학술논문

Mapping the Sun's upper photosphere with artificial neural networks
Document Type
Working Paper
Source
A&A 652, A78 (2021)
Subject
Astrophysics - Solar and Stellar Astrophysics
Astrophysics - Instrumentation and Methods for Astrophysics
Language
Abstract
We have developed an inversion procedure designed for high-resolution solar spectro-polarimeters, such as Hinode/SP or DKIST/ViSP. The procedure is based on artificial neural networks trained with profiles generated from random atmospheric stratifications for a high generalization capability. When applied to Hinode data we find a hot fine-scale network structure whose morphology changes with height. In the middle layers this network resembles what is observed in G-band filtergrams but it is not identical. Surprisingly, the temperature enhancements in the middle and upper photosphere have a reversed pattern. Hot pixels in the middle photosphere, possibly associated to small-scale magnetic elements, appear cool at the log(tau_500)=-3 and -4 level, and viceversa. Finally, we find hot arcs on the limb side of magnetic pores, which we interpret as the first direct observational evidence of the "hot wall" effect in temperature.
Comment: Submitted to Astronomy and Astrophysics. Comments are welcome