Search results for "External Data Representation"

showing 8 items of 8 documents

Enriching standards-based digital thread by fusing as-designed and as-inspected data using knowledge graphs

2020

Abstract Realizing the digital thread is essential for linking and orchestrating data across the product lifecycle in smart manufacturing. Linking heterogeneous lifecycle data is critical to maintain associativity and traceability in a digital thread. Recently, researchers have successfully leveraged ontology models with knowledge graphs in engineering domains for threading different lifecycle data. One of the most successful of such efforts is OntoSTEP which enables the formal capture of information embedded in the STandard for Exchange of Product model data (STEP) data representation, or ISO 10303. Meanwhile, an emerging inspection standard, called the Quality Information Framework (QIF),…

0209 industrial biotechnologyTraceabilityComputer sciencebusiness.industry0211 other engineering and technologies02 engineering and technologycomputer.file_formatThread (computing)External Data Representation020901 industrial engineering & automationProduct lifecycleArtificial IntelligenceInformation model021105 building & constructionThreading (manufacturing)Software engineeringbusinessISO 10303computerQuality assuranceInformation SystemsAdvanced Engineering Informatics
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Investigating the Impact of Radiation-Induced Soft Errors on the Reliability of Approximate Computing Systems

2020

International audience; Approximate Computing (AxC) is a well-known paradigm able to reduce the computational and power overheads of a multitude of applications, at the cost of a decreased accuracy. Convolutional Neural Networks (CNNs) have proven to be particularly suited for AxC because of their inherent resilience to errors. However, the implementation of AxC techniques may affect the intrinsic resilience of the application to errors induced by Single Events in a harsh environment. This work introduces an experimental study of the impact of neutron irradiation on approximate computing techniques applied on the data representation of a CNN.

Approximate computingComputer scienceReliability (computer networking)Radiation effectsRadiation induced02 engineering and technologyneuroverkotExternal Data Representation01 natural sciencesConvolutional neural networkSoftwareHardware020204 information systems0103 physical sciences0202 electrical engineering electronic engineering information engineering[SPI.NANO]Engineering Sciences [physics]/Micro and nanotechnologies/MicroelectronicsResilience (network)mikroprosessoritNeutronsResilience010308 nuclear & particles physicsbusiness.industryReliabilityApproximate computingPower (physics)[SPI.TRON]Engineering Sciences [physics]/ElectronicsComputer engineeringsäteilyfysiikka[INFO.INFO-ES]Computer Science [cs]/Embedded SystemsbusinessSoftware
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CoCoDat: a database system for organizing and selecting quantitative data on single neurons and neuronal microcircuitry.

2004

We present a novel database system for organizing and selecting quantitative experimental data on single neurons and neuronal microcircuitry that has proven useful for reference-keeping, experimental planning and computational modelling. Building on our previous experience with large neuroscientific databases, the system takes into account the diversity and method-dependence of single cell and microcircuitry data and provides tools for entering and retrieving published data without a priori interpretation or summarizing. Data representation is based on the framework suggested by biophysical theory and enables flexible combinations of data on membrane conductances, ionic and synaptic current…

Computer sciencecomputer.internet_protocolRelational databaseModels NeurologicalAction PotentialsInformation Storage and Retrievalcomputer.software_genreMachine learningExternal Data RepresentationData retrievalAnimalsComputer SimulationLayer (object-oriented design)NeuronsDatabasebusiness.industryGeneral NeuroscienceExperimental dataRatsData sharingScalabilityDatabase Management SystemsArtificial intelligenceNeural Networks ComputerNerve NetbusinesscomputerXMLJournal of neuroscience methods
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Event-based encoding from digital magnetic compass and ultrasonic distance sensor for navigation in mobile systems

2016

Event-based encoding reduces the amount of generated data while keeping relevant information in the measured magnitude. While this encoding is mostly associated with spiking neuromorphic systems, it can be used in a broad spectrum of tasks. The extension of event-based data representation to other sensors would provide advantages related to bandwidth reduction, lower computing requirements, increased processing speed and data processing. This work describes two event-based encoding procedures (magnitude-event and rate-event) for two sensors widely used in industry, especially for navigation in mobile systems: digital magnetic compass and ultrasonic distance sensor. Encoded data meet Address…

Data processingComputer sciencebusiness.industryEvent (computing)020208 electrical & electronic engineeringReal-time computing02 engineering and technologyExternal Data RepresentationData visualizationTransmission (telecommunications)CompassEncoding (memory)0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingbusinessData transmission2016 IEEE 14th International Conference on Industrial Informatics (INDIN)
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Geo‐referencing naturalistic driving data using a novel method based on vehicle speed

2013

Naturalistic driving is an experimentation model that allows us to recognise the driving modes observing the driver's behaviour at the wheel of a set of people in natural conditions during long periods of observation. This research methodology aims at increasing the representativeness of the data collected in opposition to data stemming from highly controlled laboratory experiments. However, naturalistic driving research designs produce large volumes of data that are difficult to handle. Thus, it is very important to work with suitable methods for representing and interpreting data, allowing us to observe the variability of the results. The aim of this study is to implement a new methodolog…

Data processingGeographic information systemProcess (engineering)Group method of data handlingbusiness.industryComputer scienceMechanical EngineeringInformation processingTransportationExternal Data Representationcomputer.software_genrePreprocessorData miningRepresentation (mathematics)businessLawcomputerGeneral Environmental ScienceIET Intelligent Transport Systems
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Simplified spiking neural network architecture and STDP learning algorithm applied to image classification

2015

Spiking neural networks (SNN) have gained popularity in embedded applications such as robotics and computer vision. The main advantages of SNN are the temporal plasticity, ease of use in neural interface circuits and reduced computation complexity. SNN have been successfully used for image classification. They provide a model for the mammalian visual cortex, image segmentation and pattern recognition. Different spiking neuron mathematical models exist, but their computational complexity makes them ill-suited for hardware implementation. In this paper, a novel, simplified and computationally efficient model of spike response model (SRM) neuron with spike-time dependent plasticity (STDP) lear…

Spiking neural networkQuantitative Biology::Neurons and CognitionComputational complexity theoryContextual image classificationComputer sciencebusiness.industryImage segmentationNetwork topologyExternal Data RepresentationSignal ProcessingArtificial neuronArtificial intelligenceElectrical and Electronic EngineeringbusinessInformation SystemsBrain–computer interfaceEURASIP Journal on Image and Video Processing
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Semantic Mappings in Description Logics for Spatio-temporal Database Schema Integration

2005

International audience; The interoperability problem arises in heterogeneous systems where different data sources coexist and there is a need for meaningful information sharing. One of the most representive realms of diversity of data representation is the spatio-temporal domain. Spatio-temporal data are most often described according to multiple and greatly diverse perceptions or viewpoints, using different terms and with heterogeneous levels of detail. Reconciling this heterogeneity to build a fully integrated database is known to be a complex and currently unresolved problem, and few formal approaches exist for the integration of spatio-temporal databases. The paper discusses the interope…

[INFO.INFO-LO] Computer Science [cs]/Logic in Computer Science [cs.LO][INFO.INFO-DB]Computer Science [cs]/Databases [cs.DB]Theoretical computer scienceComputer scienceNCCR-MICSmedia_common.quotation_subjectNCCR-MICS/CL4Database schema[INFO.INFO-LO]Computer Science [cs]/Logic in Computer Science [cs.LO]02 engineering and technologyExternal Data RepresentationConceptual schemaDescription logicSemantic mapping020204 information systems0202 electrical engineering electronic engineering information engineeringConceptual model[INFO.INFO-DB] Computer Science [cs]/Databases [cs.DB]020201 artificial intelligence & image processingSemantic Webmedia_commonInformation integration
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A principled approach to network-based classification and data representation

2013

Measures of similarity are fundamental in pattern recognition and data mining. Typically the Euclidean metric is used in this context, weighting all variables equally and therefore assuming equal relevance, which is very rare in real applications. In contrast, given an estimate of a conditional density function, the Fisher information calculated in primary data space implicitly measures the relevance of variables in a principled way by reference to auxiliary data such as class labels. This paper proposes a framework that uses a distance metric based on Fisher information to construct similarity networks that achieve a more informative and principled representation of data. The framework ena…

business.industryCognitive NeuroscienceFisher kernelPattern recognitionProbability density functionConditional probability distributionExternal Data Representationcomputer.software_genreComputer Science ApplicationsWeightingEuclidean distancesymbols.namesakeData pointArtificial IntelligencesymbolsArtificial intelligenceData miningFisher informationbusinesscomputerMathematicsNeurocomputing
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