Edge AI-Based Smart Intersection and Its Application for Traffic Signal Coordination: A Case Study in Pyeongtaek City, South Korea

Author:

Lee Seongjin1,Baek Seungeon1,Woo Wang-Hee2,Ahn Chiwon3,Yoon Jinwon1ORCID

Affiliation:

1. Nota AI Inc., Team ITS, 332 Teheran-ro, Gangnam-gu, Seoul 06212, Republic of Korea

2. Pyeongtaek Urban Corporation, Department of Transportation Policy, 25, Doilyutong-gil, Pyeongtaek 17725, Gyeonggi, Republic of Korea

3. University of Seoul, Department of Transportation Engineering, 163 Seoulsiripdaero, Dongdaemun-gu, Seoul 02504, Republic of Korea

Abstract

Recently, smart intersections have emerged as a novel intelligent transportation system (ITS) solution that integrates traffic monitoring, optimal signal control, and even traffic safety. Although smart intersections have been prevalent in many cities, there are a few drawbacks in their practical operations. First, there are inevitable delays in transmitting and processing the video data. Second, there is still a need to develop a real-time signal control method leveraging the acquired data from smart intersections. Thus, this study aims to construct edge AI-based smart intersections and to provide their application for traffic signal coordination. To this end, we install smart intersections on three consecutive intersections of Route 45 in Pyeongtaek city, South Korea. The real-time traffic data are collected by an edge AI video analysis model which is compressed and optimized for its operation in on-site edge devices. The optimized model maintains a similar level of accuracy (93.64%), even if the size is reduced by 97.8% compared to the original. Next, we utilize the LT2 model to treat the coordination failure problem in nonpeak hours occurring unnecessary delays of the side-streets with relatively high demands. We complement some constraint conditions in order to consider the compatibility with the current legacy system. The experiment is conducted on a virtual environment of which geometry and traffic demand are configured based on the features of the study site. The numerical results conclude that the optimal offsets calculated by the LT2 model effectively manage bandwidths for multidirectional flows based on the real-time traffic demands collected from the edge AI-based smart intersections. This study contributes to serve high-resolution real-time traffic data using edge AI on smart intersections and to provide a case study for signal coordination.

Publisher

Hindawi Limited

Reference22 articles.

1. The Sydney coordinated adaptive traffic (SCAT) system philosophy and benefits

2. The SCOOT on-line traffic signal optimisation technique;P. B. Hunt;Traffic Engineering and Control,1982

3. OPAC: a demand-responsive strategy for traffic signal control;N. H. Gartner;Transportation Research Record,1983

4. Assessment of reward functions for reinforcement learning traffic signal control under real-world limitations;A. C. Egea

5. Traffic detectors [product broucher];Yunex Traffic,2023

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