Alam Kazi Masudul, Saini Mukesh, El Saddik Abdulmotaleb
Multimedia Computing Research Laboratory, University of Ottawa, Ottawa, ON K1N 6N5, Canada.
Division of Engineering, New York University in Abu Dhabi, United Arab Emirates.
Sensors (Basel). 2015 Sep 15;15(9):23262-85. doi: 10.3390/s150923262.
Social Internet of Things (SIoT) has gained much interest among different research groups in recent times. As a key member of a smart city, the vehicular domain of SIoT (SIoV) is also undergoing steep development. In the SIoV, vehicles work as sensor-hub to capture surrounding information using the in-vehicle and Smartphone sensors and later publish them for the consumers. A cloud centric cyber-physical system better describes the SIoV model where physical sensing-actuation process affects the cloud based service sharing or computation in a feedback loop or vice versa. The cyber based social relationship abstraction enables distributed, easily navigable and scalable peer-to-peer communication among the SIoV subsystems. These cyber-physical interactions involve a huge amount of data and it is difficult to form a real instance of the system to test the feasibility of SIoV applications. In this paper, we propose an analytical model to measure the workloads of various subsystems involved in the SIoV process. We present the basic model which is further extended to incorporate complex scenarios. We provide extensive simulation results for different parameter settings of the SIoV system. The findings of the analyses are further used to design example adaptation strategies for the SIoV subsystems which would foster deployment of intelligent transport systems.
近年来,社交物联网(SIoT)在不同研究群体中引起了广泛关注。作为智慧城市的关键组成部分,SIoT的车辆领域(SIoV)也在迅速发展。在SIoV中,车辆充当传感器枢纽,利用车载和智能手机传感器捕获周围信息,然后将其发布给消费者。以云为中心的信息物理系统能更好地描述SIoV模型,其中物理传感 - 驱动过程在反馈回路中影响基于云的服务共享或计算,反之亦然。基于网络的社交关系抽象使得SIoV子系统之间能够进行分布式、易于导航和可扩展的对等通信。这些信息物理交互涉及大量数据,很难形成系统的实际实例来测试SIoV应用的可行性。在本文中,我们提出了一个分析模型来衡量SIoV过程中各个子系统的工作量。我们展示了基本模型,并进一步扩展以纳入复杂场景。我们为SIoV系统的不同参数设置提供了广泛的仿真结果。分析结果进一步用于为SIoV子系统设计示例适配策略,这将促进智能交通系统的部署。