构建IPv6全局命中表及有效探测IPv6地址空间

Guanglei Song, Lin He, Zhiliang Wang, Jiahai Yang, Tao Jin, Jieling Liu, Guo Li
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引用次数: 9

摘要

IPv4快速扫描在网络测量和安全研究方面取得了长足的进步。但是,对IPv6地址空间进行暴力扫描是不可行的。我们可以通过扫描由最先进的算法生成的候选地址来找到活跃的IPv6地址,但是其对活跃IPv6地址的探测效率仍然很低。在本文中,我们的目标是通过两种方式提高IPv6地址的探测效率。首先,我们进行了为期四个月的纵向主动测量研究,建立了一个名为hitlist的高质量数据集,其中包含分布在45.2万个BGP前缀中的13亿个IPv6地址。与以往不同的是,我们使用基于模式的算法来探测宣布的BGP前缀,这使得我们的数据集克服了地址分布不均匀和活跃率低的问题。其次,提出了一种高效的地址生成算法DET,该算法构建密度空间树,在线性时间内学习种子地址的高密度地址区域,提高了主动地址的探测效率;在公共热门列表和我们的热门列表上,我们将我们的算法DET与最先进的算法进行了比较,发现通过扫描5000万个地址,DET将去混别名的活动地址比率提高了10%,活动地址(包括混别名地址)比率提高了14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards the Construction of Global IPv6 Hitlist and Efficient Probing of IPv6 Address Space
Fast IPv4 scanning has made sufficient progress in network measurement and security research. However, it is infeasible to perform brute-force scanning of the IPv6 address space. We can find active IPv6 addresses through scanning candidate addresses generated by the state-of-the-art algorithms, whose probing efficiency of active IPv6 addresses, however, is still very low. In this paper, we aim to improve the probing efficiency of IPv6 addresses in two ways. Firstly, we perform a longitudinal active measurement study over four months, building a high-quality dataset called hitlist with more than 1.3 billion IPv6 addresses distributed in 45.2k BGP prefixes. Different from previous work, we probe the announced BGP prefixes using a pattern-based algorithm, which makes our dataset overcome the problems of uneven address distribution and low active rate. Secondly, we propose an efficient address generation algorithm DET, which builds a density space tree to learn high-density address regions of the seed addresses in linear time and improves the probing efficiency of active addresses. On the public hitlist and our hitlist, we compare our algorithm DET against state-of-the-art algorithms and find that DET increases the de-aliased active address ratio by 10%, and active address (including aliased addresses) ratio by 14%, by scanning 50 million addresses.
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