A Queueing-Theoretic Framework for Vehicle Dispatching in Dynamic Car-Hailing

2019 
With the rapid development of smart mobile devices, the car-hailing platforms (e.g., Uber or Lyft) have attracted much attention from both the academia and the industry. In this paper, we consider an important dynamic car-hailing problem, namely maximum revenue vehicle dispatching (MRVD), in which rider requests dynamically arrive and drivers need to serve as many riders as possible such that the entire revenue of the platform is maximized. We prove that the MRVD problem is NP-hard and intractable. To handle the MRVD problem, we propose a queueing-based vehicle dispatching framework, which first uses existing machine learning algorithms to predict the future vehicle demand of each region, then estimates the idle time periods of drivers through a queueing model for each region. With the information of the predicted vehicle demands and estimated idle time periods of drivers, we propose one batch-based vehicle dispatching algorithm to efficiently assign suitable drivers to riders such that the expected entire revenue of the platform is maximized during each batch processing. Through experiments over real data sets, we demonstrate the efficiency and effectiveness of our proposed framework.
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