GARLIC: GPT-Augmented Reinforcement Learning with Intelligent Control for Vehicle Dispatching
As urban residents demand higher travel quality, vehicle dispatch has become a critical component of online ride-hailing services. However, current vehicle dispatch systems struggle to navigate the complexities of urban traffic dynamics, including unpredictable traffic conditions, diverse driver beh...
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Zusammenfassung: | As urban residents demand higher travel quality, vehicle dispatch has become
a critical component of online ride-hailing services. However, current vehicle
dispatch systems struggle to navigate the complexities of urban traffic
dynamics, including unpredictable traffic conditions, diverse driver behaviors,
and fluctuating supply and demand patterns. These challenges have resulted in
travel difficulties for passengers in certain areas, while many drivers in
other areas are unable to secure orders, leading to a decline in the overall
quality of urban transportation services. To address these issues, this paper
introduces GARLIC: a framework of GPT-Augmented Reinforcement Learning with
Intelligent Control for vehicle dispatching. GARLIC utilizes multiview graphs
to capture hierarchical traffic states, and learns a dynamic reward function
that accounts for individual driving behaviors. The framework further
integrates a GPT model trained with a custom loss function to enable
high-precision predictions and optimize dispatching policies in real-world
scenarios. Experiments conducted on two real-world datasets demonstrate that
GARLIC effectively aligns with driver behaviors while reducing the empty load
rate of vehicles. |
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DOI: | 10.48550/arxiv.2408.10286 |