Neuromorphic AI Empowered Root Cause Analysis of Faults in Emerging Networks

Shruti Bothe, Usama Masood, H. Farooq, A. Imran
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引用次数: 4

Abstract

Mobile cellular network operators spend nearly a quarter of their revenue on network maintenance and management. A significant portion of that budget is spent on resolving faults diagnosed in the system that disrupt or degrade cellular services. Historically, the operations to detect, diagnose and resolve issues were carried out by human experts. However, with diversifying cell types, increased complexity and growing cell density, this methodology is becoming less viable, both technically and financially. To cope with this problem, in recent years, research on self-healing solutions has gained significant momentum. One of the most desirable features of the self-healing paradigm is automated fault diagnosis. While several fault detection and diagnosis machine learning models have been proposed recently, these schemes have one common tenancy of relying on human expert contribution for fault diagnosis and prediction in one way or another. In this paper, we propose an AI-based fault diagnosis solution that offers a key step towards a completely automated self-healing system without requiring human expert input. The proposed solution leverages Random Forests classifier, Convolutional Neural Network and neuromorphic based deep learning model which uses RSRP map images of faults generated. We compare the performance of the proposed solution against state-of-the-art solution in literature that mostly use Naive Bayes models, while considering seven different fault types. Results show that neuromorphic computing model achieves high classification accuracy as compared to the other models even with relatively small training data.
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神经形态AI支持新兴网络故障的根本原因分析
移动蜂窝网络运营商将近四分之一的收入用于网络维护和管理。该预算的很大一部分用于解决系统中诊断出的中断或降低蜂窝服务的故障。从历史上看,检测、诊断和解决问题的操作是由人类专家进行的。然而,随着细胞类型的多样化、复杂性的增加和细胞密度的增加,这种方法在技术和经济上都变得越来越不可行。为了解决这一问题,近年来,对自我修复解决方案的研究取得了显著进展。自修复范式最理想的特性之一是自动故障诊断。虽然最近提出了几种故障检测和诊断机器学习模型,但这些方案都有一个共同的特点,即以某种方式依赖于人类专家的贡献来进行故障诊断和预测。在本文中,我们提出了一种基于人工智能的故障诊断解决方案,为实现完全自动化的自愈系统提供了关键的一步,而不需要人工专家的输入。该解决方案利用随机森林分类器、卷积神经网络和基于神经形态的深度学习模型,该模型使用故障生成的RSRP地图图像。我们将提出的解决方案与文献中主要使用朴素贝叶斯模型的最新解决方案的性能进行了比较,同时考虑了七种不同的故障类型。结果表明,即使在训练数据较少的情况下,神经形态计算模型也能取得较高的分类准确率。
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