EDGE AI for Heterogeneous and Massive IoT Networks

Sifan Chen, Peng Gong, Bin Wang, A. Anpalagan, M. Guizani, Chungang Yang
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引用次数: 3

Abstract

By combining multiple sensing and wireless access technologies, the Internet of Things (IoT) shall exhibit features with large-scale, massive, and heterogeneous sensors and data. To integrate diverse radio access technologies, we present the architecture of heterogeneous IoT system for smart industrial parks and build an IoT experimental platform. Various sensors are installed on the IoT devices deployed on the experimental platform. To efficiently process the raw sensor data and realize edge artificial intelligence (AI), we describe four statistical features of the raw sensor data that can be effectively extracted and processed at the network edge in real time. The statistical features are calculated and fed into a back-propagation neural network (BPNN) for sensor data classification. By comparing to the k-nearest neighbor classification algorithm, we examine the BPNN-based classification method with a great amount of raw data gathered from various sensors. We evaluate the system performance according to the classification accuracy of BPNN and the performance indicators of the cloud server, which shows that the proposed approach can effectively enable the edge-AI-based heterogeneous IoT system to process the sensor data at the network edge in real time while reducing the demand for computing and network resources of the cloud.
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面向异构和大规模物联网网络的EDGE AI
通过多种传感和无线接入技术的结合,物联网将呈现出传感器和数据大规模、海量、异构的特点。为整合多种无线接入技术,提出了面向智能工业园区的异构物联网系统架构,搭建了物联网实验平台。在实验平台上部署的物联网设备上安装了各种传感器。为了有效地处理原始传感器数据并实现边缘人工智能(AI),我们描述了可以在网络边缘实时有效提取和处理的原始传感器数据的四个统计特征。计算统计特征并将其输入反向传播神经网络(BPNN)用于传感器数据分类。通过与k近邻分类算法的比较,我们使用从各种传感器收集的大量原始数据来检验基于bpnn的分类方法。根据BPNN的分类精度和云服务器的性能指标对系统性能进行评估,表明本文方法可以有效地使基于边缘人工智能的异构物联网系统实时处理网络边缘的传感器数据,同时减少对云计算和网络资源的需求。
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