Shortening Emergency Medical Response Time with Joint Operations of Uncrewed Aerial Vehicles with Ambulances

Xiaoquan Gao, Nan Kong, Paul Griffin
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Abstract

Problem definition: Uncrewed aerial vehicles (UAVs) are transforming emergency service logistics applications across sectors, offering easy deployment and rapid response. In the context of emergency medical services (EMS), UAVs have the potential to augment ambulances by leveraging bystander assistance, thereby reducing response times for delivering urgent medical interventions and improving EMS outcomes. Notably, the use of UAVs for opioid overdose cases is particularly promising as it addresses the challenges faced by ambulances in delivering timely medication. This study aims to optimize the integration of UAVs and bystanders into EMS in order to minimize average response times for overdose interventions. Methodology/results: We formulate the joint operation of UAVs with ambulances through a Markov decision process that captures random emergency vehicle travel times and bystander availability. We apply an approximate dynamic programming approach to mitigate the solution challenges from high-dimensional state variables and complex decisions through a neural network-based approximation of the value functions (NN-API). To design the approximation, we construct a set of basis functions based on queueing and geographic properties of the UAV-augmented EMS system. Managerial implications: The simulation results suggest that our NN-API policy tends to outperform several noteworthy rule- and optimization-based benchmark policies in terms of accumulated rewards, particularly for situations that are primarily characterized by high request arrival rates and a limited number of available ambulances and UAVs. The results also demonstrate the benefits of incorporating UAVs into the EMS system and the effectiveness of an intelligent real-time operations strategy in addressing capacity shortages, which are often a problem in rural areas of the United States. Additionally, the results provide insights into specific contributions of each dispatching or redeployment strategy to overall performance improvement.Funding: This work was supported by the National Science [Grant 1761022].Supplemental Material: The online appendix is available at https://doi.org/10.1287/msom.2022.0166
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无螺旋桨飞行器与救护车联合行动缩短紧急医疗响应时间
问题定义:无人驾驶飞行器(UAV)正在改变各行各业的紧急服务后勤应用,提供简易部署和快速响应。在紧急医疗服务(EMS)方面,无人飞行器有可能通过利用旁观者的援助来增强救护车的能力,从而缩短提供紧急医疗干预的响应时间并改善紧急医疗服务的结果。值得注意的是,在阿片类药物过量病例中使用无人机特别有前景,因为它可以解决救护车在及时提供药物方面面临的挑战。本研究旨在优化无人机和旁观者与急救服务的整合,以最大限度地缩短过量干预的平均响应时间。方法/结果:我们通过一个马尔可夫决策过程来制定无人机与救护车的联合行动,该过程捕捉了随机急救车辆的行驶时间和旁观者的可用性。我们采用近似动态编程方法,通过基于神经网络的价值函数近似(NN-API),缓解高维状态变量和复杂决策带来的求解难题。为了设计近似值,我们根据无人机辅助急救系统的队列和地理属性构建了一组基函数。管理意义:模拟结果表明,就累积奖励而言,我们的 NN-API 政策往往优于几种值得注意的基于规则和优化的基准政策,尤其是在请求到达率高、可用救护车和无人机数量有限的情况下。研究结果还证明了将无人机纳入急救医疗系统的益处,以及智能实时运营策略在解决美国农村地区经常出现的容量不足问题方面的有效性。此外,研究结果还揭示了每种调度或重新部署策略对整体性能改善的具体贡献:本研究得到了美国国家科学[1761022 号拨款]的支持:在线附录见 https://doi.org/10.1287/msom.2022.0166。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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