81 research outputs found

    Design abstraction for autonomous adaptive hardware systems on FPGAs

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    Adaptive hardware is gaining importance with the emergence of more autonomous systems that must process large volumes of sensor data and react within tight deadlines. To support such computation within the constraints of embedded deployments, a blend of high throughput hardware processing and adaptive control is required. FPGAs offer an ideal platform for implementing such systems by virtue of their hardware flexibility and sensor interfacing capabilities. FPGA SoCs are specifically well suited offering capable embedded processors that are tightly coupled with a flexible high performance FPGA fabric. This paper explores existing work on adaptive hardware systems before proposing a general model and implementation approach tailored towards these modern FPGA architectures, concluding with pointers for research in this emerging field

    Regular Datapaths on Field-Programmable Gate Arrays

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    Field-Programmable Gate Arrays (FPGAs) are a recent kind of programmable logic device. They allow the implementation of integrated digital electronic circuits without requiring the complex optical, chemical and mechanical processes used in a conventional chip fabrication. FPGAs can be embedded in traditional system designflows to perform prototyping and emulation tasks. In addition, they also enable novel applications such as configurable computers with hardware dynamically adaptable to a specific problem. The growing chip capacity now allows even the implementation of CPUs and DSPs on single FPGAs. However, current design automation tools trace their roots to times of very limited FPGA sizes, and are primarily optimized for the implementation of random glue logic. The wide datapaths common to CPUs and DSPs are only processed with reduced performance. This thesis presents Structured Design Implementation (SDI), a suite of specialized tools coordinated by a common strategy, which aims to efficiently map even larger regular datapaths to FPGAs. In all steps, regularity is preserved whenever possible, or restored after disruptive operations were required. The circuits are composed from parametrizable modules providing a variety of logical, arithmetical and storage functions. For each module, multiple target FPGA-specific implementation alternatives may be generated in both gatelevel netlist and layout views. A floorplanner based on a genetic algorithm is then used to simultaneously choose an actual implementation from the set of alternatives for each module, and to arrange the selected module implementations in a linear placement. The floorplanning operation optimizes for short routing delays, high routability, and fit into the target FPGA.Field-Programmable Gate-Arrays (FPGAs) sind eine noch junge Art von programmierbaren Logikbausteinen. Sie erlauben die Implementierung von integrierten Digitalschaltungen ohne die komplizierten optischen, chemischen und mechanischen Prozesse, die normalerweise für die Chipfertigung erforderlich sind. FPGAs können im Rahmen konventioneller Entwurfsmethoden zu Emulationszwecken und Prototyp-Aufbauten herangezogen werden. Sie erlauben aber auch völlig neue Anwendungen wie rekonfigurierbare Computer, deren Hardware dynamisch an ein spezielles Problem angepaßt werden kann. Die gewachsene Chip-Kapazität erlaubt nun sogar die Implementierung von CPUs und digitalen Signalprozessoren (DSPs) auf einem einzelnen FPGA. Die Leistungsfähigkeit der entstandenen Schaltungen wird jedoch durch die zur Zeit erhältlichen CAD-Werkzeuge limitiert, da diese noch auf stark beschränkte FPGA-Größen ausgerichtet sind und primär der platzsparenden Verarbeitung unregelmäßiger Logik dienen. Die breiten Datenpfade in Bit-Slice-Struktur, die den Kern vieler CPUs und DSPs darstellen, werden nur suboptimal behandelt. Diese Arbeit stellt Structured Design Implementation (SDI) vor, ein System von spezialisierten CAD-Werkzeugen, die auch größere reguläre Datenpfade effizient auf FPGAs abbilden. In allen Verarbeitungsschritten wird dabei die bestehende Regularität soweit wie möglich erhalten oder nach regularitätsvernichtenden Operationen wiederhergestellt. Zur Schaltungseingabe steht eine Bibliothek von allgemeinen Modulen aus den Bereichen Logik, Arithmetik und Speicherung bereit. Diese können durch Belegung verschiedener Parameter wie Bit-Breiten und Datentypen an aktuelle Anforderungen angepaßt werden

    Driving the Network-on-Chip Revolution to Remove the Interconnect Bottleneck in Nanoscale Multi-Processor Systems-on-Chip

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    The sustained demand for faster, more powerful chips has been met by the availability of chip manufacturing processes allowing for the integration of increasing numbers of computation units onto a single die. The resulting outcome, especially in the embedded domain, has often been called SYSTEM-ON-CHIP (SoC) or MULTI-PROCESSOR SYSTEM-ON-CHIP (MP-SoC). MPSoC design brings to the foreground a large number of challenges, one of the most prominent of which is the design of the chip interconnection. With a number of on-chip blocks presently ranging in the tens, and quickly approaching the hundreds, the novel issue of how to best provide on-chip communication resources is clearly felt. NETWORKS-ON-CHIPS (NoCs) are the most comprehensive and scalable answer to this design concern. By bringing large-scale networking concepts to the on-chip domain, they guarantee a structured answer to present and future communication requirements. The point-to-point connection and packet switching paradigms they involve are also of great help in minimizing wiring overhead and physical routing issues. However, as with any technology of recent inception, NoC design is still an evolving discipline. Several main areas of interest require deep investigation for NoCs to become viable solutions: • The design of the NoC architecture needs to strike the best tradeoff among performance, features and the tight area and power constraints of the onchip domain. • Simulation and verification infrastructure must be put in place to explore, validate and optimize the NoC performance. • NoCs offer a huge design space, thanks to their extreme customizability in terms of topology and architectural parameters. Design tools are needed to prune this space and pick the best solutions. • Even more so given their global, distributed nature, it is essential to evaluate the physical implementation of NoCs to evaluate their suitability for next-generation designs and their area and power costs. This dissertation performs a design space exploration of network-on-chip architectures, in order to point-out the trade-offs associated with the design of each individual network building blocks and with the design of network topology overall. The design space exploration is preceded by a comparative analysis of state-of-the-art interconnect fabrics with themselves and with early networkon- chip prototypes. The ultimate objective is to point out the key advantages that NoC realizations provide with respect to state-of-the-art communication infrastructures and to point out the challenges that lie ahead in order to make this new interconnect technology come true. Among these latter, technologyrelated challenges are emerging that call for dedicated design techniques at all levels of the design hierarchy. In particular, leakage power dissipation, containment of process variations and of their effects. The achievement of the above objectives was enabled by means of a NoC simulation environment for cycleaccurate modelling and simulation and by means of a back-end facility for the study of NoC physical implementation effects. Overall, all the results provided by this work have been validated on actual silicon layout

    High-level synthesis of triple modular redundant FPGA circuits with energy efficient error recovery mechanisms

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    There is a growing interest in deploying commercial SRAM-based Field Programmable Gate Array (FPGA) circuits in space due to their low cost, reconfigurability, high logic capacity and rich I/O interfaces. However, their configuration memory (CM) is vulnerable to ionising radiation which raises the need for effective fault-tolerant design techniques. This thesis provides the following contributions to mitigate the negative effects of soft errors in SRAM FPGA circuits. Triple Modular Redundancy (TMR) with periodic CM scrubbing or Module-based CM error recovery (MER) are popular techniques for mitigating soft errors in FPGA circuits. However, this thesis shows that MER does not recover CM soft errors in logic instantiated outside the reconfigurable regions of TMR modules. To address this limitation, a hybrid error recovery mechanism, namely FMER, is proposed. FMER uses selective periodic scrubbing and MER to recover CM soft errors inside and outside the reconfigurable regions of TMR modules, respectively. Experimental results indicate that TMR circuits with FMER achieve higher dependability with less energy consumption than those using periodic scrubbing or MER alone. An imperative component of MER and FMER is the reconfiguration control network (RCN) that transfers the minority reports of TMR components, i.e., which, if any, TMR module needs recovery, to the FPGA's reconfiguration controller (RC). Although several reliable RCs have been proposed, a study of reliable RCNs has not been previously reported. This thesis fills this research gap, by proposing a technique that transfers the circuit's minority reports to the RC via the configuration-layer of the FPGA. This reduces the resource utilisation of the RCN and therefore its failure rate. Results show that the proposed RCN achieves higher reliability than alternative RCN architectures reported in the literature. The last contribution of this thesis is a high-level synthesis (HLS) tool, namely TLegUp, developed within the LegUp HLS framework. TLegUp triplicates Xilinx 7-series FPGA circuits during HLS rather than during the register-transfer level pre- or post-synthesis flow stage, as existing computer-aided design tools do. Results show that TLegUp can generate non-partitioned TMR circuits with 500x less soft error sensitivity than non-triplicated functional equivalent baseline circuits, while utilising 3-4x more resources and having 11% lower frequency

    Timing Estimation for Behavioral Descriptions

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    or high-level synthesis (HLS

    Mocarabe: High-Performance Time-Multiplexed Overlays for FPGAs

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    Coarse-grained reconfigurable array (CGRA) overlays can improve dataflow kernel throughput by an order of magnitude over Vivado HLS on Xilinx Alveo U280. This is possible with a combination of carefully floorplanned high-frequency (645 - 768 MHz Torus, 788 - 856 MHz Mesh, 583 - 746 MHz BFT) design and a scalable, communication-aware compiler. Our CGRA architecture supports configurable Processing Element (PE) functionality supported by a configurable number of communication channels to match application demands. Compared to recent FPGA overlays like 4Ă—4 ADRES and HyCUBE implementations in CGRA-ME, our design operates at a faster clock frequency by up to 3.4Ă—, while scaling to an orders-of-magnitude larger array size of 19Ă—69 on Xilinx Alveo U280. We propose a novel topology agnostic ILP placer that formulates the CGRA placement problem into an ILP problem. Our ILP placer optimizes placement regardless of topology and even for non-linear objective functions by using pre-computed placement costs as inputs to the ILP problem formulation. Using the ILP placer reduces placement quadratic wirelength up to 37% compared to the commonly used simulated annealing approach but increases runtime from less than a minute to hours. Our communication-aware compiler targets HLS objectives such as initiation interval (II) and minimizes communication cost using an integer linear programming (ILP) formulation. Unlike SDC schedulers in FPGA HLS tools, we treat data movement as a first-class citizen by encoding the space and time resources of the communication network in the ILP formulation. Given the same constraints on operational resources as Vivado HLS, we can retain our target II and achieve up to 9.2Ă— higher frequency. We compare Torus and Mesh topologies, and show Mesh has less latency per area compared to Torus for the same benchmarks
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