Classification of Faults in Cyber-Physical Systems with Complex-Valued Neural Networks

Anton Pfeifer, V. Lohweg
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引用次数: 1

Abstract

In the contribution at hand, multilayer feedforward neural networks based on multi-valued neurons (MLMVN) are applied on a classification problem in the context of cyber-physical systems. MLMVN are a specific type of complex valued-neural networks. The aim is to apply MLMVN on a benchmark dataset and to classify individual states of a motor (one non-fault state and 10 different fault states). For the multi-class classification problem, an evaluation of selected real-valued and complex-valued feedforward neural networks is considered. One finding is that in terms of accuracy, shallow MLMVN significantly outperform similarly constructed real-valued feedforward neural networks on the benchmark dataset. Thus, the high efficiency of such networks could be an advantage when processing data locally in order to improve robustness, performance, and reduce energy consumption on the system in use.
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基于复值神经网络的信息物理系统故障分类
在现有的贡献中,基于多值神经元(MLMVN)的多层前馈神经网络被应用于网络物理系统中的分类问题。MLMVN是一种特殊类型的复杂值神经网络。目的是在基准数据集上应用MLMVN,并对电机的各个状态(一个非故障状态和10个不同的故障状态)进行分类。针对多类分类问题,考虑了选取的实值和复值前馈神经网络的评价问题。一个发现是,就准确性而言,浅MLMVN在基准数据集上明显优于类似构造的实值前馈神经网络。因此,在本地处理数据以提高鲁棒性、性能和减少正在使用的系统的能耗时,这种网络的高效率可能是一个优势。
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