Publication | Open Access
A Comparison of Interpolation Methods for Sparse Data: Application to Wind and Concentration Fields
209
Citations
13
References
1979
Year
Numerical AnalysisEnvironmental MonitoringEngineeringInterpolation MethodsAir QualityConcentration FieldsSource ApportionmentLos Angeles BasinAtmospheric ModelEarth ScienceSparse DataData ScienceAtmospheric ScienceNumerical SimulationSignal ReconstructionEstimation TheoryApproximation TheoryStatisticsMeteorologyGeometric InterpolationSurface Ozone ConcentrationsInverse ProblemsGridded FieldsSparse RepresentationAtmospheric ConditionCompressive SensingAir Pollution
In order to produce gridded fields of pollutant concentration data and surface wind data for use in an air quality model, a number of techniques for interpolating sparse data values are compared. The techniques are compared using three data sets. One is an idealized concentration distribution to which the exact solution is known, the second is a potential flow field, while the third consists of surface ozone concentrations measured in the Los Angeles Basin on a particular day. The results of the study indicate that fitting a second-degree polynomial to each subregion (triangle) in the plane with each data point weighted according to its distance from the subregion provides a good compromise between accuracy and computational cost.
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