论文标题

Uniprecis:共享物联网上共处服务的数据预处理解决方案

UniPreCIS : A data pre-processing solution for collocated services on shared IoT

论文作者

Das, Anirban, Singh, Navlika, Chakraborty, Suchetana

论文摘要

下一代智能城市应用程序是由物联网(IoT)和网络物理系统(CPS)的力量归因的,这在很大程度上取决于感应数据的质量。如今,随着智能应用程序的智能应用和企业的指数增长,如今,企业提供了传感,因此必须提供共同的感应基础架构以更好地利用资源。但是,利用低成本感应设备来实现具有成本效益的解决方案的共同传感基础架构仍然是未开发的领域。仍然需要一项重大的研究工作来建立基于优势的数据塑造解决方案,更可靠,功能丰富且具有成本效益,同时解决与多种服务质量(QOS)要求之间共享感应基础架构的相关挑战。在此方面,我们提出了一种新型的基于边缘的数据预处理解决方案,该解决方案命名为Uniprecis,该解决方案是低成本环境传感器的固有特征,并且相对于应用特定的QoS展示了测量动力学。 UniPrecis旨在通过执行传感器排名和选择,然后进行多模式数据预处理,以识别和选择质量数据源,以满足异质应用QoS,同时降低资源约束网络边缘的资源消耗足迹。如所观察到的,在提出的方法中,处理时间和记忆利用率已降低,同时达到90%的精度,与最新的传感技术相比,可以说是显着的。已经在测试床上评估了室内居住估算的特定用例,该案例证明了其有效性。

Next-generation smart city applications, attributed by the power of Internet of Things (IoT) and Cyber-Physical Systems (CPS), significantly rely on the quality of sensing data. With an exponential increase in intelligent applications for urban development and enterprises offering sensing-as-aservice these days, it is imperative to provision for a shared sensing infrastructure for better utilization of resources. However, a shared sensing infrastructure that leverages low-cost sensing devices for a cost effective solution, still remains an unexplored territory. A significant research effort is still needed to make edge based data shaping solutions, more reliable, feature-rich and costeffective while addressing the associated challenges in sharing the sensing infrastructure among multiple collocated services with diverse Quality of Service (QoS) requirements. Towards this, we propose a novel edge based data pre-processing solution, named UniPreCIS that accounts for the inherent characteristics of lowcost ambient sensors and the exhibited measurement dynamics with respect to application-specific QoS. UniPreCIS aims to identify and select quality data sources by performing sensor ranking and selection followed by multimodal data pre-processing in order to meet heterogeneous application QoS and at the same time reducing the resource consumption footprint for the resource constrained network edge. As observed, the processing time and memory utilization has been reduced in the proposed approach while achieving upto 90% accuracy which is arguably significant as compared to state-of-the-art techniques for sensing. The effectiveness of UniPreCIS has been evaluated on a testbed for a specific use case of indoor occupancy estimation that proves its effectiveness.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源