Automated Taxi Queue Management at High-Demand Venues

Mengyu Ji, Shih-Fen Cheng
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Abstract

In this paper, we seek to identify an effective management policy that could reduce supply-demand gaps at taxi queues serving high-density locations where demand surges frequently happen. Unlike current industry practice, which relies on broadcasting to attract taxis to come and serve the queue, we propose more proactive and adaptive approaches to handle demand surges. Our design objective is to reduce the cumulative supply-demand gaps as much as we could by sending notifications to individual taxis. To address this problem, we first propose a highly effective passenger demand prediction system that is based on the real-time flight arrival information. By monitoring cumulative passenger arrivals, and control for factors such as the flight's departure cities, we demonstrate that a simple linear regression model can accurately predict the number of passengers joining taxi queues. We then propose an optimal control strategy based on a Markov Decision Process to model the decisions of notifying individual taxis that are at different distances away from the airport. By using a real-world dataset, we demonstrate that an accurate passenger demand prediction system is crucial to the effectiveness of taxi queue management. In our numerical studies based on the real-world data, we observe that our proposed approach of optimal control with demand predictions outperforms the same control strategy, yet with Poisson demand assumption, by 43%. Against the status quo, which has no external control, we could reduce the gap by 23%. These results demonstrate that our proposed methodology has strong real-world potential.
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高需求场地的士自动排队管理
在本文中,我们试图确定一种有效的管理政策,可以减少服务于需求激增频繁的高密度地点的出租车队列的供需缺口。与目前依靠广播吸引出租车前来排队的行业做法不同,我们提出了更积极主动和适应性的方法来应对需求激增。我们的设计目标是通过向个别出租车发送通知,尽可能减少累积的供需缺口。为了解决这一问题,我们首先提出了一种基于实时航班到达信息的高效乘客需求预测系统。通过监测累计到达乘客,并控制航班出发城市等因素,我们证明了一个简单的线性回归模型可以准确地预测加入出租车队列的乘客数量。然后,我们提出了一种基于马尔可夫决策过程的最优控制策略,以模拟通知距离机场不同距离的个别出租车的决策。通过使用真实数据集,我们证明了准确的乘客需求预测系统对出租车队列管理的有效性至关重要。在我们基于现实世界数据的数值研究中,我们观察到我们提出的需求预测最优控制方法比相同的控制策略(但使用泊松需求假设)要好43%。在没有外部控制的现状下,我们可以将差距缩小23%。这些结果表明,我们提出的方法具有强大的现实潜力。
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