A Physics-informed Deep Operator for Real-Time Freeway Traffic State Estimation
Hongxin Yu, Yibing Wang, Fengyue Jin, Meng Zhang, Anni Chen

TL;DR
This paper introduces a physics-informed deep operator network for real-time freeway traffic state estimation, integrating traffic flow models with neural networks to improve accuracy over existing methods.
Contribution
It develops an extended PI-DeepONet architecture with CNN support, attention mechanisms, and adaptive parameter identification for enhanced traffic state estimation.
Findings
Outperforms baseline methods in flow and speed estimation accuracy
Demonstrates high-precision real-time traffic state estimation on real datasets
Validates effectiveness across different traffic environments
Abstract
Traffic state estimation (TSE) falls methodologically into three categories: model-driven, data-driven, and model-data dual-driven. Model-driven TSE relies on macroscopic traffic flow models originated from hydrodynamics. Data-driven TSE leverages historical sensing data and employs statistical models or machine learning methods to infer traffic state. Model-data dual-driven traffic state estimation attempts to harness the strengths of both aspects to achieve more accurate TSE. From the perspective of mathematical operator theory, TSE can be viewed as a type of operator that maps available measurements of inerested traffic state into unmeasured traffic state variables in real time. For the first time this paper proposes to study real-time freeway TSE in the idea of physics-informed deep operator network (PI-DeepONet), which is an operator-oriented architecture embedding traffic flow…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Traffic control and management · Advanced Technologies in Various Fields
