Application of Solar Activity Time Series in Machine Learning Predictive Modeling of Precipitation-Induced Floods

Author:

Malinović-Milićević Slavica1ORCID,Radovanović Milan M.12ORCID,Radenković Sonja D.3ORCID,Vyklyuk Yaroslav4ORCID,Milovanović Boško1,Milanović Pešić Ana1ORCID,Milenković Milan1,Popović Vladimir1,Petrović Marko12ORCID,Sydor Petro5,Gajić Mirjana6ORCID

Affiliation:

1. Geographical Institute “Jovan Cvijić” SASA, 9 Djure Jakšića St., 11000 Belgrade, Serbia

2. Institute of Sports, Tourism and Service, South Ural State University, 76 Lenin A, 454080 Chelyabinsk, Russia

3. Belgrade Banking Academy–Faculty of Banking, Insurance, and Finance, Union University, 11000 Belgrade, Serbia

4. Department of Artificial Intelligence Systems, Lviv Polytechnic National University, Lviv, Bandera str, 12, 79013 Lviv, Ukraine

5. Department of Computer Systems and Technologies, Faculty of Information Technologies and Economics, Bukovinian University, 2A Darwin St., 58000 Chernivtsi, Ukraine

6. Faculty of Geography, University of Belgrade, Studentski trg 3/III, 11000 Belgrade, Serbia

Abstract

This research is devoted to the determination of hidden dependencies between the flow of particles that come from the Sun and precipitation-induced floods in the United Kingdom (UK). The analysis covers 20 flood events during the period from October 2001 to December 2019. The parameters of solar activity were used as model input data, while precipitations data in the period 10 days before and during each flood event were used as model output. The time lag of 0–9 days was taken into account in the research. Correlation analysis was conducted to determine the degree of randomness for the time series of input and output parameters. For establishing a potential causative link, machine learning classification predictive modeling was applied. Two approaches, the decision tree, and the random forest were used. We analyzed the accuracy of classification models forecast from 0 to 9 days in advance. It was found that the most important factors for flood forecasting are proton density with a time lag of 9, differential proton flux in the range of 310–580 keV, and ion temperature. Research in this paper has shown that the decision tree model is more accurate and adequate in predicting the appearance of precipitation-induced floods up to 9 days ahead with an accuracy of 91%. The results of this study confirmed that by increasing technical capabilities, using improved machine learning techniques and large data sets, it is possible to improve the understanding of the physical link between the solar wind and tropospheric weather and help improve severe weather forecasting.

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

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