Litcius/Paper detail

Ising-Traffic: Using Ising Machine Learning to Predict Traffic Congestion under Uncertainty

Zhenyu Pan, Anshujit Sharma, Jerry Yao-Chieh Hu, Zhuo Liu, Ang Li, Liu Han, Michael Huang, Tony Geng

2023Proceedings of the AAAI Conference on Artificial Intelligence31 citationsDOIOpen Access PDF

Abstract

This paper addresses the challenges in accurate and real-time traffic congestion prediction under uncertainty by proposing Ising-Traffic, a dual-model Ising-based traffic prediction framework that delivers higher accuracy and lower latency than SOTA solutions. While traditional solutions face the dilemma from the trade-off between algorithm complexity and computational efficiency, our Ising-based method breaks away from the trade-off leveraging the Ising model's strong expressivity and the Ising machine's strong computation power. In particular, Ising-Traffic formulates traffic prediction under uncertainty into two Ising models: Reconstruct-Ising and Predict-Ising. Reconstruct-Ising is mapped onto modern Ising machines and handles uncertainty in traffic accurately with negligible latency and energy consumption, while Predict-Ising is mapped onto traditional processors and predicts future congestion precisely with only at most 1.8% computational demands of existing solutions. Our evaluation shows Ising-Traffic delivers on average 98X speedups and 5% accuracy improvement over SOTA.

Topics & Concepts

Ising modelComputer scienceSquare-lattice Ising modelStatistical physicsPhysicsTraffic Prediction and Management TechniquesInternet Traffic Analysis and Secure E-votingTraffic control and management