Search results for "Artificial neural network"

showing 10 items of 694 documents

Improved Neural Networks with Random Weights for Short-Term Load Forecasting.

2015

An effective forecasting model for short-term load plays a significant role in promoting the management efficiency of an electric power system. This paper proposes a new forecasting model based on the improved neural networks with random weights (INNRW). The key is to introduce a weighting technique to the inputs of the model and use a novel neural network to forecast the daily maximum load. Eight factors are selected as the inputs. A mutual information weighting algorithm is then used to allocate different weights to the inputs. The neural networks with random weights and kernels (KNNRW) is applied to approximate the nonlinear function between the selected inputs and the daily maximum load…

PhysicsMathematical optimizationMultidisciplinaryArtificial neural networkGeneralizationlcsh:Rlcsh:MedicineA-weightingMutual informationWeightingSupport vector machineElectric power systemKernel methodElectric Power SuppliesNonlinear Dynamicslcsh:QNeural Networks Computerlcsh:ScienceAlgorithmsResearch ArticlePLoS ONE
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The CALMA system: an artificial neural network method for detecting masses and microcalcifications in digitized mammograms

2004

The CALMA (Computer Assisted Library for MAmmography) project is a five years plan developed in a physics research frame in collaboration between INFN (Istituto Nazionale di Fisica Nucleare) and many Italian hospitals. At present a large database of digitized mammographic images (more than 6000) was collected and a software based on neural network algorithms for the search of suspicious breast lesions was developed. Two tools are available: a microcalcification clusters hunter, based on supervised and unsupervised feedforward neural network, and a massive lesions searcher, based on a hibrid approach. Both the algorithms analyzed preprocessed digitized images by high frequency filters. Clini…

PhysicsNuclear and High Energy PhysicsArtificial neural networkmedicine.diagnostic_testbusiness.industryFrame (networking)FOS: Physical sciencesPattern recognitioncomputer.software_genreGridPhysics - Medical PhysicsSoftwareHybrid systemmedicineComputer Aided DesignFeedforward neural networkMammographyMedical Physics (physics.med-ph)Artificial intelligencebusinessInstrumentationcomputerNuclear Instruments and Methods in Physics Research Section A: Accelerators, Spectrometers, Detectors and Associated Equipment
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Neutron detection and γ-ray suppression using artificial neural networks with the liquid scintillators BC-501A and BC-537

2019

Abstract In this work we present a comparison between the two liquid scintillators BC-501A and BC-537 in terms of their performance regarding the pulse-shape discrimination between neutrons and γ rays. Special emphasis is put on the application of artificial neural networks . The results show a systematically higher γ -ray rejection ratio for BC-501A compared to BC-537 applying the commonly used charge comparison method. Using the artificial neural network approach the discrimination quality was improved to more than 95% rejection efficiency of γ rays over the energy range 150 to 1000 keV for both BC-501A and BC-537. However, due to the larger light output of BC-501A compared to BC-537, neu…

PhysicsNuclear and High Energy PhysicsRange (particle radiation)Artificial neural network010308 nuclear & particles physicsAstrophysics::High Energy Astrophysical PhenomenaScintillator01 natural sciencesComputational physicsRecoilDeuterium0103 physical sciencesNeutron detectionNeutron010306 general physicsSpectroscopyInstrumentationNuclear Instruments and Methods in Physics Research Section A: Accelerators, Spectrometers, Detectors and Associated Equipment
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A discrimination technique for extensive air showers based on multiscale, lacunarity and neural network analysis

2011

We present a new method for the identification of extensive air showers initiated by different primaries. The method uses the multiscale concept and is based on the analysis of multifractal behaviour and lacunarity of secondary particle distributions together with a properly designed and trained artificial neural network. In the present work the method is discussed and applied to a set of fully simulated vertical showers, in the experimental framework of ARGO-YBJ, to obtain hadron to gamma primary separation. We show that the presented approach gives very good results, leading, in the 1–10 TeV energy range, to a clear improvement of the discrimination power with respect to the existing figu…

PhysicsWavelet MethodNuclear and High Energy PhysicsNeural NetworksArtificial neural networkAstrophysics::High Energy Astrophysical PhenomenaCosmic Rays; Extensive Air Showers; Multiscale Analysis; Wavelet Methods; Neural NetworksMultiscale AnalysiDetectorSettore FIS/01 - Fisica SperimentaleExtensive Air ShowerCosmic rayMultifractal systemCosmic RayAtomic and Molecular Physics and OpticsSet (abstract data type)LacunarityRange (statistics)High Energy Physics::ExperimentAlgorithmEnergy (signal processing)Simulation
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A neural network clustering algorithm for the ATLAS silicon pixel detector

2014

A novel technique to identify and split clusters created by multiple charged particles in the ATLAS pixel detector using a set of artificial neural networks is presented. Such merged clusters are a common feature of tracks originating from highly energetic objects, such as jets. Neural networks are trained using Monte Carlo samples produced with a detailed detector simulation. This technique replaces the former clustering approach based on a connected component analysis and charge interpolation. The performance of the neural network splitting technique is quantified using data from proton-proton collisions at the LHC collected by the ATLAS detector in 2011 and from Monte Carlo simulations. …

Physics::Instrumentation and DetectorsCiencias FísicasMonte Carlo methodHigh Energy Physics - Experiment//purl.org/becyt/ford/1 [https]High Energy Physics - Experiment (hep-ex)jetParticle tracking detectors[PHYS.HEXP]Physics [physics]/High Energy Physics - Experiment [hep-ex]scattering [p p]Statistical physicscluster [track data analysis]Particle tracking detectors (solid-state detectors)InstrumentationQCMathematical PhysicsPhysicsArtificial neural networkAtlas (topology)Detectordetectors)Monte Carlo [numerical calculations]ATLASperformance [neural network]CERN LHC CollParticle tracking detectors (Solid-state detectors)Feature (computer vision)Physical SciencesParticle tracking detectors (Solid-stateParticle tracking detectors; Particle tracking detectors (Solid-state detectors)ComputingMethodologies_DOCUMENTANDTEXTPROCESSINGLHCConnected-component labelingAlgorithmNeural networksCIENCIAS NATURALES Y EXACTASParticle Physics - ExperimentInterpolationCiências Naturais::Ciências Físicas530 Physicssplitting:Ciências Físicas [Ciências Naturais]FOS: Physical sciencesParticle tracking detectors; Particle tracking detectors (solid-state detectors); Instrumentation; Mathematical Physics530FysikHigh Energy Physicsddc:610Cluster analysispixel [semiconductor detector]Science & TechnologyFísica//purl.org/becyt/ford/1.3 [https]High Energy Physics - Experiment; High Energy Physics - ExperimentParticle tracking detectorcluster [charged particle]AstronomíaParticle tracking detectors; Particle tracking detectors (Solid-state; detectors)Experimental High Energy Physicsimpact parameter [resolution]
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Machine Learning Identification of Pro-arrhythmic Structures in Cardiac Fibrosis

2021

Cardiac fibrosis and other scarring of the heart, arising from conditions ranging from myocardial infarction to ageing, promotes dangerous arrhythmias by blocking the healthy propagation of cardiac excitation. Owing to the complexity of the dynamics of electrical signalling in the heart, however, the connection between different arrangements of blockage and various arrhythmic consequences remains poorly understood. Where a mechanism defies traditional understanding, machine learning can be invaluable for enabling accurate prediction of quantities of interest (measures of arrhythmic risk) in terms of predictor variables (such as the arrangement or pattern of obstructive scarring). In this st…

PhysiologyCardiac fibrosisStimulus (physiology)arrhythmiaMachine learningcomputer.software_genreunidirectional blockFibrosisPhysiology (medical)QP1-981MedicineMyocardial infarctionOriginal ResearchArtificial neural networkbusiness.industryCardiac electrophysiologyMechanism (biology)fibrosisneural networksmedicine.diseaseIdentification (information)machine learningmonodomain modelre-entryArtificial intelligencebusinesscardiac electrophysiologycomputerFrontiers in Physiology
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Precomputed Real-Time Texture Synthesis with Markovian Generative Adversarial Networks

2016

This paper proposes Markovian Generative Adversarial Networks (MGANs), a method for training generative networks for efficient texture synthesis. While deep neural network approaches have recently demonstrated remarkable results in terms of synthesis quality, they still come at considerable computational costs (minutes of run-time for low-res images). Our paper addresses this efficiency issue. Instead of a numerical deconvolution in previous work, we precompute a feed-forward, strided convolutional network that captures the feature statistics of Markovian patches and is able to directly generate outputs of arbitrary dimensions. Such network can directly decode brown noise to realistic textu…

PixelArtificial neural networkComputer sciencebusiness.industryComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONMarkov process020207 software engineeringPattern recognition02 engineering and technologyTexture (music)symbols.namesakeMargin (machine learning)0202 electrical engineering electronic engineering information engineeringFeature (machine learning)symbols020201 artificial intelligence & image processingDeconvolutionArtificial intelligencebusinessTexture synthesis
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Applying Artificial Intelligence Methods to Detect and Classify Fish Calls from the Northern Gulf of Mexico

2021

Passive acoustic monitoring is a method that is commonly used to collect long-term data on soniferous animal presence and abundance. However, these large datasets require substantial effort for manual analysis

Point of interestComputer scienceneural networkNaval architecture. Shipbuilding. Marine engineeringVM1-989Ocean EngineeringGC1-1581OceanographyClassifier (linguistics)VDP::Matematikk og Naturvitenskap: 400::Basale biofag: 470VDP::Landbruks- og Fiskerifag: 900::Fiskerifag: 920Water Science and TechnologyCivil and Structural EngineeringGulf of MexicoRecallArtificial neural networkbusiness.industryDetectorfish call detectionfish soundsPattern recognitionenergy detectorartificial intelligenceVariable (computer science)classificationNoise (video)Artificial intelligencebusinessEnergy (signal processing)Journal of Marine Science and Engineering
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Hourly Forecasting of SO2 Pollutant Concentration Using an Elman Neural Network

2006

In this paper the first results produced by an Elman neural network for hourly SO2 ground concentration forecasting are presented. Time series has been recorded between 1998 and 2001 and are referred to a monitoring station of SO2 in the industrial site of Priolo, Syracuse, Italy. Data has been kindly provided by CIPA (Consorzio Industriale per la Protezione dell'Ambiente, Siracusa, Italia). Time series parameters are the horizontal and vertical wind velocity, the wind direction, the stability classes of Thomas, the base level of the layer of the atmospheric stability, the gradient of the potential temperature and the difference of the potential temperature of reference.

PollutantMeteorologyArtificial neural networkRecurrent neural networksModelsIndustrial siteAtmospheric instabilityPotential temperatureEnvironmental scienceWind directionStability (probability)Wind speedNeural networks
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Traffic Parameters Estimation to Predict Road Side Pollutant Concentrations using Neural Networks

2007

The analysis aims to evaluate which is the most important among traffic parameters (flows, queues length, occupancy degree, and travel time) to forecast CO and C6H6 concentrations. The study area was identified by Notarbartolo Road and bounded by Liberta Street and Sciuti Street in the urban area of Palermo in Southern Italy. In this area, various loop detectors and one pollution-monitoring site were located. Traffic data related to the pollution-monitoring site immediately near the road link were estimated by Simulation of Urban MObility (SUMO) traffic microsimulator software using as input the flows measured by loop detectors on other links of road network. Traffic and weather data were u…

Pollutantgeographygeography.geographical_feature_categoryOccupancyArtificial neural networkMeteorologyPOLLUTANT CONCENTRATIONS NEURAL NETWORKSUrban areaTravel timeTransport engineeringWeather dataEnvironmental scienceSensitivity (control systems)QueueGeneral Environmental ScienceEnvironmental Modeling & Assessment
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