SeqFuzzer: An Industrial Protocol Fuzzing Framework from a Deep Learning Perspective

Hui Zhao, Zhihui Li, Hansheng Wei, Jianqi Shi, Yanhong Huang
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引用次数: 32

Abstract

Industrial networks are the cornerstone of modern industrial control systems. Performing security checks of industrial communication processes helps detect unknown risks and vulnerabilities. Fuzz testing is a widely used method for performing security checks that takes advantage of automation. However, there is a big challenge to carry out security checks on industrial network due to the increasing variety and complexity of industrial communication protocols. In this case, existing approaches usually take a long time to model the protocol for generating test cases, which is labor-intensive and time-consuming. This becomes even worse when the target protocol is stateful. To help in addressing this problem, we employed a deep learning model to learn the structures of protocol frames and deal with the temporal features of stateful protocols. We propose a fuzzing framework named SeqFuzzer which automatically learns the protocol frame structures from communication traffic and generates fake but plausible messages as test cases. For proving the usability of our approach, we applied SeqFuzzer to widely-used Ethernet for Control Automation Technology (EtherCAT) devices and successfully detected several security vulnerabilities.
SeqFuzzer:深度学习视角下的工业协议模糊框架
工业网络是现代工业控制系统的基石。执行工业通信过程的安全检查有助于检测未知的风险和漏洞。模糊测试是一种广泛使用的方法,用于执行利用自动化的安全检查。然而,由于工业通信协议的多样性和复杂性的增加,对工业网络进行安全检查带来了很大的挑战。在这种情况下,现有的方法通常需要花费很长时间来为生成测试用例的协议建模,这是一项劳动密集型的工作,而且非常耗时。如果目标协议是有状态的,情况就更糟了。为了帮助解决这个问题,我们采用了一个深度学习模型来学习协议框架的结构,并处理有状态协议的时间特征。我们提出了一个名为SeqFuzzer的模糊测试框架,它自动从通信流量中学习协议框架结构,并生成虚假但可信的消息作为测试用例。为了证明我们方法的可用性,我们将SeqFuzzer应用于广泛使用的以太网控制自动化技术(EtherCAT)设备,并成功检测到几个安全漏洞。
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