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A Novel Ensemble Learning Algorithm Based on D-S Evidence Theory for IoT Security

机译:一种基于D-S证据理论的新型集合学习算法

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摘要

In the last decade, IoT has been widely used in smart cities, autonomous driving and Industry 4.0, which lead to improve efficiency, reliability, security and economic benefits. However, with the rapid development of new technologies, such as cognitive communication, cloud computing, quantum computing and big data, the IoT security is being confronted with a series of new threats and challenges. IoT device identification via Radio Frequency Fingerprinting (RFF) extracting from radio signals is a physical-layer method for IoT security. In physical-layer, RFF is a unique characteristic of IoT device themselves, which can difficultly be tampered. Just as people's unique fingerprinting, different IoT devices exhibit different RFF which can be used for identification and authentication. In this paper, the structure of IoT device identification is proposed, the key technologies such as signal detection, RFF extraction, and classification model is discussed. Especially, based on the random forest and Dempster-Shafer evidence algorithm, a novel ensemble learning algorithm is proposed. Through theoretical modeling and experimental verification, the reliability and differentiability of RFF are extracted and verified, the classification result is shown under the real IoT device environments.
机译:在过去的十年中,物联网已广泛应用于智能城市,自动驾驶和行业4.0,这导致提高效率,可靠性,安全性和经济效益。然而,随着新技术的快速发展,如认知通信,云计算,量子计算和大数据,IOT安全性正在面临一系列新的威胁和挑战。通过射频指纹(RFF)从无线电信号提取的IoT设备识别是IOT安全性的物理层方法。在物理层中,RFF是IOT设备本身的独特特征,难以篡改。就像人们独特的指纹识别一样,不同的IOT设备展示了不同的RFF,可用于识别和认证。在本文中,提出了IOT设备识别的结构,讨论了诸如信号检测,RFF提取和分类模型的关键技术。特别是,基于随机森林和Dempster-Shafer证据算法,提出了一种新的集合学习算法。通过理论建模和实验验证,提取和验证RFF的可靠性和可分性,分类结果显示在真实的IOT设备环境下。

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