6 research outputs found

    DR9.3 Final report of the JRRM and ASM activities

    Get PDF
    Deliverable del projecte europeu NEWCOM++This deliverable provides the final report with the summary of the activities carried out in NEWCOM++ WPR9, with a particular focus on those obtained during the last year. They address on the one hand RRM and JRRM strategies in heterogeneous scenarios and, on the other hand, spectrum management and opportunistic spectrum access to achieve an efficient spectrum usage. Main outcomes of the workpackage as well as integration indicators are also summarised.Postprint (published version

    Adaptive scheduling in cellular access, wireless mesh and IP networks

    Get PDF
    Networking scenarios in the future will be complex and will include fixed networks and hybrid Fourth Generation (4G) networks, consisting of both infrastructure-based and infrastructureless, wireless parts. In such scenarios, adaptive provisioning and management of network resources becomes of critical importance. Adaptive mechanisms are desirable since they enable a self-configurable network that is able to adjust itself to varying traffic and channel conditions. The operation of adaptive mechanisms is heavily based on measurements. The aim of this thesis is to investigate how measurement based, adaptive packet scheduling algorithms can be utilized in different networking environments. The first part of this thesis is a proposal for a new delay-based scheduling algorithm, known as Delay-Bounded Hybrid Proportional Delay (DBHPD), for delay adaptive provisioning in DiffServ-based fixed IP networks. This DBHPD algorithm is thoroughly evaluated by ns2-simulations and measurements in a FreeBSD prototype router network. It is shown that DBHPD results in considerably more controllable differentiation than basic static bandwidth sharing algorithms. The prototype router measurements also prove that a DBHPD algorithm can be easily implemented in practice, causing less processing overheads than a well known CBQ algorithm. The second part of this thesis discusses specific scheduling requirements set by hybrid 4G networking scenarios. Firstly, methods for joint scheduling and transmit beamforming in 3.9G or 4G networks are described and quantitatively analyzed using statistical methods. The analysis reveals that the combined gain of channel-adaptive scheduling and transmit beamforming is substantial and that an On-off strategy can achieve the performance of an ideal Max SNR strategy if the feedback threshold is optimized. Finally, a novel cross-layer energy-adaptive scheduling and queue management framework EAED (Energy Aware Early Detection), for preserving delay bounds and minimizing energy consumption in WLAN mesh networks, is proposed and evaluated with simulations. The simulations show that our scheme can save considerable amounts of transmission energy without violating application level QoS requirements when traffic load and distances are reasonable

    Game Theory in Communications:a Study of Two Scenarios

    Get PDF
    Multi-user communication theory typically studies the fundamental limits of communication systems, and considers communication schemes that approach or even achieve these limits. The functioning of many such schemes assumes that users always cooperate, even when it is not in their own best interest. In practice, this assumption need not be fulfilled, as rational communication participants are often only interested in maximizing their own communication experience, and may behave in an undesirable manner from the system's point of view. Thus, communication systems may operate differently than intended if the behavior of individual participants is not taken into account. In this thesis, we study how users make decisions in wireless settings, by considering their preferences and how they interact with each other. We investigate whether the outcomes of their decisions are desirable, and, if not, what can be done to improve them. In particular, we focus on two related issues. The first is the decision-making of communication users in the absence of any central authority, which we consider in the context of the Gaussian multiple access channel. The second is the pricing of wireless resources, which we consider in the context of the competition of wireless service providers for users who are not contractually tied to any provider, but free to choose the one offering the best tradeoff of parameters. In the first part of the thesis, we model the interaction of self-interested users in a Gaussian multiple access channel using non-cooperative game theory. We demonstrate that the lack of infrastructure leads to an inefficient outcome for users who interact only once, specifically due to the lack of coordination between users. Using evolutionary game theory, we show that this inefficient outcome would also arise as a result of repeated interaction of many individuals over time. On the other hand, if the users correlate their decoding schedule with the outcome of some publicly observed (pseudo) random variable, the resulting outcome is efficient. This shows that sometimes it takes very little intervention on the part of the system planner to make sure that users choose a desirable operating point. In the second part of the thesis, we consider the competition of wireless service providers for users who are free to choose their service provider based on their channel parameters and the resource price. We model this situation as a two-stage game where the providers announce unit resource prices in the first stage and the users choose how much resource they want to purchase from each provider in the second stage. Under fairly general conditions, we show that the competitive interaction of users and providers results in socially optimal resource allocation. We also provide a decentralized primal-dual algorithm and prove its convergence to the socially optimal outcome

    Clustering techniques for base station coordination in a wireless cellular system

    Get PDF
    A lo largo de este Proyecto Fin de Carrera, propondremos mejoras para futuros sistemas de comunicaciones móviles mediante un estudio detallado de la coordinación entre estaciones base en sistemas celulares basados en MIMO. Este proyecto se compone de dos partes fundamentales. Por un lado, nos centraremos en técnicas de procesado de señal para MIMO como filtrado y precodificación lineales en el dominio espacial. Partiendo de los últimos desarrollos en dicho ámbito, se han desarrollado precodificadores de mínimo error cuadrático medio que incluyen restricciones de máxima potencia transmitida por celda. Además, se ha propuesto un concepto novedoso consistente en la introducción de una nueva formulación que, además de minimizar el error cuadrático medio en el interior de cada agrupación de celdas (cluster ), trata de mantener la interferencia entre clusters en niveles suficientemente bajos. Durante la segunda parte, analizaremos el impacto que la agrupación de celdas en clusters, que define qué estaciones base pueden ser coordinadas entre sí , tiene en el rendimiento global del sistema. Se ha estudiado la aplicabilidad de técnicas de agrupamiento dentro del aprendizaje máquina, dando como resultado un conjunto de nuevos algoritmos que han sido desarrollados adaptando algoritmos de agrupamiento de propósito general ya existentes al problema de crear una partición del conjunto de celdas de acuerdo a las condiciones de propagación de señal existentes en el sistema en un determinado instante. Todas nuestras contribuciones se han verificado mediante la simulación de un sistema de comunicaciones móviles basado en modelos de propagación de señal del 3GPP para LTE. De acuerdo a los resultados obtenidos, las técnicas propuestas a lo largo de este proyecto proporcionan un aumento considerable de la media y la mediana de las tasas por usuario respecto a soluciones ya existentes. La idea de introducir la reducción de interferencia entre clusters en la formulación de los precodifiadores MMSE mejora dramáticamente el rendimiento en sistemas celulares MIMO al ser comparados con precodifiadores de Wiener tradicionales. Por otro lado, nuestros algoritmos de agrupamiento dinámico de estaciones base exhiben un notable aumento de las tasas por usuario a la vez que emplean clusters de menor tamaño con respecto a soluciones existentes basadas en particiones estáticas del conjunto de celdas en el sistema. _______________________________________________________________________________________________________________________________In this project, we attempt to provide enhancements for future mobile communications systems by carrying out a throughout study of base-station coordination in cellular MIMO systems. Our work can be divided in two main blocks. During the first part, we focus our attention on linear MIMO signal processing techniques such as linear spatial precoding and linear spatial ltering. Starting from the state-of-the-art in that area of knowledge, we have developed novel MMSE precoders which include per-cell power constraints and a new formulation which, apart from minimizing the intra-cluster MSE, tries to keep inter-cluster interference at low levels. In the second part, we focus on the study of the impact the particular mapping of cells to clusters in the cellular system has on the overall performance of the mobile communication radio access network. The applicability of existing clustering algorithms in the fi eld of machine learning has been studied, resulting in a set of novel algorithms that we developed by adapting existing general-purpose clustering solutions for the problem of dynamically partitioning a set of cells according to the instantaneous signal propagation conditions. All our contributions have been exhaustively tested by simulation of a cellular mobile communication system based on 3GPP signal propagation models for LTE. According to the results obtained, the techniques proposed along this project provide a remarkable increase of both the average and median user rates in the system with respect to previous existing solutions. The inter-cluster interference-awareness we introduced in the formulation of MMSE precoders dramatically increases the performance in cellular coordinated MIMO when comparing it with traditional Wiener precoders. On the other hand, our dynamic base-station clustering has been shown to signi catively enhance the user rates while using smaller clusters that existing solutions based on static partitions of the base-station deployment.Ingeniería de Telecomunicació

    NOVEL USER-CENTRIC ARCHITECTURES FOR FUTURE GENERATION CELLULAR NETWORKS: DESIGN, ANALYSIS AND PERFORMANCE OPTIMIZATION

    Get PDF
    Ambitious targets for aggregate throughput, energy efficiency (EE) and ubiquitous user experience are propelling the advent of ultra-dense networks. Inter-cell interference and high energy consumption in an ultra-dense network are the prime hindering factors in pursuit of these goals. To address this challenge, we investigate the idea of transforming network design from being base station-centric to user-centric. To this end, we develop mathematical framework and analyze multiple variants of the user-centric networks, with the help of advanced scientific tools such as stochastic geometry, game theory, optimization theory and deep neural networks. We first present a user-centric radio access network (RAN) design and then propose novel base station association mechanisms by forming virtual dedicated cells around users scheduled for downlink. The design question that arises is what should the ideal size of the dedicated regions around scheduled users be? To answer this question, we follow a stochastic geometry based approach to quantify the area spectral efficiency (ASE) and energy efficiency (EE) of a user-centric Cloud RAN architecture. Observing that the two efficiency metrics have conflicting optimal user-centric cell sizes, we propose a game theoretic self-organizing network (GT-SON) framework that can orchestrate the network between ASE and EE focused operational modes in real-time in response to changes in network conditions and the operator's revenue model, to achieve a Pareto optimal solution. The designed model is shown to outperform base-station centric design in terms of both ASE and EE in dense deployment scenarios. Taking this user-centric approach as a baseline, we improve the ASE and EE performance by introducing flexibility in the dimensions of the user-centric regions as a function of data requirement for each device. So instead of optimizing the network-wide ASE or EE, each user device competes for a user-centric region based on its data requirements. This competition is modeled via an evolutionary game and a Vickrey-Clarke-Groves auction. The data requirement based flexibility in the user-centric RAN architecture not only improves the ASE and EE, but also reduces the scheduling wait time per user. Offloading dense user hotspots to low range mmWave cells promises to meet the enhance mobile broadband requirement of 5G and beyond. To investigate how the three key enablers; i.e. user-centric virtual cell design, ultra-dense deployments and mmWave communication; are integrated in a multi-tier Stienen geometry based user-centric architecture. Taking into account the characteristics of mmWave propagation channel such as blockage and fading, we develop a statistical framework for deriving the coverage probability of an arbitrary user equipment scheduled within the proposed architecture. A key advantage observed through this architecture is significant reduction in the scheduling latency as compared to the baseline user-centric model. Furthermore, the interplay between certain system design parameters was found to orchestrate the ASE-EE tradeoff within the proposed network design. We extend this work by framing a stochastic optimization problem over the design parameters for a Pareto optimal ASE-EE tradeoff with random placements of mobile users, macro base stations and mmWave cells within the network. To solve this optimization problem, we follow a deep learning approach to estimate optimal design parameters in real-time complexity. Our results show that if the deep learning model is trained with sufficient data and tuned appropriately, it yields near-optimal performance while eliminating the issue of long processing times needed for system-wide optimization. The contributions of this dissertation have the potential to cause a paradigm shift from the reactive cell-centric network design to an agile user-centric design that enables real-time optimization capabilities, ubiquitous user experience, higher system capacity and improved network-wide energy efficiency

    Performance analysis of 4G wireless networks using system level simulator

    Get PDF
    Doutoramento em Engenharia ElectrotécnicaIn the last decade, mobile wireless communications have witnessed an explosive growth in the user’s penetration rate and their widespread deployment around the globe. In particular, a research topic of particular relevance in telecommunications nowadays is related to the design and implementation of mobile communication systems of 4th generation (4G). 4G networks will be characterized by the support of multiple radio access technologies in a core network fully compliant with the Internet Protocol (all IP paradigms). Such networks will sustain the stringent quality of service (QoS) requirements and the expected high data rates from the type of multimedia applications (i.e. YouTube and Skype) to be available in the near future. Therefore, 4G wireless communications system will be of paramount importance on the development of the information society in the near future. As 4G wireless services will continue to increase, this will put more and more pressure on the spectrum availability. There is a worldwide recognition that methods of spectrum managements have reached their limit and are no longer optimal, therefore new paradigms must be sought. Studies show that most of the assigned spectrum is under-utilized, thus the problem in most cases is inefficient spectrum management rather spectrum shortage. There are currently trends towards a more liberalized approach of spectrum management, which are tightly linked to what is commonly termed as Cognitive Radio (CR). Furthermore, conventional deployment of 4G wireless systems (one BS in cell and mobile deploy around it) are known to have problems in providing fairness (users closer to the BS are more benefited relatively to the cell edge users) and in covering some zones affected by shadowing, therefore the use of relays has been proposed as a solution. To evaluate and analyse the performances of 4G wireless systems software tools are normally used. Software tools have become more and more mature in recent years and their need to provide a high level evaluation of proposed algorithms and protocols is now more important. The system level simulation (SLS) tools provide a fundamental and flexible way to test all the envisioned algorithms and protocols under realistic conditions, without the need to deal with the problems of live networks or reduced scope prototypes. Furthermore, the tools allow network designers a rapid collection of a wide range of performance metrics that are useful for the analysis and optimization of different algorithms. This dissertation proposes the design and implementation of conventional system level simulator (SLS), which afterwards enhances for the 4G wireless technologies namely cognitive Radios (IEEE802.22) and Relays (IEEE802.16j). SLS is then used for the analysis of proposed algorithms and protocols.FC
    corecore