Search results for "EED"

showing 10 items of 5952 documents

Modelling and analysis of real-world wind turbine power curves: Assessing deviations from nominal curve by neural networks

2019

Abstract The power curve of a wind turbine describes the generated power versus instantaneous wind speed. Assessing wind turbine performance under laboratory ideal conditions will always tend to be optimistic and rarely reflects how the turbine actually behaves in a real situation. Occasionally, some aerogenerators produce significantly different from nominal power curve, causing economic losses to the promoters of the investment. Our research aims to model actual wind turbine power curve and its variation from nominal power curve. The study was carried out in three different phases starting from wind speed and related power production data of a Senvion MM92 aero-generator with a rated powe…

Artificial neural networkComputer science020209 energy02 engineering and technologySettore ING-IND/32 - Convertitori Macchine E Azionamenti ElettriciAero-generatorFault (power engineering)Power lawTurbineWind speedControl theory0202 electrical engineering electronic engineering information engineering0601 history and archaeologyWind energySettore ING-IND/11 - Fisica Tecnica AmbientaleWind power060102 archaeologyRenewable Energy Sustainability and the Environmentbusiness.industrypower curve06 humanities and the artsPower (physics)Power ratingAnemometric campaignProducibility estimatebusinessNominal power (photovoltaic)Renewable Energy
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Efficient pruning of multilayer perceptrons using a fuzzy sigmoid activation function

2006

This Letter presents a simple and powerful pruning method for multilayer feed forward neural networks based on the fuzzy sigmoid activation function presented in [E. Soria, J. Martin, G. Camps, A. Serrano, J. Calpe, L. Gomez, A low-complexity fuzzy activation function for artificial neural networks, IEEE Trans. Neural Networks 14(6) (2003) 1576-1579]. Successful performance is obtained in standard function approximation and channel equalization problems. Pruning allows to reduce network complexity considerably, achieving a similar performance to that obtained by unpruned networks.

Artificial neural networkComputer sciencebusiness.industryTime delay neural networkCognitive NeuroscienceActivation functionRectifier (neural networks)PerceptronFuzzy logicComputer Science ApplicationsArtificial IntelligenceMultilayer perceptronFeedforward neural networkPruning (decision trees)Artificial intelligenceTypes of artificial neural networksbusinessNeurocomputing
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A COMPARATIVE STUDY OF PHENOMENOLOGICAL MODELS OF MR BRAKE BASED ON NEURAL NETWORKS APPROACH

2013

In this paper a full-scale commercially available magnetorheological (MR) brake installed in a semi-active suspension (SAS) system is modeled and simulated. Two well-known phenomenological hysteresis models are explored: Bouc–Wen and Dahl ones. In particular, influence of their parameters on the response is evaluated and assessed. The next step is to introduce the artificial neural networks and discuss their application in the field of systems identification. Subsequently, two feedforward neural networks are created and trained to estimate parameters characterizing each of the MR damper models described. The semi-active suspension (SAS) system equipped with a MR brake is described and the …

Artificial neural networkMathematical modelComputer scienceControl theoryApplied MathematicsSignal ProcessingBrakeReference data (financial markets)Magnetorheological fluidExperimental dataFeedforward neural networkInformation SystemsDamperInternational Journal of Wavelets, Multiresolution and Information Processing
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Optimal Pruned K-Nearest Neighbors: OP-KNN Application to Financial Modeling

2008

The paper proposes a methodology called OP-KNN, which builds a one hidden-layer feed forward neural network, using nearest neighbors neurons with extremely small computational time. The main strategy is to select the most relevant variables beforehand, then to build the model using KNN kernels. Multi-response sparse regression (MRSR) is used as the second step in order to rank each k-th nearest neighbor and finally as a third step leave-one-out estimation is used to select the number of neighbors and to estimate the generalization performances. This new methodology is tested on a toy example and is applied to financial modeling.

Artificial neural networkRank (linear algebra)GeneralizationComputer scienceKernel (statistics)Financial modelingFeedforward neural networkRegression analysisData miningcomputer.software_genrecomputerk-nearest neighbors algorithm2008 Eighth International Conference on Hybrid Intelligent Systems
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Distinguishing Onion Leaves from Weed Leaves Based on Segmentation of Color Images and a BP Neural Network

2006

A new algorithm to distinguish onion leaves from weed leaves in images is suggested. This algorithm is based on segmentation of color images and on BP neural network. It includes: discarding soil for conserving only plants in the image, color image segmentation, merging small regions by analyzing the frontier rates and the averages of color indices of the regions, at last a BP neural network is used to determine if the small regions belongs to onion leaf or not. The algorithm has been applied to many images and the correct identifiable percents for onion leaves are between 80%~ 90%.

Artificial neural networkbusiness.industryColor imageComputer scienceComputer visionImage processingSegmentationArtificial intelligenceImage segmentationbusinessWeed
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A Multi-layer Feed Forward Neural Network Approach for Diagnosing Diabetes

2018

Diabetes is one of the worlds major health problems according to the World Health Organization. Recent surveys indicate that there is an increase in the number of diabetic patients resulting in an increase in serious complications such as heart attacks and deaths. Early diagnosis of diabetes, particularly of type 2 diabetes, is critical since it is vital for patients to get insulin treatments. However, diagnoses could be difficult especially in areas with few medical doctors. It is, therefore, a need for practical methods for the public for early detection and prevention with minimal intervention from medical professionals. A promising method for automated diagnosis is the use of artificial…

Artificial neural networkbusiness.industryComputer science02 engineering and technologyType 2 diabetes030204 cardiovascular system & hematologymedicine.diseaseMachine learningcomputer.software_genreMissing dataData set03 medical and health sciences0302 clinical medicineIntervention (counseling)Diabetes mellitus0202 electrical engineering electronic engineering information engineeringmedicineFeedforward neural network020201 artificial intelligence & image processingArtificial intelligenceMedical diagnosisbusinesscomputer2018 11th International Conference on Developments in eSystems Engineering (DeSE)
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Efficient MLP Digital Implementation on FPGA

2005

The efficiency and the accuracy of a digital feed-forward neural networks must be optimized to obtain both high classification rate and minimum area on chip. In this paper an efficient MLP digital implementation. The key features of the hardware implementation are the virtual neuron based architecture and the use of the sinusoidal activation function for the hidden layer. The effectiveness of the proposed solutions has been evaluated developing different FPGA based neural prototypes for the High Energy Physics domain and the automatic Road Sign Recognition domain. The use of the sinusoidal activation function decreases hardware resource employment of about 32% when compared with the standar…

Artificial neural networkbusiness.industryComputer scienceActivation functionField programmable gate arrays (FPGA)Sigmoid functionartificial neuralMachine learningcomputer.software_genreTransfer functionDomain (software engineering)Feedforward neural networkSystem on a chipArtificial intelligencebusinessField-programmable gate arraycomputerComputer hardwareNeural networks
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A Feed-Forward Neural Network for Robust Segmentation of Color Images

1999

A novel approach for segmentation of color images is proposed. The approach is based on a feed-forward neural network that learns to recognize the hue range of meaningful objects. Experimental results showed that the proposed method is effective and robust even in presence of changing environmental conditions. The described technique has been tested in the framework of the Robot Soccer World Cup Initiative (RoboCup). The approach is fully general and it may be successfully employed in any intermediate level image-processing task, where the color is a meaningful descriptor.

Artificial neural networkbusiness.industryComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONMobile robotTask (project management)Range (mathematics)GeographyFeedforward neural networkRobotComputer visionSegmentationArtificial intelligencebusinessHue
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Short term wind speed prediction using Multi Layer Perceptron

2012

Among renewable energy sources wind energy is having an increasing influence on the supply of energy power. However wind energy is not a stationary power, depending on the fluctuations of the wind, so that is necessary to cope with these fluctuations that may cause problems the electricity grid stability. The ability to predict short-term wind speed and consequent production patterns becomes critical for the all the operators of wind energy. This paper studies several configurations of Artificial Neural Networks (ANN), a well-known tool able to estimate wind speed starting from measured data. The presented ANNs, t have been tested through data gathered in the area of Trapani (Sicily). Diffe…

Artificial neural networks Multi layer perceptron Feed forward network Forecasting Renewable energy Wind energy Wind speedSettore ING-IND/11 - Fisica Tecnica Ambientale
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Mu-tau neutrino refraction and collective three-flavor transformations in supernovae

2008

9 pages, 6 figures.-- PACS nrs.: 14.60.Pq; 97.60.Bw.-- ArXiv pre-print available at: http://arxiv.org/abs/0712.1137

AstrofísicaHistoryNuclear and High Energy PhysicsParticle physicsPhysics::Instrumentation and Detectors[SDU.ASTR.CO]Sciences of the Universe [physics]/Astrophysics [astro-ph]/Cosmology and Extra-Galactic Astrophysics [astro-ph.CO]FlavourFOS: Physical sciencesAstrophysicsAstrophysics01 natural sciencesPartícules (Física nuclear)Education[PHYS.ASTR.CO]Physics [physics]/Astrophysics [astro-ph]/Cosmology and Extra-Galactic Astrophysics [astro-ph.CO]High Energy Physics - Phenomenology (hep-ph)Tau neutrino0103 physical sciencesRefraction (sound)010306 general physicsNeutrino oscillationPhysicsMuon010308 nuclear & particles physicsAstrophysics (astro-ph)High Energy Physics::PhenomenologySolar neutrino problemComputer Science ApplicationsSupernovaHigh Energy Physics - Phenomenology[PHYS.HPHE]Physics [physics]/High Energy Physics - Phenomenology [hep-ph]Measurements of neutrino speedHigh Energy Physics::ExperimentNeutrinoElectron neutrino
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