Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time Series

High-frequency Earth observation (EO) data have been shown to be effective in identifying crops and monitoring their development. The purpose of this paper is to derive quantitative indicators of crop productivity using synthetic aperture radar (SAR). This study shows that the field-specific SAR tim...

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Main Authors: Nikolaos-Christos Vavlas, Toby W. Waine, Jeroen Meersmans, Paul J. Burgess, Giacomo Fontanelli, Goetz M. Richter
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Remote Sensing
Subjects:
SAR
Online Access:https://www.mdpi.com/2072-4292/12/15/2385
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spelling doaj-650f49f4677148449d2ca8ba0f9e13e62020-11-25T01:26:52ZengMDPI AGRemote Sensing2072-42922020-07-01122385238510.3390/rs12152385Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time SeriesNikolaos-Christos Vavlas0Toby W. Waine1Jeroen Meersmans2Paul J. Burgess3Giacomo Fontanelli4Goetz M. Richter5Sustainable Agriculture Sciences, Rothamsted Research, Harpenden, AL5 2JQ, UKSchool of Water, Energy and Environment, Cranfield University, Cranfield, Bedfordshire, MK43 0AL, UKSchool of Water, Energy and Environment, Cranfield University, Cranfield, Bedfordshire, MK43 0AL, UKSchool of Water, Energy and Environment, Cranfield University, Cranfield, Bedfordshire, MK43 0AL, UKSustainable Agriculture Sciences, Rothamsted Research, Harpenden, AL5 2JQ, UKSustainable Agriculture Sciences, Rothamsted Research, Harpenden, AL5 2JQ, UKHigh-frequency Earth observation (EO) data have been shown to be effective in identifying crops and monitoring their development. The purpose of this paper is to derive quantitative indicators of crop productivity using synthetic aperture radar (SAR). This study shows that the field-specific SAR time series can be used to characterise growth and maturation periods and to estimate the performance of cereals. Winter wheat fields on the Rothamsted Research farm in Harpenden (UK) were selected for the analysis during three cropping seasons (2017 to 2019). Average SAR backscatter from Sentinel-1 satellites was extracted for each field and temporal analysis was applied to the backscatter cross-polarisation ratio (VH/VV). The calculation of the different curve parameters during the growing period involves i) fitting of two logistic curves to the dynamics of the SAR time series, which describe timing and intensity of growth and maturation, respectively; ii) plotting the associated first and second derivative in order to assist the determination of key stages in the crop development; and iii) exploring the correlation matrix for the derived indicators and their predictive power for yield. The results show that the day of the year of the maximum VH/VV value was negatively correlated with yield (r = −0.56), and the duration of “full” vegetation was positively correlated with yield (r = 0.61). Significant seasonal variation in the timing of peak vegetation (p = 0.042), the midpoint of growth (p = 0.037), the duration of the growing season (p = 0.039) and yield (p = 0.016) were observed and were consistent with observations of crop phenology. Further research is required to obtain a more detailed picture of the uncertainty of the presented novel methodology, as well as its validity across a wider range of agroecosystems.https://www.mdpi.com/2072-4292/12/15/2385Sentinel-1crop developmentremote sensingproductivity indicatorswheatSAR
collection DOAJ
language English
format Article
sources DOAJ
author Nikolaos-Christos Vavlas
Toby W. Waine
Jeroen Meersmans
Paul J. Burgess
Giacomo Fontanelli
Goetz M. Richter
spellingShingle Nikolaos-Christos Vavlas
Toby W. Waine
Jeroen Meersmans
Paul J. Burgess
Giacomo Fontanelli
Goetz M. Richter
Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time Series
Remote Sensing
Sentinel-1
crop development
remote sensing
productivity indicators
wheat
SAR
author_facet Nikolaos-Christos Vavlas
Toby W. Waine
Jeroen Meersmans
Paul J. Burgess
Giacomo Fontanelli
Goetz M. Richter
author_sort Nikolaos-Christos Vavlas
title Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time Series
title_short Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time Series
title_full Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time Series
title_fullStr Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time Series
title_full_unstemmed Deriving Wheat Crop Productivity Indicators Using Sentinel-1 Time Series
title_sort deriving wheat crop productivity indicators using sentinel-1 time series
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-07-01
description High-frequency Earth observation (EO) data have been shown to be effective in identifying crops and monitoring their development. The purpose of this paper is to derive quantitative indicators of crop productivity using synthetic aperture radar (SAR). This study shows that the field-specific SAR time series can be used to characterise growth and maturation periods and to estimate the performance of cereals. Winter wheat fields on the Rothamsted Research farm in Harpenden (UK) were selected for the analysis during three cropping seasons (2017 to 2019). Average SAR backscatter from Sentinel-1 satellites was extracted for each field and temporal analysis was applied to the backscatter cross-polarisation ratio (VH/VV). The calculation of the different curve parameters during the growing period involves i) fitting of two logistic curves to the dynamics of the SAR time series, which describe timing and intensity of growth and maturation, respectively; ii) plotting the associated first and second derivative in order to assist the determination of key stages in the crop development; and iii) exploring the correlation matrix for the derived indicators and their predictive power for yield. The results show that the day of the year of the maximum VH/VV value was negatively correlated with yield (r = −0.56), and the duration of “full” vegetation was positively correlated with yield (r = 0.61). Significant seasonal variation in the timing of peak vegetation (p = 0.042), the midpoint of growth (p = 0.037), the duration of the growing season (p = 0.039) and yield (p = 0.016) were observed and were consistent with observations of crop phenology. Further research is required to obtain a more detailed picture of the uncertainty of the presented novel methodology, as well as its validity across a wider range of agroecosystems.
topic Sentinel-1
crop development
remote sensing
productivity indicators
wheat
SAR
url https://www.mdpi.com/2072-4292/12/15/2385
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