Over the past decade, industrial control systems have experienced a massive integration with information technologies. Industrial networks have undergone numerous technical transformations to protect operational and production processes, leading today to a new industrial revolution. Information Technology tools are not able to guarantee confidentiality, integrity and availability in the industrial domain, therefore it is of paramount importance to understand the interaction of the physical components with the networks. For this reason, usually, the industrial control systems are an example of Cyber-Physical Systems (CPS). This paper aims to provide a tool for the detection of cyber attacks in cyber-physical systems. This method is based on Machine Learning to increase the security of the system. Through the analysis of the values assumed by Machine Learning it is possible to evaluate the classification performance of the three models. The model obtained using the training set, allows to classify a sample of anomalous behavior and a sample that is related to normal behavior. The attack identification is implemented in water tank system, and the identification approach using Machine Learning aims to avoid dangerous states, such as the overflow of a tank. The results are promising, demonstrating its effectiveness.
翻译:过去十年来,工业控制系统经历了与信息技术的大规模整合;工业网络经历了许多技术变革,以保护操作和生产过程,如今又导致了新的工业革命;信息技术工具无法保证工业领域的保密性、完整性和可得性,因此,了解物理部件与网络的相互作用至关重要;因此,工业控制系统通常就是网络物理系统(CPS)的一个实例;本文件的目的是为探测网络物理系统中的网络攻击提供一种工具;这种方法以机器学习为基础,以加强系统的安全;通过分析机器学习所假设的价值观,有可能评估三种模式的分类性能;使用训练成套方法获得的模式,可以对异常行为和与正常行为有关的样本进行分类;攻击识别在储水罐系统中实施,并利用机器学习方法避免危险状态,例如坦克溢出;结果很有希望,展示其有效性。