Nonparametric, data-based kernel interpolation for particle-tracking simulations and kernel density estimation
David A Benson,
Diogo Bolster,
Stephen Pankavich
et al.
Abstract:Traditional interpolation techniques for particle tracking include binning and convolutional formulas that use pre-determined (i.e., closed-form, parameteric) kernels. In many instances, the particles are introduced as point sources in time and space, so the cloud of particles (either in space or time) is a discrete representation of the Green's function of an underlying PDE. As such, each particle is a sample from the Green's function; therefore, each particle should be distributed according to the Green's fu… Show more
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