14 research outputs found

    An adaptive 5G multiservice and multitenant radio access network architecture

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    This article provides an overview on objectives and first results of the Horizon 2020 project 5G NOvel Radio Multiservice adaptive network Architecture (5GNORMA). With 5G NORMA, leading players in the mobile ecosystem aim to underpin Europe's leadership position in 5G. The key objective of 5G NORMA is to develop a conceptually novel, adaptive and future-proof 5G mobile network architecture. This architecture will allow for adapting the network to a wide range of service specific requirements, resulting in novel service-aware and context-aware end-to-end function chaining. The technical approach is based on an innovative concept of adaptive (de)composition and allocation of mobile network functions based on end-user requirements and infrastructure capabilities. At the same time, cost savings and faster time to market are to be expected by joint deployment of logically separated multiservice and multitenant networks on common hardware and other physical resources making use of traffic multiplexing gains. In this context architectural enablers such as network function virtualization and software-defined mobile networking will play a key role for introducing the needed flexible resource assignment to logical networks and specific virtual network functions.This work has been performed in the framework of the H2020-ICT-2014-2 project 5G NORMA

    Characterisation of radio access network slicing scenarios with 5G QoS provisioning

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    5G systems are envisaged to support a wide range of application scenarios with variate requirements. To handle this heterogeneity, 5G architecture includes network slicing capabilities that facilitate the partitioning of a single network infrastructure into multiple logical networks on top of it, each tailored to a given use case and provided with appropriate isolation and Quality of Service (QoS) characteristics. Network slicing also enables the use of multi-tenancy networks, in which the same infrastructure can be shared by multiple tenants by associating one slice to each tenant, easing the cost-effective deployment and operation of future 5G networks. Concerning the Radio Access Network (RAN), slicing is particularly challenging as it implies the configuration of multiple RAN behaviors over a common pool of radio resources. In this context, this work presents a Markov model for RAN slicing capable of characterizing diverse Radio Resource Management (RRM) strategies in multi-tenant and multi-service 5G scenarios including both guaranteed and non-guaranteed bit rate services. The proposed model captures the fact that different radio links from diverse users can experience distinct spectral efficiencies, which enables an accurate modeling of the randomness associated with the actual resource requirements. The model is evaluated in a multi-tenant scenario in urban micro cell and rural macro cell environments to illustrate the impact of the considered RRM polices in the QoS provisioning.Peer ReviewedPostprint (published version

    Dynamic traffic forecasting and fuzzy-based optimized admission control in federated 5G-open RAN networks

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    Providing connectivity to high-density traffic demand is one of the key promises of future wireless networks. The open radio access network (O-RAN) is one of the critical drivers ensuring such connectivity in heterogeneous networks. Despite intense interest from researchers in this domain, key challenges remain to ensure efficient network resource allocation and utilization. This paper proposes a dynamic traffic forecasting scheme to predict future traffic demand in federated O-RAN. Utilizing information on user demand and network capacity, we propose a fully reconfigurable admission control framework via fuzzy-logic optimization. We also perform detailed analysis on several parameters (user satisfaction level, utilization gain, and fairness) over benchmarks from various papers. The results show that the proposed forecasting and fuzzy-logic-based admission control framework significantly enhances fairness and provides guaranteed quality of experience without sacrificing resource utilization. Moreover, we have proven that the proposed framework can accommodate a large number of devices connected simultaneously in the federated O-RAN

    Network Slicing Landscape: A holistic architectural approach, orchestration and management with applicability in mobile and fixed networks and clouds

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    Tutorial at IEEE NetSoft2018 - 29th June 2018 Montreal Abstract: A holistic architectural approach, orchestration and management with applicability in mobile and fixed networks and clouds Topics: Key Slicing concepts and history Slicing Key Characteristics & Usage scenarios & Value Chain Multi-Domain Network Function Virtualisation Review of Research projects and results in network and cloud slicing Open Source Orchestrators Standard Organization activities: NGMN, ITU-T, ONF, 3GPP, ETSI, BBF, IETF Industrial perspective on Network Slicing Review of industry Use Cases Network Slicing Challenges Concluding remarks of Network Slicing Acknowledgements & Reference

    Modelling, Dimensioning and Optimization of 5G Communication Networks, Resources and Services

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    This reprint aims to collect state-of-the-art research contributions that address challenges in the emerging 5G networks design, dimensioning and optimization. Designing, dimensioning and optimization of communication networks resources and services have been an inseparable part of telecom network development. The latter must convey a large volume of traffic, providing service to traffic streams with highly differentiated requirements in terms of bit-rate and service time, required quality of service and quality of experience parameters. Such a communication infrastructure presents many important challenges, such as the study of necessary multi-layer cooperation, new protocols, performance evaluation of different network parts, low layer network design, network management and security issues, and new technologies in general, which will be discussed in this book

    Contribution to the modelling and evaluation of radio network slicing solutions in 5G

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    Network slicing is a key feature of 5G architecture that allows the partitioning of the network into multiple logical networks, known as network slices, where each of them is customised according to the specific needs of a service or application. Thus, network slicing allows the materialisation of multi-tenant networks, in which a common network infrastructure is shared among multiple communication providers, acting as tenants and each of them using a different network slice. The support of multi-tenancy through slicing in the Radio Access Network (RAN), known as RAN slicing, is particularly challenging because it involves the configuration and operation of multiple and diverse RAN behaviours over the common pool of radio resources available at each of the RAN nodes. Moreover, this configuration needs to be performed in such a way that the specific requirements of each tenant are satisfied and, at the same time, the available radio resources are efficiently used. Therefore, new functionalities that allow the deployment of RAN slices are needed to be introduced at different levels, ranging from Radio Resource Management (RRM) functionalities that incorporate RAN slicing parameters to functionalities that support the lifecycle management of RAN slices. This thesis has addressed this need by proposing, developing and assessing diverse solutions for the support RAN slicing, which has allowed evaluating the capacities, requirements and limitations of network slicing in the RAN from diverse perspectives. Specifically, this thesis is firstly focused on the analytical assessment of RRM functionalities that support multi-tenant and multi-services scenarios, where services are defined according to their 5G QoS requirements. This assessment is conducted through the Markov modelling of admission control policies and the statistical modelling of the resourc allocation, both supporting multiple tenants and multiple services. Secondly, the thesis addresses the problem of slice admission control by proposing a methodology for the estimation of the radio resources required by a RAN slice based on data analytics. This methodology supports the decision on the admission or rejection of new RAN slice creation requests. Thirdly, the thesis explores the potential of artificial intelligence, and specifically, of Deep Reinforcement Learning (DRL) to deal with the capacity sharing problem in RAN slicing scenarios. To this end, a DRL-based capacity sharing solution that distributes the available capacity of a multi-cell scenario among multiple tenants is proposed and assessed. The solution consists in a Multi-Agent Reinforcement Learning (MARL) approach based on Deep Q-Network. Finally, this thesis discuses diverse implementation aspects of the DRL-based capacity sharing solution, including considerations on its compatibility with the standards, the impact of the training on the achieved performance, as well as the tools and technologies required for the deployment of the solution in the real network environment.El Network Slicing és una tecnologia clau de l’arquitectura del 5G que permet dividir la xarxa en múltiples xarxes lògiques, conegudes com a network slices, on cada una es configura d’acord a les necessitats d’un servei o aplicació específic. Així, el network slicing permet la materialització de les xarxes amb múltiples inquilins, on una infraestructura de xarxa comuna es comparteix entre diferents proveïdors de comunicacions, que actuen com a inquilins i utilitzen network slices diferents. El suport de múltiples inquilins mitjançant l’ús del network slicing a la xarxa d’accés ràdio (RAN), que es coneix com a RAN slicing, és un gran repte tecnològic, ja que comporta la configuració i operació de múltiples i diversos comportaments sobre els recursos ràdio disponibles a cadascun dels nodes de la xarxa d’accés. A més a més, aquesta configuració s’ha de portar a terme de forma que els requisits específics de cada inquilí es satisfacin i, al mateix temps, els recursos ràdio disponibles s’utilitzin eficientment. Per tant, és necessari introduir noves funcionalitats a diferents nivells que permetin el desplegament de les RAN slices, des de funcionalitats relacionades amb la gestió dels recursos ràdio (RRM) que incorporin paràmetres per al RAN slicing a funcionalitats que proporcionin suport a la gestió del cicle de vida de les RAN slices. Aquesta tesi ha adreçat aquesta necessitat proposant, desenvolupant i avaluant diverses solucions pel suport del RAN slicing, que han permès analitzar les capacitats, requisits i limitacions del RAN slicing des de diferents perspectives. Específicament, aquesta tesi es centra, en primer lloc, en realitzar una anàlisi de les funcionalitats de RRM que suporten escenaris amb múltiples inquilins i múltiples serveis, on els serveis es defineixen d’acord amb els seus requisits de 5G QoS. Aquesta anàlisi es porta a terme mitjançant la caracterització de polítiques de control d’admissió amb un model de Markov i el modelat estadístic de l’assignació de recursos, ambdós suportant múltiples inquilins i múltiples serveis. En segon lloc, la tesi aborda el problema del control d’admissió de network slices proposant una metodologia per l¿estimació dels recursos requerits per una RAN slice, que es basa en la anàlisi de dades. Aquesta metodologia dona suport a la decisió sobre l’admissió o rebuig de noves sol·licituds de creació de RAN slices. En tercer lloc, la tesi explora el potencial de la intel·ligència artificial, concretament, de les tècniques de Deep Reinforcement Learning (DRL) per a tractar el problema de la compartició de capacitat en escenaris amb RAN slicing. Amb aquest objectiu, es proposa i s’avalua una solució de compartició de capacitat basada en DRL que distribueix la capacitat disponible en un escenari multicel·lular entre múltiples inquilins. Aquesta solució es planteja com una solución de Multi-Agent Reinforcement Learning (MARL) basat en Deep Q-Network. Finalment, aquesta tesi tracta diversos aspectes relacionats amb la implementació de la solució de compartició de capacitat basada en DRL, incloent-hi consideracions sobre la compatibilitat de la solució amb els estàndards, l’impacte de l’entrenament de la solució al seu comportament i rendiment, així com les eines i tecnologies necessàries per al desplegament de la solució en un entorn de xarxa real.El Network Slicing es una tecnología clave de la arquitectura del 5G que permite dividir la red en múltiples redes lógicas, conocidas como network slices, que se configuran de acuerdo a las necesidades de servicios y aplicaciones específicas. Así, el network slicing permite la materialización de las redes con múltiples inquilinos, donde una infraestructura de red común se comparte entre diferentes proveedores de comunicaciones, que actúan como inquilinos y que usan network slices diferentes. El soporte de múltiples inquilinos mediante el uso del network slicing en la red de acceso radio (RAN), que se conoce como RAN slicing, es un gran reto tecnológico, ya que comporta la configuración y operación de múltiples y diversos comportamientos sobre los recursos radio disponibles en cada uno de los nodos de la red de acceso. Además, esta configuración debe realizarse de tal manera que los requisitos específicos de cada inquilino se satisfagan y, al mismo tiempo, los recursos radio disponibles se utilicen eficazmente. Por lo tanto, es necesario introducir nuevas funcionalidades a diferentes niveles que permitan el despliegue de las RAN slices, desde funcionalidades relacionadas con la gestión de recursos radio (RRM) que incorporen parámetros para el RAN slicing a funcionalidades que proporcionen soporte a la gestión del ciclo de vida de las RAN slices. Esta tesis ha abordado esta necesidad proponiendo, desarrollando y evaluando diversas soluciones para el soporte del RAN slicing, lo que ha permitido analizar las capacidades, requisitos y limitaciones del RAN slicing desde diversas perspectivas. Específicamente, esta tesis se centra, en primer lugar, en realizar un análisis de funcionalidades de RRM que soportan escenarios con múltiples inquilinos y múltiples servicios, donde los servicios se definen según sus requisitos de 5G QoS. Este análisis se lleva a cabo mediante la caracterización de políticas de control de admisión mediante un modelo de Markov y el modelado a nivel estadístico de la asignación de recursos, ambos soportando múltiples inquilinos y múltiples servicios. En segundo lugar, la tesis aborda el problema del control de admisión de network slices proponiendo una metodología para la estimación de los recursos radio requeridos por una RAN slice que se basa en análisis de datos. Esta metodología da soporte a la decisión sobre la admisión o el rechazo de nuevas solicitudes de creación de RAN slice. En tercer lugar, la tesis explora el potencial de la inteligencia artificial, y en concreto, de las técnicas de Deep Reinforcement Learning (DRL) para tratar el problema de compartición de capacidad en escenarios de RAN slicing. Para ello, se propone y evalúa una solución de compartición de capacidad basada en DRL que distribuye la capacidad disponible de un escenario multicelular entre múltiples inquilinos. Esta solución se plantea como una solución de Multi-Agent Reinforcement Learning (MARL) basado en Deep Q-Network. Finalmente, en esta tesis se tratan diversos aspectos relacionados con la implementación de la solución de reparto de capacidad basada en DRL, incluyendo consideraciones sobre su compatibilidad con los estándares, el impacto del entrenamiento en el comportamiento y rendimiento conseguido, así como las herramientas y tecnologías necesarias para su despliegue en un entorno de red real.Postprint (published version

    A Hybrid SDN-based Architecture for Wireless Networks

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    With new possibilities brought by the Internet of Things (IoT) and edge computing, the traffic demand of wireless networks increases dramatically. A more sophisticated network management framework is required to handle the flow routing and resource allocation for different users and services. By separating the network control and data planes, Software-defined Networking (SDN) brings flexible and programmable network control, which is considered as an appropriate solution in this scenario.Although SDN has been applied in traditional networks such as data centers with great successes, several unique challenges exist in the wireless environment. Compared with wired networks, wireless links have limited capacity. The high mobility of IoT and edge devices also leads to network topology changes and unstable link qualities. Such factors restrain the scalability and robustness of an SDN control plane. In addition, the coexistence of heterogeneous wireless and IoT protocols with distinct representations of network resources making it difficult to process traffic with state-of-the-art SDN standards such as OpenFlow. In this dissertation, we design a novel architecture for the wireless network management. We propose multiple techniques to better adopt SDN to relevant scenarios. First, while maintaining the centralized control plane logically, we deploy multiple SDN controller instances to ensure their scalability and robustness. We propose algorithms to determine the controllers\u27 locations and synchronization rates that minimize the communication costs. Then, we consider handling heterogeneous protocols in Radio Access Networks (RANs). We design a network slicing orchestrator enabling allocating resources across different RANs controlled by SDN, including LTE and Wi-Fi. Finally, we combine the centralized controller with local intelligence, including deploying another SDN control plane in edge devices locally, and offloading network functions to a programmable data plane. In all these approaches, we evaluate our solutions with both large-scale emulations and prototypes implemented in real devices, demonstrating the improvements in multiple performance metrics compared with state-of-the-art methods

    Telecommunication Systems

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    This book is based on both industrial and academic research efforts in which a number of recent advancements and rare insights into telecommunication systems are well presented. The volume is organized into four parts: "Telecommunication Protocol, Optimization, and Security Frameworks", "Next-Generation Optical Access Technologies", "Convergence of Wireless-Optical Networks" and "Advanced Relay and Antenna Systems for Smart Networks." Chapters within these parts are self-contained and cross-referenced to facilitate further study

    Efficient radio resource management for the fifth generation slice networks

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    It is predicted that the IMT-2020 (5G network) will meet increasing user demands and, hence, it is therefore, expected to be as flexible as possible. The relevant standardisation bodies and academia have accepted the critical role of network slicing in the implementation of the 5G network. The network slicing paradigm allows the physical infrastructure and resources of the mobile network to be “sliced” into logical networks, which are operated by different entities, and then engineered to address the specific requirements of different verticals, business models, and individual subscribers. Network slicing offers propitious solutions to the flexibility requirements of the 5G network. The attributes and characteristics of network slicing support the multi-tenancy paradigm, which is predicted to drastically reduce the operational expenditure (OPEX) and capital expenditure (CAPEX) of mobile network operators. Furthermore, network slices enable mobile virtual network operators to compete with one another using the same physical networks but customising their slices and network operation according to their market segment's characteristics and requirements. However, owing to scarce radio resources, the dynamic characteristics of the wireless links, and its capacity, implementing network slicing at the base stations and the access network xix becomes an uphill task. Moreover, an unplanned 5G slice network deployment results in technical challenges such as unfairness in radio resource allocation, poor quality of service provisioning, network profit maximisation challenges, and rises in energy consumption in a bid to meet QoS specifications. Therefore, there is a need to develop efficient radio resource management algorithms that address the above mentioned technical challenges. The core aim of this research is to develop and evaluate efficient radio resource management algorithms and schemes that will be implemented in 5G slice networks to guarantee the QoS of users in terms of throughput and latency while ensuring that 5G slice networks are energy efficient and economically profitable. This thesis mainly addresses key challenges relating to efficient radio resource management. First, a particle swarm-intelligent profit-aware resource allocation scheme for a 5G slice network is proposed to prioritise the profitability of the network while at the same time ensuring that the QoS requirements of slice users are not compromised. It is observed that the proposed new radio swarm-intelligent profit-aware resource allocation (NR-SiRARE) scheme outperforms the LTE-OFDMA swarm-intelligent profit-aware resource (LO-SiRARE) scheme. However, the network profit for the NR-SiRARE is greatly affected by significant degradation of the path loss associated with millimetre waves. Second, this thesis examines the resource allocation challenge in a multi-tenant multi-slice multi-tier heterogeneous network. To maximise the total utility of a multi-tenant multislice multi-tier heterogeneous network, a latency-aware dynamic resource allocation problem is formulated as an optimisation problem. Via the hierarchical decomposition method for heterogeneous networks, the formulated optimisation problem is transformed to reduce the computational complexities of the proposed solutions. Furthermore, a genetic algorithmbased latency-aware resource allocation scheme is proposed to solve the maximum utility problem by considering related constraints. It is observed that GI-LARE scheme outperforms the static slicing (SS) and an optimal resource allocation (ORA) schemes. Moreover, the GI-LARE appears to be near optimal when compared with an exact solution based on spatial branch and bound. Third, this thesis addresses a distributed resource allocation problem in a multi-slice multitier multi-domain network with different players. A three-level hierarchical business model comprising InPs, MVNOs, and service providers (SP) is examined. The radio resource allocation problem is formulated as a maximum utility optimisation problem. A multi-tier multi-domain slice user matching game and a distributed backtracking multi-player multidomain games schemes are proposed to solve the maximum utility optimisation problem. The distributed backtracking scheme is based on the Fisher Market and Auction theory principles. The proposed multi-tier multi-domain scheme outperforms the GI-LARE and the SS schemes. This is attributed to the availability of resources from other InPs and MVNOs; and the flexibility associated with a multi-domain network. Lastly, an energy-efficient resource allocation problem for 5G slice networks in a highly dense heterogeneous environment is investigated. A mathematical formulation of energy-efficient resource allocation in 5G slice networks is developed as a mixed-integer linear fractional optimisation problem (MILFP). The method adopts hierarchical decomposition techniques to reduce complexities. Furthermore, the slice user association, QoS for different slice use cases, an adapted water filling algorithm, and stochastic geometry tools are employed to xxi model the global energy efficiency (GEE) of the 5G slice network. Besides, neither stochastic geometry nor a three-level hierarchical business model schemes have been employed to model the global energy efficiency of the 5G slice network in the literature, making it the first time such method will be applied to 5G slice network. With rigorous numerical simulations based on Monte-Carlo numerical simulation technique, the performance of the proposed algorithms and schemes was evaluated to show their adaptability, efficiency and robustness for a 5G slice network
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