Intrusion Detection using Deep Neural Network Algorithm on the Internet of Things

Syariful Ikhwan, Adi Wibowo, B. Warsito
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引用次数: 1

Abstract

The increasing use of IoT devices on future networks is very helpful for humans in their lives. However, the increase in devices connected to IoT networks also increases the potential for attacks against those networks. Vulnerabilities in Internet of Things (IoT) networks can be exposed at any time. Artificial intelligence can be used to protect the IoT network by being able to detect attacks on the network so that they can be prevented. In this study, network detection was carried out using the Deep Neural Network (DNN) algorithm. The test was carried out using the UNSW Bot-IoT dataset with a comparison of training data of 75% of the overall data. The results obtained show the ability of the algorithm to detect attacks on average with 99.999% accuracy. The validation loss and training loss look very small. In this study, there is a validation loss that still occurs in overfitting, but the difference is very small.
基于深度神经网络算法的物联网入侵检测
在未来网络中越来越多地使用物联网设备对人类的生活非常有帮助。然而,连接到物联网网络的设备的增加也增加了针对这些网络的攻击的可能性。物联网(IoT)网络中的漏洞随时可能暴露。人工智能可以通过检测网络上的攻击来保护物联网网络,从而防止攻击。在本研究中,使用深度神经网络(DNN)算法进行网络检测。该测试是使用UNSW Bot-IoT数据集进行的,其中训练数据占总数据的75%。实验结果表明,该算法检测攻击的平均准确率为99.999%。验证损失和训练损失看起来非常小。在本研究中,过拟合仍然存在验证损失,但差异很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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