A nanoflare model for active region radiance: application of artificial neural networks
M. Bazarghan, H. Safari, D. E. Innes, E. Karami, and S.K. Solanki

TL;DR
This study models solar active region radiance using a nanoflare framework and artificial neural networks to estimate the energy distribution exponent, suggesting nanoflares significantly contribute to coronal heating.
Contribution
It introduces a neural network-based method to determine the nanoflare energy distribution exponent from observed UV radiance time sequences.
Findings
Power law exponents for nanoflares are greater than 2 for all observed ions.
Nanoflares could significantly contribute to active region coronal heating.
The method effectively estimates nanoflare energy distribution parameters.
Abstract
Context. Nanoflares are small impulsive bursts of energy that blend with and possibly make up much of the solar background emission. Determining their frequency and energy input is central to understanding the heating of the solar corona. One method is to extrapolate the energy frequency distribution of larger individually observed flares to lower energies. Only if the power law exponent is greater than 2, is it considered possible that nanoflares contribute significantly to the energy input. Aims. Time sequences of ultraviolet line radiances observed in the corona of an active region are modelled with the aim of determining the power law exponent of the nanoflare energy distribution. Methods. A simple nanoflare model based on three key parameters (the flare rate, the flare duration time, and the power law exponent of the flare energy frequency distribution) is used to simulate…
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