Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China

Xinjiang, an arid area located in the central part of the Eurasian continent with high evaporation and low precipitation, experiences frequent droughts. This study builds on previous research by incorporating five key ocean-atmosphere oscillations and using the one-month SPEI as a meteorological dro...

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Published in:Water
Main Authors: Linchu Jiang, Meng Gao, Jicai Ning, Junhu Tang
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2025
Subjects:
Online Access:https://doi.org/10.3390/w17070957
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author Linchu Jiang
Meng Gao
Jicai Ning
Junhu Tang
author_facet Linchu Jiang
Meng Gao
Jicai Ning
Junhu Tang
author_sort Linchu Jiang
collection MDPI Open Access Publishing
container_issue 7
container_start_page 957
container_title Water
container_volume 17
description Xinjiang, an arid area located in the central part of the Eurasian continent with high evaporation and low precipitation, experiences frequent droughts. This study builds on previous research by incorporating five key ocean-atmosphere oscillations and using the one-month SPEI as a meteorological drought indicator. Monthly time series of precipitation and temperature from 53 meteorological stations are utilized to calculate the monthly SPEI time series, and the seasonal Kendall test analyzes trends. Despite increased precipitation, the drought conditions in Xinjiang worsened due to increased temperatures, especially in the south, during 1961–2017. The 53 monthly SPEI time series are clustered using the agglomerative hierarchical method, basically reflecting Xinjiang’s topographical and climatic diversity. However, classical correlation methods show a weak or negligible overall correlation between the SPEI and large-scale ocean-atmosphere oscillators. Therefore, the partial wavelet coherence (PWC) method was used to detect the scale-specific correlations. Both bivariate wavelet coherence (BWC) and PWC detected significant correlations between the SPEI and the ocean-atmosphere oscillators at some specific time scales. Our analyses indicate that southern Xinjiang droughts are more influenced by Pacific or Indian Ocean oscillators, while northern droughts are affected by Atlantic or Arctic climate variations.
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spelling ftmdpi:oai:mdpi.com:/2073-4441/17/7/957/ 2025-04-27T14:24:57+00:00 Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China Linchu Jiang Meng Gao Jicai Ning Junhu Tang agris 2025-03-25 application/pdf https://doi.org/10.3390/w17070957 eng eng Multidisciplinary Digital Publishing Institute Water and Climate Change https://dx.doi.org/10.3390/w17070957 https://creativecommons.org/licenses/by/4.0/ Water Volume 17 Issue 7 Pages: 957 SPEI drought arid region ocean-atmosphere oscillation wavelet coherence Text 2025 ftmdpi https://doi.org/10.3390/w17070957 2025-03-31T14:26:03Z Xinjiang, an arid area located in the central part of the Eurasian continent with high evaporation and low precipitation, experiences frequent droughts. This study builds on previous research by incorporating five key ocean-atmosphere oscillations and using the one-month SPEI as a meteorological drought indicator. Monthly time series of precipitation and temperature from 53 meteorological stations are utilized to calculate the monthly SPEI time series, and the seasonal Kendall test analyzes trends. Despite increased precipitation, the drought conditions in Xinjiang worsened due to increased temperatures, especially in the south, during 1961–2017. The 53 monthly SPEI time series are clustered using the agglomerative hierarchical method, basically reflecting Xinjiang’s topographical and climatic diversity. However, classical correlation methods show a weak or negligible overall correlation between the SPEI and large-scale ocean-atmosphere oscillators. Therefore, the partial wavelet coherence (PWC) method was used to detect the scale-specific correlations. Both bivariate wavelet coherence (BWC) and PWC detected significant correlations between the SPEI and the ocean-atmosphere oscillators at some specific time scales. Our analyses indicate that southern Xinjiang droughts are more influenced by Pacific or Indian Ocean oscillators, while northern droughts are affected by Atlantic or Arctic climate variations. Text Arctic MDPI Open Access Publishing Arctic Indian Kendall ENVELOPE(-59.828,-59.828,-63.497,-63.497) Pacific Water 17 7 957
spellingShingle SPEI
drought
arid region
ocean-atmosphere oscillation
wavelet coherence
Linchu Jiang
Meng Gao
Jicai Ning
Junhu Tang
Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China
title Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China
title_full Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China
title_fullStr Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China
title_full_unstemmed Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China
title_short Bivariate and Partial Wavelet Coherence for Revealing the Remote Impacts of Large-Scale Ocean-Atmosphere Oscillations on Drought Variations in Xinjiang, China
title_sort bivariate and partial wavelet coherence for revealing the remote impacts of large-scale ocean-atmosphere oscillations on drought variations in xinjiang, china
topic SPEI
drought
arid region
ocean-atmosphere oscillation
wavelet coherence
topic_facet SPEI
drought
arid region
ocean-atmosphere oscillation
wavelet coherence
url https://doi.org/10.3390/w17070957