<?xml version="1.0" encoding="UTF-8"?><?xml-stylesheet type="text/xsl" href="static/style.xsl"?><OAI-PMH xmlns="http://www.openarchives.org/OAI/2.0/" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.openarchives.org/OAI/2.0/ http://www.openarchives.org/OAI/2.0/OAI-PMH.xsd"><responseDate>2026-05-30T17:21:56Z</responseDate><request verb="GetRecord" identifier="oai:riuma.uma.es:10630/13758" metadataPrefix="mods">https://riuma.uma.es/rest/oai/request</request><GetRecord><record><header><identifier>oai:riuma.uma.es:10630/13758</identifier><datestamp>2026-02-03T12:46:52Z</datestamp><setSpec>com_10630_2254</setSpec><setSpec>col_10630_37957</setSpec></header><metadata><mods:mods xmlns:doc="http://www.lyncode.com/xoai" xmlns:mods="http://www.loc.gov/mods/v3" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.loc.gov/mods/v3 http://www.loc.gov/standards/mods/v3/mods-3-1.xsd">
   <mods:name>
      <mods:namePart>Gómez-Andrades, Ana</mods:namePart>
   </mods:name>
   <mods:extension>
      <mods:dateAvailable encoding="iso8601">2017-05-29T12:21:27Z</mods:dateAvailable>
   </mods:extension>
   <mods:extension>
      <mods:dateAccessioned encoding="iso8601">2017-05-29T12:21:27Z</mods:dateAccessioned>
   </mods:extension>
   <mods:originInfo>
      <mods:dateIssued encoding="iso8601">2016</mods:dateIssued>
   </mods:originInfo>
   <mods:identifier type="uri">http://hdl.handle.net/10630/13758</mods:identifier>
   <mods:abstract>With the advent of Long-Term Evolution (LTE) networks and the spread of a highly varied range of&#xd;
&#xd;
services, mobile operators are increasingly aware of the need to strengthen their maintenance and&#xd;
&#xd;
operational tasks in order to ensure a quality and positive user experience. Furthermore, the co-&#xd;
&#xd;
existence of multiple Radio Access Technologies (RAT), the increase in the traffic demand and the need&#xd;
&#xd;
to provide a great variety of services are steering the cellular network toward a new scenario where&#xd;
&#xd;
management tasks are becoming increasingly complex. As a result, mobile operators are focusing their&#xd;
&#xd;
efforts to deal with the maintenance of their networks without increasing either operational&#xd;
&#xd;
expenditures (OPEX) or capital expenditures (CAPEX). In this context, it is becoming necessary to&#xd;
&#xd;
effectively automate the management tasks through the concept of the Self-Organizing Networks (SON).&#xd;
&#xd;
In particular, SON functions cover three different areas: Self-Configuration, Self-Optimization and Self-&#xd;
&#xd;
Healing. Self-Configuration automates the deployment of new network elements and their parameter&#xd;
&#xd;
configuration. Self-Optimization is in charge of modifying the configuration of the parameters in order to&#xd;
&#xd;
enhance user experience. Finally, Self-Healing aims reduce the impact that failures and services&#xd;
&#xd;
degradation have on the end-user. To that end, Self-Healing (SH) systems monitor the network elements&#xd;
&#xd;
through several alarms, measurements and indicators in order to detect outage and degraded cells,&#xd;
&#xd;
then, diagnose the cause of their problem and, finally, execute the compensation or recovery actions.&#xd;
&#xd;
Even though mobile networks are become more prone to failures due to their huge increase in&#xd;
&#xd;
complexity, the automation of the troubleshooting tasks through the SH functionality has not been fully&#xd;
&#xd;
realized. Traditionally, both the research and the development of SON networks have been related to&#xd;
&#xd;
Self-Configuration and Self-Optimization. This has been mainly due to the challenges that need to be&#xd;
&#xd;
faced when SH systems are studied and implemented. This is especially relevant in the case of fault&#xd;
&#xd;
diagnosis. However, mobile operators are paying increasingly more attention to self-healing systems,&#xd;
&#xd;
which entails creating options to face those challenges that allow the development of SH functions.&#xd;
&#xd;
On the one hand, currently, the diagnosis continues to be manually done since it requires considerable&#xd;
&#xd;
hard-earned experience in order to be able to effectively identify the fault cause. In particular,&#xd;
&#xd;
troubleshooting experts thoroughly analyze the performance of the degraded network elements by&#xd;
&#xd;
means of measurements and indicators in order to identify the cause of the detected anomalies and&#xd;
&#xd;
symptoms. Therefore, automating the diagnosis tasks means knowing what specific performance&#xd;
&#xd;
indicators have to be analyzed and how to map the identified symptoms with the associate fault cause.&#xd;
&#xd;
This knowledge is acquired over time and it is characterized by being operator-specific based on their&#xd;
&#xd;
policies and network features. Furthermore, troubleshooting experts typically solve the failures in a&#xd;
&#xd;
network without either documenting the troubleshooting process or recording the analyzed indicators&#xd;
&#xd;
along with the label of the identified fault cause. In addition, because there is no specific regulation on&#xd;
&#xd;
documentation, the few documented faults are neither properly defined nor described in a standard&#xd;
&#xd;
way (e.g. the same fault cause may be appointed with different labels), making it even more difficult to&#xd;
&#xd;
automate the extraction of the expert knowledge. As a result, this a lack of documentation and lack of&#xd;
&#xd;
historical reported faults makes automation of diagnosis process more challenging.&#xd;
&#xd;
On the other hand, when the exact root cause cannot be remotely identified through the statistical&#xd;
&#xd;
information gathered at cell level, drive test are scheduled for further information. These drive tests aim&#xd;
&#xd;
to monitor mobile network performance by using vehicles to personally measure the radio interface&#xd;
&#xd;
quality along a predefined route. In particular, the troubleshooting experts use specialized test&#xd;
&#xd;
equipment in order to manually collect user-level measurements. Consequently, drive test entail a hefty&#xd;
&#xd;
expense for mobile operators, since it involves considerable investment in time and costly resources&#xd;
&#xd;
(such as personal, vehicles and complex test equipment). In this context, the Third Generation&#xd;
&#xd;
Partnership Project (3GPP) has standardized the automatic collection of field measurements (e.g.&#xd;
&#xd;
signaling messages, radio measurements and location information) through the mobile traces features&#xd;
&#xd;
and its extended functionality, the Minimization of Drive Tests (MDT). In particular, those features allow&#xd;
&#xd;
to automatically monitor the network performance in detail, reaching areas that cannot be covered by&#xd;
&#xd;
drive testing (e.g. indoor or private zones). Thus, mobile traces are regarded as an important enabler for&#xd;
&#xd;
SON since they avoid operators to rely on those expensive drive tests while, at the same time, provide&#xd;
&#xd;
greater details than the traditional cell-level indicators. As a result, enhancing the SH functionalities&#xd;
&#xd;
through the mobile traces increases the potential cost savings and the granularity of the analysis. Hence,&#xd;
&#xd;
in this thesis, several solutions are proposed to overcome the limitations that prevent the development&#xd;
&#xd;
of SH with special emphasis on the diagnosis phase. To that end, the lack of historical labeled databases&#xd;
&#xd;
has been addressed in two main ways. First, unsupervised techniques have been used to automatically&#xd;
&#xd;
design diagnosis system from real data without requiring either documentation or historical reports&#xd;
&#xd;
about fault cases. Second, a group of significant faults have been modeled and implemented in a&#xd;
&#xd;
dynamic system level simulator in order to generate an artificial labeled database, which is extremely&#xd;
&#xd;
important in evaluating and comparing the proposed solutions with the state-of- the-art algorithm. Then,&#xd;
&#xd;
the diagnosis of those faults that cannot be identified through the statistical performance indicators&#xd;
&#xd;
gathered at cell level is automated by the analysis of the mobile traces avoiding the costly drive test. In&#xd;
&#xd;
particular, in this thesis, the mobile traces have been used to automatically identify the cause of each&#xd;
&#xd;
unexpected user disconnection, to geo-localize RF problems that affect the cell performance and to&#xd;
&#xd;
identify the impact of a fault depending on the availability of legacy systems (e.g. Third Generation, 3G).&#xd;
&#xd;
Finally, the proposed techniques have been validated using real and simulated LTE data by analyzing its&#xd;
&#xd;
performance and comparing it with reference mechanisms.</mods:abstract>
   <mods:language>
      <mods:languageTerm>spa</mods:languageTerm>
   </mods:language>
   <mods:accessCondition type="useAndReproduction">open access</mods:accessCondition>
   <mods:accessCondition type="useAndReproduction">by-nc-nd</mods:accessCondition>
   <mods:subject>
      <mods:topic>Redes de ordenadores</mods:topic>
   </mods:subject>
   <mods:titleInfo>
      <mods:title>Methods for Self-Healing based on traces and unsupervised learning in Self-Organizing Networks</mods:title>
   </mods:titleInfo>
   <mods:genre>doctoral thesis</mods:genre>
</mods:mods>
</metadata></record></GetRecord></OAI-PMH>