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Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI

The natural variation in stable water isotope ratio data, also known as water isoscape, is a spatiotemporal fingerprint and a powerful natural tracer that has been widely applied in disciplines as diverse as hydrology, paleoclimatology, ecology and forensic investigation. Although much effort has be...

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Autores principales: Chan, Wei-Ping, Yuan, Hsiao-Wei, Huang, Cho-Ying, Wang, Chung-Ho, Lin, Shou-De, Lo, Yi-Chen, Huang, Bo-Wen, Hatch, Kent A., Shiu, Hau-Jie, You, Cheng-Feng, Chang, Yuan-Mou, Shen, Sheng-Feng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3446878/
https://www.ncbi.nlm.nih.gov/pubmed/23029053
http://dx.doi.org/10.1371/journal.pone.0045496
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author Chan, Wei-Ping
Yuan, Hsiao-Wei
Huang, Cho-Ying
Wang, Chung-Ho
Lin, Shou-De
Lo, Yi-Chen
Huang, Bo-Wen
Hatch, Kent A.
Shiu, Hau-Jie
You, Cheng-Feng
Chang, Yuan-Mou
Shen, Sheng-Feng
author_facet Chan, Wei-Ping
Yuan, Hsiao-Wei
Huang, Cho-Ying
Wang, Chung-Ho
Lin, Shou-De
Lo, Yi-Chen
Huang, Bo-Wen
Hatch, Kent A.
Shiu, Hau-Jie
You, Cheng-Feng
Chang, Yuan-Mou
Shen, Sheng-Feng
author_sort Chan, Wei-Ping
collection PubMed
description The natural variation in stable water isotope ratio data, also known as water isoscape, is a spatiotemporal fingerprint and a powerful natural tracer that has been widely applied in disciplines as diverse as hydrology, paleoclimatology, ecology and forensic investigation. Although much effort has been devoted to developing a predictive water isoscape model, it remains a central challenge for scientists to generate high accuracy, fine scale spatiotemporal water isoscape prediction. Here we develop a novel approach of using the MODIS-EVI (the Moderate Resolution Imagining Spectroradiometer-Enhanced Vegetation Index), to predict δ(18)O in precipitation at the regional scale. Using a structural equation model, we show that the EVI and precipitated δ(18)O are highly correlated and thus the EVI is a good predictor of precipitated δ(18)O. We then test the predictability of our EVI-δ(18)O model and demonstrate that our approach can provide high accuracy with fine spatial (250×250 m) and temporal (16 days) scale δ(18)O predictions (annual and monthly predictabilities [r] are 0.96 and 0.80, respectively). We conclude the merging of the EVI and δ(18)O in precipitation can greatly extend the spatial and temporal data availability and thus enhance the applicability for both the EVI and water isoscape.
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spelling pubmed-34468782012-10-01 Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI Chan, Wei-Ping Yuan, Hsiao-Wei Huang, Cho-Ying Wang, Chung-Ho Lin, Shou-De Lo, Yi-Chen Huang, Bo-Wen Hatch, Kent A. Shiu, Hau-Jie You, Cheng-Feng Chang, Yuan-Mou Shen, Sheng-Feng PLoS One Research Article The natural variation in stable water isotope ratio data, also known as water isoscape, is a spatiotemporal fingerprint and a powerful natural tracer that has been widely applied in disciplines as diverse as hydrology, paleoclimatology, ecology and forensic investigation. Although much effort has been devoted to developing a predictive water isoscape model, it remains a central challenge for scientists to generate high accuracy, fine scale spatiotemporal water isoscape prediction. Here we develop a novel approach of using the MODIS-EVI (the Moderate Resolution Imagining Spectroradiometer-Enhanced Vegetation Index), to predict δ(18)O in precipitation at the regional scale. Using a structural equation model, we show that the EVI and precipitated δ(18)O are highly correlated and thus the EVI is a good predictor of precipitated δ(18)O. We then test the predictability of our EVI-δ(18)O model and demonstrate that our approach can provide high accuracy with fine spatial (250×250 m) and temporal (16 days) scale δ(18)O predictions (annual and monthly predictabilities [r] are 0.96 and 0.80, respectively). We conclude the merging of the EVI and δ(18)O in precipitation can greatly extend the spatial and temporal data availability and thus enhance the applicability for both the EVI and water isoscape. Public Library of Science 2012-09-19 /pmc/articles/PMC3446878/ /pubmed/23029053 http://dx.doi.org/10.1371/journal.pone.0045496 Text en © 2012 Chan et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Chan, Wei-Ping
Yuan, Hsiao-Wei
Huang, Cho-Ying
Wang, Chung-Ho
Lin, Shou-De
Lo, Yi-Chen
Huang, Bo-Wen
Hatch, Kent A.
Shiu, Hau-Jie
You, Cheng-Feng
Chang, Yuan-Mou
Shen, Sheng-Feng
Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI
title Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI
title_full Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI
title_fullStr Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI
title_full_unstemmed Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI
title_short Regional Scale High Resolution δ(18)O Prediction in Precipitation Using MODIS EVI
title_sort regional scale high resolution δ(18)o prediction in precipitation using modis evi
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3446878/
https://www.ncbi.nlm.nih.gov/pubmed/23029053
http://dx.doi.org/10.1371/journal.pone.0045496
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