Search results for " Monte Carlo"

showing 10 items of 400 documents

Local structure analysis of the hard-disk fluid near melting

1997

The local structure of the hard-disk fluid is studied across its melting transition by means of Monte Carlo simulations and measurement of a local order parameter. Evidence for a linear behavior of this quantity in an intermediate density range is found, as well as indications for a possible ensemble difference between constant volume and constant pressure simulations within the presently accessible system sizes.

Materials scienceVolume (thermodynamics)Constant pressureMonte Carlo methodRange (statistics)Dynamic Monte Carlo methodStatistical physicsMechanicsConstant (mathematics)Local structurePhysical Review E
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Advanced approach to the local structure reconstruction and theory validation on the example of the W L 3 -edge extended x-ray absorption fine struct…

2018

The authors gratefully acknowledge the assistance of the ELETTRA XAFS beamline staff members during the EXAFS experiment No 20150303. This work has been carried out within the framework of the EUROfusion Consortium and has received funding from the Euratom research and training programme 2014-2018 under grant agreement No 633053. The views and opinions expressed herein do not necessarily reflect those of the European Commission.

Materials sciencechemistry.chemical_elementFOS: Physical sciences02 engineering and technologyEdge (geometry)Tungsten01 natural sciencesLocal structureTungstenCondensed Matter::Materials Science0103 physical sciences:NATURAL SCIENCES:Physics [Research Subject Categories]General Materials Science010306 general physicsReverse Monte Carlo simulationsCondensed Matter - Materials ScienceExtended X-ray absorption fine structureMolecular dynamics simulationsMaterials Science (cond-mat.mtrl-sci)021001 nanoscience & nanotechnologyCondensed Matter PhysicsComputer Science ApplicationsComputational physicsEXAFSchemistryMechanics of MaterialsModeling and Simulation0210 nano-technologyModelling and Simulation in Materials Science and Engineering
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Bayesian estimation of edge orientations in junctions

1999

Abstract Junctions, defined as those points of an image where two or more edges meet, play a significant role in many computer vision applications. Junction detection is a widely treated problem, and some detectors can provide even the directions of the edges that meet in a junction. The main objective of this paper is the precise estimation of such directions. It is supposed that the junction point has been previously found by some detector. Also, it is assumed that samples, possibly noisy, of orientations of the edges found in a circular window surrounding the point are available. A mixture of von Mises distributions is assumed for these data, and then a Bayesian methodology is applied to…

Mathematical optimizationBayes estimatorBayesian probabilityDetectorPosterior probabilityMarkov chain Monte CarloExpected valueReal imagesymbols.namesakeArtificial IntelligenceSignal ProcessingsymbolsPoint (geometry)Computer Vision and Pattern RecognitionAlgorithmSoftwareMathematicsPattern Recognition Letters
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A new strategy for effective learning in population Monte Carlo sampling

2016

In this work, we focus on advancing the theory and practice of a class of Monte Carlo methods, population Monte Carlo (PMC) sampling, for dealing with inference problems with static parameters. We devise a new method for efficient adaptive learning from past samples and weights to construct improved proposal functions. It is based on assuming that, at each iteration, there is an intermediate target and that this target is gradually getting closer to the true one. Computer simulations show and confirm the improvement of the proposed strategy compared to the traditional PMC method on a simple considered scenario.

Mathematical optimizationComputer scienceMonte Carlo methodInference02 engineering and technology01 natural sciencesHybrid Monte Carlo010104 statistics & probabilitysymbols.namesake[INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing0202 electrical engineering electronic engineering information engineeringQuasi-Monte Carlo methodKinetic Monte Carlo0101 mathematicsComputingMilieux_MISCELLANEOUSbusiness.industryRejection samplingSampling (statistics)020206 networking & telecommunicationsMarkov chain Monte CarloDynamic Monte Carlo methodsymbolsMonte Carlo integrationMonte Carlo method in statistical physicsArtificial intelligenceParticle filterbusiness[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processingMonte Carlo molecular modeling
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Incremental heuristic approach for meter placement in radial distribution systems

2019

The evolution of modern power distribution systems into smart grids requires the development of dedicated state estimation (SE) algorithms for real-time identification of the overall system state variables. This paper proposes a strategy to evaluate the minimum number and best position of power injection meters in radial distribution systems for SE purposes. Measurement points are identified with the aim of reducing uncertainty in branch power flow estimations. An incremental heuristic meter placement (IHMP) approach is proposed to select the locations and total number of power measurements. The meter placement procedure was implemented for a backward/forward load flow algorithm proposed by…

Mathematical optimizationControl and OptimizationComputer scienceHeuristic (computer science)020209 energyOptimal meter placementEnergy Engineering and Power Technology02 engineering and technologySmart gridlcsh:Technology0202 electrical engineering electronic engineering information engineeringMetrePower-flow studyInstrumentation (computer programming)Electrical and Electronic EngineeringEngineering (miscellaneous)optimal meter placement; smart grid; load flow analysis; Monte Carlo methodsRenewable Energy Sustainability and the Environmentlcsh:T020208 electrical & electronic engineeringMonte Carlo methodsLoad flow analysisPower (physics)Monte Carlo methodSmart gridLoad flow analysiSettore ING-INF/07 - Misure Elettriche E ElettronicheEnergy (miscellaneous)
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Bayesian adaptive estimation: The next dimension

2006

Abstract We propose a new psychometric model for two-dimensional stimuli, such as color differences, based on parameterizing the threshold of a one-dimensional psychometric function as an ellipse. The Ψ Bayesian adaptive estimation method applied to this model yields trials that vary in multiple stimulus dimensions simultaneously. Simulations indicate that this new procedure can be much more efficient than the more conventional procedure of estimating the psychometric function on one-dimensional lines independently, requiring only one-fourth or less the number of trials for equivalent performance in typical situations. In a real psychophysical experiment with a yes–no task, as few as 22 tri…

Mathematical optimizationDiscretizationApplied MathematicsBayesian probabilityFast Fourier transformMonte Carlo methodMarkov chain Monte CarloEllipsesymbols.namesakePsychometric functionsymbolsAlgorithmScalingGeneral PsychologyMathematicsJournal of Mathematical Psychology
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Stochastic Approach for Optimal Positioning of Pumps As Turbines (PATs)

2021

A generic water system consists of a series of works that allow the collection, conveyance, storage and finally the distribution of water in quantities and qualities such as to satisfy the needs of end users. In places characterized by high altitude differences between the intake works and inhabited centres, the potential energy of the water is very high. This energy is attributable to high pressures, which could compromise the functionality of the pipelines

Mathematical optimizationEnergy recoveryOptimization problemEnvironmental effects of industries and plantsRenewable Energy Sustainability and the Environmentbusiness.industryComputer scienceenergy recoveryGeography Planning and DevelopmentMonte Carlo methodSortingTJ807-830Management Monitoring Policy and LawTD194-195Renewable energy sourcesEnvironmental sciencesPipeline transportSoftwareGenetic algorithmGE1-350pump as turbinebusinesswater distribution systemEnergy (signal processing)Bayesian Monte Carlo methodSustainability
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Hydrological post-processing based on approximate Bayesian computation (ABC)

2019

[EN] This study introduces a method to quantify the conditional predictive uncertainty in hydrological post-processing contexts when it is cumbersome to calculate the likelihood (intractable likelihood). Sometimes, it can be difficult to calculate the likelihood itself in hydrological modelling, specially working with complex models or with ungauged catchments. Therefore, we propose the ABC post-processor that exchanges the requirement of calculating the likelihood function by the use of some sufficient summary statistics and synthetic datasets. The aim is to show that the conditional predictive distribution is qualitatively similar produced by the exact predictive (MCMC post-processor) or …

Mathematical optimizationINGENIERIA HIDRAULICAEnvironmental Engineering010504 meteorology & atmospheric sciencesComputer scienceHydrological modelling0208 environmental biotechnologyComputational intelligence02 engineering and technologySummary statistic01 natural sciencesFree-likelihood approachsymbols.namesakeHydrological forecastingEnvironmental ChemistryProbabilistic modellingSafety Risk Reliability and QualityUncertainty analysis0105 earth and related environmental sciencesGeneral Environmental ScienceWater Science and TechnologyProbabilistic modellingMarkov chain Monte Carlo020801 environmental engineeringBenchmark (computing)symbolsUncertainty analysisApproximate Bayesian computationSummary statisticsLikelihood functionSettore SECS-S/01 - Statistica
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Anti-tempered Layered Adaptive Importance Sampling

2017

Monte Carlo (MC) methods are widely used for Bayesian inference in signal processing, machine learning and statistics. In this work, we introduce an adaptive importance sampler which mixes together the benefits of the Importance Sampling (IS) and Markov Chain Monte Carlo (MCMC) approaches. Different parallel MCMC chains provide the location parameters of the proposal probability density functions (pdfs) used in an IS method. The MCMC algorithms consider a tempered version of the posterior distribution as invariant density. We also provide an exhaustive theoretical support explaining why, in the presented technique, even an anti-tempering strategy (reducing the scaling of the posterior) can …

Mathematical optimizationRejection samplingSlice sampling020206 networking & telecommunicationsMarkov chain Monte Carlo02 engineering and technology01 natural sciencesStatistics::ComputationHybrid Monte Carlo010104 statistics & probabilitysymbols.namesakeMetropolis–Hastings algorithm[INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing0202 electrical engineering electronic engineering information engineeringsymbolsParallel tempering0101 mathematicsParticle filter[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processingImportance samplingComputingMilieux_MISCELLANEOUSMathematics
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Bayesian calibration of the nitrous oxide emission module of an agro-ecosystem model

2008

1. NitroEurope Open Science Conference on Reactive Nitrogen and the European Greenhouse Gas Balance ; Ghent (Belgique) - (2008-02-20 - 2008-02-21) / Conférence; Nitrous oxide (N2O) is the main biogenic greenhouse gas contributing to the global warming potential (GWP) of agro-ecosystems. Evaluating the impact of agriculture on climate therefore requires a capacity to predict N2O emissions in relation to environmental conditions and crop management. Biophysical models simulating the dynamics of carbon and nitrogen in agro-ecosystems have a unique potential to explore these relationships, but are fraught with high uncertainties in their parameters due to their variations over time and space. H…

Mean squared error[SDE.MCG]Environmental Sciences/Global ChangesBayesian probabilityparameter uncertainty010501 environmental sciencesAtmospheric sciences7. Clean energy01 natural sciencesEcology and Environment[ SDV.EE ] Life Sciences [q-bio]/Ecology environmentsymbols.namesake[STAT.AP] Statistics [stat]/Applications [stat.AP]Ecosystem modelgreenhouse gasesMarkov Chain Monte Carlo0105 earth and related environmental sciences2. Zero hunger[SDV.EE]Life Sciences [q-bio]/Ecology environment[STAT.AP]Statistics [stat]/Applications [stat.AP]EcologyMarkov chainnitrous oxideEcology[ STAT.AP ] Statistics [stat]/Applications [stat.AP]Global warmingMarkov chain Monte Carlo04 agricultural and veterinary sciences15. Life on land[ SDE.MCG ] Environmental Sciences/Global Changes[SDV.EE] Life Sciences [q-bio]/Ecology environment[SDE.MCG] Environmental Sciences/Global ChangesAgriculture and Soil Science13. Climate actionGreenhouse gas040103 agronomy & agriculturesymbols0401 agriculture forestry and fisheriesEnvironmental scienceProbability distributionAnimal Science and ZoologyCERES-EGCAgronomy and Crop Sciencebayesian calibration
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