计算机科学
智能电网
服务拒绝攻击
软件定义的网络
入侵检测系统
网格
朴素贝叶斯分类器
人工神经网络
防火墙(物理)
数据挖掘
可靠性(半导体)
分布式计算
实时计算
机器学习
支持向量机
功率(物理)
生态学
物理
几何学
互联网
数学
施瓦西半径
经典力学
量子力学
万维网
万有引力
生物
带电黑洞
作者
B Prasath,P Deepa,K. Kalaivani,Wasim Raja A,S Gokila,V. Narasimharaj
标识
DOI:10.1109/icstcee56972.2022.10100108
摘要
SDN can help the power communication network function more efficiently and conform to the Smart Grid's need for centralised control. There are a variety of network attacks that might be launched against the SDN controller. A significant danger to the data integrity of smart grids is posed by malicious software, which often use encryption or tunnelling techniques to get beyond firewalls, intrusion detection systems, and other protective measures. For the safety and reliability of the Smart Grid, it is crucial that irregular flow be detected accurately. Conventional machine learning techniques, such as and the Naive Bayes classifier, were the basis of earlier efforts. Low accuracy for huge, high-dimensional network flows are a result of their simplistic, surface-level feature learning. In this study, we create a system for detecting anomalous flows, called ABFlow, using Optimized Siamese neural networks. These networks operate well when only little data is provided for training. By examining the trajectory data with several parameter measurements, the model may identify irregular traffic flows. The suggested strategy is then tested on the DDoS-SDN and InSDN datasets to determine how well it performs. The experimental findings prove that the ABFlow can effectively identify anomalous flow in the SDN-based Smart Grid, greatly outperforming existing tactics in terms of accuracy and FPR.
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