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VIRTUAL SENSOR SUPERVISED LEARNING FOR CYBER-ATTACK NEUTRALIZATION

机译:虚拟传感器监督学习网络攻击中和

摘要

An industrial asset may have monitoring nodes that generate current monitoring node values. A dynamic, resilient estimator may split a temporal monitoring node space into normal and one or more abnormal subspaces associated with different kinds of attack vectors. According to some embodiments, a neutralization model is constructed and trained for each attack vector using supervised learning and the associated abnormal subspace. In other embodiments, a single model is created using out-of-range values for abnormal monitoring nodes. Responsive to an indication of a particular abnormal monitoring node or nodes, the system may automatically invoke the appropriate neutralization model to determine estimated values of the particular abnormal monitoring node or nodes (e.g., by selecting the correct model or using out-of-range values). The series of current monitoring node values from the abnormal monitoring node or nodes may then be replaced with the estimated values.
机译:工业资产可能具有监视节点,可以生成当前监控节点值。动态的弹性估计器可以将时间监测节点空间分成正常和与不同类型的攻击向量相关联的一个或多个异常子空间。根据一些实施例,使用监督学习和相关的异常子空间构造和培训中和模型,针对每个攻击载体培训。在其他实施例中,使用用于异常监视节点的范围超出值来创建单个模型。响应于特定异常监视节点或节点的指示,系统可以自动调用适当的中和模型以确定特定异常监视节点或节点的估计值(例如,通过选择正确的模型或使用超出范围的值)。然后可以用估计值替换来自异常监视节点或节点的电流监视节点值。

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