A Neuro-Symbolic Approach for Fault Diagnosis in Smart Power Grids

T. Aravanis, I. Kabouris
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引用次数: 1

Abstract

Power quality is a critical parameter of modern power electrical systems, the complexity and decentralization of which are rapidly increasing. Indeed, the highest possible quality is a requirement of all the stakeholders of a power grid. In response to this demand, we introduce, in this article, a novel neuro-symbolic approach for the diagnosis (i.e., detection and classification) of the typical faults that a smart power grid encounters during its operation (that is, voltage interruptions, voltage sags, voltage swells, transients and harmonics). Heart of the implemented system is an Artificial Neural Network (ANN) that identifies with high fidelity the patterns of voltage-waveforms — for the sake of comparison, two ANNs were evaluated, namely, a conventional Multilayer Perceptron (MLP) and a one-dimensional Convolutional Neural Network (CNN). The output of the ANN is passed through a symbolic reasoner, implemented by means of Answer Set Programming (ASP), which provides a final response on the condition of the power grid, taking into account the background knowledge of the domain, which is in turn encoded into appropriate symbolic rules. The proposed approach achieved very high classification-performance on the validation dataset ( the MLP and the CNN), and, thus, it constitutes a promising powerful tool that will contribute to the improved quality of future power grids.
基于神经符号的智能电网故障诊断方法
电能质量是现代电力系统的一个重要参数,其复杂性和分散性正在迅速提高。事实上,最高可能的质量是对电网所有利益相关者的要求。为了满足这一需求,我们在本文中介绍了一种新的神经符号方法来诊断(即检测和分类)智能电网在运行过程中遇到的典型故障(即电压中断、电压跌落、电压膨胀、瞬态和谐波)。实现系统的核心是一个人工神经网络(ANN),它以高保真度识别电压波形的模式-为了比较,评估了两个人工神经网络,即传统的多层感知器(MLP)和一维卷积神经网络(CNN)。人工神经网络的输出通过一个符号推理器传递,该推理器通过答案集编程(ASP)实现,该推理器考虑到该领域的背景知识,提供对电网条件的最终响应,然后将其编码为适当的符号规则。所提出的方法在验证数据集(MLP和CNN)上实现了非常高的分类性能,因此,它构成了一个有前途的强大工具,将有助于提高未来电网的质量。
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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