A Big Sensor Data Offloading Scheme in Rail Networks

Mahdi Saki, M. Abolhasan, J. Lipman
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引用次数: 2

Abstract

In this paper, we propose an offloading scheme to transfer massive stored sensor data from rolling stock to railway data centers. We apply a delayed offloading strategy for non-critical stored data assuming that the critical data has been already separated through an appropriate edge processing task and has been sent via a real-time communication such as cellular networks. We propose train stations as potential and feasible spots for data offloading via available wireless local area networks (WLAN) such as existing WiFi network at stations. Thus, stations will not only be the places of passenger exchange but also data exchange. We develop an analytical model customized for the proposed offloading strategy in rail applications. Then we validate the performance of our model through simulation in various scenarios in Omnet. The simulation results shows an accuracy of %98.67 for the proposed analytical model with reference to the simulation results in Omnetpp. Additionally, by using our proposed scheme, we can theoretically offload up to 5.43 GB per each stopping station.
一种铁路网络大传感器数据卸载方案
本文提出了一种将大量存储的传感器数据从机车车辆传输到铁路数据中心的卸载方案。我们对非关键存储数据应用延迟卸载策略,假设关键数据已经通过适当的边缘处理任务分离,并通过蜂窝网络等实时通信发送。我们建议火车站作为通过可用的无线局域网(WLAN)(如车站现有的WiFi网络)进行数据卸载的潜在和可行的地点。因此,车站不仅是乘客交换的场所,也是数据交换的场所。我们为铁路应用中提出的卸载策略开发了一个定制的分析模型。然后在Omnet中通过各种场景的仿真验证了模型的性能。仿真结果表明,与Omnetpp的仿真结果相比较,所提出的分析模型的精度为98.67 %。此外,通过使用我们提出的方案,理论上每个站点最多可以卸载5.43 GB的数据。
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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