71 research outputs found

    Fiabilisation de convertisseurs analogique-numérique à modulation Sigma-Delta

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    This thesis concentrates on reliability-aware methodology development, reliability analysis based on simulation as well as failure prediction of CMOS 65nm analog and mixed signal (AMS) ICs. Sigma-Delta modulators are concerned as the object of reliability study at system level. A hierarchical statistical approach for reliability is proposed to analysis the performance of Sigma-Delta modulators under ageing effects and process variations. Statistical methods are combined into this analysis flow.Ce travail de thèse a porté sur des problèmes de fiabilité de circuits intégrés en technologie CMOS 65 nm, en particulier sur la conception en vue de la fiabilité, la simulation et l'amélioration de la fiabilité. Les mécanismes dominants de vieillissement HCI et NBTI ainsi que la variation du processus ont été étudiés et évalués quantitativement au niveau du circuit et au niveau du système. Ces méthodes ont été appliquées aux modulateurs Sigma-Delta afin de déterminer la fiabilité de ce type de composant qui est très utilisé

    Fiabilisation de Convertisseurs Analogique-Num´erique a Modulation Sigma-Delta

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    Due to the continuously scaling down of CMOS technology, system-on-chips (SoCs) reliability becomes important in sub-90 nm CMOS node. Integrated circuits and systems applied to aerospace, avionic, vehicle transport and biomedicine are highly sensitive to reliability problems such as ageing mechanisms and parametric process variations. Novel SoCs with new materials and architectures of high complexity further aggravate reliability as a critical aspect of process integration. For instance, random and systematic defects as well as parametric process variations have a large influence on quality and yield of the manufactured ICs, right after production. During ICs usage time, time-dependent ageing mechanisms such as negative bias temperature instability (NBTI) and hot carrier injection (HCI) can significantly degrade ICs performance.La fiabilit´e des ICs est d´efinie ainsi : la capacit´e d’un circuit ou un syst`eme int´egr´e `amaintenir ses param`etres durant une p´eriode donn´ee sous des conditions d´efinies. Les rapportsITRS 2011 consid`ere la fiabilit´e comme un aspect critique du processus d’int´egration.Par cons´equent, il faut faire appel des m´ethodologies innovatrices prenant en comptela fiabilit´e afin d’assurer la fonctionnalit´e du SoCs et la fiabilit´e dans les technologiesCMOS `a l’´echelle nanom´etrique. Cela nous permettra de d´evelopper des m´ethodologiesind´ependantes du design et de la technologie CMOS, en revanche, sp´ecialis´ees en fiabilit´e

    Grid-enabled adaptive surrugate modeling for computer aided engineering

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    SCALABLE MODELING APPROACHES IN SYSTEMS IMMUNOLOGY

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    Systems biology seeks to build quantitative predictive models of biological system behavior. Biological systems, such as the mammalian immune system, operate across multiple spatiotemporal scales with a myriad of molecular and cellular players. Thus, mechanistic, predictive models describing such systems need to address this multiscale nature. A general outstanding problem is to cope with the high-dimensional parameter space arising when building reasonably detailed models. Another challenge is to devise integrated frameworks incorporating behavioral characteristics manifested at various organizational levels seamlessly. In this dissertation, I present two research projects addressing problems in immunological, or biological systems in general, using quantitative mechanistic models and machine learning, touching on the aforementioned challenges in scalable modeling. First, I aimed to understand how cell-to-cell heterogeneities are regulated through gene expression variations and their propagation at the single-cell level. To better understand detailed gene regulatory circuit models with many parameters without analytical solutions, I developed a framework called MAchine learning of Parameter-Phenotype Analysis (MAPPA). MAPPA combines machine learning approaches and stochastic simulation methods to dissect the mapping between high- dimensional parameters and phenotypes. MAPPA elucidated regulatory features of stochastic gene-gene correlation phenotypes. Next, I sought to quantitatively dissect immune homeostasis conferring tolerance to self-antigens and responsiveness to foreign antigens. Towards this goal, I built a series of models spanning from intracellular to organismal levels to describe the recurrent reciprocal relationships between self-reactive T cells and regulatory T cells in collaboration with an experimentalist. This effort elucidated critical immune parameters regulating the circuitry enabling the robust suppression of self-reactive T cells, followed by experimental validation. Moreover, by bridging these models across organizational scales, I derived a framework describing immune homeostasis as a dynamical equilibrium between self-activated T cells and regulatory T cells, typically operating well below thresholds that could result in clonal expansion and subsequent autoimmune diseases. I start with an introduction with a perspective linking seemingly contradictory behaviors of the immune system at different scales: microscopic “noise” and macroscopic deterministic outcomes. By connecting these aspects in the adaptive immune system analogously with an ansatz from statistical physics, I introduced a view on how robust immune homeostasis ensues

    Energy Academic Group Compilation of Abstracts 2012-2016

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    This report highlights the breadth of energy-related student research at NPS and reinforces the importance of energy as an integral aspect of today's Naval enterprise. The abstracts provided are from theses and a capstone project report completed by December 2012-March 2016 graduates.http://archive.org/details/energyacademicgr109454991

    Particle Swarm Optimization

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    Particle swarm optimization (PSO) is a population based stochastic optimization technique influenced by the social behavior of bird flocking or fish schooling.PSO shares many similarities with evolutionary computation techniques such as Genetic Algorithms (GA). The system is initialized with a population of random solutions and searches for optima by updating generations. However, unlike GA, PSO has no evolution operators such as crossover and mutation. In PSO, the potential solutions, called particles, fly through the problem space by following the current optimum particles. This book represents the contributions of the top researchers in this field and will serve as a valuable tool for professionals in this interdisciplinary field

    High-frequency oscillator design for integrated transceivers

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    System- and Data-Driven Methods and Algorithms

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    An increasing complexity of models used to predict real-world systems leads to the need for algorithms to replace complex models with far simpler ones, while preserving the accuracy of the predictions. This two-volume handbook covers methods as well as applications. This first volume focuses on real-time control theory, data assimilation, real-time visualization, high-dimensional state spaces and interaction of different reduction techniques

    Systems Engineering

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    The book "Systems Engineering: Practice and Theory" is a collection of articles written by developers and researches from all around the globe. Mostly they present methodologies for separate Systems Engineering processes; others consider issues of adjacent knowledge areas and sub-areas that significantly contribute to systems development, operation, and maintenance. Case studies include aircraft, spacecrafts, and space systems development, post-analysis of data collected during operation of large systems etc. Important issues related to "bottlenecks" of Systems Engineering, such as complexity, reliability, and safety of different kinds of systems, creation, operation and maintenance of services, system-human communication, and management tasks done during system projects are addressed in the collection. This book is for people who are interested in the modern state of the Systems Engineering knowledge area and for systems engineers involved in different activities of the area. Some articles may be a valuable source for university lecturers and students; most of case studies can be directly used in Systems Engineering courses as illustrative materials

    ADVANCES IN SYSTEM RELIABILITY-BASED DESIGN AND PROGNOSTICS AND HEALTH MANAGEMENT (PHM) FOR SYSTEM RESILIENCE ANALYSIS AND DESIGN

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    Failures of engineered systems can lead to significant economic and societal losses. Despite tremendous efforts (e.g., $200 billion annually) denoted to reliability and maintenance, unexpected catastrophic failures still occurs. To minimize the losses, reliability of engineered systems must be ensured throughout their life-cycle amidst uncertain operational condition and manufacturing variability. In most engineered systems, the required system reliability level under adverse events is achieved by adding system redundancies and/or conducting system reliability-based design optimization (RBDO). However, a high level of system redundancy increases a system's life-cycle cost (LCC) and system RBDO cannot ensure the system reliability when unexpected loading/environmental conditions are applied and unexpected system failures are developed. In contrast, a new design paradigm, referred to as resilience-driven system design, can ensure highly reliable system designs under any loading/environmental conditions and system failures while considerably reducing systems' LCC. In order to facilitate the development of formal methodologies for this design paradigm, this research aims at advancing two essential and co-related research areas: Research Thrust 1 - system RBDO and Research Thrust 2 - system prognostics and health management (PHM). In Research Thrust 1, reliability analyses under uncertainty will be carried out in both component and system levels against critical failure mechanisms. In Research Thrust 2, highly accurate and robust PHM systems will be designed for engineered systems with a single or multiple time-scale(s). To demonstrate the effectiveness of the proposed system RBDO and PHM techniques, multiple engineering case studies will be presented and discussed. Following the development of Research Thrusts 1 and 2, Research Thrust 3 - resilience-driven system design will establish a theoretical basis and design framework of engineering resilience in a mathematical and statistical context, where engineering resilience will be formulated in terms of system reliability and restoration and the proposed design framework will be demonstrated with a simplified aircraft control actuator design problem
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