236 research outputs found

    Autonomous Recovery Of Reconfigurable Logic Devices Using Priority Escalation Of Slack

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    Field Programmable Gate Array (FPGA) devices offer a suitable platform for survivable hardware architectures in mission-critical systems. In this dissertation, active dynamic redundancy-based fault-handling techniques are proposed which exploit the dynamic partial reconfiguration capability of SRAM-based FPGAs. Self-adaptation is realized by employing reconfiguration in detection, diagnosis, and recovery phases. To extend these concepts to semiconductor aging and process variation in the deep submicron era, resilient adaptable processing systems are sought to maintain quality and throughput requirements despite the vulnerabilities of the underlying computational devices. A new approach to autonomous fault-handling which addresses these goals is developed using only a uniplex hardware arrangement. It operates by observing a health metric to achieve Fault Demotion using Recon- figurable Slack (FaDReS). Here an autonomous fault isolation scheme is employed which neither requires test vectors nor suspends the computational throughput, but instead observes the value of a health metric based on runtime input. The deterministic flow of the fault isolation scheme guarantees success in a bounded number of reconfigurations of the FPGA fabric. FaDReS is then extended to the Priority Using Resource Escalation (PURE) online redundancy scheme which considers fault-isolation latency and throughput trade-offs under a dynamic spare arrangement. While deep-submicron designs introduce new challenges, use of adaptive techniques are seen to provide several promising avenues for improving resilience. The scheme developed is demonstrated by hardware design of various signal processing circuits and their implementation on a Xilinx Virtex-4 FPGA device. These include a Discrete Cosine Transform (DCT) core, Motion Estimation (ME) engine, Finite Impulse Response (FIR) Filter, Support Vector Machine (SVM), and Advanced Encryption Standard (AES) blocks in addition to MCNC benchmark circuits. A iii significant reduction in power consumption is achieved ranging from 83% for low motion-activity scenes to 12.5% for high motion activity video scenes in a novel ME engine configuration. For a typical benchmark video sequence, PURE is shown to maintain a PSNR baseline near 32dB. The diagnosability, reconfiguration latency, and resource overhead of each approach is analyzed. Compared to previous alternatives, PURE maintains a PSNR within a difference of 4.02dB to 6.67dB from the fault-free baseline by escalating healthy resources to higher-priority signal processing functions. The results indicate the benefits of priority-aware resiliency over conventional redundancy approaches in terms of fault-recovery, power consumption, and resource-area requirements. Together, these provide a broad range of strategies to achieve autonomous recovery of reconfigurable logic devices under a variety of constraints, operating conditions, and optimization criteria

    Sustainable Fault-handling Of Reconfigurable Logic Using Throughput-driven Assessment

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    A sustainable Evolvable Hardware (EH) system is developed for SRAM-based reconfigurable Field Programmable Gate Arrays (FPGAs) using outlier detection and group testing-based assessment principles. The fault diagnosis methods presented herein leverage throughput-driven, relative fitness assessment to maintain resource viability autonomously. Group testing-based techniques are developed for adaptive input-driven fault isolation in FPGAs, without the need for exhaustive testing or coding-based evaluation. The techniques maintain the device operational, and when possible generate validated outputs throughout the repair process. Adaptive fault isolation methods based on discrepancy-enabled pair-wise comparisons are developed. By observing the discrepancy characteristics of multiple Concurrent Error Detection (CED) configurations, a method for robust detection of faults is developed based on pairwise parallel evaluation using Discrepancy Mirror logic. The results from the analytical FPGA model are demonstrated via a self-healing, self-organizing evolvable hardware system. Reconfigurability of the SRAM-based FPGA is leveraged to identify logic resource faults which are successively excluded by group testing using alternate device configurations. This simplifies the system architect\u27s role to definition of functionality using a high-level Hardware Description Language (HDL) and system-level performance versus availability operating point. System availability, throughput, and mean time to isolate faults are monitored and maintained using an Observer-Controller model. Results are demonstrated using a Data Encryption Standard (DES) core that occupies approximately 305 FPGA slices on a Xilinx Virtex-II Pro FPGA. With a single simulated stuck-at-fault, the system identifies a completely validated replacement configuration within three to five positive tests. The approach demonstrates a readily-implemented yet robust organic hardware application framework featuring a high degree of autonomous self-control

    Culture of Communication in The Space of Co-Working Newsrooom of Online Media

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    Technology has driven a change in the mainstream media editorial room towards the digital newsroom. Media that develops models of editorial space integrated with digital platforms has been widely practiced. Including, designing a newsroom work place to support the performance needed by media companies that are adaptive to change. The newsroom or editorial room no longer uses a cubical arrangement, but rather a shared work space. This research uses a constructionist paradigm according to a qualitative research approach with a phenomenological method. The results showed that the co-working space newsroom accelerated the coordination for the production of �breaking news�. Communication in the newsroom becomes without bureaucracy, consequently it becomes free of structure and a cross levels. The implication is that the newsroom culture of the co-working space becomes more flexible and fast in collaboration with fellow journalists and writers to raise the latest news issues. Another implication is that the newsroom supports the creative ideas of media actors

    Oil and Gas flow Anomaly Detection on offshore naturally flowing wells using Deep Neural Networks

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    Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science and Advanced Analytics, specialization in Data ScienceThe Oil and Gas industry, as never before, faces multiple challenges. It is being impugned for being dirty, a pollutant, and hence the more demand for green alternatives. Nevertheless, the world still has to rely heavily on hydrocarbons, since it is the most traditional and stable source of energy, as opposed to extensively promoted hydro, solar or wind power. Major operators are challenged to produce the oil more efficiently, to counteract the newly arising energy sources, with less of a climate footprint, more scrutinized expenditure, thus facing high skepticism regarding its future. It has to become greener, and hence to act in a manner not required previously. While most of the tools used by the Hydrocarbon E&P industry is expensive and has been used for many years, it is paramount for the industry’s survival and prosperity to apply predictive maintenance technologies, that would foresee potential failures, making production safer, lowering downtime, increasing productivity and diminishing maintenance costs. Many efforts were applied in order to define the most accurate and effective predictive methods, however data scarcity affects the speed and capacity for further experimentations. Whilst it would be highly beneficial for the industry to invest in Artificial Intelligence, this research aims at exploring, in depth, the subject of Anomaly Detection, using the open public data from Petrobras, that was developed by experts. For this research the Deep Learning Neural Networks, such as Recurrent Neural Networks with LSTM and GRU backbones, were implemented for multi-class classification of undesirable events on naturally flowing wells. Further, several hyperparameter optimization tools were explored, mainly focusing on Genetic Algorithms as being the most advanced methods for such kind of tasks. The research concluded with the best performing algorithm with 2 stacked GRU and the following vector of hyperparameters weights: [1, 47, 40, 14], which stand for timestep 1, number of hidden units 47, number of epochs 40 and batch size 14, producing F1 equal to 0.97%. As the world faces many issues, one of which is the detrimental effect of heavy industries to the environment and as result adverse global climate change, this project is an attempt to contribute to the field of applying Artificial Intelligence in the Oil and Gas industry, with the intention to make it more efficient, transparent and sustainable

    The Stock Exchange Prediction using Machine Learning Techniques: A Comprehensive and Systematic Literature Review

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    This literature review identifies and analyzes research topic trends, types of data sets, learning algorithm, methods improvements, and frameworks used in stock exchange prediction. A total of 81 studies were investigated, which were published regarding stock predictions in the period January 2015 to June 2020 which took into account the inclusion and exclusion criteria. The literature review methodology is carried out in three major phases: review planning, implementation, and report preparation, in nine steps from defining systematic review requirements to presentation of results. Estimation or regression, clustering, association, classification, and preprocessing analysis of data sets are the five main focuses revealed in the main study of stock prediction research. The classification method gets a share of 35.80% from related studies, the estimation method is 56.79%, data analytics is 4.94%, the rest is clustering and association is 1.23%. Furthermore, the use of the technical indicator data set is 74.07%, the rest are combinations of datasets. To develop a stock prediction model 48 different methods have been applied, 9 of the most widely applied methods were identified. The best method in terms of accuracy and also small error rate such as SVM, DNN, CNN, RNN, LSTM, bagging ensembles such as RF, boosting ensembles such as XGBoost, ensemble majority vote and the meta-learner approach is ensemble Stacking. Several techniques are proposed to improve prediction accuracy by combining several methods, using boosting algorithms, adding feature selection and using parameter and hyper-parameter optimization

    Power constrained test scheduling in system-on-chip design

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    With the development of VLSI technologies, especially with the coming of deep sub-micron semiconductor process technologies, power dissipation becomes a critical factor that cannot be ignored either in normal operation or in test mode of digital systems. Test scheduling has to take into consideration of both test concurrency and power dissipation constraints. For satisfying high fault coverage goals with minimum test application time under certain power dissipation constraints, the testing of all components on the system should be performed in parallel as much as possible. The main objective of this thesis is to address the test-scheduling problem faced by SOC designers at system level. Through the analysis of several existing scheduling approaches, we enlarge the basis that current approaches based on to minimize test application time and propose an efficient and integrated technique for the test scheduling of SOCs under power-constraint. The proposed merging approach is based on a tree growing technique and can be used to overlay the block-test sessions in order to reduce further test application time. A number of experiments, based on academic benchmarks and industrial designs, have been carried out to demonstrate the usefulness and efficiency of the proposed approaches

    Communication synthesis of networks-on-chip (NoC)

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    The emergence of networks-on-chip (NoC) as the communication infrastructure solution for complex multi-core SoCs presents communication synthesis challenges. This dissertation addresses the design and run-time management aspects of communication synthesis. Design reuse and the infeasibility of Intellectual Property (IP) core interface redesign, requires the development of a Core-Network Interface (CNI) which allows them to communicate over the on-chip network. The absence of intelligence amongst the NoC components, entails the introduction of a CNI capable of not only providing basic packetization and depacketization, but also other essential services such as reliability, power management, reconguration and test support. A generic CNI architecture providing these services for NoCs is proposed and evaluated in this dissertation. Rising on-chip communication power costs and reliability concerns due to these, motivate the development of a peak power management technique that is both scalable to dierent NoCs and adaptable to varying trac congurations. A scalable and adaptable peak power management technique - SAPP - is proposed and demonstrated. Latency and throughput improvements observed with SAPP demonstrate its superiority over existing techniques. Increasing design complexity make prediction of design lifetimes dicult. Post SoC deployment, an on-line health monitoring scheme, is essential to maintain con- dence in the correct operation of on-chip cores. The rising design complexity and IP core test costs makes non-concurrent testing of the IP cores infeasible. An on-line scheme capable of managing IP core test in the presence of executing applications is essential. Such a scheme ensures application performance and system power budgets are eciently managed. This dissertation proposes Concurrent On-Line Test (COLT) for NoC-based systems and demonstrates how a robust implementation of COLT using a Test Infrastructure-IP (TI-IP) can be used to maintain condence in the correct operation of the SoC

    Network-on-Chip

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    Addresses the Challenges Associated with System-on-Chip Integration Network-on-Chip: The Next Generation of System-on-Chip Integration examines the current issues restricting chip-on-chip communication efficiency, and explores Network-on-chip (NoC), a promising alternative that equips designers with the capability to produce a scalable, reusable, and high-performance communication backbone by allowing for the integration of a large number of cores on a single system-on-chip (SoC). This book provides a basic overview of topics associated with NoC-based design: communication infrastructure design, communication methodology, evaluation framework, and mapping of applications onto NoC. It details the design and evaluation of different proposed NoC structures, low-power techniques, signal integrity and reliability issues, application mapping, testing, and future trends. Utilizing examples of chips that have been implemented in industry and academia, this text presents the full architectural design of components verified through implementation in industrial CAD tools. It describes NoC research and developments, incorporates theoretical proofs strengthening the analysis procedures, and includes algorithms used in NoC design and synthesis. In addition, it considers other upcoming NoC issues, such as low-power NoC design, signal integrity issues, NoC testing, reconfiguration, synthesis, and 3-D NoC design. This text comprises 12 chapters and covers: The evolution of NoC from SoC—its research and developmental challenges NoC protocols, elaborating flow control, available network topologies, routing mechanisms, fault tolerance, quality-of-service support, and the design of network interfaces The router design strategies followed in NoCs The evaluation mechanism of NoC architectures The application mapping strategies followed in NoCs Low-power design techniques specifically followed in NoCs The signal integrity and reliability issues of NoC The details of NoC testing strategies reported so far The problem of synthesizing application-specific NoCs Reconfigurable NoC design issues Direction of future research and development in the field of NoC Network-on-Chip: The Next Generation of System-on-Chip Integration covers the basic topics, technology, and future trends relevant to NoC-based design, and can be used by engineers, students, and researchers and other industry professionals interested in computer architecture, embedded systems, and parallel/distributed systems

    Block-level test scheduling under power dissipation constraints

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    As dcvicc technologies such as VLSI and Multichip Module (MCM) become mature, and larger and denser memory ICs arc implemented for high-performancc digital systems, power dissipation becomes a critical factor and can no longer be ignored cither in normal operation of the system or under test conditions. One of the major considerations in test scheduling is the fact that heat dissipated during test application is significantly higher than during normal operation (sometimes 100 - 200% higher). Therefore, this is one of the recent major considerations in test scheduling. Test scheduling is strongly related to test concurrency. Test concurrency is a design property which strongly impacts testability and power dissipation. To satisfy high fault coverage goals with reduced test application time under certain power dissipation constraints, the testing of all components on the system should be performed m parallel to the greatest extent possible. Some theoretical analysis of this problem has been carried out, but only at IC level. The problem was basically described as a compatible test clustering, where the compatibility among tests was given by test resource and power dissipation conflicts at the same time. From an implementation point of view this problem was identified as an Non-Polynomial (NP) complete problem In this thesis, an efficient scheme for overlaying the block-tcsts, called the extended tree growing technique, is proposed together with classical scheduling algorithms to search for power-constrained blocktest scheduling (PTS) profiles m a polynomial time Classical algorithms like listbased scheduling and distribution-graph based scheduling arc employed to tackle at high level the PTS problem. This approach exploits test parallelism under power constraints. This is achieved by overlaying the block-tcst intervals of compatible subcircuits to test as many of them as possible concurrently so that the maximum accumulated power dissipation is balanced and does not exceed the given limit. The test scheduling discipline assumed here is the partitioned testing with run to completion. A constant additive model is employed for power dissipation analysis and estimation throughout the algorithm

    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
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