418 research outputs found

    Cross-layer Soft Error Analysis and Mitigation at Nanoscale Technologies

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    This thesis addresses the challenge of soft error modeling and mitigation in nansoscale technology nodes and pushes the state-of-the-art forward by proposing novel modeling, analyze and mitigation techniques. The proposed soft error sensitivity analysis platform accurately models both error generation and propagation starting from a technology dependent device level simulations all the way to workload dependent application level analysis

    INVESTIGATING THE EFFECTS OF SINGLE-EVENT UPSETS IN STATIC AND DYNAMIC REGISTERS

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    Radiation-induced single-event upsets (SEUs) pose a serious threat to the reliability of registers. The existing SEU analyses for static CMOS registers focus on the circuit-level impact and may underestimate the pertinent SEU information provided through node analysis. This thesis proposes SEU node analysis to evaluate the sensitivity of static registers and apply the obtained node information to improve the robustness of the register through selective node hardening (SNH) technique. Unlike previous hardening techniques such as the Triple Modular Redundancy (TMR) and the Dual Interlocked Cell (DICE) latch, the SNH method does not introduce larger area overhead. Moreover, this thesis also explores the impact of SEUs in dynamic flip-flops, which are appealing for the design of high-performance microprocessors. Previous work either uses the approaches for static flip-flops to evaluate SEU effects in dynamic flip-flops or overlook the SEU injected during the precharge phase. In this thesis, possible SEU sensitive nodes in dynamic flip-flops are re-examined and their window of vulnerability (WOV) is extended. Simulation results for SEU analysis in non-hardened dynamic flip-flops reveal that the last 55.3 % of the precharge time and a 100% evaluation time are affected by SEUs

    Radiation Hardened by Design Methodologies for Soft-Error Mitigated Digital Architectures

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    abstract: Digital architectures for data encryption, processing, clock synthesis, data transfer, etc. are susceptible to radiation induced soft errors due to charge collection in complementary metal oxide semiconductor (CMOS) integrated circuits (ICs). Radiation hardening by design (RHBD) techniques such as double modular redundancy (DMR) and triple modular redundancy (TMR) are used for error detection and correction respectively in such architectures. Multiple node charge collection (MNCC) causes domain crossing errors (DCE) which can render the redundancy ineffectual. This dissertation describes techniques to ensure DCE mitigation with statistical confidence for various designs. Both sequential and combinatorial logic are separated using these custom and computer aided design (CAD) methodologies. Radiation vulnerability and design overhead are studied on VLSI sub-systems including an advanced encryption standard (AES) which is DCE mitigated using module level coarse separation on a 90-nm process with 99.999% DCE mitigation. A radiation hardened microprocessor (HERMES2) is implemented in both 90-nm and 55-nm technologies with an interleaved separation methodology with 99.99% DCE mitigation while achieving 4.9% increased cell density, 28.5 % reduced routing and 5.6% reduced power dissipation over the module fences implementation. A DMR register-file (RF) is implemented in 55 nm process and used in the HERMES2 microprocessor. The RF array custom design and the decoders APR designed are explored with a focus on design cycle time. Quality of results (QOR) is studied from power, performance, area and reliability (PPAR) perspective to ascertain the improvement over other design techniques. A radiation hardened all-digital multiplying pulsed digital delay line (DDL) is designed for double data rate (DDR2/3) applications for data eye centering during high speed off-chip data transfer. The effect of noise, radiation particle strikes and statistical variation on the designed DDL are studied in detail. The design achieves the best in class 22.4 ps peak-to-peak jitter, 100-850 MHz range at 14 pJ/cycle energy consumption. Vulnerability of the non-hardened design is characterized and portions of the redundant DDL are separated in custom and auto-place and route (APR). Thus, a range of designs for mission critical applications are implemented using methodologies proposed in this work and their potential PPAR benefits explored in detail.Dissertation/ThesisDoctoral Dissertation Electrical Engineering 201

    Dependable Embedded Systems

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    This Open Access book introduces readers to many new techniques for enhancing and optimizing reliability in embedded systems, which have emerged particularly within the last five years. This book introduces the most prominent reliability concerns from today’s points of view and roughly recapitulates the progress in the community so far. Unlike other books that focus on a single abstraction level such circuit level or system level alone, the focus of this book is to deal with the different reliability challenges across different levels starting from the physical level all the way to the system level (cross-layer approaches). The book aims at demonstrating how new hardware/software co-design solution can be proposed to ef-fectively mitigate reliability degradation such as transistor aging, processor variation, temperature effects, soft errors, etc. Provides readers with latest insights into novel, cross-layer methods and models with respect to dependability of embedded systems; Describes cross-layer approaches that can leverage reliability through techniques that are pro-actively designed with respect to techniques at other layers; Explains run-time adaptation and concepts/means of self-organization, in order to achieve error resiliency in complex, future many core systems

    Runtime Monitoring for Dependable Hardware Design

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    Mit dem Voranschreiten der Technologieskalierung und der Globalisierung der Produktion von integrierten Schaltkreisen eröffnen sich eine Fülle von Schwachstellen bezüglich der Verlässlichkeit von Computerhardware. Jeder Mikrochip wird aufgrund von Produktionsschwankungen mit einem einzigartigen Charakter geboren, welcher sich durch seine Arbeitsbedingungen, Belastung und Umgebung in individueller Weise entwickelt. Daher sind deterministische Modelle, welche zur Entwurfszeit die Verlässlichkeit prognostizieren, nicht mehr ausreichend um Integrierte Schaltkreise mit Nanometertechnologie sinnvoll abbilden zu können. Der Bedarf einer Laufzeitanalyse des Zustandes steigt und mit ihm die notwendigen Maßnahmen zum Erhalt der Zuverlässigkeit. Transistoren sind anfällig für auslastungsbedingte Alterung, die die Laufzeit der Schaltung erhöht und mit ihr die Möglichkeit einer Fehlberechnung. Hinzu kommen spezielle Abläufe die das schnelle Altern des Chips befördern und somit seine zuverlässige Lebenszeit reduzieren. Zusätzlich können strahlungsbedingte Laufzeitfehler (Soft-Errors) des Chips abnormales Verhalten kritischer Systeme verursachen. Sowohl das Ausbreiten als auch das Maskieren dieser Fehler wiederum sind abhängig von der Arbeitslast des Systems. Fabrizierten Chips können ebenfalls vorsätzlich während der Produktion boshafte Schaltungen, sogenannte Hardwaretrojaner, hinzugefügt werden. Dies kompromittiert die Sicherheit des Chips. Da diese Art der Manipulation vor ihrer Aktivierung kaum zu erfassen ist, ist der Nachweis von Trojanern auf einem Chip direkt nach der Produktion extrem schwierig. Die Komplexität dieser Verlässlichkeitsprobleme machen ein einfaches Modellieren der Zuverlässigkeit und Gegenmaßnahmen ineffizient. Sie entsteht aufgrund verschiedener Quellen, eingeschlossen der Entwicklungsparameter (Technologie, Gerät, Schaltung und Architektur), der Herstellungsparameter, der Laufzeitauslastung und der Arbeitsumgebung. Dies motiviert das Erforschen von maschinellem Lernen und Laufzeitmethoden, welche potentiell mit dieser Komplexität arbeiten können. In dieser Arbeit stellen wir Lösungen vor, die in der Lage sind, eine verlässliche Ausführung von Computerhardware mit unterschiedlichem Laufzeitverhalten und Arbeitsbedingungen zu gewährleisten. Wir entwickelten Techniken des maschinellen Lernens um verschiedene Zuverlässigkeitseffekte zu modellieren, zu überwachen und auszugleichen. Verschiedene Lernmethoden werden genutzt, um günstige Überwachungspunkte zur Kontrolle der Arbeitsbelastung zu finden. Diese werden zusammen mit Zuverlässigkeitsmetriken, aufbauend auf Ausfallsicherheit und generellen Sicherheitsattributen, zum Erstellen von Vorhersagemodellen genutzt. Des Weiteren präsentieren wir eine kosten-optimierte Hardwaremonitorschaltung, welche die Überwachungspunkte zur Laufzeit auswertet. Im Gegensatz zum aktuellen Stand der Technik, welcher mikroarchitektonische Überwachungspunkte ausnutzt, evaluieren wir das Potential von Arbeitsbelastungscharakteristiken auf der Logikebene der zugrundeliegenden Hardware. Wir identifizieren verbesserte Features auf Logikebene um feingranulare Laufzeitüberwachung zu ermöglichen. Diese Logikanalyse wiederum hat verschiedene Stellschrauben um auf höhere Genauigkeit und niedrigeren Overhead zu optimieren. Wir untersuchten die Philosophie, Überwachungspunkte auf Logikebene mit Hilfe von Lernmethoden zu identifizieren und günstigen Monitore zu implementieren um eine adaptive Vorbeugung gegen statisches Altern, dynamisches Altern und strahlungsinduzierte Soft-Errors zu schaffen und zusätzlich die Aktivierung von Hardwaretrojanern zu erkennen. Diesbezüglich haben wir ein Vorhersagemodell entworfen, welches den Arbeitslasteinfluss auf alterungsbedingte Verschlechterungen des Chips mitverfolgt und dazu genutzt werden kann, dynamisch zur Laufzeit vorbeugende Techniken, wie Task-Mitigation, Spannungs- und Frequenzskalierung zu benutzen. Dieses Vorhersagemodell wurde in Software implementiert, welche verschiedene Arbeitslasten aufgrund ihrer Alterungswirkung einordnet. Um die Widerstandsfähigkeit gegenüber beschleunigter Alterung sicherzustellen, stellen wir eine Überwachungshardware vor, welche einen Teil der kritischen Flip-Flops beaufsichtigt, nach beschleunigter Alterung Ausschau hält und davor warnt, wenn ein zeitkritischer Pfad unter starker Alterungsbelastung steht. Wir geben die Implementierung einer Technik zum Reduzieren der durch das Ausführen spezifischer Subroutinen auftretenden Belastung von zeitkritischen Pfaden. Zusätzlich schlagen wir eine Technik zur Abschätzung von online Soft-Error-Schwachstellen von Speicherarrays und Logikkernen vor, welche auf der Überwachung einer kleinen Gruppe Flip-Flops des Entwurfs basiert. Des Weiteren haben wir eine Methode basierend auf Anomalieerkennung entwickelt, um Arbeitslastsignaturen von Hardwaretrojanern während deren Aktivierung zur Laufzeit zu erkennen und somit eine letzte Verteidigungslinie zu bilden. Basierend auf diesen Experimenten demonstriert diese Arbeit das Potential von fortgeschrittener Feature-Extraktion auf Logikebene und lernbasierter Vorhersage basierend auf Laufzeitdaten zur Verbesserung der Zuverlässigkeit von Harwareentwürfen

    Design and Evaluation of Radiation-Hardened Standard Cell Flip-Flops

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    Use of a standard non-rad-hard digital cell library in the rad-hard design can be a cost-effective solution for space applications. In this paper we demonstrate how a standard non-rad-hard flip-flop, as one of the most vulnerable digital cells, can be converted into a rad-hard flip-flop without modifying its internal structure. We present five variants of a Triple Modular Redundancy (TMR) flip-flop: baseline TMR flip-flop, latch-based TMR flip-flop, True-Single Phase Clock (TSPC) TMR flip-flop, scannable TMR flip-flop and self-correcting TMR flip-flop. For all variants, the multi-bit upsets have been addressed by applying special placement constraints, while the Single Event Transient (SET) mitigation was achieved through the usage of customized SET filters and selection of optimal inverter sizes for the clock and reset trees. The proposed flip-flop variants feature differing performance, thus enabling to choose the optimal solution for every sensitive node in the circuit, according to the predefined design constraints. Several flip-flop designs have been validated on IHP’s 130nm BiCMOS process, by irradiation of custom-designed shift registers. It has been shown that the proposed TMR flip-flops are robust to soft errors with a threshold Linear Energy Transfer (LET) from ( 32.4 (MeV⋅cm2/mg) ) to ( 62.5 (MeV⋅cm2/mg) ), depending on the variant

    Soft-Error Resilience Framework For Reliable and Energy-Efficient CMOS Logic and Spintronic Memory Architectures

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    The revolution in chip manufacturing processes spanning five decades has proliferated high performance and energy-efficient nano-electronic devices across all aspects of daily life. In recent years, CMOS technology scaling has realized billions of transistors within large-scale VLSI chips to elevate performance. However, these advancements have also continually augmented the impact of Single-Event Transient (SET) and Single-Event Upset (SEU) occurrences which precipitate a range of Soft-Error (SE) dependability issues. Consequently, soft-error mitigation techniques have become essential to improve systems\u27 reliability. Herein, first, we proposed optimized soft-error resilience designs to improve robustness of sub-micron computing systems. The proposed approaches were developed to deliver energy-efficiency and tolerate double/multiple errors simultaneously while incurring acceptable speed performance degradation compared to the prior work. Secondly, the impact of Process Variation (PV) at the Near-Threshold Voltage (NTV) region on redundancy-based SE-mitigation approaches for High-Performance Computing (HPC) systems was investigated to highlight the approach that can realize favorable attributes, such as reduced critical datapath delay variation and low speed degradation. Finally, recently, spin-based devices have been widely used to design Non-Volatile (NV) elements such as NV latches and flip-flops, which can be leveraged in normally-off computing architectures for Internet-of-Things (IoT) and energy-harvesting-powered applications. Thus, in the last portion of this dissertation, we design and evaluate for soft-error resilience NV-latching circuits that can achieve intriguing features, such as low energy consumption, high computing performance, and superior soft errors tolerance, i.e., concurrently able to tolerate Multiple Node Upset (MNU), to potentially become a mainstream solution for the aerospace and avionic nanoelectronics. Together, these objectives cooperate to increase energy-efficiency and soft errors mitigation resiliency of larger-scale emerging NV latching circuits within iso-energy constraints. In summary, addressing these reliability concerns is paramount to successful deployment of future reliable and energy-efficient CMOS logic and spintronic memory architectures with deeply-scaled devices operating at low-voltages

    Physically-Adaptive Computing via Introspection and Self-Optimization in Reconfigurable Systems.

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    Digital electronic systems typically must compute precise and deterministic results, but in principle have flexibility in how they compute. Despite the potential flexibility, the overriding paradigm for more than 50 years has been based on fixed, non-adaptive inte-grated circuits. This one-size-fits-all approach is rapidly losing effectiveness now that technology is advancing into the nanoscale. Physical variation and uncertainty in com-ponent behavior are emerging as fundamental constraints and leading to increasingly sub-optimal fault rates, power consumption, chip costs, and lifetimes. This dissertation pro-poses methods of physically-adaptive computing (PAC), in which reconfigurable elec-tronic systems sense and learn their own physical parameters and adapt with fine granu-larity in the field, leading to higher reliability and efficiency. We formulate the PAC problem and provide a conceptual framework built around two major themes: introspection and self-optimization. We investigate how systems can efficiently acquire useful information about their physical state and related parameters, and how systems can feasibly re-implement their designs on-the-fly using the information learned. We study the role not only of self-adaptation—where the above two tasks are performed by an adaptive system itself—but also of assisted adaptation using a remote server or peer. We introduce low-cost methods for sensing regional variations in a system, including a flexible, ultra-compact sensor that can be embedded in an application and implemented on field-programmable gate arrays (FPGAs). An array of such sensors, with only 1% to-tal overhead, can be employed to gain useful information about circuit delays, voltage noise, and even leakage variations. We present complementary methods of regional self-optimization, such as finding a design alternative that best fits a given system region. We propose a novel approach to characterizing local, uncorrelated variations. Through in-system emulation of noise, previously hidden variations in transient fault sus-ceptibility are uncovered. Correspondingly, we demonstrate practical methods of self-optimization, such as local re-placement, informed by the introspection data. Forms of physically-adaptive computing are strongly needed in areas such as com-munications infrastructure, data centers, and space systems. This dissertation contributes practical methods for improving PAC costs and benefits, and promotes a vision of re-sourceful, dependable digital systems at unimaginably-fine physical scales.Ph.D.Computer Science & EngineeringUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttp://deepblue.lib.umich.edu/bitstream/2027.42/78922/1/kzick_1.pd
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