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SS7 Vulnerabilities—A Survey and Implementation of Machine Learning vs Rule Based Filtering for Detection of SS7 Network Attacks

机译:SS7漏洞 - 机器学习的调查与实现VS基于规则的滤波检测SS7网络攻击

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The Signalling System No. 7 (SS7) is used in GSM/UMTS telecommunication technologies for signalling and management of communication. It was designed on the concept of private boundary walled technology having mutual trust between few national/multinational operators with no inherent security controls in 1970s. Deregulation, expansion, and merger of telecommunication technology with data networks have vanquished the concept of boundary walls hence increasing the number of service providers, entry points, and interfaces to the SS7 network, which made it vulnerable to serious attacks. The SS7 exploits can be used by attackers to intercept messages, track a subscriber's location, tape/redirect calls, adversely affect disaster relief operations, drain funds of individuals from banks in combination with other methods and send billions of spam messages. This paper provides a comprehensive review of the SS7 attacks with detailed methods to execute attacks, methods to enter the SS7 core network, and recommends safeguards against the SS7 attacks. It also provides a machine learning based framework to detect anomalies in the SS7 network which is compared with rule based filtering. It further presents a conceptual model for the defense of network.
机译:信号系统No.7(SS7)用于GSM / UMTS电信技术,用于通信的信令和管理。它是在私人边界围墙技术的概念上设计,在少数国家/多国运营商之间具有相互信任,20世纪70年代没有固有的安全控制。通过数据网络的电信技术的放松管制,扩展和合并已经消灭了边界墙的概念,因此增加了SS7网络的服务提供商,入口点和接口的数量,这使得它变得容易受到严重攻击。 SS7的攻击可以由攻击者使用拦截消息,跟踪用户的位置,磁带/重定向呼叫,对救灾操作产生不利影响,与其他方法结合使用银行的个人资金并发送数十亿条垃圾邮件。本文对SS7攻击提供了全面的审查,详细的执行攻击,进入SS7核心网络的方法,并建议对SS7攻击进行保障措施。它还提供了一种基于机器学习的框架,用于检测SS7网络中的异常,其与基于规则的滤波进行比较。它进一步提出了一种捍卫网络的概念模型。

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