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Deep Learning based Efficient Anomaly Detection for Securing Process Control Systems against Injection Attacks

机译:基于深度学习的注射攻击过程控制系统的高效异常检测

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Modern Industrial Control Systems (ICS) represent a wide variety of networked infrastructure connected to physical world. Depending on the application, these control systems are termed as Process Control Systems (PCS), Supervisory Control and Data Acquisition (SCADA) systems, Distributed Control Systems (DCS) or Cyber Physical Systems (CPS). ICS are designed for reliability; but security especially against cyber threats, is also a critical need. In particular, an intruder can inject false data to disrupt the system operation. Existing approaches are not satisfactory as novel attacks against critical industries are frequently identified. Despite significant effort and progress, attacks continue to evolve. Anomaly-based detection approaches are used to detect attacks that features the injection of spurious measurement data and proven to be efficient. In this paper, we develop injection attack detection system that uses deep learning algorithms such as stacked auto encoders and deep belief networks that are tailored to identify different types of injection attacks. A model plant is used to obtain different data such as sensor and actuator measurements and specific attacks were injected into the data. The injected attacks vary in behaviour for training and testing of the proposed schema. Performance metrics to evaluate the efficiency of the proposed anomaly detection approach is presented.
机译:现代工业控制系统(IC)代表与物理世界相连的各种网络基础设施。根据应用,这些控制系统被称为过程控制系统(PC),监控和数据采集(SCADA)系统,分布式控制系统(DCS)或网络物理系统(CPS)。 ICS专为可靠性而设计;但是,尤其是对网络威胁的安全,也是一种危急需要。特别地,入侵者可以注入错误数据以破坏系统操作。随着经常确定对关键产业的新攻击,现有方法并不令人满意。尽管努力和进步,但袭击继续发展。基于异常的检测方法用于检测具有注射虚假测量数据并经过证明的攻击的攻击。在本文中,我们开发了注射攻击检测系统,它使用深度学习算法,例如堆叠的自动编码器和深度信仰网络,这些网络被量身定制,以识别不同类型的注射攻击。模型工厂用于获得不同的数据,例如传感器和致动器测量,并且将特定攻击注入数据。注入的攻击因培训和测试建议的架构的行为而异。介绍了绩效指标,以评估所提出的异常检测方法的效率。

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