ArXiv TLDR

Adaptive Domain Decomposition Physics-Informed Neural Networks for Traffic State Estimation with Sparse Sensor Data

🐦 Tweet
2605.08028

Eunhan Ka, Ludovic Leclercq, Satish V. Ukkusuri

cs.LGeess.SY

TLDR

ADD-PINN improves traffic state estimation from sparse sensor data by adaptively decomposing domains to better handle shockwaves in LWR models.

Key contributions

  • Proposes ADD-PINN, a two-stage residual-guided framework for LWR-based offline speed-field reconstruction.
  • Uses a coarse global PINN's residual profile to place subdomain boundaries and initialize child subnetworks.
  • Achieves lower relative L2 error in 14 of 15 sparse-sensing cases compared to neural and PINN baselines.
  • Trains 2.4 times faster than the extended PINN (XPINN) baseline, demonstrating efficiency.

Why it matters

This paper introduces a novel PINN approach that significantly improves traffic state estimation, especially with limited sensor data. By adaptively decomposing the domain, it accurately captures traffic shockwaves, which is crucial for intelligent transportation systems. This advancement offers more reliable and faster traffic reconstruction.

Original Abstract

Traffic state estimation from sparse fixed sensors is challenging because physics-informed neural networks (PINNs) tend to over-smooth the shockwaves admitted by the Lighthill-Whitham-Richards (LWR) model. This study proposes Adaptive Domain Decomposition Physics-Informed Neural Networks (ADD-PINN), a two-stage residual-guided framework for LWR-based offline speed-field reconstruction. A coarse global PINN is first trained; its spatial residual profile is then used to place subdomain boundaries and initialize child subnetworks in a decomposition-enabled mode, while a data-driven shock indicator can retain a single-domain fallback when localized evidence of transition is weak. The primary offline I-24 MOTION evaluation spans five days, five sensor configurations, and ten seeds per configuration, yielding 1,500 runs in total. Against neural and physics-informed baselines, ADD-PINN attains the lowest relative L2 error in 18 of 25 configurations and in 14 of 15 sparse-sensing cases, while training 2.4 times faster than the extended PINN (XPINN) baseline. An ablation study supports spatial-only decomposition as an effective default for fixed-sensor traffic reconstruction in the evaluated settings. Supplementary Next Generation Simulation (NGSIM) experiments serve as a negative control: the shock indicator suppresses decomposition in all 50 runs, and the default single-domain fallback ranks first across all sensor configurations. These results support residual-guided spatial decomposition as an effective PINN-family design for offline reconstruction when sparse fixed sensing coincides with localized transition regions.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.