As a promising architecture, Mobile Data Collector (MDC) enhanced Internet of Things (IoT) exhibits broad prospects in efficient data collection and data aggregation especially for sparse deployment scenarios. Combining the tools from queueing theory and stochastic geometry, we propose an analytical framework to study the network performance of an MDC enhanced IoT network, in terms of coverage probability, end-to-end delay and energy consumption. We derive the closed-form expressions for average contact and inter-contact time between a sensor and its associated MDC. By modeling the data collection system between a sensor and its associated MDCs as an M/G/1 queue system with vacations and general limited (G-limited) service, we first derive the queueing delay at the tagged sensor, and further obtain the end-to-end delay. The proposed analytical framework enables us to quantify the effect on network performance of key system parameters, such as MDC velocity, packet arrival rate, densities of sensors and MDCs, and contact radius. This study reveals that the MDC velocity has little impact on the coverage probability, and provides guidelines to minimize the end-to-end delay by optimizing the density and contact radius of sensors, and the velocity and density of MDCs.
翻译:作为前景良好的结构,移动数据收集者(MDC)强化了物联网(IoT)在高效数据收集和数据汇总方面展示了广阔的前景,特别是在部署情况稀少的情况下。我们提议了一个分析框架,从覆盖面概率、端到端延迟和能源消耗等方面,研究MDC强化的IoT网络网络网络的网络性能。我们从传感器及其相关MDC之间平均接触和接触时间的封闭式表达式中得出。通过将传感器及其相关M/G/1队列系统作为M/G/1队列系统,以假期和一般有限(G-有限)服务的形式建模,我们首先在标记的传感器上排队列延迟,并进一步获得端到端的延迟。拟议的分析框架使我们能够量化关键系统参数(例如MDC速度、包装抵达率、传感器和MDC的密度和接触中枢)对网络性能的影响。这项研究显示,MDC速度对覆盖范围概率影响不大,我们首先在标记的传感器和一般有限(G-有限)排队列排队列排队列时,然后在标记传感器排队列的排队列上排队延迟,并进一步获取端端到端点。拟议的分析框架,通过优化MDMCC的密度和高度的密度和最短的频率和高度的频率,以提供准则。