40 research outputs found
Machine Learning to Tackle the Challenges of Transient and Soft Errors in Complex Circuits
The Functional Failure Rate analysis of today's complex circuits is a
difficult task and requires a significant investment in terms of human efforts,
processing resources and tool licenses. Thereby, de-rating or vulnerability
factors are a major instrument of failure analysis efforts. Usually
computationally intensive fault-injection simulation campaigns are required to
obtain a fine-grained reliability metrics for the functional level. Therefore,
the use of machine learning algorithms to assist this procedure and thus,
optimising and enhancing fault injection efforts, is investigated in this
paper. Specifically, machine learning models are used to predict accurate
per-instance Functional De-Rating data for the full list of circuit instances,
an objective that is difficult to reach using classical methods. The described
methodology uses a set of per-instance features, extracted through an analysis
approach, combining static elements (cell properties, circuit structure,
synthesis attributes) and dynamic elements (signal activity). Reference data is
obtained through first-principles fault simulation approaches. One part of this
reference dataset is used to train the machine learning model and the remaining
is used to validate and benchmark the accuracy of the trained tool. The
presented methodology is applied on a practical example and various machine
learning models are evaluated and compared
Composing Graph Theory and Deep Neural Networks to Evaluate SEU Type Soft Error Effects
Rapidly shrinking technology node and voltage scaling increase the
susceptibility of Soft Errors in digital circuits. Soft Errors are
radiation-induced effects while the radiation particles such as Alpha, Neutrons
or Heavy Ions, interact with sensitive regions of microelectronic
devices/circuits. The particle hit could be a glancing blow or a penetrating
strike. A well apprehended and characterized way of analyzing soft error
effects is the fault-injection campaign, but that typically acknowledged as
time and resource-consuming simulation strategy. As an alternative to
traditional fault injection-based methodologies and to explore the
applicability of modern graph based neural network algorithms in the field of
reliability modeling, this paper proposes a systematic framework that explores
gate-level abstractions to extract and exploit relevant feature representations
at low-dimensional vector space. The framework allows the extensive prediction
analysis of SEU type soft error effects in a given circuit. A scalable and
inductive type representation learning algorithm on graphs called GraphSAGE has
been utilized for efficiently extracting structural features of the gate-level
netlist, providing a valuable database to exercise a downstream machine
learning or deep learning algorithm aiming at predicting fault propagation
metrics. Functional Failure Rate (FFR): the predicted fault propagating metric
of SEU type fault within the gate-level circuit abstraction of the 10-Gigabit
Ethernet MAC (IEEE 802.3) standard circuit.Comment: 5 pages for conference, Number of figures: 3, Conference: 2020 9th
Mediterranean Conference on Embedded Computing (MECO
Machine Learning Clustering Techniques for Selective Mitigation of Critical Design Features
Selective mitigation or selective hardening is an effective technique to
obtain a good trade-off between the improvements in the overall reliability of
a circuit and the hardware overhead induced by the hardening techniques.
Selective mitigation relies on preferentially protecting circuit instances
according to their susceptibility and criticality. However, ranking circuit
parts in terms of vulnerability usually requires computationally intensive
fault-injection simulation campaigns. This paper presents a new methodology
which uses machine learning clustering techniques to group flip-flops with
similar expected contributions to the overall functional failure rate, based on
the analysis of a compact set of features combining attributes from static
elements and dynamic elements. Fault simulation campaigns can then be executed
on a per-group basis, significantly reducing the time and cost of the
evaluation. The effectiveness of grouping similar sensitive flip-flops by
machine learning clustering algorithms is evaluated on a practical
example.Different clustering algorithms are applied and the results are
compared to an ideal selective mitigation obtained by exhaustive
fault-injection simulation
Logic synthesis and testing techniques for switching nano-crossbar arrays
Beyond CMOS, new technologies are emerging to extend electronic systems with features unavailable to silicon-based devices. Emerging technologies provide new logic and interconnection structures for computation, storage and communication that may require new design paradigms, and therefore trigger the development of a new generation of design automation tools. In the last decade, several emerging technologies have been proposed and the time has come for studying new ad-hoc techniques and tools for logic synthesis, physical design and testing. The main goal of this project is developing a complete synthesis and optimization methodology for switching nano-crossbar arrays that leads to the design and construction of an emerging nanocomputer. New models for diode, FET, and four-terminal switch based nanoarrays are developed. The proposed methodology implements logic, arithmetic, and memory elements by considering performance parameters such as area, delay, power dissipation, and reliability. With combination of logic, arithmetic, and memory elements a synchronous state machine (SSM), representation of a computer, is realized. The proposed methodology targets variety of emerging technologies including nanowire/nanotube crossbar arrays, magnetic switch-based structures, and crossbar memories. The results of this project will be a foundation of nano-crossbar based circuit design techniques and greatly contribute to the construction of emerging computers beyond CMOS. The topic of this project can be considered under the research area of â\u80\u9cEmerging Computing Modelsâ\u80\u9d or â\u80\u9cComputational Nanoelectronicsâ\u80\u9d, more specifically the design, modeling, and simulation of new nanoscale switches beyond CMOS
Understanding multidimensional verification: Where functional meets non-functional
Abstract Advancements in electronic systems' design have a notable impact on design verification technologies. The recent paradigms of Internet-of-Things (IoT) and Cyber-Physical Systems (CPS) assume devices immersed in physical environments, significantly constrained in resources and expected to provide levels of security, privacy, reliability, performance and low-power features. In recent years, numerous extra-functional aspects of electronic systems were brought to the front and imply verification of hardware design models in multidimensional space along with the functional concerns of the target system. However, different from the software domain such a holistic approach remains underdeveloped. The contributions of this paper are a taxonomy for multidimensional hardware verification aspects, a state-of-the-art survey of related research works and trends enabling the multidimensional verification concept. Further, an initial approach to perform multidimensional verification based on machine learning techniques is evaluated. The importance and challenge of performing multidimensional verification is illustrated by an example case study
Effects of the COVID-19 pandemic on clinical manifestations and therapeutic outcomes in acute endophthalmitis
Endophthalmitis incidence and clinical characteristics was reported to change during Covid-19 pandemic, due to multiple influencing factors, such as prolonged lockdown periods, persistent immune suppression following Sars-Cov-2 infection, and mask wearing. We conducted a retrospective eight-year study, during January 2016 and December 2023, that aims to investigates the differences in terms of etiology, clinical characteristics and outcomes in cases with acute endophthalmitis, admitted before (2016-2019) and during Covid-19 pandemic (2020-2023). The two study subgroups were homogenous in term of age, gender distribution, associated comorbidities, and addressability. During Covid-19 pandemic there were significant delays in presentation (p=0.02), more cases of endogenous endophthalmitis (p=0.025), and patients presented a more intense systemic inflammatory reaction (
Integrated Synthesis Methodology for Crossbar Arrays
Nano-crossbar arrays have emerged as area and power efficient
structures with an aim of achieving high performance computing
beyond the limits of current CMOS. Due to the stochastic nature
of nano-fabrication, nano arrays show different properties both
in structural and physical device levels compared to conventional
technologies. Mentioned factors introduce random characteristics
that need to be carefully considered by synthesis process. For instance, a competent synthesis methodology must consider basic
technology preference for switching elements, defect or fault rates
of the given nano switching array and the variation values as well
as their effects on performance metrics including power, delay, and
area. Presented synthesis methodology in this study comprehensively covers the all specified factors and provides optimization
algorithms for each step of the process.This work is part of a project that has received funding from the
European Union’s H2020 research and innovation programme under the
Marie Skłodowska-Curie grant agreement No 691178, and supported by the
TUBITAK-Career project #113E76