19 research outputs found

    Compact Digital Predistortion for Multi-band and Wide-band RF Transmitters

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    This thesis is focusing on developing a compact digital predistortion (DPD) system which costs less DPD added power consumptions. It explores a new theory and techniques to relieve the requirement of the number of training samples and the sampling-rate of feedback ADCs in DPD systems. A new theory about the information carried by training samples is introduced. It connects the generalized error of the DPD estimation algorithm with the statistical properties of modulated signals. Secondly, based on the proposed theory, this work introduces a compressed sample selection method to reduce the number of training samples by only selecting the minimal samples which satisfy the foreknown probability information. The number of training samples and complex multiplication operations required for coefficients estimation can be reduced by more than ten times without additional calculation resource. Thirdly, based on the proposed theory, this thesis proves that theoretically a DPD system using memory polynomial based behavioural modes and least-square (LS) based algorithms can be performed with any sampling-rate of feedback samples. The principle, implementation and practical concerns of the undersampling DPD which uses lower sampling-rate ADC are then introduced. Finally, the observation bandwidth of DPD systems can be extended by the proposed multi-rate track-and-hold circuits with the associated algorithm. By addressing several parameters of ADC and corresponding DPD algorithm, multi-GHz observation bandwidth using only a 61.44MHz ADC is achieved, and demonstrated the satisfactory linearization performance of multi-band and continued wideband RF transmitter applications via extensive experimental tests

    A fast engineering approach to high efficiency power amplifier linearization for avionics applications

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    This PhD thesis provides a fast engineering approach to the design of digital predistortion (DPD) linearizers from several perspectives: i) enhancing the off-line training performance of open-loop DPD, ii) providing robustness and reducing the computational complexity of the parameters identification subsystem and, iii) importing machine learning techniques to favor the automatic tuning of power amplifiers (PAs) and DPD linearizers with several free-parameters to maximize power efficiency while meeting the linearity specifications. One of the essential parts of unmanned aerial vehicles (UAV) is the avionics, being the radio control one of the earliest avionics present in the UAV. Unlike the control signal, for transferring user data (such as images, video, etc.) real-time from the drone to the ground station, large transmission rates are required. The PA is a key element in the transmitter chain to guarantee the data transmission (video, photo, etc.) over a long range from the ground station. The more linear output power, the better the coverage or alternatively, with the same coverage, better SNR allows the use of high-order modulation schemes and thus higher transmission rates are achieved. In the context of UAV wireless communications, the power consumption, size and weight of the payload is of significant importance. Therefore, the PA design has to take into account the compromise among bandwidth, output power, linearity and power efficiency (very critical in battery-supplied devices). The PA can be designed to maximize its power efficiency or its linearity, but not both. Therefore, a way to deal with this inherent trade-off is to design high efficient amplification topologies and let the PA linearizers take care of the linearity requirements. Among the linearizers, DPD linearization is the preferred solution to both academia and industry, for its high flexibility and linearization performance. In order to save as many computational and power resources as possible, the implementation of an open-loop DPD results a very attractive solution for UAV applications. This thesis contributes to the PA linearization, especially on off-line training for open-loop DPD, by presenting two different methods for reducing the design and operating costs of an open-loop DPD, based on the analysis of the DPD function. The first method focuses on the input domain analysis, proposing mesh-selecting (MeS) methods to accurately select the proper samples for a computationally efficient DPD parameter estimation. Focusing in the MeS method with better performance, the memory I-Q MeS method is combined with feature extraction dimensionality reduction technique to allow a computational complexity reduction in the identification subsystem by a factor of 65, in comparison to using the classical QR-LS solver and consecutive samples selection. In addition, the memory I-Q MeS method has been proved to be of crucial interest when training artificial neural networks (ANN) for DPD purposes, by significantly reducing the ANN training time. The second method involves the use of machine learning techniques in the DPD design procedure to enlarge the capacity of the DPD algorithm when considering a high number of free parameters to tune. On the one hand, the adaLIPO global optimization algorithm is used to find the best parameter configuration of a generalized memory polynomial behavioral model for DPD. On the other hand, a methodology to conduct a global optimization search is proposed to find the optimum values of a set of key circuit and system level parameters, that properly combined with DPD linearization and crest factor reduction techniques, can exploit at best dual-input PAs in terms of maximizing power efficiency along wide bandwidths while being compliant with the linearity specifications. The advantages of these proposed techniques have been validated through experimental tests and the obtained results are analyzed and discussed along this thesis.Aquesta tesi doctoral proporciona unes pautes per al disseny de linealitzadors basats en predistorsió digital (DPD) des de diverses perspectives: i) millorar el rendiment del DPD en llaç obert, ii) proporcionar robustesa i reduir la complexitat computacional del subsistema d'identificació de paràmetres i, iii) incorporació de tècniques d'aprenentatge automàtic per afavorir l'auto-ajustament d'amplificadors de potència (PAs) i linealitzadors DPD amb diversos graus de llibertat per poder maximitzar l’eficiència energètica i al mateix temps acomplir amb les especificacions de linealitat. Una de les parts essencials dels vehicles aeris no tripulats (UAV) _es l’aviònica, sent el radiocontrol un dels primers sistemes presents als UAV. Per transferir dades d'usuari (com ara imatges, vídeo, etc.) en temps real des del dron a l’estació terrestre, es requereixen taxes de transmissió grans. El PA _es un element clau de la cadena del transmissor per poder garantir la transmissió de dades a grans distàncies de l’estació terrestre. A major potència de sortida, més cobertura o, alternativament, amb la mateixa cobertura, millor relació senyal-soroll (SNR) la qual cosa permet l’ús d'esquemes de modulació d'ordres superiors i, per tant, aconseguir velocitats de transmissió més altes. En el context de les comunicacions sense fils en UAVs, el consum de potència, la mida i el pes de la càrrega útil són de vital importància. Per tant, el disseny del PA ha de tenir en compte el compromís entre ample de banda, potència de sortida, linealitat i eficiència energètica (molt crític en dispositius alimentats amb bateries). El PA es pot dissenyar per maximitzar la seva eficiència energètica o la seva linealitat, però no totes dues. Per tant, per afrontar aquest compromís s'utilitzen topologies amplificadores d'alta eficiència i es deixa que el linealitzador s'encarregui de garantir els nivells necessaris de linealitat. Entre els linealitzadors, la linealització DPD és la solució preferida tant per al món acadèmic com per a la indústria, per la seva alta flexibilitat i rendiment. Per tal d'estalviar tant recursos computacionals com consum de potència, la implementació d'un DPD en lla_c obert resulta una solució molt atractiva per a les aplicacions UAV. Aquesta tesi contribueix a la linealització del PA, especialment a l'entrenament fora de línia de linealitzadors DPD en llaç obert, presentant dos mètodes diferents per reduir el cost computacional i augmentar la fiabilitat dels DPDs en llaç obert. El primer mètode se centra en l’anàlisi de l’estadística del senyal d'entrada, proposant mètodes de selecció de malla (MeS) per seleccionar les mostres més significatives per a una estimació computacionalment eficient dels paràmetres del DPD. El mètode proposat IQ MeS amb memòria es pot combinar amb tècniques de reducció del model del DPD i d'aquesta manera poder aconseguir una reducció de la complexitat computacional en el subsistema d’identificació per un factor de 65, en comparació amb l’ús de l'algoritme clàssic QR-LS i selecció de mostres d'entrenament consecutives. El segon mètode consisteix en l’ús de tècniques d'aprenentatge automàtic pel disseny del DPD quan es considera un gran nombre de graus de llibertat (paràmetres) per sintonitzar. D'una banda, l'algorisme d’optimització global adaLIPO s'utilitza per trobar la millor configuració de paràmetres d'un model polinomial amb memòria generalitzat per a DPD. D'altra banda, es proposa una estratègia per l’optimització global d'un conjunt de paràmetres clau per al disseny a nivell de circuit i sistema, que combinats amb linealització DPD i les tècniques de reducció del factor de cresta, poden maximitzar l’eficiència de PAs d'entrada dual de gran ample de banda, alhora que compleixen les especificacions de linealitat. Els avantatges d'aquestes tècniques proposades s'han validat mitjançant proves experimentals i els resultats obtinguts s'analitzen i es discuteixen al llarg d'aquesta tesi

    ワイヤレス通信のための先進的な信号処理技術を用いた非線形補償法の研究

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    The inherit nonlinearity in analogue front-ends of transmitters and receivers have had primary impact on the overall performance of the wireless communication systems, as it gives arise of substantial distortion when transmitting and processing signals with such circuits. Therefore, the nonlinear compensation (linearization) techniques become essential to suppress the distortion to an acceptable extent in order to ensure sufficient low bit error rate. Furthermore, the increasing demands on higher data rate and ubiquitous interoperability between various multi-coverage protocols are two of the most important features of the contemporary communication system. The former demand pushes the communication system to use wider bandwidth and the latter one brings up severe coexistence problems. Having fully considered the problems raised above, the work in this Ph.D. thesis carries out extensive researches on the nonlinear compensations utilizing advanced digital signal processing techniques. The motivation behind this is to push more processing tasks to the digital domain, as it can potentially cut down the bill of materials (BOM) costs paid for the off-chip devices and reduce practical implementation difficulties. The work here is carried out using three approaches: numerical analysis & computer simulations; experimental tests using commercial instruments; actual implementation with FPGA. The primary contributions for this thesis are summarized as the following three points: 1) An adaptive digital predistortion (DPD) with fast convergence rate and low complexity for multi-carrier GSM system is presented. Albeit a legacy system, the GSM, however, has a very strict requirement on the out-of-band emission, thus it represents a much more difficult hurdle for DPD application. It is successfully implemented in an FPGA without using any other auxiliary processor. A simplified multiplier-free NLMS algorithm, especially suitable for FPGA implementation, for fast adapting the LUT is proposed. Many design methodologies and practical implementation issues are discussed in details. Experimental results have shown that the DPD performed robustly when it is involved in the multichannel transmitter. 2) The next generation system (5G) will unquestionably use wider bandwidth to support higher throughput, which poses stringent needs for using high-speed data converters. Herein the analog-to-digital converter (ADC) tends to be the most expensive single device in the whole transmitter/receiver systems. Therefore, conventional DPD utilizing high-speed ADC becomes unaffordable, especially for small base stations (micro, pico and femto). A digital predistortion technique utilizing spectral extrapolation is proposed in this thesis, wherein with band-limited feedback signal, the requirement on ADC speed can be significantly released. Experimental results have validated the feasibility of the proposed technique for coping with band-limited feedback signal. It has been shown that adequate linearization performance can be achieved even if the acquisition bandwidth is less than the original signal bandwidth. The experimental results obtained by using LTE-Advanced signal of 320 MHz bandwidth are quite satisfactory, and to the authors’ knowledge, this is the first high-performance wideband DPD ever been reported. 3) To address the predicament that mobile operators do not have enough contiguous usable bandwidth, carrier aggregation (CA) technique is developed and imported into 4G LTE-Advanced. This pushes the utilization of concurrent dual-band transmitter/receiver, which reduces the hardware expense by using a single front-end. Compensation techniques for the respective concurrent dual-band transmitter and receiver front-ends are proposed to combat the inter-band modulation distortion, and simultaneously reduce the distortion for the both lower-side band and upper-side band signals.電気通信大学201

    Linear Predistortion-less MIMO Transmitters

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    Receptores de rádio-frequência melhorados e disruptivos

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    This Ph.D. mainly addresses the reception part of a radio front end, focusing on Radio Frequency (RF) sampling architectures. These are considered to be the most promising future candidates to get better performance in terms of bandwidth and agility, following the well-known Software-Defined Radio (SDR) concept. The study considers the usage of an RF receiver in a standalone operation, i.e., used for receiving unknown data at the antenna, and when used as observation path for Power Amplifier (PA) linearization via Digital Predistortion (DPD), since nowadays this represents a mandatory technique to increase overall system’s performance. Firstly, commercial available RF Analog-Digital-Converters (ADCs) are studied and characterized to understand their limitations when used in DPD scenarios. A method for characterization and digital post-compensation to improve performance is proposed and evaluated. Secondly, an innovative FPGA-based RF single-bit pulsed converter based on Pulse Width Modulation (PWM) is addressed targeting frequency agility, high analog input bandwidth, and system integration, taking profit of an FPGA-based implementation. The latter was optimized based on PWM theoretical behavior maximizing Signal-to-Noise-Ratio (SNR) and bandwidth. The optimized receiver, was afterwards evaluated in a 5G C-RAN architecture and as a feedback loop for DPD. Finally, a brief study regarding DPD feedback loops in the scope of multiantenna transmitters is presented. This Ph.D. contributes with several advances to the state-of-the-art of SDR receiver, and to the so-called SDR DPD concept.Este doutoramento endereça principalmente a componente de receção de um transcetor de rádio-frequência (RF), focando-se em arquiteturas de receção de amostragem em RF. Estas são assim consideradas como sendo as mais promissoras para o futuro, em termos de desempenho, largura de banda e agilidade, de acordo com o conhecido conceito de Rádios Definidos por Software (SDR). O estudo considera o uso dos recetores de RF em modo standalone, i.e., recebendo dados desconhecidos provenientes da antena, e também quando usados como caminho de observação para aplicação de linearização de amplificadores de potência (PAs) via pré-distorção digital (DPD), pois atualmente esta é uma técnica fundamental para aumentar o desempenho geral do sistema. Em primeiro lugar, os conversores analógico-digital de RF são estudados e caracterizados para perceber as suas limitações quando usados em cenários de DPD. Um método de caracterização e pós compensação digital é proposto para obter melhorias de desempenho. Em segundo lugar, um novo recetor pulsado de um bit baseado em Modulação de Largura de Pulso (PWM) e implementado em Agregado de Células Lógicas Programáveis (FPGA) é endereçado, visando agilidade em frequência, largura de banda analógica e integração de sistema, tirando proveito da implementação em FPGA. Este recetor foi otimizado com base no modelo comportamental teórico da modulação PWM, maximizando a relação sinalruído (SNR) e a largura de banda. O recetor otimizado foi posteriormente avaliado num cenário 5G de uma arquitetura C-RAN e também num cenário em que serve de caminho de observação para DPD. Finalmente, um breve estudo relativo a caminhos de observação de DPD no contexto de transmissores multi-antena é também apresentado. Este doutoramento contribui com vários avanços no estado da arte de recetores SDR e no conceito de SDR DPD.Programa Doutoral em Engenharia Eletrotécnic

    Proceedings of the Second International Mobile Satellite Conference (IMSC 1990)

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    Presented here are the proceedings of the Second International Mobile Satellite Conference (IMSC), held June 17-20, 1990 in Ottawa, Canada. Topics covered include future mobile satellite communications concepts, aeronautical applications, modulation and coding, propagation and experimental systems, mobile terminal equipment, network architecture and control, regulatory and policy considerations, vehicle antennas, and speech compression

    DESIGN OF A GAAS DISTRIBUTED AMPLIFIER WITH LC TRAPS BASED BROADBAND LINEARIZATION

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    Increasing the linearity of power amplifiers has been an important area of research because its signal integrity influences the performance of the entire transreceiver system and there are strict regulatory requirements on them. Due to the nonlinear behaviour of power amplifiers, third order intermodulation products are generated close to the desired signals and cannot be removed by filters. Increasing linearity will help bring these distortion products closer to the noise floor. However, it is not an easy task to increase linearity without trading off output power. To maintain the same level of output power generated but with higher linearity, many techniques, each with its own pros and cons, have been implemented to linearize an amplifier. Techniques involving feedback are seriously limited in terms of modulation bandwidth whereas methods such as predistortion and feedforward are very difficult to implement. This project seeks to use a simple method of placing terminations directly to the distributed amplifier (DA), making it a device level linearization technique and can be used in addition to the other system level techniques mentioned earlier. To increase linearity over a broad bandwidth of 0.5 to 3.0 GHz, this work proposes using low impedance terminations (LC traps) at the envelope frequency to the input and output of several distributed amplifiers. This research is novel since this is the first time broadband improvement in linearity has been demonstrated using the LC trap method. Two design iterations were completed (first design iteration has four variants to test the output trap while the second design iteration has three variants to test the input trap). The low impedance terminations are implemented using inductor-capacitor networks that are external to the monolithic microwave integrated circuit (MMIC). Design and layout of the DAs were carried out using Agilent’s Advanced Design System (ADS). Results show that placing the traps at the output of the DA does not truly affect the linearity of the device at lower frequencies but provide an improvement of 1.6 dB and 3.4 dB to the third-order output intercept point (OIP3) at 2.5 GHz and 3.0 GHz, respectively. With traps at the input, measurement results at -5 dBm input power, viii 1.375 V base bias (61 mA total collector current) and 10 MHz two tone spacing show a broadband improvement throughout the band (0.5 GHz to 3.0 GHz) of 3.3 dB to 7.4 dB in OIP3. Furthermore, the OIP3 is increased to 19.2 dB above P1dB. Results show that the improvement in OIP3 comes without lowering gain, return loss or P1dB and without causing any stability problems

    Machine Learning Meets Communication Networks: Current Trends and Future Challenges

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    The growing network density and unprecedented increase in network traffic, caused by the massively expanding number of connected devices and online services, require intelligent network operations. Machine Learning (ML) has been applied in this regard in different types of networks and networking technologies to meet the requirements of future communicating devices and services. In this article, we provide a detailed account of current research on the application of ML in communication networks and shed light on future research challenges. Research on the application of ML in communication networks is described in: i) the three layers, i.e., physical, access, and network layers; and ii) novel computing and networking concepts such as Multi-access Edge Computing (MEC), Software Defined Networking (SDN), Network Functions Virtualization (NFV), and a brief overview of ML-based network security. Important future research challenges are identified and presented to help stir further research in key areas in this direction
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