22 research outputs found

    Configuração automática de plataforma de gestão de desempenho em ambientes NFV e SDN

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    Mestrado em Engenharia de Computadores e TelemáticaWith 5G set to arrive within the next three years, this next-generation of mobile networks will transform the mobile industry with a profound impact both on its customers as well as on the existing technologies and network architectures. Software-Defined Networking (SDN), together with Network Functions Virtualization (NFV), are going to play key roles for the operators as they prepare the migration from 4G to 5G allowing them to quickly scale their networks. This dissertation will present a research work done on this new paradigm of virtualized and programmable networks focusing on the performance management, supervision and monitoring domains, aiming to address Self-Organizing Networks (SON) scenarios in a NFV/SDN context, with one of the scenarios being the detection and prediction of potential network and service anomalies. The research work itself was done while participating in a R&D project designated SELFNET (A Framework for Self-Organized Network Management in Virtualized and Software Defined Networks) funded by the European Commission under the H2020 5G-PPP programme, with Altice Labs being one of the participating partners of this project. Performance management system advancements in a 5G scenario require aggregation, correlation and analysis of data gathered from these virtualized and programmable network elements. Both opensource monitoring tools and customized catalog-driven tools were either integrated on or developed with this purpose, and the results show that they were able to successfully address these requirements of the SELFNET project. Current performance management platforms of the network operators in production are designed for non virtualized (non- NFV) and non programmable (non-SDN) networks, and the knowledge gathered while doing this research work allowed Altice Labs to understand how its Altaia performance management platform must evolve in order to be prepared for the upcoming 5G next generation mobile networks.Com o 5G prestes a chegar nos próximos três anos, esta próxima geração de redes móveis irá transformar a indústria de telecomunicações móveis com um impacto profundo nos seus clientes assim como nas tecnologias e arquiteturas de redes. As redes programáveis (SDN), em conjunto com a virtualização de funções de rede (NFV), irão desempenhar papéis vitais para as operadoras na sua migração do 4G para o 5G, permitindo-as escalar as suas redes rapidamente. Esta dissertação irá apresentar um trabalho de investigação realizado sobre este novo paradigma de virtualização e programação de redes, concentrando-se no domínio da gestão de desempenho, supervisionamento e monitoria, abordando cenários de redes auto-organizadas (SON) num contexto NFV/SDN, sendo um destes cenários a deteção e predição de potenciais anomalias de redes e serviços. O trabalho de investigação foi enquadrado num projeto de I&D designado SELFNET (A Framework for Self-Organized Network Management in Virtualized and Software Defined Networks) financiado pela Comissão Europeia no âmbito do programa H2020 5G-PPP, sendo a Altice Labs um dos parceiros participantes deste projeto. Avanços em sistemas de gestão de desempenho em cenários 5G requerem agregação, correlação e análise de dados recolhidos destes elementos de rede programáveis e virtualizados. Ferramentas de monitoria open-source e ferramentas catalog-driven foram integradas ou desenvolvidas com este propósito, e os resultados mostram que estas preencheram os requisitos do projeto SELFNET com sucesso. As plataformas de gestão de desempenho das operadoras de rede atualmente em produção estão concebidas para redes não virtualizadas (non-NFV) e não programáveis (non- SDN), e o conhecimento adquirido durante este trabalho de investigação permitiu à Altice Labs compreender como a sua plataforma de gestão de desempenho (Altaia) terá que evoluir por forma a preparar-se para a próxima geração de redes móveis 5G

    6G wireless systems : a vision, architectural elements, and future directions

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    Internet of everything (IoE)-based smart services are expected to gain immense popularity in the future, which raises the need for next-generation wireless networks. Although fifth-generation (5G) networks can support various IoE services, they might not be able to completely fulfill the requirements of novel applications. Sixth-generation (6G) wireless systems are envisioned to overcome 5G network limitations. In this article, we explore recent advances made toward enabling 6G systems. We devise a taxonomy based on key enabling technologies, use cases, emerging machine learning schemes, communication technologies, networking technologies, and computing technologies. Furthermore, we identify and discuss open research challenges, such as artificial-intelligence-based adaptive transceivers, intelligent wireless energy harvesting, decentralized and secure business models, intelligent cell-less architecture, and distributed security models. We propose practical guidelines including deep Q-learning and federated learning-based transceivers, blockchain-based secure business models, homomorphic encryption, and distributed-ledger-based authentication schemes to cope with these challenges. Finally, we outline and recommend several future directions. © 2013 IEEE

    Self-healing and SDN: bridging the gap

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    Achieving high programmability has become an essential aim of network research due to the ever-increasing internet traffic. Software-Defined Network (SDN) is an emerging architecture aimed to address this need. However, maintaining accurate knowledge of the network after a failure is one of the largest challenges in the SDN. Motivated by this reality, this paper focuses on the use of self-healing properties to boost the SDN robustness. This approach, unlike traditional schemes, is not based on proactively configuring multiple (and memory-intensive) backup paths in each switch or performing a reactive and time-consuming routing computation at the controller level. Instead, the control paths are quickly recovered by local switch actions and subsequently optimized by global controller knowledge. Obtained results show that the proposed approach recovers the control topology effectively in terms of time and message load over a wide range of generated networks. Consequently, scalability issues of traditional fault recovery strategies are avoided.Postprint (published version

    Connectivity Management for HetNets based on the Principles of Autonomicity and Context-Awareness

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    Στο περιβάλλον του Διαδικτύου του Μέλλοντος, η Πέμπτη γενιά (5G) δικτύων έχει ήδη αρχίσει να καθιερώνεται. Τα δίκτυα 5G αξιοποιούν υψηλότερες συχνότητες παρέχοντας μεγαλύτερο εύρος ζώνης, ενώ υποστηρίζουν εξαιρετικά μεγάλη πυκνότητα σε σταθμούς βάσης και κινητές συσκευές, σχηματίζοντας ένα περιβάλλον ετερογενών δικτύων, το οποίο στοχεύει στο να καλυφθούν οι απαιτήσεις της απόδοσης ως προς την μικρότερη δυνατή συνολική χρονοκαθυστέρηση και κατανάλωση ενέργειας. Η αποδοτική διαχείριση της συνδεσιμότητας σε ένα τόσο ετερογενές δικτυακό περιβάλλον αποτελεί ανοιχτό πρόβλημα, με σκοπό να υποστηρίζεται η κινητικότητα των χρηστών σε δίκτυα διαφορετικών τεχνολογιών και βαθμίδων, αντιμετωπίζοντας θέματα πολυπλοκότητας και διαλειτουργικότητας, υποστηρίζοντας τις απαιτήσεις των τρεχουσών εφαρμογών και των προτιμήσεων των χρηστών και διαχειρίζοντας ταυτόχρονα πολλαπλές δικτυακές διεπαφές. Η συλλογή, η μοντελοποίηση, η διεξαγωγή συμπερασμάτων και η κατανομή πληροφορίας περιεχομένου σε σχέση με δεδομένα αισθητήρων θα παίξουν κρίσιμο ρόλο σε αυτήν την πρόκληση. Με βάση τα παραπάνω, κρίνεται σκόπιμη η αξιοποίηση των αρχών της επίγνωσης περιεχομένου και της αυτονομικότητας, καθώς επιτρέπουν στις δικτυακές οντότητες να είναι ενήμερες του εαυτού τους και του περιβάλλοντός τους, καθώς και να αυτοδιαχειρίζονται τις λειτουργίες τους ώστε να πετυχαίνουν συγκεκριμένους στόχους. Επιπλέον, χρειάζεται ακριβής ποσοτική αξιολόγηση της απόδοσης λύσεων διαχείρισης της συνδεσιμότητας για ετερογενή δίκτυα, οι οποίες παρουσιάζουν διαφορετικές στρατηγικές επίγνωσης περιβάλλοντος, απαιτώντας μια μεθοδολογία που να είναι περιεκτική και γενικά εφαρμόσιμη ώστε να καλύπτει διαφορετικές προσεγγίσεις, καθώς οι υπάρχουσες μεθοδολογίες στην βιβλιογραφία είναι σχετικά περιορισμένες. Tο σύνολο της μελέτης επικεντρώνεται σε δύο θεματικούς άξονες. Στο πρώτο θεματικό μέρος της διατριβής, αναλύεται ο ρόλος της επίγνωσης περιβάλλοντος και της αυτονομικότητας, σε σχέση με την διαχείριση της συνδεσιμότητας, αναπτύσσοντας ένα πλαίσιο ταξινόμησης και κατηγοριοποίησης, επεκτείνοντας την τρέχουσα βιβλιογραφία. Με βάση το προαναφερθέν πλαίσιο, ταξινομήθηκαν και αξιολογήθηκαν λύσεις για την υποστήριξη της κινητικότητας σε ετερογενή δίκτυα, οι οποίες δύνανται να θεωρηθούν ότι παρουσιάζουν επίγνωση περιβάλλοντος και αυτο-διαχειριστικά χαρακτηριστικά. Επιπλέον, μελετήθηκε κατά πόσον οι αποφάσεις που λαμβάνονται ως προς την επιλογή του κατάλληλου δικτύου, σύμφωνα με την κάθε λύση, είναι αποτελεσματικές και προτάθηκαν τρόποι βελτιστοποίησης των υπαρχουσών αρχιτεκτονικών, καθώς και προτάσεων προς περαιτέρω ανάπτυξη σχετικών μελλοντικών λύσεων. Στο δεύτερο θεματικό μέρος της διατριβής, αναπτύχθηκε μια ευέλικτη αναλυτική μεθοδολογία, περιλαμβάνοντας όλους τους παράγοντες που μπορούν να συνεισφέρουν στην συνολική χρονοκαθυστέρηση, λαμβάνοντας υπόψιν την σηματοδοσία, την επεξεργαστική επιβάρυνση και την συμφόρηση (μελέτη ουράς), επεκτείνοντας την τρέχουσα βιβλιογραφία. Η μεθοδολογία είναι περιεκτική, ενώ ταυτόχρονα προσφέρει κλειστού τύπου λύσεις και έχει την δυνατότητα να προσαρμόζεται σε διαφορετικές προσεγγίσεις. Προς απόδειξη αυτού, εφαρμόσαμε την μεθοδολογία σε δύο λύσεις με διαφορετική στρατηγική επίγνωσης περιβάλλοντος (μια μεταδραστική και μια προδραστική). Και για τις δύο προσεγγίσεις, τα αναλυτικά αποτελέσματα επιβεβαιώθηκαν από προσομοιώσεις, επιβεβαιώνοντας την αποτελεσματικότητα και την ακρίβεια της αναλυτικής μεθοδολογίας. Επιπλέον, αποδείχθηκε ότι η προδραστική προσέγγιση εμφανίζει καλύτερη απόδοση ως προς την συνολική χρονοκαθυστέρηση, ενώ χρειάζεται σημαντικά λιγότερους επεξεργαστικούς πόρους, παρουσιάζοντας πιθανά οφέλη και στην συνολική ενεργειακή κατανάλωση και στα λειτουργικά και κεφαλαιουχικά κόστη (OPEX και CAPEX)

    Optimal learning paradigm and clustering for effective radio resource management in 5G HetNets

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    Ultra-dense heterogeneous networks (UDHN) based on small cells are a requisite part of the future cellular networks as they are proposed as one of the enabling technologies to handle coverage and capacity problems. But co-tier and cross-tier interferences in UDHN severely degrade the quality of service due to K-tiered architecture. Machine learning based radio resource management either through independent learning or cooperative learning is a proven efficient scheme for interference mitigation and quality of service provision in UDHN in a both distributive and cooperative manner. However, an optimal learning paradigm selection, i.e., either independent or cooperative learning and optimal cooperative cluster size in cooperative learning for efficient radio resource management in UDHN is still an open research problem. In this article, a Q-learning based radio resource management scheme is proposed and evaluated for both distributive and cooperative schemes using independent and cooperative learning. The proposed Q-learning solution follows the ϵ\epsilon - greedy policy for optimal convergence. The simulation results for the UDHN in an urban setup show that in comparison to the independent learning paradigm, cooperative learning has no significant impact on macro cell user capacity. However, there is a significant improvement in small cell user capacity and the sum capacity of the cooperating small cells in the cluster. A significant increase of 48.57% and 37.9% is observed in the small cell user capacity, and sum capacity of the cooperating small cells, respectively, using cooperative learning as compared to independent learning which sets cooperative learning as an optimal learning strategy in UDHN. The improvement in small cell user capacity is at cost of increased computational time which is directly proportional to the number of cooperating small cells. To solve the issue of computational time in cooperative learning, an optimal clustering algorithm is proposed. The proposed optimal clustering reduced the computational time by four times in cooperative Q-learning

    Les opérateurs sauront-ils survivre dans un monde en constante évolution? Considérations techniques conduisant à des scénarios de rupture

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    Le secteur des télécommunications passe par une phase délicate en raison de profondes mutations technologiques, principalement motivées par le développement de l'Internet. Elles ont un impact majeur sur l'industrie des télécommunications dans son ensemble et, par conséquent, sur les futurs déploiements des nouveaux réseaux, plateformes et services. L'évolution de l'Internet a un impact particulièrement fort sur les opérateurs des télécommunications (Telcos). En fait, l'industrie des télécommunications est à la veille de changements majeurs en raison de nombreux facteurs, comme par exemple la banalisation progressive de la connectivité, la domination dans le domaine des services de sociétés du web (Webcos), l'importance croissante de solutions à base de logiciels et la flexibilité qu'elles introduisent (par rapport au système statique des opérateurs télécoms). Cette thèse élabore, propose et compare les scénarios possibles basés sur des solutions et des approches qui sont technologiquement viables. Les scénarios identifiés couvrent un large éventail de possibilités: 1) Telco traditionnel; 2) Telco transporteur de Bits; 3) Telco facilitateur de Plateforme; 4) Telco fournisseur de services; 5) Disparition des Telco. Pour chaque scénario, une plateforme viable (selon le point de vue des opérateurs télécoms) est décrite avec ses avantages potentiels et le portefeuille de services qui pourraient être fournisThe telecommunications industry is going through a difficult phase because of profound technological changes, mainly originated by the development of the Internet. They have a major impact on the telecommunications industry as a whole and, consequently, the future deployment of new networks, platforms and services. The evolution of the Internet has a particularly strong impact on telecommunications operators (Telcos). In fact, the telecommunications industry is on the verge of major changes due to many factors, such as the gradual commoditization of connectivity, the dominance of web services companies (Webcos), the growing importance of software based solutions that introduce flexibility (compared to static system of telecom operators). This thesis develops, proposes and compares plausible future scenarios based on future solutions and approaches that will be technologically feasible and viable. Identified scenarios cover a wide range of possibilities: 1) Traditional Telco; 2) Telco as Bit Carrier; 3) Telco as Platform Provider; 4) Telco as Service Provider; 5) Telco Disappearance. For each scenario, a viable platform (from the point of view of telecom operators) is described highlighting the enabled service portfolio and its potential benefitsEVRY-INT (912282302) / SudocSudocFranceF

    Contributions to topology discovery, self-healing and VNF placement in software-defined and virtualized networks

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    The evolution of information and communication technologies (e.g. cloud computing, the Internet of Things (IoT) and 5G, among others) has enabled a large market of applications and network services for a massive number of users connected to the Internet. Achieving high programmability while decreasing complexity and costs has become an essential aim of networking research due to the ever-increasing pressure generated by these applications and services. However, meeting these goals is an almost impossible task using traditional IP networks. Software-Defined Networking (SDN) is an emerging network architecture that could address the needs of service providers and network operators. This new technology consists in decoupling the control plane from the data plane, enabling the centralization of control functions on a concentrated or distributed platform. It also creates an abstraction between the network infrastructure and network applications, which allows for designing more flexible and programmable networks. Recent trends of increased user demands, the explosion of Internet traffic and diverse service requirements have further driven the interest in the potential capabilities of SDN to enable the introduction of new protocols and traffic management models. This doctoral research is focused on improving high-level policies and control strategies, which are becoming increasingly important given the limitations of current solutions for large-scale SDN environments. Specifically, the three largest challenges addressed in the development of this thesis are related to the processes of topology discovery, fault recovery and Virtual Network Function (VNF) placement in software-defined and virtualized networks. These challenges led to the design of a set of effective techniques, ranging from network protocols to optimal and heuristic algorithms, intended to solve existing problems and contribute to the deployment and adoption of such programmable networks.For the first challenge, this work presents a novel protocol that, unlike existing approaches, enables a distributed layer 2 discovery without the need for previous IP configurations or controller knowledge of the network. By using this mechanism, the SDN controller can discover the network view without incurring scalability issues, while taking advantage of the shortest control paths toward each switch. Moreover, this novel approach achieves noticeable improvement with respect to state-of-the-art techniques. To address the resilience concern of SDN, we propose a self-healing mechanism that recovers the control plane connectivity in SDN-managed environments without overburdening the controller performance. The main idea underlying this proposal is to enable real-time recovery of control paths in the face of failures without the intervention of a controller. Obtained results show that the proposed approach recovers the control topology efficiently in terms of time and message load over a wide range of generated networks. The third contribution made in this thesis combines topology knowledge with bin packing techniques in order to efficiently place the required VNF. An online heuristic algorithm with low-complexity was developed as a suitable solution for dynamic infrastructures. Extensive simulations, using network topologies representative of different scales, validate the good performance of the proposed approaches regarding the number of required instances and the delay among deployed functions. Additionally, the proposed heuristic algorithm improves the execution times by a fifth order of magnitude compared to the optimal formulation of this problem.Postprint (published version

    Discrete and Continuous Optimization Methods for Self-Organization in Small Cell Networks - Models and Algorithms

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    Self-organization is discussed in terms of distributed computational methods and algorithms for resource allocation in cellular networks. In order to develop algorithms for different self-organization problems pertinent to small cell networks (SCN), a number of concepts from discrete and continuous optimization theory are employed. Self-organized resource allocation problems such as physical cell identifier (PCI) assignment and primary component carrier selection are formulated as discrete optimization problems. Distributed graph coloring and constraint satisfaction algorithms are used to solve these problems. The PCI assignment is also discussed for multi-operator heterogeneous networks. Furthermore, different variants of simulated annealing are proposed for solving a graph coloring formulation of the orthogonal resource allocation problem. In the continuous optimization domain, a network utility maximization approach is considered for solving different resource allocation problems. Network synchronization is addressed using greedy and gradient search algorithms. Primal and dual decomposition are discussed for transmit power and scheduling weight optimizations, under a network-wide power constraint. Joint optimization over transmit powers and multi-user scheduling weights is considered in a multi-carrier SCN, for both maximum rate and proportional-fair rate utilities. This formulation is extended for multiple-input multiple-output (MIMO) SCNs, where apart from transmit powers and multi-user scheduling weights, the transmit precoders are also optimized, for a generic alpha-fair utility function. Optimization of network resources over multiple degrees of freedom is particularly effective in reducing mutual interference, leading to significant gains in network utility. Finally, an alternate formulation of transmit power allocation is considered, in which the network transmit power is minimized subject to the data rate constraints of users. Thus, network resource allocation algorithms inspired by optimization theory constitute an effective approach for self-organization in contemporary as well as future cellular networks
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