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Predicting the Propagation Path of Random Worm by Subnet Infection Situation Using Fuzzy Reasoning

机译:基于模糊推理的子网感染情况预测随机蠕虫传播路径

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摘要

Predicting the propagation path of a network worm is highly beneficial for taking appropriate countermeasures in advance. Traditional worm propagation models mainly deal with the total number of infected hosts during a period of time, which cannot indicate a worm's track. We choose the worm using random scanning to study, as it was the basic type and all the others were derived from it. A novel model proposed in this paper locates the subnets going to be infected at a given time based on the infection measurement of the subnet. The time and frequency for victims in the subnet to increase were calculated according to common characteristics of worm diffusion and the relationship between malicious traffic and bandwidth usage. Taking the two factors above as input, fuzzy reasoning was adopted to deduce the real-time infection situation for each subnet. The bigger the value of infection situation, the more likely the corresponding subnet would be attacked in a short time. Simulation experimental results show that the model estimates the worm's track dynamically with acceptable accuracy. Furthermore, the increase interval of victims in subnet is much longer for worm with slower spread speed, which provides sufficient time to carry out pertinent response.
机译:预测网络蠕虫的传播路径对于提前采取适当的对策非常有帮助。传统的蠕虫传播模型主要处理一段时间内被感染主机的总数,无法指示蠕虫的踪迹。我们选择蠕虫为对象进行随机扫描进行研究,因为它是基本类型,其他所有蠕虫均源自该蠕虫。本文提出的一种新颖模型基于子网的感染度量来确定在给定时间要感染的子网。根据蠕虫扩散的共同特征以及恶意流量和带宽使用之间的关系,计算出子网中受害者增加的时间和频率。以上述两个因素为输入,采用模糊推理推导每个子网的实时感染情况。感染情况的价值越大,相应的子网在短时间内受到攻击的可能性就越大。仿真实验结果表明,该模型以可接受的精度动态估计蠕虫的轨迹。此外,蠕虫传播速度较慢时,子网中受害者的增加间隔更长,这为执行相关响应提供了足够的时间。

著录项

  • 来源
    《The Computer journal》 |2012年第4期|p.487-496|共10页
  • 作者单位

    Department of Computer and Information Management, Guangxi University of Finance and Economics,Nanning, Guangxi Zhuang Autonomous Region 530003, China;

    Center of Dependable and Secure Computing, Wuhan Digital Engineering Institute, Wuhan,Hubei Province 430074, China;

    Department of Computer and Information Management, Guangxi University of Finance and Economics,Nanning, Guangxi Zhuang Autonomous Region 530003, China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    network worm; random scanning strategy; propagation path; infection measurement; infection situation; fuzzy reasoning;

    机译:网络蠕虫随机扫描策略;传播路径感染测量;感染情况;模糊推理;

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