Traffic-Aware Optimal Taxi Placement Using Graph Neural Network-Based Reinforcement Learning
Sonia Khetarpaul, P Y Sharan

TL;DR
This paper introduces a traffic-aware graph neural network reinforcement learning framework for optimal taxi placement, significantly reducing passenger wait times and travel distances by integrating real-time traffic data and spatial-temporal modeling.
Contribution
It presents a novel GNN-based RL approach that incorporates live traffic data for dynamic taxi hotspot prediction, outperforming traditional demand-only models.
Findings
Reduced passenger waiting time by 56%
Decreased travel distance by 38%
Effective in simulated Delhi taxi dataset
Abstract
In the context of smart city transportation, efficient matching of taxi supply with passenger demand requires real-time integration of urban traffic network data and mobility patterns. Conventional taxi hotspot prediction models often rely solely on historical demand, overlooking dynamic influences such as traffic congestion, road incidents, and public events. This paper presents a traffic-aware, graph-based reinforcement learning (RL) framework for optimal taxi placement in metropolitan environments. The urban road network is modeled as a graph where intersections represent nodes, road segments serve as edges, and node attributes capture historical demand, event proximity, and real-time congestion scores obtained from live traffic APIs. Graph Neural Network (GNN) embeddings are employed to encode spatial-temporal dependencies within the traffic network, which are then used by a…
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Taxonomy
TopicsTransportation and Mobility Innovations · Traffic Prediction and Management Techniques · Traffic control and management
