Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular Networks

Anomaly detection in the performance of the huge number of elements that are part of cellular networks (base stations, core entities, and user equipment) is one of the most time consuming and key activities for supporting failure management procedures and ensuring the required performance of the tel...

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Main Authors: Sergio Fortes, Pablo Muñoz, Inmaculada Serrano, Raquel Barco
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/19/5645
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spelling doaj-9101ef6a7a624c6391116bec312f1efd2020-11-25T03:51:57ZengMDPI AGSensors1424-82202020-10-01205645564510.3390/s20195645Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular NetworksSergio Fortes0Pablo Muñoz1Inmaculada Serrano2Raquel Barco3Departamento de Ingeniería de Comunicaciones, Campus de Teatinos s/n, Andalucía Tech, Universidad de Málaga, 29071 Málaga, SpainDepartment of Signal Theory, Telematics and Communications (TSTC), Universidad de Granada, 18071 Granada, SpainEricsson, 29590 Málaga, SpainDepartamento de Ingeniería de Comunicaciones, Campus de Teatinos s/n, Andalucía Tech, Universidad de Málaga, 29071 Málaga, SpainAnomaly detection in the performance of the huge number of elements that are part of cellular networks (base stations, core entities, and user equipment) is one of the most time consuming and key activities for supporting failure management procedures and ensuring the required performance of the telecommunication services. This activity originally relied on direct human inspection of cellular metrics (counters, key performance indicators, etc.). Currently, degradation detection procedures have experienced an evolution towards the use of automatic mechanisms of statistical analysis and machine learning. However, pre-existent solutions typically rely on the manual definition of the values to be considered abnormal or on large sets of labeled data, highly reducing their performance in the presence of long-term trends in the metrics or previously unknown patterns of degradation. In this field, the present work proposes a novel application of transform-based analysis, using wavelet transform, for the detection and study of network degradations. The proposed system is tested using cell-level metrics obtained from a real-world LTE cellular network, showing its capabilities to detect and characterize anomalies of different patterns and in the presence of varied temporal trends. This is performed without the need for manually establishing normality thresholds and taking advantage of wavelet transform capabilities to separate the metrics in multiple time-frequency components. Our results show how direct statistical analysis of these components allows for a successful detection of anomalies beyond the capabilities of detection of previous methods.https://www.mdpi.com/1424-8220/20/19/5645cellular managementfailure detectionself-healingtransform-basedwavelet
collection DOAJ
language English
format Article
sources DOAJ
author Sergio Fortes
Pablo Muñoz
Inmaculada Serrano
Raquel Barco
spellingShingle Sergio Fortes
Pablo Muñoz
Inmaculada Serrano
Raquel Barco
Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular Networks
Sensors
cellular management
failure detection
self-healing
transform-based
wavelet
author_facet Sergio Fortes
Pablo Muñoz
Inmaculada Serrano
Raquel Barco
author_sort Sergio Fortes
title Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular Networks
title_short Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular Networks
title_full Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular Networks
title_fullStr Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular Networks
title_full_unstemmed Transform-Based Multiresolution Decomposition for Degradation Detection in Cellular Networks
title_sort transform-based multiresolution decomposition for degradation detection in cellular networks
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-10-01
description Anomaly detection in the performance of the huge number of elements that are part of cellular networks (base stations, core entities, and user equipment) is one of the most time consuming and key activities for supporting failure management procedures and ensuring the required performance of the telecommunication services. This activity originally relied on direct human inspection of cellular metrics (counters, key performance indicators, etc.). Currently, degradation detection procedures have experienced an evolution towards the use of automatic mechanisms of statistical analysis and machine learning. However, pre-existent solutions typically rely on the manual definition of the values to be considered abnormal or on large sets of labeled data, highly reducing their performance in the presence of long-term trends in the metrics or previously unknown patterns of degradation. In this field, the present work proposes a novel application of transform-based analysis, using wavelet transform, for the detection and study of network degradations. The proposed system is tested using cell-level metrics obtained from a real-world LTE cellular network, showing its capabilities to detect and characterize anomalies of different patterns and in the presence of varied temporal trends. This is performed without the need for manually establishing normality thresholds and taking advantage of wavelet transform capabilities to separate the metrics in multiple time-frequency components. Our results show how direct statistical analysis of these components allows for a successful detection of anomalies beyond the capabilities of detection of previous methods.
topic cellular management
failure detection
self-healing
transform-based
wavelet
url https://www.mdpi.com/1424-8220/20/19/5645
work_keys_str_mv AT sergiofortes transformbasedmultiresolutiondecompositionfordegradationdetectionincellularnetworks
AT pablomunoz transformbasedmultiresolutiondecompositionfordegradationdetectionincellularnetworks
AT inmaculadaserrano transformbasedmultiresolutiondecompositionfordegradationdetectionincellularnetworks
AT raquelbarco transformbasedmultiresolutiondecompositionfordegradationdetectionincellularnetworks
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