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Using Machine Learning to Secure IoT Systems

机译:使用机器学习来保护IOT系统

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The Internet of Things (IoT) is a massive group of devices containing sensors or actuators connected together over wired or wireless networks. With an estimate of over 25 billion devices connected together by 2020, IoT has been rapidly growing over the past decade. During the growth, security has been identified as one of the weakest areas in IoT. When implementing security within an IoT network, there are several challenges including heterogeneity within the system as well as the quantity of devices that need to be addressed. To approach the challenges in securing IoT devices, we propose using machine learning within an IoT gateway to help secure the system. We investigate using Artificial Neural Networks in a gateway to detect anomalies in the data sent from the edge devices. We are convinced that this approach can improve the security of IoT systems.
机译:物联网(物联网)是包含连接在线或无线网络上的传感器或执行器的大量设备组。 估计超过2020年的超过250亿台设备,在过去十年中一直在迅速发展。 在增长期间,安全已被确定为物联网最薄弱的领域之一。 在IOT网络中实现安全性时,存在多种挑战,包括系统内的异质性以及需要解决的设备数量。 要接近保护IoT设备的挑战,我们建议在IOT网关内使用机器学习来帮助保护系统。 我们在网关中使用人工神经网络进行调查,以检测从边缘设备发送的数据中的异常。 我们确信这种方法可以改善物联网系统的安全性。

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