工业设备网络攻击的弹性检测

Y. A. Meeran, S. Shyry
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引用次数: 1

摘要

随着智能手机、笔记本电脑和家用电脑的出现,智能系统变得越来越灵活。随着互联网使用的增加,大多数第三方连接网站将出现更多的网络威胁。在提出的系统中讨论了用于检测物联网应用中存在的威胁的强大技术。基于KAGGLE入侵检测系统(NIDS)数据集,计算可能的攻击次数。系统检测到创建任务的类似入侵事件,触发模型通过立即通知用户来防止入侵。现有的攻击检测系统存在检测攻击时需要人工干预、检测速度较慢、检测不准确等局限性。提出了一种先进的深度学习算法来检测可能的入侵,以克服这些限制。提出的设计重点是使用自适应卷积神经网络创建一种新的架构,通过帮助立即检测入侵,提高准确性并显着提高检测率,高于当前方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resilient Detection of Cyber Attacks in Industrial Devices
With the advent of smartphones, laptops, and home computers, smart systems are becoming more and more flexible. As the use of internet increases, there will be more cyber threats occurring on most third-party connectivity websites. The powerful technique used to detect the threats present in the IoT applications are discussed in the proposed system. Based on the KAGGLE NIDS(Network Intrusion Detection System)(Intrusion Detection System) dataset, the number of possible attacks is calculated in the proposed architecture. A similar occurrence of intrusion creating a task is detected by the system, triggering the model to prevent the intrusion by notifying the user immediately. The existing attack detection systems have a number of limitations which includes the need of human intervention to detect the attacks encountered, slower detection rate and inaccuracy in detection. An advanced deep learning algorithm is proposed for detecting possible intrusions to overcome these limitations. The proposed design focuses on creating a Novel architecture using Adaptive convolutional neural network for improving the accuracy and significantly raising the detection rate above that of the current approaches there by aiding in the immediate detection of intrusions.
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