Improving daily rainfall estimation from NDVI using wavelet transform

Quantifying rainfall at spatial and temporal scales in regions where meteorological stations are scarce is important for agriculture, natural resource management and land-atmosphere interactions science. We describe a new approach to reconstruct daily rainfall from rain gauge data and the normalized...

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Main Authors: Quiróz, R., Yarleque, C., Posadas, A., Mares, V., Immerzeel, W.W.
Format: Journal Article
Language:Inglés
Published: Elsevier 2011
Subjects:
Online Access:https://hdl.handle.net/10568/42051
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author Quiróz, R.
Yarleque, C.
Posadas, A.
Mares, V.
Immerzeel, W.W.
author_browse Immerzeel, W.W.
Mares, V.
Posadas, A.
Quiróz, R.
Yarleque, C.
author_facet Quiróz, R.
Yarleque, C.
Posadas, A.
Mares, V.
Immerzeel, W.W.
author_sort Quiróz, R.
collection Repository of Agricultural Research Outputs (CGSpace)
description Quantifying rainfall at spatial and temporal scales in regions where meteorological stations are scarce is important for agriculture, natural resource management and land-atmosphere interactions science. We describe a new approach to reconstruct daily rainfall from rain gauge data and the normalized difference vegetation index (NDVI) based on the fact that both signals are periodic and proportional. The procedure combines the Fourier Transform (FT) and the Wavelet Transform (WT). FT was used to estimate the lag time between rainfall and the vegetation response. Subsequently, third level decompositions of both signals with WT were used for the reconstruction process, determined by the entropy difference between levels and R2. The low-frequency NDVI data signal, to which the high frequency signal (noise) extracted from the rainfall data was added, was the base for the reconstruction. The reconstructed and the measured rainfall showed similar entropy levels and better determination coefficients (>0.81) than the estimates with conventional statistical relations reported in the literature where this level of precision is only found for comparisons at the seasonal levels. Cross-validation resulted in ?10% entropy differences, compared to more than 45% obtained for the standard method when the NDVI was used to estimate the rainfall in the same pixel where the weather station was located. This methodology based on high resolution NDVI fields and data from a limited number of meteorological stations improves spatial reconstruction of rainfall.
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spelling CGSpace420512023-12-08T19:36:04Z Improving daily rainfall estimation from NDVI using wavelet transform Quiróz, R. Yarleque, C. Posadas, A. Mares, V. Immerzeel, W.W. agriculture climate rain Quantifying rainfall at spatial and temporal scales in regions where meteorological stations are scarce is important for agriculture, natural resource management and land-atmosphere interactions science. We describe a new approach to reconstruct daily rainfall from rain gauge data and the normalized difference vegetation index (NDVI) based on the fact that both signals are periodic and proportional. The procedure combines the Fourier Transform (FT) and the Wavelet Transform (WT). FT was used to estimate the lag time between rainfall and the vegetation response. Subsequently, third level decompositions of both signals with WT were used for the reconstruction process, determined by the entropy difference between levels and R2. The low-frequency NDVI data signal, to which the high frequency signal (noise) extracted from the rainfall data was added, was the base for the reconstruction. The reconstructed and the measured rainfall showed similar entropy levels and better determination coefficients (>0.81) than the estimates with conventional statistical relations reported in the literature where this level of precision is only found for comparisons at the seasonal levels. Cross-validation resulted in ?10% entropy differences, compared to more than 45% obtained for the standard method when the NDVI was used to estimate the rainfall in the same pixel where the weather station was located. This methodology based on high resolution NDVI fields and data from a limited number of meteorological stations improves spatial reconstruction of rainfall. 2011-02 2014-08-15T12:13:20Z 2014-08-15T12:13:20Z Journal Article https://hdl.handle.net/10568/42051 en Limited Access Elsevier Quiroz R, Yarlequé C, Posadas A, Mares V, Immerzeel WW. 2011. Improving daily rainfall estimation from NDVI using wavelet transform. Environmental Modelling & Software, 26(2):201-209.
spellingShingle agriculture
climate
rain
Quiróz, R.
Yarleque, C.
Posadas, A.
Mares, V.
Immerzeel, W.W.
Improving daily rainfall estimation from NDVI using wavelet transform
title Improving daily rainfall estimation from NDVI using wavelet transform
title_full Improving daily rainfall estimation from NDVI using wavelet transform
title_fullStr Improving daily rainfall estimation from NDVI using wavelet transform
title_full_unstemmed Improving daily rainfall estimation from NDVI using wavelet transform
title_short Improving daily rainfall estimation from NDVI using wavelet transform
title_sort improving daily rainfall estimation from ndvi using wavelet transform
topic agriculture
climate
rain
url https://hdl.handle.net/10568/42051
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AT yarlequec improvingdailyrainfallestimationfromndviusingwavelettransform
AT posadasa improvingdailyrainfallestimationfromndviusingwavelettransform
AT maresv improvingdailyrainfallestimationfromndviusingwavelettransform
AT immerzeelww improvingdailyrainfallestimationfromndviusingwavelettransform