Search results for "Artificial neural network"

showing 10 items of 694 documents

Dynamic Pattern Recognition in Sport by Means of Artificial Neural Networks

2008

Behavioural processes like those in sports, motor activities or rehabilitation are often the object of optimization methods. Such processes are often characterized by a complex structure. Measurements considering them may produce a huge amount of data. It is an interesting challenge not only to store these data, but also to transform them into useful information. Artificial Neural Networks turn out to be an appropriate tool to transform abstract numbers into informative patterns that help to understand complex behavioural phenomena. The contribution presents some basic ideas of neural network approaches and several examples of application. The aim is to give an impression of how neural meth…

Physical neural networkArtificial Intelligence Systembusiness.industryTime delay neural networkComputer scienceDeep learningNeocognitronMachine learningcomputer.software_genreCellular neural networkArtificial intelligenceTypes of artificial neural networksbusinesscomputerNervous system network models
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Artificial neural networks in motor control research

2004

Physical neural networkArtificial neural networkbusiness.industryComputer scienceBiophysicsMotor controlOrthopedics and Sports MedicineArtificial intelligencebusinessClinical Biomechanics
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Neural Networks in ECG Classification

2011

In this chapter, we review the vast field of application of artificial neural networks in cardiac pathology discrimination based on electrocardiographic signals. We discuss advantages and drawbacks of neural and adaptive systems in cardiovascular medicine and catch a glimpse of forthcoming developments in machine learning models for the real clinical environment. Some problems are identified in the learning tasks of beat detection, feature selection/extraction, and classification, and some proposals and suggestions are given to alleviate the problems of interpretability, overfitting, and adaptation. These have become important problems in recent years and will surely constitute the basis of…

Physical neural networkComputingMethodologies_PATTERNRECOGNITIONArtificial neural networkbusiness.industryComputer scienceTime delay neural networkAdaptive systemArtificial intelligenceTypes of artificial neural networksbusiness
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Design environment for hardware generation of SLFF neural network topologies with ELM training capability

2015

Extreme Learning Machine (ELM) is a noniterative training method suited for Single Layer Feed Forward Neural Networks (SLFF-NN). Typically, a hardware neural network is trained before implementation in order to avoid additional on-chip occupation, delay and performance degradation. However, ELM provides fixed-time learning capability and simplifies the process of re-training a neural network once implemented in hardware. This is an important issue in many applications where input data are continuously changing and a new training process must be launched very often, providing self-adaptation. This work describes a general SLFF-NN design environment to assist in the definition of neural netwo…

Physical neural networkHardware architectureArtificial neural networkTime delay neural networkbusiness.industryComputer scienceDesign flowSoftware designbusinessNetwork topologyComputer hardwareExtreme learning machine2015 IEEE 13th International Conference on Industrial Informatics (INDIN)
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Ab initioquality neural-network potential for sodium

2010

An interatomic potential for high-pressure high-temperature (HPHT) crystalline and liquid phases of sodium is created using a neural-network (NN) representation of the ab initio potential energy surface. It is demonstrated that the NN potential provides an ab initio quality description of multiple properties of liquid sodium and bcc, fcc, cI16 crystal phases in the P-T region up to 120 GPa and 1200 K. The unique combination of computational efficiency of the NN potential and its ability to reproduce quantitatively experimental properties of sodium in the wide P-T range enables molecular dynamics simulations of physicochemical processes in HPHT sodium of unprecedented quality.

Physicochemical ProcessesCondensed Matter - Materials ScienceMaterials scienceStatistical Mechanics (cond-mat.stat-mech)Artificial neural networkSodiumAb initioMaterials Science (cond-mat.mtrl-sci)FOS: Physical sciencesThermodynamicschemistry.chemical_elementInteratomic potentialCondensed Matter PhysicsElectronic Optical and Magnetic MaterialsCrystalQuality (physics)chemistryCondensed Matter - Statistical MechanicsPhysical Review B
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Recent advances in intelligent-based structural health monitoring of civil structures

2018

This survey paper deals with the structural health monitoring systems on the basis of methodologies involving intelligent techniques. The intelligent techniques are the most popular tools for damage identification in terms of high accuracy, reliable nature and the involvement of low cost. In this critical survey, a thorough analysis of various intelligent techniques is carried out considering the cases involved in civil structures. The importance and utilization of various intelligent tools to be mention as the concept of fuzzy logic, the technique of genetic algorithm, the methodology of neural network techniques, as well as the approaches of hybrid methods for the monitoring of the struct…

Physics and Astronomy (miscellaneous)Computer science020101 civil engineering02 engineering and technologyMachine learningcomputer.software_genreFuzzy logiclcsh:Technology0201 civil engineering0203 mechanical engineeringManagement of Technology and InnovationGenetic algorithmlcsh:ScienceEngineering (miscellaneous)Basis (linear algebra)Artificial neural networkbusiness.industrylcsh:TIdentification (information)020303 mechanical engineering & transportsCritical surveylcsh:QArtificial intelligenceStructural health monitoringbusinesscomputer
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Total-variation methods for gravitational-wave denoising: Performance tests on Advanced LIGO data

2018

We assess total-variation methods to denoise gravitational-wave signals in real noise conditions, by injecting numerical-relativity waveforms from core-collapse supernovae and binary black hole mergers in data from the first observing run of Advanced LIGO. This work is an extension of our previous investigation where only Gaussian noise was used. Since the quality of the results depends on the regularization parameter of the model, we perform an heuristic search for the value that produces the best results. We discuss various approaches for the selection of this parameter, either based on the optimal, mean, or multiple values, and compare the results of the denoising upon these choices. Mor…

PhysicsArtificial neural network010308 nuclear & particles physicsGravitational waveNoise reductionFOS: Physical sciencesGeneral Relativity and Quantum Cosmology (gr-qc)01 natural sciencesGeneral Relativity and Quantum CosmologyLIGOsymbols.namesakeAstrophysics - Solar and Stellar AstrophysicsBinary black holeGaussian noiseLagrange multiplier0103 physical sciencessymbolsWaveformAstrophysics - Instrumentation and Methods for Astrophysics010306 general physicsInstrumentation and Methods for Astrophysics (astro-ph.IM)AlgorithmSolar and Stellar Astrophysics (astro-ph.SR)Physical Review D
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Experimental and numerical study of noise effects in a FitzHugh–Nagumo system driven by a biharmonic signal

2013

Abstract Using a nonlinear circuit ruled by the FitzHugh–Nagumo equations, we experimentally investigate the combined effect of noise and a biharmonic driving of respective high and low frequency F and f. Without noise, we show that the response of the circuit to the low frequency can be maximized for a critical amplitude B∗ of the high frequency via the effect of Vibrational Resonance (V.R.). We report that under certain conditions on the biharmonic stimulus, white noise can induce V.R. The effects of colored noise on V.R. are also discussed by considering an Ornstein–Uhlenbeck process. All experimental results are confirmed by numerical analysis of the system response.

PhysicsArtificial neural networkGeneral MathematicsApplied MathematicsNumerical analysisAcousticsMathematical analysisGeneral Physics and AstronomyStatistical and Nonlinear PhysicsWhite noiseLow frequencyNonlinear systemAmplitudeColors of noiseBiharmonic equationChaos, Solitons & Fractals
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Deep learning for core-collapse supernova detection

2021

The detection of gravitational waves from core-collapse supernova (CCSN) explosions is a challenging task, yet to be achieved, in which it is key the connection between multiple messengers, including neutrinos and electromagnetic signals. In this work, we present a method for detecting these kind of signals based on machine learning techniques. We tested its robustness by injecting signals in the real noise data taken by the Advanced LIGO-Virgo network during the second observing run, O2. We trained a newly developed Mini-Inception Resnet neural network using time-frequency images corresponding to injections of simulated phenomenological signals, which mimic the waveforms obtained in 3D num…

PhysicsArtificial neural networkPhysics and Astronomy (miscellaneous)Gravitational wavebusiness.industryDeep learningType II supernovaConstant false alarm rateSupernovaRobustness (computer science)WaveformGravitational waves; machine learning; supernovaArtificial intelligenceNeutrinobusinessAlgorithmPhysical Review D
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BoltzmaNN: Predicting effective pair potentials and equations of state using neural networks

2019

Neural networks (NNs) are employed to predict equations of state from a given isotropic pair potential using the virial expansion of the pressure. The NNs are trained with data from molecular dynamics simulations of monoatomic gases and liquids, sampled in the NVT ensemble at various densities. We find that the NNs provide much more accurate results compared to the analytic low-density limit estimate of the second virial coefficient and the Carnahan-Starling equation of state for hard sphere liquids. Furthermore, we design and train NNs for computing (effective) pair potentials from radial pair distribution functions, g(r), a task that is often performed for inverse design and coarse-graini…

PhysicsEquation of state010304 chemical physicsArtificial neural networkComputer Science::Neural and Evolutionary ComputationFOS: Physical sciencesGeneral Physics and AstronomyInverseDisordered Systems and Neural Networks (cond-mat.dis-nn)Condensed Matter - Soft Condensed MatterCondensed Matter - Disordered Systems and Neural Networks010402 general chemistry01 natural sciences0104 chemical sciencesMolecular dynamicsDistribution functionVirial coefficient0103 physical sciencesVirial expansionSoft Condensed Matter (cond-mat.soft)Statistical physicsPhysical and Theoretical ChemistryPair potentialThe Journal of Chemical Physics
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