10 research outputs found

    Power Management and SRAM for Energy-Autonomous and Low-Power Systems

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    We demonstrate the two first-known, complete, self-powered millimeter-scale computer systems. These microsystems achieve zero-net-energy operation using solar energy harvesting and ultra-low-power circuits. A medical implant for monitoring intraocular pressure (IOP) is presented as part of a treatment for glaucoma. The 1.5mm3 IOP monitor is easily implantable because of its small size and measures IOP with 0.5mmHg accuracy. It wirelessly transmits data to an external wand while consuming 4.7nJ/bit. This provides rapid feedback about treatment efficacies to decrease physician response time and potentially prevent unnecessary vision loss. A nearly-perpetual temperature sensor is presented that processes data using a 2.1ÎŒW near-threshold ARM°R Cortex- M3TM ÎŒP that provides a widely-used and trusted programming platform. Energy harvesting and power management techniques for these two microsystems enable energy-autonomous operation. The IOP monitor harvests 80nW of solar power while consuming only 5.3nW, extending lifetime indefinitely. This allows the device to provide medical information for extended periods of time, giving doctors time to converge upon the best glaucoma treatment. The temperature sensor uses on-demand power delivery to improve low-load dc-dc voltage conversion efficiency by 4.75x. It also performs linear regulation to deliver power with low noise, improved load regulation, and tight line regulation. Low-power high-throughput SRAM techniques help millimeter-scale microsystems meet stringent power budgets. VDD scaling in memory decreases energy per access, but also decreases stability margins. These margins can be improved using sizing, VTH selection, and assist circuits, as well as new bitcell designs. Adaptive Crosshairs modulation of SRAM power supplies fixes 70% of parametric failures. Half-differential SRAM design improves stability, reducing VMIN by 72mV. The circuit techniques for energy autonomy presented in this dissertation enable millimeter-scale microsystems for medical implants, such as blood pressure and glucose sensors, as well as non-medical applications, such as supply chain and infrastructure monitoring. These pervasive sensors represent the continuation of Bell’s Law, which accurately traces the evolution of computers as they become smaller, more numerous, and more powerful. The development of millimeter-scale massively-deployed ubiquitous computers ensures the continued expansion and profitability of the semiconductor industry. NanoWatt circuit techniques will allow us to meet this next frontier in IC design.Ph.D.Electrical EngineeringUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttp://deepblue.lib.umich.edu/bitstream/2027.42/86387/1/grgkchen_1.pd

    Circuit design for embedded memory in low-power integrated circuits

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    Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2012.Cataloged from PDF version of thesis.Includes bibliographical references (p. 141-152).This thesis explores the challenges for integrating embedded static random access memory (SRAM) and non-volatile memory-based on ferroelectric capacitor technology-into lowpower integrated circuits. First considered is the impact of process variation in deep-submicron technologies on SRAM, which must exhibit higher density and performance at increased levels of integration with every new semiconductor generation. Techniques to speed up the statistical analysis of physical memory designs by a factor of 100 to 10,000 relative to the conventional Monte Carlo Method are developed. The proposed methods build upon the Importance Sampling simulation algorithm and efficiently explore the sample space of transistor parameter fluctuation. Process variation in SRAM at low-voltage is further investigated experimentally with a 512kb 8T SRAM test chip in 45nm SOI CMOS technology. For active operation, an AC coupled sense amplifier and regenerative global bitline scheme are designed to operate at the limit of on current and off current separation on a single-ended SRAM bitline. The SRAM operates from 1.2 V down to 0.57 V with access times from 400ps to 3.4ns. For standby power, a data retention voltage sensor predicts the mismatch-limited minimum supply voltage without corrupting the contents of the memory. The leakage power of SRAM forces the chip designer to seek non-volatile memory in applications such as portable electronics that retain significant quantities of data over long durations. In this scenario, the energy cost of accessing data must be minimized. This thesis presents a ferroelectric random access memory (FRAM) prototype that addresses the challenges of sensing diminishingly small charge under conditions favorable to low access energy with a time-to-digital sensing scheme. The 1 Mb IT1C FRAM fabricated in 130 nm CMOS operates from 1.5 V to 1.0 V with corresponding access energy from 19.2 pJ to 9.8 pJ per bit. Finally, the computational state of sequential elements interspersed in CMOS logic, also restricts the ability to power gate. To enable simple and fast turn-on, ferroelectric capacitors are integrated into the design of a standard cell register, whose non-volatile operation is made compatible with the digital design flow. A test-case circuit containing ferroelectric registers exhibits non-volatile operation and consumes less than 1.3 pJ per bit of state information and less than 10 clock cycles to save or restore with no minimum standby power requirement in-between active periods.by Masood Qazi.Ph.D

    Ultra Low Power Digital Circuit Design for Wireless Sensor Network Applications

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    Ny forskning innenfor feltet trĂ„dlĂžse sensornettverk Ă„pner for nye og innovative produkter og lĂžsninger. Biomedisinske anvendelser er blant omrĂ„dene med stĂžrst potensial og det investeres i dag betydelige belĂžp for Ă„ bruke denne teknologien for Ă„ gjĂžre medisinsk diagnostikk mer effektiv samtidig som man Ă„pner for fjerndiagnostikk basert pĂ„ trĂ„dlĂžse sensornoder integrert i et ”helsenett”. MĂ„let er Ă„ forbedre tjenestekvalitet og redusere kostnader samtidig som brukerne skal oppleve forbedret livskvalitet som fĂžlge av Ăžkt trygghet og mulighet for Ă„ tilbringe mest mulig tid i eget hjem og unngĂ„ unĂždvendige sykehusbesĂžk og innleggelser. For Ă„ gjĂžre dette til en realitet er man avhengige av sensorelektronikk som bruker minst mulig energi slik at man oppnĂ„r tilstrekkelig batterilevetid selv med veldig smĂ„ batterier. I sin avhandling ” Ultra Low power Digital Circuit Design for Wireless Sensor Network Applications” har PhD-kandidat Farshad Moradi fokusert pĂ„ nye lĂžsninger innenfor konstruksjon av energigjerrig digital kretselektronikk. Avhandlingen presenterer nye lĂžsninger bĂ„de innenfor aritmetiske og kombinatoriske kretser, samtidig som den studerer nye statiske minneelementer (SRAM) og alternative minnearkitekturer. Den ser ogsĂ„ pĂ„ utfordringene som oppstĂ„r nĂ„r silisiumteknologien nedskaleres i takt med mikroprosessorutviklingen og foreslĂ„r lĂžsninger som bidrar til Ă„ gjĂžre kretslĂžsninger mer robuste og skalerbare i forhold til denne utviklingen. De viktigste konklusjonene av arbeidet er at man ved Ă„ introdusere nye konstruksjonsteknikker bĂ„de er i stand til Ă„ redusere energiforbruket samtidig som robusthet og teknologiskalerbarhet Ăžker. Forskningen har vĂŠrt utfĂžrt i samarbeid med Purdue University og vĂŠrt finansiert av Norges ForskningsrĂ„d gjennom FRINATprosjektet ”Micropower Sensor Interface in Nanometer CMOS Technology”

    Low power digital baseband core for wireless Micro-Neural-Interface using CMOS sub/near-threshold circuit

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    This thesis presents the work on designing and implementing a low power digital baseband core with custom-tailored protocol for wirelessly powered Micro-Neural-Interface (MNI) System-on-Chip (SoC) to be implanted within the skull to record cortical neural activities. The core, on the tag end of distributed sensors, is designed to control the operation of individual MNI and communicate and control MNI devices implanted across the brain using received downlink commands from external base station and store/dump targeted neural data uplink in an energy efficient manner. The application specific protocol defines three modes (Time Stamp Mode, Streaming Mode and Snippet Mode) to extract neural signals with on-chip signal conditioning and discrimination. In Time Stamp Mode, Streaming Mode and Snippet Mode, the core executes basic on-chip spike discrimination and compression, real-time monitoring and segment capturing of neural signals so single spike timing as well as inter-spike timing can be retrieved with high temporal and spatial resolution. To implement the core control logic using sub/near-threshold logic, a novel digital design methodology is proposed which considers INWE (Inverse-Narrow-Width-Effect), RSCE (Reverse-Short-Channel-Effect) and variation comprehensively to size the transistor width and length accordingly to achieve close-to-optimum digital circuits. Ultra-low-power cell library containing 67 cells including physical cells and decoupling capacitor cells using the optimum fingers is designed, laid-out, characterized, and abstracted. A robust on-chip sense-amp-less SRAM memory (8X32 size) for storing neural data is implemented using 8T topology and LVT fingers. The design is validated with silicon tapeout and measurement shows the digital baseband core works at 400mV and 1.28 MHz system clock with an average power consumption of 2.2 ÎŒW, resulting in highest reported communication power efficiency of 290Kbps/ÎŒW to date

    Study and development of innovative strategies for energy-efficient cross-layer design of digital VLSI systems based on Approximate Computing

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    The increasing demand on requirements for high performance and energy efficiency in modern digital systems has led to the research of new design approaches that are able to go beyond the established energy-performance tradeoff. Looking at scientific literature, the Approximate Computing paradigm has been particularly prolific. Many applications in the domain of signal processing, multimedia, computer vision, machine learning are known to be particularly resilient to errors occurring on their input data and during computation, producing outputs that, although degraded, are still largely acceptable from the point of view of quality. The Approximate Computing design paradigm leverages the characteristics of this group of applications to develop circuits, architectures, algorithms that, by relaxing design constraints, perform their computations in an approximate or inexact manner reducing energy consumption. This PhD research aims to explore the design of hardware/software architectures based on Approximate Computing techniques, filling the gap in literature regarding effective applicability and deriving a systematic methodology to characterize its benefits and tradeoffs. The main contributions of this work are: -the introduction of approximate memory management inside the Linux OS, allowing dynamic allocation and de-allocation of approximate memory at user level, as for normal exact memory; - the development of an emulation environment for platforms with approximate memory units, where faults are injected during the simulation based on models that reproduce the effects on memory cells of circuital and architectural techniques for approximate memories; -the implementation and analysis of the impact of approximate memory hardware on real applications: the H.264 video encoder, internally modified to allocate selected data buffers in approximate memory, and signal processing applications (digital filter) using approximate memory for input/output buffers and tap registers; -the development of a fully reconfigurable and combinatorial floating point unit, which can work with reduced precision formats
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