Search results for "Perceptron"

showing 10 items of 89 documents

Structural Health Monitoring Procedure for Composite Structures through the use of Artificial Neural Networks

2015

In this paper different architectures of Artificial Neural Networks (ANNs) for structural damage detection are studied. The main objective is to investigate an ANN able to detect and localize damage without any prior knowledge on its characteristics so as to serve as a real-time data processor for Structural Health Monitoring (SHM) systems. Two different architectures are studied: the standard feed-forward Multi Layer Perceptron (MLP) and the Radial Basis Function (RBF) ANNs. The training data are given, in terms of a Damage Index ℑD, properly defined using a piezoelectric sensor signal output to obtain suitable information on the damage position and dimensions. The electromechanical respon…

EngineeringArtificial neural networkBasis (linear algebra)Piezoelectric sensorbusiness.industryComputer Science::Neural and Evolutionary ComputationPattern recognitionStructural engineeringData processing systemMultilayer perceptronPharmacology (medical)Radial basis functionArtificial intelligenceStructural health monitoringbusinessBoundary element methodAerotecnica Missili & Spazio
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Electronic noses: a review of signal processing techniques

1999

The field of electronic noses, electronic instruments capable of mimicking the human olfactory system, has developed rapidly in the past ten years. There are now at least 25 research groups working in this area and more than ten companies have developed commercial instruments, which are mainly employed in the food and cosmetics industries. Most of the work published to date, and commercial applications, relate to the use of well established static pattern analysis techniques, such as principal components analysis, discriminant function analysis, cluster analysis and multilayer perceptron based neural networks. The authors first review static techniques that have been applied to the steady-s…

EngineeringSignal processingArtificial neural networkElectronic nosebusiness.industrySystem identificationcomputer.software_genreField (computer science)Sensor arrayMultilayer perceptronArtificial intelligenceData miningElectrical and Electronic EngineeringbusinesscomputerLinear filterIEE Proceedings - Circuits, Devices and Systems
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Neural Modeling of Greenhouse Gas Emission from Agricultural Sector in European Union Member Countries

2018

The present paper discusses a novel methodology based on neural network to determine agriculture emission model simulations. Methane and nitrous oxide are the key pollutions among greenhouse gases being a major contribution to climate changes because of their high potential global impact. Using statistical clustering (k-means and Ward’s method), five meaningful clusters of countries with similar level of greenhouse gases emission were identified. Neural modeling using multi-layer perceptron networks was performed for countries placed in particular groups. The parameters that characterize the quality of a network are the predictive errors (mainly validation and test) and they are high (0.97–…

Environmental EngineeringArtificial neural networkbusiness.industry020209 energyEcological ModelingClimate changeGreenhouse gases . Agriculture emission . Neural modeling . Multi-layer perceptron . Clustering method . UE02 engineering and technologyAgricultural engineeringPerceptronPollutionVariable (computer science)AgricultureGreenhouse gas0202 electrical engineering electronic engineering information engineeringEnvironmental Chemistrymedia_common.cataloged_instanceEnvironmental scienceEuropean unionbusinessCluster analysisWater Science and Technologymedia_commonWater, Air, & Soil Pollution
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The Application of Different Model of Multi-Layer Perceptrons in the Estimation of Wind Speed

2012

Wind speed forecasting is essential for effective planning of wind energy exploitation projects. The ability to predict short-term wind speed is a prerequisite for all the operators of the wind energy sector. Consequently it is essential to identify an efficient method for forecasts. In this paper, the wind speed in the province of Trapani (Sicily) is modeled by artificial neural network. Several model of neural network were generated and compared through error measures. Simulation results show that the estimated values of wind speed are in good agreement with the values measured by anemometers..

EstimationArtificial neural networks multi-layer perceptrons wind speed predictionEngineeringWind powerArtificial neural networkMeteorologybusiness.industryAstrophysics::High Energy Astrophysical PhenomenaGeneral EngineeringPerceptronWind speedAnemometerPhysics::Space PhysicsAstrophysics::Solar and Stellar AstrophysicsbusinessMulti layerPhysics::Atmospheric and Oceanic PhysicsAdvanced Materials Research
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Neural network models for prediction of trichothecene content in wheat

2008

Fusarium graminearum is a mould that causes serious diseases in cereals worldwide and that synthesises mycotoxins such as deoxynivalenol (DON), which can seriously affect human and animal health. Predicting the level of mycotoxin accumulation in food is very difficult, because of the complexity of the influencing parameters. In this work, we have studied the possibility of using artificial neural networks (NN) to predict DON level attained in F. graminearum wheat cultures taking as inputs the fungal contamination level of the cereal, the water activity as a measure of the available water for fungal growth in the cereal, the temperature and time. DON analysis was performed by gas chromatogr…

Fungal growthAnimal healthArtificial neural networkFungal contaminationTrichothecenePublic Health Environmental and Occupational Healthfood and beveragesToxicologyPerceptronCereal grainchemistry.chemical_compoundchemistryAgronomyBiological systemMycotoxinFood ScienceMathematicsWorld Mycotoxin Journal
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An efficient data model for energy prediction using wireless sensors

2019

International audience; Energy prediction is in high importance for smart homes and smart cities, since it helps reduce power consumption and provides better energy and cost savings. Many algorithms have been used for predicting energy consumption using data collected from Internet of Things (IoT) devices and wireless sensors. In this paper, we propose a system based on Multilayer Perceptron (MLP) to predict energy consumption of a building using collected information (e.g., light energy, day of the week, humidity, temperature, etc.) from a Wireless Sensor Network (WSN). We compare our system against four other classification algorithms, namely: Linear Regression (LR), Support Vector Machin…

General Computer ScienceMean squared errorComputer scienceReal-time computing02 engineering and technology[INFO.INFO-SE]Computer Science [cs]/Software Engineering [cs.SE]7. Clean energy[INFO.INFO-IU]Computer Science [cs]/Ubiquitous Computing[INFO.INFO-CR]Computer Science [cs]/Cryptography and Security [cs.CR]0202 electrical engineering electronic engineering information engineeringElectrical and Electronic Engineering020206 networking & telecommunicationsEnergy consumption[INFO.INFO-MO]Computer Science [cs]/Modeling and SimulationRandom forestSupport vector machineMean absolute percentage error13. Climate actionControl and Systems Engineering[INFO.INFO-MA]Computer Science [cs]/Multiagent Systems [cs.MA]Multilayer perceptron020201 artificial intelligence & image processing[INFO.INFO-ET]Computer Science [cs]/Emerging Technologies [cs.ET]Gradient boosting[INFO.INFO-DC]Computer Science [cs]/Distributed Parallel and Cluster Computing [cs.DC]Wireless sensor network
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From Arithmetic to Logic based AI: A Comparative Analysis of Neural Networks and Tsetlin Machine

2020

Neural networks constitute a well-established design method for current and future generations of artificial intelligence. They depends on regressed arithmetic between perceptrons organized in multiple layers to derive a set of weights that can be used for classification or prediction. Over the past few decades, significant progress has been made in low-complexity designs enabled by powerful hardware/software ecosystems. Built on the foundations of finite-state automata and game theory, Tsetlin Machine is increasingly gaining momentum as an emerging artificial intelligence design method. It is fundamentally based on propositional logic based formulation using booleanized input features. Rec…

Hardware architectureArtificial neural networkLearning automataComputer science020208 electrical & electronic engineering02 engineering and technologyEnergy consumptionPerceptronPropositional calculus020202 computer hardware & architectureAutomaton0202 electrical engineering electronic engineering information engineeringArithmeticEfficient energy use2020 27th IEEE International Conference on Electronics, Circuits and Systems (ICECS)
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A Novel Systolic Parallel Hardware Architecture for the FPGA Acceleration of Feedforward Neural Networks

2019

New chips for machine learning applications appear, they are tuned for a specific topology, being efficient by using highly parallel designs at the cost of high power or large complex devices. However, the computational demands of deep neural networks require flexible and efficient hardware architectures able to fit different applications, neural network types, number of inputs, outputs, layers, and units in each layer, making the migration from software to hardware easy. This paper describes novel hardware implementing any feedforward neural network (FFNN): multilayer perceptron, autoencoder, and logistic regression. The architecture admits an arbitrary input and output number, units in la…

Hardware architectureFloating pointGeneral Computer ScienceArtificial neural networkComputer scienceClock rateActivation functionGeneral EngineeringSistemes informàticsAutoencoderArquitectura d'ordinadorsComputational scienceneural network accelerationFPGA implementationdeep neural networksMultilayer perceptronFeedforward neural networks - FFNNFeedforward neural networkXarxes neuronals (Informàtica)General Materials Sciencelcsh:Electrical engineering. Electronics. Nuclear engineeringlcsh:TK1-9971systolic hardware architectureIEEE Access
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Strategies investigation in using artificial neural network for landslide susceptibility mapping: application to a Sicilian catchment

2013

Susceptibility assessment of areas prone to landsliding remains one of the most useful approaches in landslide hazard analysis. The key point of such analysis is the correlation between the physical phenomenon and its triggering factors based on past observations. Many methods have been developed in the scientific literature to capture and model this correlation, usually within a geographic information system (GIS) framework. Among these, the use of neural networks, in particular the multi-layer perceptron (MLP) networks, has provided successful results. A successful application of the MLP method to a basin area requires the definition of different model strategies, such as the sample selec…

HydrologyArtificial Neural NetworkAtmospheric Sciencegeographygeography.geographical_feature_categoryGeographic information systemArtificial neural networkComputer sciencebusiness.industrySettore ICAR/02 - Costruzioni Idrauliche E Marittime E IdrologiaDrainage basinLandslideScientific literatureHazard analysisStructural basinGeotechnical Engineering and Engineering GeologyPerceptronGISArtificial Neural Network; GIS; Landslide Susceptibility MappingbusinessCartographyCivil and Structural EngineeringWater Science and TechnologyLandslide Susceptibility Mapping
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Sex Classification of Face Areas

1998

Human subjects and an artificial neural network, composed of an autoassociative memory and a perceptron, gender classified the same 160 frontal face images (80 male and 80 female). All 160 face images were presented under three conditions (1) full face image with the hair cropped (2) top portion only of the Condition 1 image (3) bottom portion only of the Condition 1 image. Predictions from simulations using Condition 1 stimuli for training and testing novel stimuli in Conditions 1, 2, and 3, were compared to human subject performance. Although the network showed a fair ability to generalize learning to new stimuli under the three conditions, performing from 66 to 78% correctly on novel fa…

Image areaEcologyArtificial neural networkComputer sciencebusiness.industryApplied MathematicsPattern recognitionGeneral MedicinePerceptronAgricultural and Biological Sciences (miscellaneous)Image (mathematics)Autoassociative memoryFace (geometry)Human taxonomyRelevance (information retrieval)Artificial intelligencebusinessJournal of Biological Systems
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