2,757 research outputs found
An efficient logic fault diagnosis framework based on effect-cause approach
Fault diagnosis plays an important role in improving the circuit design process and the
manufacturing yield. With the increasing number of gates in modern circuits, determining
the source of failure in a defective circuit is becoming more and more challenging.
In this research, we present an efficient effect-cause diagnosis framework for
combinational VLSI circuits. The framework consists of three stages to obtain an accurate
and reasonably precise diagnosis. First, an improved critical path tracing algorithm is
proposed to identify an initial suspect list by backtracing from faulty primary outputs
toward primary inputs. Compared to the traditional critical path tracing approach, our
algorithm is faster and exact. Second, a novel probabilistic ranking model is applied to
rank the suspects so that the most suspicious one will be ranked at or near the top. Several
fast filtering methods are used to prune unrelated suspects. Finally, to refine the diagnosis,
fault simulation is performed on the top suspect nets using several common fault models.
The difference between the observed faulty behavior and the simulated behavior is used to rank each suspect. Experimental results on ISCAS85 benchmark circuits show that this
diagnosis approach is efficient both in terms of memory space and CPU time and the
diagnosis results are accurate and reasonably precise
VLSI Design
This book provides some recent advances in design nanometer VLSI chips. The selected topics try to present some open problems and challenges with important topics ranging from design tools, new post-silicon devices, GPU-based parallel computing, emerging 3D integration, and antenna design. The book consists of two parts, with chapters such as: VLSI design for multi-sensor smart systems on a chip, Three-dimensional integrated circuits design for thousand-core processors, Parallel symbolic analysis of large analog circuits on GPU platforms, Algorithms for CAD tools VLSI design, A multilevel memetic algorithm for large SAT-encoded problems, etc
Neuro-memristive Circuits for Edge Computing: A review
The volume, veracity, variability, and velocity of data produced from the
ever-increasing network of sensors connected to Internet pose challenges for
power management, scalability, and sustainability of cloud computing
infrastructure. Increasing the data processing capability of edge computing
devices at lower power requirements can reduce several overheads for cloud
computing solutions. This paper provides the review of neuromorphic
CMOS-memristive architectures that can be integrated into edge computing
devices. We discuss why the neuromorphic architectures are useful for edge
devices and show the advantages, drawbacks and open problems in the field of
neuro-memristive circuits for edge computing
34th Midwest Symposium on Circuits and Systems-Final Program
Organized by the Naval Postgraduate School Monterey California. Cosponsored by the IEEE Circuits and Systems Society.
Symposium Organizing Committee: General Chairman-Sherif Michael, Technical Program-Roberto Cristi, Publications-Michael Soderstrand, Special Sessions- Charles W. Therrien, Publicity: Jeffrey Burl, Finance: Ralph Hippenstiel, and Local Arrangements: Barbara Cristi
An Investigation into Neuromorphic ICs using Memristor-CMOS Hybrid Circuits
The memristance of a memristor depends on the amount of charge flowing
through it and when current stops flowing through it, it remembers the state.
Thus, memristors are extremely suited for implementation of memory units.
Memristors find great application in neuromorphic circuits as it is possible to
couple memory and processing, compared to traditional Von-Neumann digital
architectures where memory and processing are separate. Neural networks have a
layered structure where information passes from one layer to another and each
of these layers have the possibility of a high degree of parallelism.
CMOS-Memristor based neural network accelerators provide a method of speeding
up neural networks by making use of this parallelism and analog computation. In
this project we have conducted an initial investigation into the current state
of the art implementation of memristor based programming circuits. Various
memristor programming circuits and basic neuromorphic circuits have been
simulated. The next phase of our project revolved around designing basic
building blocks which can be used to design neural networks. A memristor bridge
based synaptic weighting block, a operational transconductor based summing
block were initially designed. We then designed activation function blocks
which are used to introduce controlled non-linearity. Blocks for a basic
rectified linear unit and a novel implementation for tan-hyperbolic function
have been proposed. An artificial neural network has been designed using these
blocks to validate and test their performance. We have also used these
fundamental blocks to design basic layers of Convolutional Neural Networks.
Convolutional Neural Networks are heavily used in image processing
applications. The core convolutional block has been designed and it has been
used as an image processing kernel to test its performance.Comment: Bachelor's thesi
縦型ボディチャネルMOS Field-Effect Transistorを用いたマイクロプロセッサ向け高効率・高集積DC-DCコンバータとそのパワーマネジメントに関する研究
Tohoku University遠藤哲郎課
Constraint-Aware, Scalable, and Efficient Algorithms for Multi-Chip Power Module Layout Optimization
Moving towards an electrified world requires ultra high-density power converters. Electric vehicles, electrified aerospace, data centers, etc. are just a few fields among wide application areas of power electronic systems, where high-density power converters are essential. As a critical part of these power converters, power semiconductor modules and their layout optimization has been identified as a crucial step in achieving the maximum performance and density for wide bandgap technologies (i.e., GaN and SiC). New packaging technologies are also introduced to produce reliable and efficient multichip power module (MCPM) designs to push the current limits. The complexity of the emerging MCPM layouts is surpassing the capability of a manual, iterative design process to produce an optimum design with agile development requirements. An electronic design automation tool called PowerSynth has been introduced with ongoing research toward enhanced capabilities to speed up the optimized MCPM layout design process. This dissertation presents the PowerSynth progression timeline with the methodology updates and corresponding critical results compared to v1.1. The first released version (v1.1) of PowerSynth demonstrated the benefits of layout abstraction, and reduced-order modeling techniques to perform rapid optimization of the MCPM module compared to the traditional, manual, and iterative design approach. However, that version is limited by several key factors: layout representation technique, layout generation algorithms, iterative design-rule-checking (DRC), optimization algorithm candidates, etc. To address these limitations, and enhance PowerSynth’s capabilities, constraint-aware, scalable, and efficient algorithms have been developed and implemented. PowerSynth layout engine has evolved from v1.3 to v2.0 throughout the last five years to incorporate the algorithm updates and generate all 2D/2.5D/3D Manhattan layout solutions. These fundamental changes in the layout generation methodology have also called for updates in the performance modeling techniques and enabled exploring different optimization algorithms. The latest PowerSynth 2 architecture has been implemented to enable electro-thermo-mechanical and reliability optimization on 2D/2.5D/3D MCPM layouts, and set up a path toward cabinet-level optimization. PowerSynth v2.0 computer-aided design (CAD) flow has been hardware-validated through manufacturing and testing of an optimized novel 3D MCPM layout. The flow has shown significant speedup compared to the manual design flow with a comparable optimization result
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