffic systems, reducing complexity and computation time compared to classical backstepping methods.
Findings
Neural operator controllers outperform PI controllers in speed and stability.
NO-based methods achieve practical stability under certain approximation conditions.
Simulations show NO controllers are faster and comparably effective to backstepping control.
Abstract
This paper introduces a novel approach to PDE boundary control design using neural operators to alleviate stop-and-go instabilities in congested traffic flow. Our framework leverages neural operators to design control strategies for traffic flow systems. The traffic dynamics are described by the Aw-Rascle-Zhang (ARZ) model, which comprises a set of second-order coupled hyperbolic partial differential equations (PDEs). Backstepping method is widely used for boundary control of such PDE systems. The PDE model-based control design can be time-consuming and require intensive depth of expertise since it involves constructing and solving backstepping control kernels. To overcome these challenges, we present two distinct neural operator (NO) learning schemes aimed at stabilizing the traffic PDE system. The first scheme embeds NO-approximated gain kernels within a predefined backstepping…
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Taxonomy
TopicsTraffic control and management · Traffic Prediction and Management Techniques · Model Reduction and Neural Networks
MethodsSparse Evolutionary Training
