Utilizing machine learning and CMIP6 projections for short-term agricultural drought monitoring in central Europe (1900–2100)

[Display omitted] •Short term drought (SPI-3) in central Europe for more than 200 years was investigated.•4 ML (BG, DT, M5P, RF) algorithms and 3 scenarios were used for drought prediction.•Drought frequency increased since 1970 and projected to be increased (ssp245, ssp460).•More frequent droughts...

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Veröffentlicht in:Journal of hydrology (Amsterdam) 2024-04, Vol.633, p.130968, Article 130968
Hauptverfasser: Mohammed, Safwan, Arshad, Sana, Alsilibe, Firas, Moazzam, Muhammad Farhan Ul, Bashir, Bashar, Prodhan, Foyez Ahmed, Alsalman, Abdullah, Vad, Attila, Ratonyi, Tamás, Harsányi, Endre
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Sprache:eng
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Zusammenfassung:[Display omitted] •Short term drought (SPI-3) in central Europe for more than 200 years was investigated.•4 ML (BG, DT, M5P, RF) algorithms and 3 scenarios were used for drought prediction.•Drought frequency increased since 1970 and projected to be increased (ssp245, ssp460).•More frequent droughts are projected under ssp460.•ML algorithms varied in their ability for SPI-3 drought prediction.•RF outperformed other algorithms for accurate prediction. Water availability for agricultural practices is dynamically influenced by climatic variables, particularly droughts. Consequently, the assessment of drought events is directly related to the strategic water management in the agricultural sector. The application of machine learning (ML) algorithms in different scenarios of climatic variables is a new approach that needs to be evaluated. In this context, the current research aims to forecast short-term drought i.e., SPI-3 from different climatic predictors under historical (1901–2020) and future (2021–2100) climatic scenarios employing machine learning (bagging (BG), random forest (RF), decision table (DT), and M5P) algorithms in Hungary, Central Europe. Three meteorological stations namely, Budapest (BD) (central Hungary), Szeged (SZ) (east south Hungary), and Szombathely (SzO) (west Hungary) were selected to forecast short-term agriculture drought i.e., Standardized Precipitation Index (SPI-3) in the long run. For this purpose, the ensemble means of three global circulation models GCMs from CMIP6 are being used to get the projected (2021–2100) time series of climatic indicators (i.e., rainfall R, mean temperature T, maximum temperature Tmax, and minimum temperature Tmin under two scenarios of socioeconomic pathways (SSP2-4.5 and SSP4-6.0). The results of this study revealed more severe to extreme drought events in past decades, which are projected to increase in the near future (2021–2040). Man-Kendall test (Tau) along with Sen’s slope (SS) also revealed an increasing trend of SPI-3 drought in the historical period with Tau = −0.2, SS = −0.05, and near future with Tau = −0.12, SS = −0.09 in SSP2-4.5 and Tau = −0.1, SS = −0.08 in SSP4-6.0. Implementation of ML algorithms in three scenarios: SC1 (R + T + Tmax + Tmin), SC2 (R), and SC3 (R + T)) at the BD station revealed RF-SC3 with the lowest RMSE RFSC3-TR = 0.33, and the highest NSE RFSC3-TR = 0.89 performed best for forecasting SPI-3 on historical dataset. Hence, the best selected RF-SC3 was implemented on the
ISSN:0022-1694
1879-2707
DOI:10.1016/j.jhydrol.2024.130968