Discriminant Analysis of the Solar Input on the Danube’s Discharge in the Lower Basin

Author:

Mares Constantin1,Mares Ileana1ORCID,Dobrica Venera1,Demetrescu Crisan1

Affiliation:

1. Institute of Geodynamics, Romanian Academy, 020032 Bucharest, Romania

Abstract

This paper presents the extent to which the combination of extra-atmospheric and hydroclimatic factors can be deciphered to record their contribution to the evolution and forecasting of the Danube discharge (Q) in the lower basin. A combination of methods such as wavelet filtering and deep learning (DL) constitutes the basic method for discriminating the external factors (solar activity through Wolf numbers) that significantly contribute to the evolution and prediction of the lower Danube discharge. An ensemble of some of the most important factors, namely, those representing the atmospheric components, i.e., the Greenland-Balkan Oscillation Index (GBOI) and the North Atlantic Oscillation Index (NAOI); the hydroclimatic indicator, the Palmer Hydrological Drought Index (PHDI); and the extra-atmospheric factor, constitutes the set of predictors by means of which the predictand, Q, in the summer season, is estimated. The external factor has to be discriminated in the Schwabe and Hale spectra to make its convolutional contribution to the Q estimation in the lower Danube basin. An interesting finding is that adding two solar predictors (associated with the Schwabe and Hale cycles) to the terrestrial ones give a better estimation of the Danube discharge in summer, compared to using only terrestrial predictors. Based on the Nash–Sutcliffe (NS) index, a measure of performance given by the extreme learning machine (ELM), it is shown that, in association with certain terrestrial predictors, the contribution of the Hale cycle is more significant than the contribution of the Schwabe cycle to the estimation of the Danube discharge in the lower basin.

Publisher

MDPI AG

Subject

Atmospheric Science,Environmental Science (miscellaneous)

Reference57 articles.

1. Inferring the connectivity of coupled oscillators from time-series statistical similarity analysis;Tirabassi;Sci. Rep.,2015

2. IPCC, Climate Change 2021: The Physical Science Basis;Zhai;Contribution of Working Group I to the Sixth Assessment Report of 689 the Intergovernmental Panel on Climate Change,2021

3. Future climate under CMIP6 solar activity scenarios;Sedlacek;Earth Space Sci.,2023

4. Characterizing the evolution of climate networks;Tupikina;Nonlinear Proc. Geophys.,2014

5. Mares, C., Dobrica, V., Mares, I., and Demetrescu, C. (2022). Solar Signature in Climate Indices. Atmosphere, 13.

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