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Implementation of ransomware prediction system based on weighted-KNN and real-time isolation architecture on SDN Networks

机译:基于加权KNN和实时隔离架构的勒索软件预测系统在SDN网络上的实现

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In May 2017, hackers used the ransomware WannaCry to launch large-scale attacks on 150 countries, affecting every industry. Therefore, detection and control of the ransomware virus has become an important issue for security experts in recent years. Recently, machine learning, deep learning, and artificial intelligence technologies have become increasingly mature. Many companies (such as Google) have introduced software-defined networking (SDN) to replace the original network architecture, traffic routing, and network configuration control management. Therefore, this paper proposes a ransomware prediction system based on weighted-K-Nearest-Neighbor. This system includes the detection and prediction of ransomware packet traffic and design and the implementation of a dynamic isolation system integrated SDN. The experimental results show that the precision of detecting normal flow and abnormal flow is 99.7 and 97.7, respectively.
机译:2017年5月,黑客使用勒索软件WannaCry对150个国家/地区发起了大规模攻击,影响了每个行业。因此,近年来,勒索软件病毒的检测和控制已成为安全专家的重要课题。最近,机器学习,深度学习和人工智能技术变得越来越成熟。许多公司(例如Google)已经引入了软件定义网络(SDN),以取代原始的网络体系结构,流量路由和网络配置控制管理。因此,本文提出了一种基于加权K最近邻的勒索软件预测系统。该系统包括勒索软件数据包流量的检测和预测,以及集成SDN的动态隔离系统的设计和实现。实验结果表明,正常流量和异常流量的检测精度分别为99.7和97.7。

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