Smart Sensor Networks for Industrial IoT Applications

Nihal N. Mostafa, Esmeralda Kazia
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引用次数: 0

Abstract

Smart Sensor Networks (SSNs) are an indispensable part of the Industrial Internet of Things (IIoT), which seeks to improve efficiency, productivity, and safety in different industrial applications. SSNs consist of a large number of sensors, regularly deployed in a wireless ad-hoc network, which communicates with each other and with other devices, such as gateways and servers. Nevertheless, the building of SSNs in IIoT environments encounters many challenges, such as trust management, data reliability, privacy, and security. These challenges necessitate proposing novel solutions and protocols, to provide a reliable, secure, and efficient SSN. To this end, this study presents a novel DL system that can effectively discriminate between normal traffics and malicious traffic in SSNs. A convolutional feature extractor is developed to learn important discriminative features necessary for the early detection of security threats in SSNs. Then, an improved LSTM (ILSTM) is presented to model the temporal dynamics of the SSNs flows, which helps model long interdependency between traffic samples. A focal loss function is applied to deal with the imbalance between class samples. Experimental analysis is performed on an open-source SSN security dataset, named WSN-DS, the findings demonstrated the competitive advantages of our system over the prevailing solutions.
工业物联网应用的智能传感器网络
智能传感器网络(ssn)是工业物联网(IIoT)不可或缺的一部分,旨在提高不同工业应用的效率、生产力和安全性。ssn由大量传感器组成,定期部署在无线自组织网络中,该网络相互通信,并与网关和服务器等其他设备通信。然而,工业物联网环境下的ssn建设面临着信任管理、数据可靠性、隐私性和安全性等诸多挑战。这些挑战需要提出新颖的解决方案和协议,以提供可靠、安全和高效的SSN。为此,本研究提出了一种新的深度学习系统,可以有效地区分ssn中的正常流量和恶意流量。开发了一种卷积特征提取器来学习早期检测安全威胁所需的重要判别特征。然后,提出了一种改进的LSTM (ILSTM)来模拟ssn流的时间动态,这有助于模拟流量样本之间的长期相互依赖关系。采用焦点损失函数来处理类样本之间的不平衡。实验分析是在一个开源的SSN安全数据集(命名为WSN-DS)上进行的,结果表明我们的系统相对于主流解决方案具有竞争优势。
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CiteScore
1.70
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0.00%
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