32 research outputs found

    Adaptive Baseband Pro cessing and Configurable Hardware for Wireless Communication

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    The world of information is literally at one’s fingertips, allowing access to previously unimaginable amounts of data, thanks to advances in wireless communication. The growing demand for high speed data has necessitated theuse of wider bandwidths, and wireless technologies such as Multiple-InputMultiple-Output (MIMO) have been adopted to increase spectral efficiency.These advanced communication technologies require sophisticated signal processing, often leading to higher power consumption and reduced battery life.Therefore, increasing energy efficiency of baseband hardware for MIMO signal processing has become extremely vital. High Quality of Service (QoS)requirements invariably lead to a larger number of computations and a higherpower dissipation. However, recognizing the dynamic nature of the wirelesscommunication medium in which only some channel scenarios require complexsignal processing, and that not all situations call for high data rates, allowsthe use of an adaptive channel aware signal processing strategy to provide adesired QoS. Information such as interference conditions, coherence bandwidthand Signal to Noise Ratio (SNR) can be used to reduce algorithmic computations in favorable channels. Hardware circuits which run these algorithmsneed flexibility and easy reconfigurability to switch between multiple designsfor different parameters. These parameters can be used to tune the operations of different components in a receiver based on feedback from the digitalbaseband. This dissertation focuses on the optimization of digital basebandcircuitry of receivers which use feedback to trade power and performance. Aco-optimization approach, where designs are optimized starting from the algorithmic stage through the hardware architectural stage to the final circuitimplementation is adopted to realize energy efficient digital baseband hardwarefor mobile 4G devices. These concepts are also extended to the next generation5G systems where the energy efficiency of the base station is improved.This work includes six papers that examine digital circuits in MIMO wireless receivers. Several key blocks in these receiver include analog circuits thathave residual non-linearities, leading to signal intermodulation and distortion.Paper-I introduces a digital technique to detect such non-linearities and calibrate analog circuits to improve signal quality. The concept of a digital nonlinearity tuning system developed in Paper-I is implemented and demonstratedin hardware. The performance of this implementation is tested with an analogchannel select filter, and results are presented in Paper-II. MIMO systems suchas the ones used in 4G, may employ QR Decomposition (QRD) processors tosimplify the implementation of tree search based signal detectors. However,the small form factor of the mobile device increases spatial correlation, whichis detrimental to signal multiplexing. Consequently, a QRD processor capableof handling high spatial correlation is presented in Paper-III. The algorithm and hardware implementation are optimized for carrier aggregation, which increases requirements on signal processing throughput, leading to higher powerdissipation. Paper-IV presents a method to perform channel-aware processingwith a simple interpolation strategy to adaptively reduce QRD computationcount. Channel properties such as coherence bandwidth and SNR are used toreduce multiplications by 40% to 80%. These concepts are extended to usetime domain correlation properties, and a full QRD processor for 4G systemsfabricated in 28 nm FD-SOI technology is presented in Paper-V. The designis implemented with a configurable architecture and measurements show thatcircuit tuning results in a highly energy efficient processor, requiring 0.2 nJ to1.3 nJ for each QRD. Finally, these adaptive channel-aware signal processingconcepts are examined in the scope of the next generation of communicationsystems. Massive MIMO systems increase spectral efficiency by using a largenumber of antennas at the base station. Consequently, the signal processingat the base station has a high computational count. Paper-VI presents a configurable detection scheme which reduces this complexity by using techniquessuch as selective user detection and interpolation based signal processing. Hardware is optimized for resource sharing, resulting in a highly reconfigurable andenergy efficient uplink signal detector

    Effective network grid synthesis and optimization for high performance very large scale integration system design

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    制度:新 ; 文部省報告番号:甲2642号 ; 学位の種類:博士(工学) ; 授与年月日:2008/3/15 ; 早大学位記番号:新480

    Design of large polyphase filters in the Quadratic Residue Number System

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    Temperature aware power optimization for multicore floating-point units

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    A mixed-signal computer architecture and its application to power system problems

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    Radical changes are taking place in the landscape of modern power systems. This massive shift in the way the system is designed and operated has been termed the advent of the ``smart grid''. One of its implications is a strong market pull for faster power system analysis computing. This work is concerned in particular with transient simulation, which is one of the most demanding power system analyses. This refers to the imitation of the operation of the real-world system over time, for time scales that cover the majority of slow electromechanical transient phenomena. The general mathematical formulation of the simulation problem includes a set of non-linear differential algebraic equations (DAEs). In the algebraic part of this set, heavy linear algebra computations are included, which are related to the admittance matrix of the topology. These computations are a critical factor to the overall performance of a transient simulator. This work proposes the use of analog electronic computing as a means of exceeding the performance barriers of conventional digital computers for the linear algebra operations. Analog computing is integrated in the frame of a power system transient simulator yielding significant computational performance benefits to the latter. Two hybrid, analog and digital computers are presented. The first prototype has been implemented using reconfigurable hardware. In its core, analog computing is used for linear algebra operations, while pipelined digital resources on a field programmable gate array (FPGA) handle all remaining computations. The properties of the analog hardware are thoroughly examined, with special attention to accuracy and timing. The application of the platform to the transient analysis of power system dynamics showed a speedup of two orders of magnitude against conventional software solutions. The second prototype is proposed as a future conceptual architecture that would overcome the limitations of the already implemented hardware, while retaining its virtues. The design space of this future architecture has been thoroughly explored, with the help of a software emulator. For one possible suggested implementation, speedups of four orders of magnitude against software solvers have been observed for the linear algebra operations

    Rapid Frequency Estimation

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    Frequency estimation plays an important role in many digital signal processing applications. Many areas have benefited from the discovery of the Fast Fourier Transform (FFT) decades ago and from the relatively recent advances in modern spectral estimation techniques within the last few decades. As processor and programmable logic technologies advance, unconventional methods for rapid frequency estimation in white Gaussian noise should be considered for real time applications. In this thesis, a practical hardware implementation that combines two known frequency estimation techniques is presented, implemented, and characterized. The combined implementation, using the well known FFT and a less well known modern spectral analysis method known as the Direct State Space (DSS) algorithm, is used to demonstrate and promote application of modern spectral methods in various real time applications, including Electronic Counter Measure (ECM) techniques

    Proceedings of the 3rd Annual Conference on Aerospace Computational Control, volume 1

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    Conference topics included definition of tool requirements, advanced multibody component representation descriptions, model reduction, parallel computation, real time simulation, control design and analysis software, user interface issues, testing and verification, and applications to spacecraft, robotics, and aircraft

    Towards Closing the Programmability-Efficiency Gap using Software-Defined Hardware

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    The past decade has seen the breakdown of two important trends in the computing industry: Moore’s law, an observation that the number of transistors in a chip roughly doubles every eighteen months, and Dennard scaling, that enabled the use of these transistors within a constant power budget. This has caused a surge in domain-specific accelerators, i.e. specialized hardware that deliver significantly better energy efficiency than general-purpose processors, such as CPUs. While the performance and efficiency of such accelerators are highly desirable, the fast pace of algorithmic innovation and non-recurring engineering costs have deterred their widespread use, since they are only programmable across a narrow set of applications. This has engendered a programmability-efficiency gap across contemporary platforms. A practical solution that can close this gap is thus lucrative and is likely to engender broad impact in both academic research and the industry. This dissertation proposes such a solution with a reconfigurable Software-Defined Hardware (SDH) system that morphs parts of the hardware on-the-fly to tailor to the requirements of each application phase. This system is designed to deliver near-accelerator-level efficiency across a broad set of applications, while retaining CPU-like programmability. The dissertation first presents a fixed-function solution to accelerate sparse matrix multiplication, which forms the basis of many applications in graph analytics and scientific computing. The solution consists of a tiled hardware architecture, co-designed with the outer product algorithm for Sparse Matrix-Matrix multiplication (SpMM), that uses on-chip memory reconfiguration to accelerate each phase of the algorithm. A proof-of-concept is then presented in the form of a prototyped 40 nm Complimentary Metal-Oxide Semiconductor (CMOS) chip that demonstrates energy efficiency and performance per die area improvements of 12.6x and 17.1x over a high-end CPU, and serves as a stepping stone towards a full SDH system. The next piece of the dissertation enhances the proposed hardware with reconfigurability of the dataflow and resource sharing modes, in order to extend acceleration support to a set of common parallelizable workloads. This reconfigurability lends the system the ability to cater to discrete data access and compute patterns, such as workloads with extensive data sharing and reuse, workloads with limited reuse and streaming access patterns, among others. Moreover, this system incorporates commercial cores and a prototyped software stack for CPU-level programmability. The proposed system is evaluated on a diverse set of compute-bound and memory-bound kernels that compose applications in the domains of graph analytics, machine learning, image and language processing. The evaluation shows average performance and energy-efficiency gains of 5.0x and 18.4x over the CPU. The final part of the dissertation proposes a runtime control framework that uses low-cost monitoring of hardware performance counters to predict the next best configuration and reconfigure the hardware, upon detecting a change in phase or nature of data within the application. In comparison to prior work, this contribution targets multicore CGRAs, uses low-overhead decision tree based predictive models, and incorporates reconfiguration cost-awareness into its policies. Compared to the best-average static (non-reconfiguring) configuration, the dynamically reconfigurable system achieves a 1.6x improvement in performance-per-Watt in the Energy-Efficient mode of operation, or the same performance with 23% lower energy in the Power-Performance mode, for SpMM across a suite of real-world inputs. The proposed reconfiguration mechanism itself outperforms the state-of-the-art approach for dynamic runtime control by up to 2.9x in terms of energy-efficiency.PHDComputer Science & EngineeringUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttp://deepblue.lib.umich.edu/bitstream/2027.42/169859/1/subh_1.pd

    Rapid Digital Architecture Design of Computationally Complex Algorithms

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    Traditional digital design techniques hardly keep up with the rising abundance of programmable circuitry found on recent Field-Programmable Gate Arrays. Therefore, the novel Rapid Data Type-Agnostic Digital Design Methodology (RDAM) elevates the design perspective of digital design engineers away from the register-transfer level to the algorithmic level. It is founded on the capabilities of High-Level Synthesis tools. By consequently working with data type-agnostic source codes, the RDAM brings significant simplifications to the fixed-point conversion of algorithms and the design of complex-valued architectures. Signal processing applications from the field of Compressed Sensing illustrate the efficacy of the RDAM in the context of multi-user wireless communications. For instance, a complex-valued digital architecture of Orthogonal Matching Pursuit with rank-1 updating has successfully been implemented and tested

    Gallium arsenide design methodology and testing of a systolic floating point processing element

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    Thesis (M.E.Sc.) -- University of Adelaide, Dept. of Electrical and Electronic Engineering, 199
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