Deep Learning-based Framework for Multi-Fault Diagnosis in Self-Healing Cellular Networks
Author | Riaz, Muhammad Sajid |
Author | Qureshi, Haneya Naeem |
Author | Masood, Usama |
Author | Rizwan, Ali |
Author | Abu-Dayya, Adnan |
Author | Imran, Ali |
Available date | 2024-10-20T10:43:20Z |
Publication Date | 2022 |
Publication Name | IEEE Wireless Communications and Networking Conference, WCNC |
Resource | Scopus |
ISSN | 15253511 |
Abstract | Fault diagnosis is turning out to be an intense challenge due to the increasing complexity of the emerging cellular networks. The root-cause analysis of coverage-related network anomalies is traditionally carried out by human experts. However, due to the vast complexity and the increasing cell density of the emerging cellular networks, it is neither practical nor financially viable. To address this, many studies are proposing artificial intelligence (AI)-based solutions using minimization of drive test (MDT) reports. Nowadays, the focus of existing studies is either on diagnosing faults in a single base station (BS) only or diagnosing a single fault in multiple BS scenarios. Moreover, they do not take into account training data sparsity (varying user equipment (UE) densities). Inspired by the emergence of convolutional neural networks (CNN), in this paper, we propose a framework combining CNN and image inpainting techniques for root-cause analysis of multiple faults in multiple base stations in the network that is robust to the sparse MDT reports, BS locations and types of faults. The results demonstrate that the proposed solution outperforms several other machine learning models on highly sparse UE density training data, which makes it a robust and scalable solution for self-healing in a real cellular network. |
Sponsor | VI. ACKNOWLEDGMENT This research is based upon work supported by the National Science Foundation (NSF) under Grant numbers 1619346, 1730650 and Qatar National Research Fund (QNRF) under Grant no. NPRP12-S 0311-190302 . For more details about the projects, please visit: https://www.ai4networks.com |
Language | en |
Publisher | Institute of Electrical and Electronics Engineers Inc. |
Subject | cellular data sparsity convolutional neural networks minimization of drive tests multi-fault diagnosis network automation radio environment map inpainting Root cause analysis self-healing |
Type | Conference Paper |
Pagination | 746-751 |
Volume Number | 2022-April |
Files in this item
This item appears in the following Collection(s)
-
Electrical Engineering [2649 items ]
-
QMIC Research [219 items ]