救护车需求区域的多因素活动检测:以曼谷为例

Suriyaphong Nilsang, C. Yuangyai
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引用次数: 1

摘要

在许多城市,紧急医疗服务(EMS)管理面临的一大挑战是在紧急呼叫发生时及时响应需求。为了尽量减少病人死亡率和残疾,紧急医疗服务的反应时间至关重要。然而,由于经济面积、居住密度、人口密度、交通拥堵和疫情面积的不断增长。这些因素正在成为运营层面规划的复杂问题,这需要准确和实时的需求区域估计,以分配救护车设施的责任区域,同时最大限度地减少对紧急情况的响应时间,并保持低运营成本。因此,在本文中,我们提出了一个概念框架,将多因素数据,包括社会媒体的历史数据和实时数据,整合到实时EMS管理中。本文提出了一种利用时变核密度估计(KDE)转换与救护服务相关的多个因素(点位置和权重)来识别和分析数据收集中的活动热点的方法,用于可视化和检测活动信息的异常强度,从而改进EMS系统。并将模型应用于曼谷EMS的案例研究。
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Activity detection for multi-factors of ambulance demand areas: A case study in Bangkok
One of the big challenges for the management of emergency medical service (EMS) in many urbans is a timely demand response when an emergency call occurs. To minimize patient mortality and disability, the response time of emergency medical services is critical. However, due to the continuous growth of the economic area, residential density, population density, traffic congestion, and epidemic area. Those factors are becoming complex issues for operation level planning, which need accurate and real-time demand area estimates to assign the area of responsibility for ambulance facilities while minimizing response time to emergencies and keep operating costs low. Therefore, in this article, we propose a conceptual framework for integrating multiple factors data both historical data and real-time data from social media to real-time EMS management. We propose an approach for identifying and analyzing hot spots of activity in data collections by using time-varying kernel density estimation (KDE) to convert multiple factors related to ambulance service (point locations and weight) for visualization and detection of abnormal intensities of the activity information and leads to the improvement of the EMS system. In addition, our model was applied to the case study of Bangkok EMS.
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