20 research outputs found

    PAOD: a predictive approach for optimization of design in FinFET/SRAM

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    The evolutions in the modern memory units are comeup with FinFET/SRAM which can be utilized over high scaled computing units and in other devices. Some of the recent systems were surveyed through which it is known that existing systems lags with improving the performance and optimization of FinFET/SRAM design. Thus, the paper introduces an optimized model based on Search Optimization mechanism that uses Predictive Approach to optimize the design structure of FinFET/SRAM (PAOD). Using this can achieve significant fault tolerance under dynamic cumpting devices and applications. The model uses mathematical methodology which helps to attain less computational time and significant output even at more simulation iteration. This POAD is cost effective as it provides better convergence of FinFET/SRAM design than recursive design

    A novel optimization framework for controlling stabilization issue in design principle of FinFET based SRAM

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    The conventional design principle of the finFET offers various constraints that act as an impediment towards improving ther performance of finFET SRAM. After reviewing existing approaches, it has been found that there are not enough work found to be emphasizing on cost-effective optimization by addressing the stability problems in finFET design.Therefore, the proposed system introduces a novel optimization mechanism considering some essential design attributes e.g. area, thickness of fin, and number of components. The contribution of the proposed technique is to determine the better form of thickness of fin and its related aspect that can act as a solution to minimize various other asscoiated problems in finFET SRAM. Implemented using soft-computational approach, the proposed system exhibits that it offers better energy retention, lower delay, and potential capability to offer higher throughput irrespective of presence of uncertain amount of noise within the component

    Study and development of low power consumption SRAMs on 28 nm FD-SOI CMOS process

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    Since analog circuit designs in CMOS nanometer (< 90 nm) nodes can be substantially affected by manufacturing process variations, circuit performance becomes more challenging to achieve efficient solutions by using analytical models. Extensive simulations are thus commonly required to provide a high yield. On the other hand, due to the fact that the classical bulk MOS structure is reaching scaling limits (< 32 nm), alternative approaches are being developed as successors, such as fully depleted silicon-oninsulator (FD-SOI), Multigate MOSFET, FinFETs, among others, and new design techniques emerge by taking advantage of the improved features of these devices. This thesis focused on the development of analytical expressions for the major performance parameters of the SRAM cache implemented in 28 nm FD-SOI CMOS, mainly to explore the transistor dimensions at low computational cost, thereby producing efficient designs in terms of energy consumption, speed and yield. By taking advantage of both low computational cost and close agreement results of the developed models, in this thesis we were able to propose a non-traditional sizing procedure for the simple 6T-SRAM cell, that unlike the traditional thin-cell design, transistor lengths are used as a design variable in order to reduce the static leakage. The single-P-well (SPW) structure in combination with reverse-body-biasing (RBB) technique were used to achieve a better balance between P-type and N-type transistors. As a result, we developed a 128 kB SRAM cache, whose post-layout simulations show that the circuit consumes an average energy per operation of 0.604 pJ/word-access (64 I/O bits) at supply voltage of 0.45 V and operation frequency of 40 MHz. The total chip area of the 128 kB SRAM cache is 0.060 mm2 .O projeto de circuitos analogicos em processos nanométricos CMOS ( < 90 nm) per substancialmente afetado pelas variacões do processo de fabricacão, sendo cada vez mais desafiador para os projetistas alcançar soluções eficientes no desempenho dos circuitos mediante o uso de modelos analíticos. Simulacões extensas com alto custo com- putacional sao normalmente requeridas para providenciar um correto funcionamento do circuito. Por outro lado, devido ao fato que a estrutura bulk-CMOS esta alcançando seus limites de escala (< 32 nm), outros transistores foram desenvolvidos como sucessores, tais como o fully depleted silicon-on-insulator (FD-SOI), Multigate MOSFET, entre outros, surgindo novas tecnicas de projeto que utilizam as características aprimoradas destes dispositivos. Dessa forma, esta tese de doutorado se foca no desenvolvimento de modelos analíticos dos parametros mais importantes do cache SRAM implementado em processo CMOS FD-SOI de 28 nm, principalmente para explorar as dimensõoes dos transistores com baixo custo computacional, e assim produzir solucões eficientes em termos de consumo de energia, velocidade e rendimento. Aproveitando o baixo custo computacional e a alta concordância dos modelos analíticos, nesta tese fomos capazes de propor um dimensionamento nao tradicional para a célula de memória 6T-SRAM, em que diferentemente é do classico dimensionamento "thin-cell”, os comprimentos dos transistores são utilizados como variável de projeto com o fim de reduzir o consumo estático de corrente. A estrutura single-P-well (SPW), combinada com a técnica reverse-body-biasing (RBB) foram utilizadas para alcançar um melhor balanço entre as correntes específicas dos transistores do tipo P e N

    先端プロセス技術における混載SRAMの高信頼・低電力化に関する研究

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    13301甲第4843号博士(工学)金沢大学博士論文本文Ful

    FPGA structures for high speed and low overhead dynamic circuit specialization

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    A Field Programmable Gate Array (FPGA) is a programmable digital electronic chip. The FPGA does not come with a predefined function from the manufacturer; instead, the developer has to define its function through implementing a digital circuit on the FPGA resources. The functionality of the FPGA can be reprogrammed as desired and hence the name “field programmable”. FPGAs are useful in small volume digital electronic products as the design of a digital custom chip is expensive. Changing the FPGA (also called configuring it) is done by changing the configuration data (in the form of bitstreams) that defines the FPGA functionality. These bitstreams are stored in a memory of the FPGA called configuration memory. The SRAM cells of LookUp Tables (LUTs), Block Random Access Memories (BRAMs) and DSP blocks together form the configuration memory of an FPGA. The configuration data can be modified according to the user’s needs to implement the user-defined hardware. The simplest way to program the configuration memory is to download the bitstreams using a JTAG interface. However, modern techniques such as Partial Reconfiguration (PR) enable us to configure a part in the configuration memory with partial bitstreams during run-time. The reconfiguration is achieved by swapping in partial bitstreams into the configuration memory via a configuration interface called Internal Configuration Access Port (ICAP). The ICAP is a hardware primitive (macro) present in the FPGA used to access the configuration memory internally by an embedded processor. The reconfiguration technique adds flexibility to use specialized ci rcuits that are more compact and more efficient t han t heir b ulky c ounterparts. An example of such an implementation is the use of specialized multipliers instead of big generic multipliers in an FIR implementation with constant coefficients. To specialize these circuits and reconfigure during the run-time, researchers at the HES group proposed the novel technique called parameterized reconfiguration that can be used to efficiently and automatically implement Dynamic Circuit Specialization (DCS) that is built on top of the Partial Reconfiguration method. It uses the run-time reconfiguration technique that is tailored to implement a parameterized design. An application is said to be parameterized if some of its input values change much less frequently than the rest. These inputs are called parameters. Instead of implementing these parameters as regular inputs, in DCS these inputs are implemented as constants, and the application is optimized for the constants. For every change in parameter values, the design is re-optimized (specialized) during run-time and implemented by reconfiguring the optimized design for a new set of parameters. In DCS, the bitstreams of the parameterized design are expressed as Boolean functions of the parameters. For every infrequent change in parameters, a specialized FPGA configuration is generated by evaluating the corresponding Boolean functions, and the FPGA is reconfigured with the specialized configuration. A detailed study of overheads of DCS and providing suitable solutions with appropriate custom FPGA structures is the primary goal of the dissertation. I also suggest different improvements to the FPGA configuration memory architecture. After offering the custom FPGA structures, I investigated the role of DCS on FPGA overlays and the use of custom FPGA structures that help to reduce the overheads of DCS on FPGA overlays. By doing so, I hope I can convince the developer to use DCS (which now comes with minimal costs) in real-world applications. I start the investigations of overheads of DCS by implementing an adaptive FIR filter (using the DCS technique) on three different Xilinx FPGA platforms: Virtex-II Pro, Virtex-5, and Zynq-SoC. The study of how DCS behaves and what is its overhead in the evolution of the three FPGA platforms is the non-trivial basis to discover the costs of DCS. After that, I propose custom FPGA structures (reconfiguration controllers and reconfiguration drivers) to reduce the main overhead (reconfiguration time) of DCS. These structures not only reduce the reconfiguration time but also help curbing the power hungry part of the DCS system. After these chapters, I study the role of DCS on FPGA overlays. I investigate the effect of the proposed FPGA structures on Virtual-Coarse-Grained Reconfigurable Arrays (VCGRAs). I classify the VCGRA implementations into three types: the conventional VCGRA, partially parameterized VCGRA and fully parameterized VCGRA depending upon the level of parameterization. I have designed two variants of VCGRA grids for HPC image processing applications, namely, the MAC grid and Pixie. Finally, I try to tackle the reconfiguration time overhead at the hardware level of the FPGA by customizing the FPGA configuration memory architecture. In this part of my research, I propose to use a parallel memory structure to improve the reconfiguration time of DCS drastically. However, this improvement comes with a significant overhead of hardware resources which will need to be solved in future research on commercial FPGA configuration memory architectures

    Design and Implementation of Low Power SRAM Using Highly Effective Lever Shifters

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    The explosive growth of battery-operated devices has made low-power design a priority in recent years. In high-performance Systems-on-Chip, leakage power consumption has become comparable to the dynamic component, and its relevance increases as technology scales. These trends are even more evident for SRAM memory devices since they are a dominant source of standby power consumption in low-power application processors. The on-die SRAM power consumption is particularly important for increasingly pervasive mobile and handheld applications where battery life is a key design and technology attribute. In the SRAM-memory design, SRAM cells also comprise the most significant portion of the total chip. Moreover, the increasing number of transistors in the SRAM memories and the MOSs\u27 increasing leakage current in the scaled technologies have turned the SRAM unit into a power-hungry block for both dynamic and static viewpoints. Although the scaling of the supply voltage enables low-power consumption, the SRAM cells\u27 data stability becomes a major concern. Thus, the reduction of SRAM leakage power has become a critical research concern. To address the leakage power consumption in high-performance cache memories, a stream of novel integrated circuit and architectural level techniques are proposed by researchers including leakage-current management techniques, cell array leakage reduction techniques, bitline leakage reduction techniques, and leakage current compensation techniques. The main goal of this work was to improve the cell array leakage reduction techniques in order to minimize the leakage power for SRAM memory design in low-power applications. This study performs the body biasing application to reduce leakage current as well. To adjust the NMOSs\u27 threshold voltage and consequently leakage current, a negative DC voltage could be applied to their body terminal as a second gate. As a result, in order to generate a negative DC voltage, this study proposes a negative voltage reference that includes a trimming circuit and a negative level shifter. These enhancements are employed to a 10kb SRAM memory operating at 0.3V in a 65nm CMOS process

    Investigating ferroelectric and metal-insulator phase transition devices for neuromorphic computing

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    Neuromorphic computing has been proposed to accelerate the computation for deep neural networks (DNNs). The objective of this thesis work is to investigate the ferroelectric and metal-insulator phase transition devices for neuromorphic computing. This thesis proposed and experimentally demonstrated the drain erase scheme in FeFET to enable the individual cell program/erase/inhibition for in-situ training in 3D NAND-like FeFET array. To achieve multi-level states for analog in-memory computing, the ferroelectric thin film needs to be partially switched. This thesis identified a new challenge of ferroelectric partial switching, namely “history effect” in minor loop dynamics. The experimental characterization of both FeCap and FeFET validated the history effect, suggesting that the intermediate states programming condition depends on the prior states that the device has gone through. A phase-field model was constructed to understand the origin. Such history effect was then modelled into the FeFET based neural network simulation and analyze its negative impact on the training accuracy and then propose a possible mitigation strategy. Apart from using FeFET as synaptic devices, using metal-insulator phase transition device, as neuron was also explored experimentally. A NbOx metal-insulator phase transition threshold switch was integrated at the edge of the crossbar array as an oscillation neuron. One promising application for FeFET+NbOx neuromorphic system is to implement quantum error correction (QEC) circuitry at 4K. Cryo-NeuroSim, a device-to-system modeling framework that calibrates data at cryogenic temperature was developed to benchmark the performance of the FeFET+NbOx neuromorphic system.Ph.D

    Characterization and mitigation of process variation in digital circuits and systems

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    Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2009.Cataloged from PDF version of thesis.Includes bibliographical references (p. 155-166).Process variation threatens to negate a whole generation of scaling in advanced process technologies due to performance and power spreads of greater than 30-50%. Mitigating this impact requires a thorough understanding of the variation sources, magnitudes and spatial components at the device, circuit and architectural levels. This thesis explores the impacts of variation at each of these levels and evaluates techniques to alleviate them in the context of digital circuits and systems. At the device level, we propose isolation and measurement of variation in the intrinsic threshold voltage of a MOSFET using sub-threshold leakage currents. Analysis of the measured data, from a test-chip implemented on a 0. 18[mu]m CMOS process, indicates that variation in MOSFET threshold voltage is a truly random process dependent only on device dimensions. Further decomposition of the observed variation reveals no systematic within-die variation components nor any spatial correlation. A second test-chip capable of characterizing spatial variation in digital circuits is developed and implemented in a 90nm triple-well CMOS process. Measured variation results show that the within-die component of variation is small at high voltages but is an increasing fraction of the total variation as power-supply voltage decreases. Once again, the data shows no evidence of within-die spatial correlation and only weak systematic components. Evaluation of adaptive body-biasing and voltage scaling as variation mitigation techniques proves voltage scaling is more effective in performance modification with reduced impact to idle power compared to body-biasing.(cont.) Finally, the addition of power-supply voltages in a massively parallel multicore processor is explored to reduce the energy required to cope with process variation. An analytic optimization framework is developed and analyzed; using a custom simulation methodology, total energy of a hypothetical 1K-core processor based on the RAW core is reduced by 6-16% with the addition of only a single voltage. Analysis of yield versus required energy demonstrates that a combination of disabling poor-performing cores and additional power-supply voltages results in an optimal trade-off between performance and energy.by Nigel Anthony Drego.Ph.D

    Intelligent Circuits and Systems

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    ICICS-2020 is the third conference initiated by the School of Electronics and Electrical Engineering at Lovely Professional University that explored recent innovations of researchers working for the development of smart and green technologies in the fields of Energy, Electronics, Communications, Computers, and Control. ICICS provides innovators to identify new opportunities for the social and economic benefits of society.  This conference bridges the gap between academics and R&D institutions, social visionaries, and experts from all strata of society to present their ongoing research activities and foster research relations between them. It provides opportunities for the exchange of new ideas, applications, and experiences in the field of smart technologies and finding global partners for future collaboration. The ICICS-2020 was conducted in two broad categories, Intelligent Circuits & Intelligent Systems and Emerging Technologies in Electrical Engineering

    Caractérisation électrique et modélisation du transport dans matériaux et dispositifs SOI avancés

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    This thesis is dedicated to the electrical characterization and transport modeling in advanced SOImaterials and devices for ultimate micro-nano-electronics. SOI technology is an efficient solution tothe technical challenges facing further downscaling and integration. Our goal was to developappropriate characterization methods and determine the key parameters. Firstly, the conventionalpseudo-MOSFET characterization was extended to heavily-doped SOI wafers and an adapted modelfor parameters extraction was proposed. We developed a nondestructive electrical method to estimatethe quality of bonding interface in metal-bonded wafers for 3D integration. In ultra-thin fully-depletedSOI MOSFETs, we evidenced the parasitic bipolar effect induced by band-to-band tunneling, andproposed new methods to extract the bipolar gain. We investigated multiple-gate transistors byfocusing on the coupling effect in inversion-mode vertical double-gate SOI FinFETs. An analyticalmodel was proposed and subsequently adapted to the full depletion region of junctionless SOI FinFETs.We also proposed a compact model of carrier profile and adequate parameter extraction techniques forjunctionless nanowires.Cette thèse est consacrée à la caractérisation et la modélisation du transport électronique dans des matériaux et dispositifs SOI avancés pour la microélectronique. Tous les matériaux innovants étudiés(ex: SOI fortement dopé, plaques obtenues par collage etc.) et les dispositifs SOI sont des solutions possibles aux défis technologiques liés à la réduction de taille et à l'intégration. Dans ce contexte,l'extraction des paramètres électriques clés, comme la mobilité, la tension de seuil et les courants de fuite est importante. Tout d'abord, la caractérisation classique pseudo-MOSFET a été étendue aux plaques SOI fortement dopées et un modèle adapté pour l'extraction de paramètres a été proposé. Nous avons également développé une méthode électrique pour estimer la qualité de l'interface de collage pour des plaquettes métalliques. Nous avons montré l'effet bipolaire parasite dans des MOSFET SOI totalement désertés. Il est induit par l’effet tunnel bande-à-bande et peut être entièrement supprimé par une polarisation arrière. Sur cette base, une nouvelle méthode a été développée pour extraire le gain bipolaire. Enfin, nous avons étudié l'effet de couplage dans le FinFET SOI double grille, en mode d’inversion. Un modèle analytique a été proposé et a été ensuite adapté aux FinFETs sans jonction(junctionless). Nous avons mis au point un modèle compact pour le profil des porteurs et des techniques d’extraction de paramètres
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