91 research outputs found

    Energy Optimization in Commercial FPGAs with Voltage, Frequency and Logic Scaling

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    This paper investigates the energy reductions possible in commercially available FPGAs configured to support voltage, frequency and logic scalability combined with power gating. Voltage and frequency scaling is based on in-situ detectors that allow the device to detect valid working voltage and frequency pairs at run-time while logic scalability is achieved with partial dynamic reconfiguration. The considered devices are FPGA-processor hybrids with independent power domains fabricated in 28 nm process nodes. The test case is based on a number of operational scenarios in which the FPGA side is loaded with a motion estimation core that can be configured with a variable number of execution units. The results demonstrate that voltage scalability reduces power by up to 60 percent compared with nominal voltage operation at the same frequency. The energy analysis show that the most energy efficiency core configuration depends on the performance requirements. A low performance scenario shows that serial computation is more energy efficient than the parallel configuration while the opposite is true when the performance requirements increase. An algorithm is proposed to combine effectively adaptive voltage/logic scaling and power gating in the proposed system and application

    Power and Energy Aware Heterogeneous Computing Platform

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    During the last decade, wireless technologies have experienced significant development, most notably in the form of mobile cellular radio evolution from GSM to UMTS/HSPA and thereon to Long-Term Evolution (LTE) for increasing the capacity and speed of wireless data networks. Considering the real-time constraints of the new wireless standards and their demands for parallel processing, reconfigurable architectures and in particular, multicore platforms are part of the most successful platforms due to providing high computational parallelism and throughput. In addition to that, by moving toward Internet-of-Things (IoT), the number of wireless sensors and IP-based high throughput network routers is growing at a rapid pace. Despite all the progression in IoT, due to power and energy consumption, a single chip platform for providing multiple communication standards and a large processing bandwidth is still missing.The strong demand for performing different sets of operations by the embedded systems and increasing the computational performance has led to the use of heterogeneous multicore architectures with the help of accelerators for computationally-intensive data-parallel tasks acting as coprocessors. Currently, highly heterogeneous systems are the most power-area efficient solution for performing complex signal processing systems. Additionally, the importance of IoT has increased significantly the need for heterogeneous and reconfigurable platforms.On the other hand, subsequent to the breakdown of the Dennardian scaling and due to the enormous heat dissipation, the performance of a single chip was obstructed by the utilization wall since all cores cannot be clocked at their maximum operating frequency. Therefore, a thermal melt-down might be happened as a result of high instantaneous power dissipation. In this context, a large fraction of the chip, which is switched-off (Dark) or operated at a very low frequency (Dim) is called Dark Silicon. The Dark Silicon issue is a constraint for the performance of computers, especially when the up-coming IoT scenario will demand a very high performance level with high energy efficiency. Among the suggested solution to combat the problem of Dark-Silicon, the use of application-specific accelerators and in particular Coarse-Grained Reconfigurable Arrays (CGRAs) are the main motivation of this thesis work.This thesis deals with design and implementation of Software Defined Radio (SDR) as well as High Efficiency Video Coding (HEVC) application-specific accelerators for computationally intensive kernels and data-parallel tasks. One of the most important data transmission schemes in SDR due to its ability of providing high data rates is Orthogonal Frequency Division Multiplexing (OFDM). This research work focuses on the evaluation of Heterogeneous Accelerator-Rich Platform (HARP) by implementing OFDM receiver blocks as designs for proof-of-concept. The HARP template allows the designer to instantiate a heterogeneous reconfigurable platform with a very large amount of custom-tailored computational resources while delivering a high performance in terms of many high-level metrics. The availability of this platform lays an excellent foundation to investigate techniques and methods to replace the Dark or Dim part of chip with high-performance silicon dissipating very low power and energy. Furthermore, this research work is also addressing the power and energy issues of the embedded computing systems by tailoring the HARP for self-aware and energy-aware computing models. In this context, the instantaneous power dissipation and therefore the heat dissipation of HARP are mitigated on FPGA/ASIC by using Dynamic Voltage and Frequency Scaling (DVFS) to minimize the dark/dim part of the chip. Upgraded HARP for self-aware and energy-aware computing can be utilized as an energy-efficient general-purpose transceiver platform that is cognitive to many radio standards and can provide high throughput while consuming as little energy as possible. The evaluation of HARP has shown promising results, which makes it a suitable platform for avoiding Dark Silicon in embedded computing platforms and also for diverse needs of IoT communications.In this thesis, the author designed the blocks of OFDM receiver by crafting templatebased CGRA devices and then attached them to HARP’s Network-on-Chip (NoC) nodes. The performance of application-specific accelerators generated from templatebased CGRAs, the performance of the entire platform subsequent to integrating the CGRA nodes on HARP and the NoC traffic are recorded in terms of several highlevel performance metrics. In evaluating HARP on FPGA prototype, it delivers a performance of 0.012 GOPS/mW. Because of the scalability and regularity in HARP, the author considered its value as architectural constant. In addition to showing the gain and the benefits of maximizing the number of reconfigurable processing resources on a platform in comparison to the scaled performance of several state-of-the-art platforms, HARP’s architectural constant ensures application-independent figure of merit. HARP is further evaluated by implementing various sizes of Discrete Cosine transform (DCT) and Discrete Sine Transform (DST) dedicated for HEVC standard, which showed its ability to sustain Full HD 1080p format at 30 fps on FPGA. The author also integrated self-aware computing model in HARP to mitigate the power dissipation of an OFDM receiver. In the case of FPGA implementation, the total power dissipation of the platform showed 16.8% reduction due to employing the Feedback Control System (FCS) technique with Dynamic Frequency Scaling (DFS). Furthermore, by moving to ASIC technology and scaling both frequency and voltage simultaneously, significant dynamic power reduction (up to 82.98%) was achieved, which proved the DFS/DVFS techniques as one step forward to mitigate the Dark Silicon issue

    低電力動画像符号化プロセッサLSI

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    Fine-grained Energy and Thermal Management using Real-time Power Sensors

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    With extensive use of battery powered devices such as smartphones, laptops an

    Optimisation énergétique de processus de traitement du signal et ses applications au décodage vidéo

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    Consumer electronics offer today more and more features (video, audio, GPS, Internet) and connectivity means (multi-radio systems with WiFi, Bluetooth, UMTS, HSPA, LTE-advanced ... ). The power demand of these devices is growing for the digital part especially for the processing chip. To support this ever increasing computing demand, processor architectures have evolved with multicore processors, graphics processors (GPU) and ether dedicated hardware accelerators. However, the evolution of battery technology is itself slower. Therefore, the autonomy of embedded systems is now under a great pressure. Among the new functionalities supported by mobile devices, video services take a prominent place. lndeed, recent analyzes show that they will represent 70% of mobile Internet traffic by 2016. Accompanying this growth, new technologies are emerging for new services and applications. Among them HEVC (High Efficiency Video Coding) can double the data compression while maintaining a subjective quality equivalent to its predecessor, the H.264 standard. ln a digital circuit, the total power consumption is made of static power and dynamic power. Most of modern hardware architectures implement means to control the power consumption of the system. Dynamic Voltage and Frequency Scaling (DVFS) mainly reduces the dynamic power of the circuit. This technique aims to adapt the power of the processor (and therefore its consumption) to the actual load needed by the application. To control the static power, Dynamic Power Management (DPM or sleep modes) aims to stop the voltage supplies associated with specific areas of the chip. ln this thesis, we first present a model of the energy consumed by the circuit integrating DPM and DVFS modes. This model is generalized to multi-core integrated circuits and to a rapid prototyping tool. Thus, the optimal operating point of a circuit, i.e. the operating frequency and the number of active cores, is identified. Secondly, the HEVC application is integrated to a multicore architecture coupled with a sophisticated DVFS mechanism. We show that this application can be implemented efficiently on general purpose processors (GPP) while minimizing the power consumption. Finally, and to get further energy gain, we propose a modified HEVC decoder that is capable to tune its energy gains together with a decoding quality trade-off.Aujourd'hui, les appareils électroniques offrent de plus en plus de fonctionnalités (vidéo, audio, GPS, internet) et des connectivités variées (multi-systèmes de radio avec WiFi, Bluetooth, UMTS, HSPA, LTE-advanced ... ). La demande en puissance de ces appareils est donc grandissante pour la partie numérique et notamment le processeur de calcul. Pour répondre à ce besoin sans cesse croissant de nouvelles fonctionnalités et donc de puissance de calcul, les architectures des processeurs ont beaucoup évolué : processeurs multi-coeurs, processeurs graphiques (GPU) et autres accélérateurs matériels dédiés. Cependant, alors que de nouvelles architectures matérielles peinent à répondre aux exigences de performance, l'évolution de la technologie des batteries est quant à elle encore plus lente. En conséquence, l'autonomie des systèmes embarqués est aujourd'hui sous pression. Parmi les nouveaux services supportés par les terminaux mobiles, la vidéo prend une place prépondérante. En effet, des analyses récentes de tendance montrent qu'elle représentera 70 % du trafic internet mobile dès 2016. Accompagnant cette croissance, de nouvelles technologies émergent permettant de nouveaux services et applications. Parmi elles, HEVC (High Efficiency Video Coding) permet de doubler la compression de données tout en garantissant une qualité subjective équivalente à son prédécesseur, la norme H.264. Dans un circuit numérique, la consommation provient de deux éléments: la puissance statique et la puissance dynamique. La plupart des architectures matérielles récentes mettent en oeuvre des procédés permettant de contrôler la puissance du système. Le changement dynamique du couple tension/fréquence appelé Dynamic Voltage and Frequency Scaling (DVFS) agit principalement sur la puissance dynamique du circuit. Cette technique permet d'adapter la puissance du processeur (et donc sa consommation) à la charge réelle nécessaire pour une application. Pour contrôler la puissance statique, le Dynamic Power Management (DPM, ou modes de veille) consistant à arrêter les alimentations associées à des zones spécifiques de la puce. Dans cette thèse, nous présentons d'abord une modélisation de l'énergie consommée par le circuit intégrant les modes DVFS et DPM. Cette modélisation est généralisée au circuit multi-coeurs et intégrée à un outil de prototypage rapide. Ainsi le point de fonctionnement optimal d'un circuit, la fréquence de fonctionnement et le nombre de coeurs actifs, est identifié. Dans un second temps, l'application HEVC est intégrée à une architecture multi-coeurs avec une adaptation dynamique de la fréquence de développement. Nous montrons que cette application peut être implémentée efficacement sur des processeurs généralistes (GPP) tout en minimisant la puissance consommée. Enfin, et pour aller plus loin dans les gains en énergie, nous proposons une modification du décodeur HEVC qui permet à un décodeur de baisser encore plus sa consommation en fonction du budget énergétique disponible localement

    Circuits and Systems Advances in Near Threshold Computing

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    Modern society is witnessing a sea change in ubiquitous computing, in which people have embraced computing systems as an indispensable part of day-to-day existence. Computation, storage, and communication abilities of smartphones, for example, have undergone monumental changes over the past decade. However, global emphasis on creating and sustaining green environments is leading to a rapid and ongoing proliferation of edge computing systems and applications. As a broad spectrum of healthcare, home, and transport applications shift to the edge of the network, near-threshold computing (NTC) is emerging as one of the promising low-power computing platforms. An NTC device sets its supply voltage close to its threshold voltage, dramatically reducing the energy consumption. Despite showing substantial promise in terms of energy efficiency, NTC is yet to see widescale commercial adoption. This is because circuits and systems operating with NTC suffer from several problems, including increased sensitivity to process variation, reliability problems, performance degradation, and security vulnerabilities, to name a few. To realize its potential, we need designs, techniques, and solutions to overcome these challenges associated with NTC circuits and systems. The readers of this book will be able to familiarize themselves with recent advances in electronics systems, focusing on near-threshold computing

    The impact of design techniques in the reduction of power consumption of SoCs Multimedia

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    Orientador: Guido Costa Souza de AraújoDissertação (mestrado) - Universidade Estadual de Campinas, Instituto de ComputaçãoResumo: A indústria de semicondutores sempre enfrentou fortes demandas em resolver problema de dissipação de calor e reduzir o consumo de energia em dispositivos. Esta tendência tem sido intensificada nos últimos anos com o movimento de sustentabilidade ambiental. A concepção correta de um sistema eletrônico de baixo consumo de energia é um problema de vários níveis de complexidade e exige estratégias sistemáticas na sua construção. Fora disso, a adoção de qualquer técnica de redução de energia sempre está vinculada com objetivos especiais e provoca alguns impactos no projeto. Apesar dos projetistas conheçam bem os impactos de forma qualitativa, as detalhes quantitativas ainda são incógnitas ou apenas mantidas dentro do 'know-how' das empresas. Neste trabalho, de acordo com resultados experimentais baseado num plataforma de SoC1 industrial, tentamos quantificar os impactos derivados do uso de técnicas de redução de consumo de energia. Nos concentramos em relacionar o fator de redução de energia de cada técnica aos impactos em termo de área, desempenho, esforço de implementação e verificação. Na ausência desse tipo de dados, que relacionam o esforço de engenharia com as metas de consumo de energia, incertezas e atrasos serão frequentes no cronograma de projeto. Esperamos que este tipo de orientações possam ajudar/guiar os arquitetos de projeto em selecionar as técnicas adequadas para reduzir o consumo de energia dentro do alcance de orçamento e cronograma de projetoAbstract: The semiconductor industry has always faced strong demands to solve the problem of heat dissipation and reduce the power consumption in electronic devices. This trend has been increased in recent years with the action of environmental sustainability. The correct conception of an electronic system for low power consumption is an issue with multiple levels of complexities and requires systematic approaches in its construction. However, the adoption of any technique for reducing the power consumption is always linked with some specific goals and causes some impacts on the project. Although the designers know well that these impacts can affect the design in a quality aspect, the quantitative details are still unkown or just be kept inside the company's know-how. In this work, according to the experimental results based on an industrial SoC2 platform, we try to quantify the impacts of the use of low power techniques. We will relate the power reduction factor of each technique to the impact in terms of area, performance, implementation and verification effort. In the absence of such data, which relates the engineering effort to the goals of power consumption, uncertainties and delays are frequent. We hope that such guidelines can help/guide the project architects in selecting the appropriate techniques to reduce the power consumption within the limit of budget and project scheduleMestradoCiência da ComputaçãoMestre em Ciência da Computaçã

    Performance and Energy Consumption Characterization and Modeling of Video Decoding on Multi-core Heterogenous SoC and their Applications

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    To meet the increasing complexity of mobile multimedia applications, the System on Chip (SoC) equipping modern mobile devices integrate powerful heterogeneous processing elements among which General Purpose Processors (GPP), Digital Signal Processors (DSP), hardware accelerator are the most common ones.Due to the ever-growing gap between battery lifetime and hardware/software complexity in addition to application computing power needs, the energy saving issue becomes crucial in the design of such systems. In this context, we propose a study aiming to enhance the understanding of the energy consumption behavior of video decoding on these kinds of systems. Accordingly, an end-to-end methodology for characterizing and modeling the performance and the energy consumption of video decoding on GPP and DSP is proposed. The characterization step is based on an exhaustive experimental methodology for evaluating, at different abstraction levels, the performance and the energy consumption of video decoding. It was achieved on embedded platforms on which were executed a wide range of video decoding configurations. This step highlighted the importance to consider different parameters which may pertain to different abstraction levels in evaluating the overall energy efficiency of a given system. The measurements obtained in this step were used to build empirically performance and energy models for video decoding on both GPP and DSP. The proposed models gave very accurate estimation (R 2 = 97%) of both the performance and the energy consumption of video decoding in terms of a rich set of parameters including the video quality and the processor frequency. Moreover, based on a multi-level characterization and sub-model decomposition approaches, we show how the developed models, unlike classic empirical models, are easily and rapidly generalizable to other platforms.Some possible applications using the developed models, in the context of adaptive video decoding, were proposed. In general, it consists to use the capability of the proposed performance model to predict the decoding time of a given video quality in dimensioning/scheduling the processing resources. Due to the increasing demand on High Definition (HD), the characterization methodology was extended to consider HD video decoding on both parallel multi-cores and hardware video accelerator. This part highlighted the potential of parallelism video decoding to increase the energy efficiency of video decoding and point out some open issues in this domain.Pour répondre à la complexité croissante des applications multimédia mobiles, les systèmes sur puce équipant les appareils mobiles modernes intègrent des unités de calcul puissantes et hétérogène. Parmi ces units de calcul, on peut trouver des processeurs à usage général, des processeur de traitement de signal et des accélérateurs matériels. En raison de l’écart toujours croissant entre la durée de vie des batteries et la demande de plus en plus importante en puissance de calcul, l’économie d’énergie devient un enjeu crucial dans la conception des systèmes mobiles. Cette problématique est accentuée par l’augmentation de la complexité des logiciels et architectures matériels utilisés. Dans ce contexte, nous proposons une étude visant à améliorer la compréhension des considérations énergétiques du décodage vidéo sur ce genre de systèmes. Nous proposerons ainsi une méthodologie pour la caractérisation et la modélisation des performances et de la consommation d’énergie du décodage vidéo, aussi bien sur des processeurs à usage général de type ARM que sur un processeurde traitement de signal. L’étape de caractérisation est basée sur une méthodologie expérimentale pour évaluer de façon exhaustive et à différents niveaux d’abstraction, les performances et la consommation d’énergie du décodage vidéo. Cette caractérisation a été réalisée sur des plates-formes embarquées sur lesquels ont été exécutés un large éventail de configurations du décodage vidéo. Cette étape a souligné l’importance d’examiner différents paramètres qui peuvent se rapporter à différents niveaux d’abstraction dans l’évaluation de l’efficacité énergétique globale d’un système donné. Les mesures obtenues dans cette étape ont été utilisées pour construire empiriquement des modèles de performance et de consommation d’énergie pour le décodage vidéo à la fois sur des processeurs à usage général type ARM et sur un processeur de traitement de signal. Les modèles proposés peuvent estimer avec une grande précision (R 2 = 97%) la performance et la consommation d’énergie de décodage vidéo en fonction d’un nombre de paramètres comprenant la qualité de la vidéo et la fréquence du processeur. En plus, en se basant sur une caractérisation multi-niveaux et une approches de modélisation par décomposition en sous-modèles, nous montrons comment les modèles développés, contrairement aux modèles empiriques classiques, sont facilement et rapidement généralisables à d’autres plates-formes. Nous proposerons également certaines applications possibles des modèles développés, dans le cadre du décodage vidéo adaptatif. En général, cela consiste à exploiter la capacité du modèle de performance proposé pour prédire le temps de décodage d’une qualité vidéo donnée afin de mieux dimensionner les ressources de calculs dans un but de réduire leur consommationd’énergie
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