TL;DR
This paper presents the first comprehensive statistical analysis of uncertainties in sunspot counts, providing robust estimators and error distributions to improve solar activity monitoring.
Contribution
It introduces a novel uncertainty quantification framework for sunspot data, accounting for errors, over-dispersion, and multiple modes, enhancing the reliability of solar activity proxies.
Findings
Error distributions vary across regimes and components.
A robust estimator for the solar signal is proposed.
Results can improve real-time monitoring of observatory data.
Abstract
Observing and counting sunspots constitutes one of the longest-running scientific experiment, with first observations dating back to Galileo and the invention of the telescope around 1610. Today the sunspot number (SN) time series acts as a benchmark of solar activity in a large range of physical models. An appropriate statistical modelling, adapted to the time series' complex nature, is however still lacking. In this work, we provide the first comprehensive uncertainty quantification analysis of sunspot counts. Our interest lies in the following three components: the number of spots (), the number of sunspot groups (), and the composite , defined as . Those are reported by a network of observatories around the world, and are corrupted by errors of various types. We use a multiplicative framework to provide, for each of the three components, an estimation…
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