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Neural network architecture to detect system faults / cyberattacks anomalies within a photovoltaic system connected to the grid

机译:神经网络架构,以检测连接到网格的光伏系统内的系统故障/网络攻击异常

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Anomaly detection is an important issue heavily investigated within different research areas and application domains. Its application in the industrial systems sector may be essential also for the protection of critical infrastructures. Due to the huge amount of involved data and to their complexity the use of machine learning may be the clue. The basic idea is describing an industrial process by a series of key attributes whose measures (the features) compose a state vector including heterogeneous types of measurements. Each feature should be a key attribute which can help discriminate between a normal functioning condition and an anomaly. In this context, the paper presents the use of a deep neural network architecture called autoencoder to detect anomalies due to either system faults or cyberattacks. The chosen application field is a photovoltaic system connected to the grid. The results, even if preliminary, are really promising.
机译:异常检测是在不同的研究领域和应用领域内大量调查的重要问题。其在工业系统部门的应用可能也必不可少用于保护关键基础设施。由于涉及数据的大量数据以及它们的复杂性,使用机器学习可能是线索。基本思想是通过一系列关键属性描述工业过程,其测量(特征)构成包括异构类型的测量的状态向量。每个功能应该是一个关键属性,可以帮助区分正常的运作条件和异常。在此上下文中,本文介绍了一个被称为AutoEncoder的深神经网络架构,以检测由于系统故障或网络ack而导致的异常。所选择的应用领域是连接到网格的光伏系统。结果,即使初步,也非常有希望。

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