Generalized weighted permutation entropy analysis of SPEI index in Serbia as a proxy of corn production

Author:

Stosic Borko1ORCID,Djurdjević Vladimir2,Tošić Milica2ORCID,Lazić Irida2,Tošić Ivana2ORCID,Stosic Tatijana1

Affiliation:

1. Departamento de Estatística e Informática Universidade Federal Rural de Pernambuco Recife Brazil

2. Faculty of Physics, Institute for Meteorology University of Belgrade Belgrade Serbia

Abstract

AbstractIn this work we analyse yearly standardized precipitation evapotranspiration index for accumulation timescale of 6 months (SPEI‐6) for August which has been identified as a strong proxy for corn production in Serbia. By applying recently proposed method generalized weighted permutation entropy (GWPE), which provides the information about predictability of large/small fluctuations in nonstationary time series, on SPEI index calculated from high‐resolution gridded dataset for the period 1951–2022, we found that the small fluctuation sequences of consecutive 4‐year SPEI values are the most predictable (indicated by lowest entropy values). The order of large fluctuation sequences is less predictable, while the order of sequences considering all magnitudes of fluctuations are the least predictable (indicated by highest entropy values). We also analysed 4‐month SPEI‐6 sequences for May, June, July and August (during the growing season of corn) along the years under study and found that they display lower GWPE values and thus are more predictable than yearly SPEI‐6 August sequences (small fluctuations displaying lower entropy values than large fluctuations). Regarding spatial distributions, in both cases SPEI‐6 sequences show similar pattern for large fluctuations: higher predictability (lower entropy values) in northern and eastern part of Serbia and lower predictability (higher entropy values) in southern and western part. For small fluctuations spatial distribution of GWPE values indicates that yearly SPEI‐6 August series are more predictable in the western part of the country while May to August monthly SPEI‐6 sequences are more predictable in the eastern part.

Funder

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior

Conselho Nacional de Desenvolvimento Científico e Tecnológico

Publisher

Wiley

Reference63 articles.

1. Adams J.(2017)Climate_indices an opensource Python library providing reference implementations of commonly used climate indices. Available from:https://github.com/monocongo/climate_indices

2. Long-run trend in agricultural yield and climatic factors in Europe

3. Spatial analysis of the temperature trends in Serbia during the period 1961–2010

4. Permutation Entropy: A Natural Complexity Measure for Time Series

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