基于无人机的创伤损伤应急医疗服务网络优化研究*

Ruijiu Mao, Bin Du, Dengfeng Sun, N. Kong
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引用次数: 9

摘要

紧急医疗服务必须具有时效性。然而,在很多情况下,由于物流不便,无法保证满意的服务。由于其易于部署和广泛访问的性质,无人机(uav)具有改善服务的潜力,特别是在传统上服务不足的地区。本文研究了无人机基地定位、无人机机群配置、需求节点划分等服务网络优化问题。以数值模拟服务区等待时间为目标,建立了服务区位置分配优化模型。采用遗传算法对优化模型进行求解。我们在创伤性损伤案例中测试了我们的网络优化方法。通过将我们的方法与Boutilier等人[1]的两阶段方法进行比较,我们建议将平均等待时间减少60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing a UAV-based Emergency Medical Service Network for Trauma Injury Patients*
Emergency medical service must be time sensitive. However, in many cases, satisfactory service cannot be ensured due to inconvenient logistics. For its easily deployable and widely accessible nature, unmanned aerial vehicles (UAVs) have the potential to improve the service, especially in areas that are traditionally under-served. In this paper, we develop a service network optimization problem for locating UAV bases, staffing a UAV fleet at each constructed base, and zoning demand nodes. We formulate a location-allocation optimization model with numerically simulated waiting times for the service zones as the objective. We adapt a genetic algorithm to solve the optimization model. We test our network optimization approach on instances of traumatic injury cases. By comparing our approach to a two-phase method in Boutilier et al. [1], we suggest an up to 60% reduction in mean waiting time.
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