Scale-free Universal Spectrum for Atmospheric Aerosol Size Distribution for Davos, Mauna Loa and Izana
A. M. Selvam

TL;DR
This paper presents a universal, scale-free spectrum model for atmospheric aerosol size distribution based on fractal eddy dynamics, aligning well with observed data from multiple global stations and offering potential climate modeling applications.
Contribution
The author develops a novel, scale-free model for aerosol size distribution derived from atmospheric eddy dynamics, incorporating the golden mean, and validates it against observational data.
Findings
Model spectrum agrees with observed aerosol size distributions within two standard deviations.
A universal scale-independent function describes aerosol size distribution based on eddy continuum theory.
The model has potential applications in climate modeling and radiation budget estimation.
Abstract
Atmospheric flows exhibit fractal fluctuations and inverse power law form for power spectra indicating an eddy continuum structure for the selfsimilar fluctuations. A general systems theory for fractal fluctuations developed by the author is based on the simple visualisation that large eddies form by space-time integration of enclosed turbulent eddies, a concept analogous to Kinetic Theory of Gases in Classical Statistical Physics. The ordered growth of atmospheric eddy continuum is in dynamical equilibrium and is associated with Maximum Entropy Production. The model predicts universal (scale-free) inverse power law form for fractal fluctuations expressed in terms of the golden mean. Atmospheric particulates are held in suspension in the fractal fluctuations of vertical wind velocity. The mass or radius (size) distribution for homogeneous suspended atmospheric particulates is expressed…
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