Artificial Intelligence based Anomaly Detection and Classification for Grid-Interactive Cascaded Multilevel Inverters

Matthew Baker, Hassan Althuwaini, M. Shadmand
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引用次数: 7

Abstract

The cascaded multi-level inverter (CMI) is becoming increasingly popular for wide range of applications in power electronics dominated grid (PEDG). The increased number of semiconductors devices in these class of power converters leads to an increased need for fault detection, isolation, and selfhealing. In addition, the PEDG’s cyber and physical layers are exposed to malicious attacks. These malicious actions, if not detected and classified in a timely manner, can cause catastrophic events in power grid. The inverters’ internal failures make the anomaly detection and classification in PEDG a challenging task. The main objective of this paper is to address this challenge by implementing a recurrent neural network (RNN), specifically utilizing long short-term memory (LSTM) for detection and classification of internal failures in CMI and distinguish them from malicious activities in PEDG. The proposed anomaly classification framework is a module in the primary control layer of inverters which can provide information for intrusion detection systems in a secondary control layer of PEDG for further analysis.
基于人工智能的电网交互级联多电平逆变器异常检测与分类
级联多电平逆变器(CMI)在电力电子主导电网(PEDG)中得到了越来越广泛的应用。这类功率转换器中半导体器件数量的增加导致对故障检测、隔离和自愈的需求增加。此外,PEDG的网络和物理层也容易受到恶意攻击。这些恶意行为如果不及时发现和分类,可能会对电网造成灾难性事件。逆变器的内部故障使PEDG异常检测和分类成为一项具有挑战性的任务。本文的主要目标是通过实现递归神经网络(RNN)来解决这一挑战,特别是利用长短期记忆(LSTM)来检测和分类CMI中的内部故障,并将其与PEDG中的恶意活动区分开来。所提出的异常分类框架是逆变器主控制层中的一个模块,可以为PEDG次控制层的入侵检测系统提供信息,供其进一步分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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