Learning to Recommend Signal Plans under Incidents with Real-Time Traffic Prediction
Weiran Yao, Sean Qian

TL;DR
This paper introduces a hierarchical decision-making framework that leverages real-time traffic prediction and domain knowledge to recommend optimal signal plans during incidents, improving response times and traffic management efficiency.
Contribution
It presents a novel hierarchical model combining traffic prediction and plan association with metric learning, enabling real-time contingency signal plan recommendations based on historical data and domain knowledge.
Findings
Achieved 96.75% precision and 87.5% recall in plan recommendation.
Provided an average of 22.5 minutes lead time before Waze alerts.
Demonstrated effectiveness on Cranberry Township traffic network in 2019.
Abstract
The main question to address in this paper is to recommend optimal signal timing plans in real time under incidents by incorporating domain knowledge developed with the traffic signal timing plans tuned for possible incidents, and learning from historical data of both traffic and implemented signals timing. The effectiveness of traffic incident management is often limited by the late response time and excessive workload of traffic operators. This paper proposes a novel decision-making framework that learns from both data and domain knowledge to real-time recommend contingency signal plans that accommodate non-recurrent traffic, with the outputs from real-time traffic prediction at least 30 minutes in advance. Specifically, considering the rare occurrences of engagement of contingency signal plans for incidents, we propose to decompose the end-to-end recommendation task into two…
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