MDT-based Intelligent Route Selection for 5G-Enabled Connected Ambulances.

Muhammad Umar Bin Farooq, Marvin Manalastas, Haneya Qureshi, Yongkang Liu, Ali Imran, Mohamad Omar Al Kalaa
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Abstract

The fifth generation of cellular network (5G) can facilitate in-ambulance patient monitoring, diagnosis, and treatment by a remote specialist. However, 5G coverage and link quality can vary in time and location. The ambulance route selection can help meet the communication requirements of the in-ambulance applications. In this paper, we propose an innovative ambulance route selection framework which combines the communication requirements along with the network coverage and resources. The framework leverages the minimization of drive test (MDT) data to estimate the network coverage along the ambulance routes. To address the uneven distribution of location-based user-generated MDT data, we examine the performance and trustworthiness of several interpolation techniques to enrich the global MDT map for route selection. A simulated analysis shows that the proposed framework can dynamically adapt to varying application requirements as well as rapidly changing network conditions such as outages. Results also reveal that nearest neighbor and kriging interpolation techniques help complement the proposed framework by addressing the data sparsity problem.

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基于 MDT 的 5G 互联救护车智能路线选择。
第五代蜂窝网络(5G)可方便远程专家对救护车内的病人进行监测、诊断和治疗。然而,5G 的覆盖范围和链路质量可能因时间和地点而异。救护车路由选择有助于满足救护车内应用的通信要求。在本文中,我们提出了一种创新的救护车路由选择框架,它将通信要求与网络覆盖和资源相结合。该框架利用最小化驾驶测试(MDT)数据来估计救护车路线沿线的网络覆盖。为了解决基于位置的用户生成的 MDT 数据分布不均的问题,我们研究了几种插值技术的性能和可信度,以丰富用于路线选择的全局 MDT 地图。模拟分析表明,所提出的框架可以动态地适应不同的应用需求以及快速变化的网络条件(如中断)。结果还显示,近邻插值和克里金插值技术通过解决数据稀疏问题,有助于补充所提出的框架。
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