Long-Term Grass Biomass Estimation of Pastures from Satellite Data

The general consensus on future climate projections poses new and increased concerns about climate change and its impacts. Droughts are primarily worrying, since they contribute to altering the composition, distribution, and abundance of species. Grasslands, for example, are the primary source for g...

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Main Authors: Chiara Clementini, Andrea Pomente, Daniele Latini, Hideki Kanamaru, Maria Raffaella Vuolo, Ana Heureux, Mariko Fujisawa, Giovanni Schiavon, Fabio Del Frate
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/13/2160
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spelling doaj-fcd34492f2884f9a8cd76543ff93b0a92020-11-25T02:57:45ZengMDPI AGRemote Sensing2072-42922020-07-01122160216010.3390/rs12132160Long-Term Grass Biomass Estimation of Pastures from Satellite DataChiara Clementini0Andrea Pomente1Daniele Latini2Hideki Kanamaru3Maria Raffaella Vuolo4Ana Heureux5Mariko Fujisawa6Giovanni Schiavon7Fabio Del Frate8Department of Civil Engineering and Computer Science Engineering DICII, University of Rome “Tor Vergata”, 00133 Rome, ItalyDepartment of Civil Engineering and Computer Science Engineering DICII, University of Rome “Tor Vergata”, 00133 Rome, ItalyGEO-K S.r.l., 00133 Rome, ItalyFood and Agriculture Organization, 00153 Rome, ItalyFood and Agriculture Organization, 00153 Rome, ItalyFood and Agriculture Organization, 00153 Rome, ItalyFood and Agriculture Organization, 00153 Rome, ItalyDepartment of Civil Engineering and Computer Science Engineering DICII, University of Rome “Tor Vergata”, 00133 Rome, ItalyDepartment of Civil Engineering and Computer Science Engineering DICII, University of Rome “Tor Vergata”, 00133 Rome, ItalyThe general consensus on future climate projections poses new and increased concerns about climate change and its impacts. Droughts are primarily worrying, since they contribute to altering the composition, distribution, and abundance of species. Grasslands, for example, are the primary source for grazing mammals and modifications in climate determine variation in the available yields for cattle. To support the agriculture sector, international organizations such as the Food and Agriculture Organization (FAO) of the United Nations are promoting the development of dedicated monitoring initiatives, with particular attention for undeveloped and disadvantaged countries. The temporal scale is very important in this context, where long time series of data are required to compute consistent analyses. In this research, we discuss the results regarding long-term grass biomass estimation in an extended African region. The results are obtained by means of a procedure that is mostly automatic and replicable in other contexts. Zambia has been identified as a significant test area due to its vulnerability to the adverse impacts of climate change as a result of its geographic location, socioeconomic stresses, and low adaptive capacity. In fact, analysis and estimations were performed over a long time window (21 years) to identify correlations with climate variables, such as precipitation, to clarify sensitivity to climate change and possible effects already in place. From the analysis, decline in both grass quality and quantity was not currently evident in the study area. However, pastures in the considered area were found to be vulnerable to changing climate and, in particular, to the water shortages accompanying drought periods.https://www.mdpi.com/2072-4292/12/13/2160climate changebiomass estimationland cover classificationneural networkslong-term analysismultitemporal data
collection DOAJ
language English
format Article
sources DOAJ
author Chiara Clementini
Andrea Pomente
Daniele Latini
Hideki Kanamaru
Maria Raffaella Vuolo
Ana Heureux
Mariko Fujisawa
Giovanni Schiavon
Fabio Del Frate
spellingShingle Chiara Clementini
Andrea Pomente
Daniele Latini
Hideki Kanamaru
Maria Raffaella Vuolo
Ana Heureux
Mariko Fujisawa
Giovanni Schiavon
Fabio Del Frate
Long-Term Grass Biomass Estimation of Pastures from Satellite Data
Remote Sensing
climate change
biomass estimation
land cover classification
neural networks
long-term analysis
multitemporal data
author_facet Chiara Clementini
Andrea Pomente
Daniele Latini
Hideki Kanamaru
Maria Raffaella Vuolo
Ana Heureux
Mariko Fujisawa
Giovanni Schiavon
Fabio Del Frate
author_sort Chiara Clementini
title Long-Term Grass Biomass Estimation of Pastures from Satellite Data
title_short Long-Term Grass Biomass Estimation of Pastures from Satellite Data
title_full Long-Term Grass Biomass Estimation of Pastures from Satellite Data
title_fullStr Long-Term Grass Biomass Estimation of Pastures from Satellite Data
title_full_unstemmed Long-Term Grass Biomass Estimation of Pastures from Satellite Data
title_sort long-term grass biomass estimation of pastures from satellite data
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-07-01
description The general consensus on future climate projections poses new and increased concerns about climate change and its impacts. Droughts are primarily worrying, since they contribute to altering the composition, distribution, and abundance of species. Grasslands, for example, are the primary source for grazing mammals and modifications in climate determine variation in the available yields for cattle. To support the agriculture sector, international organizations such as the Food and Agriculture Organization (FAO) of the United Nations are promoting the development of dedicated monitoring initiatives, with particular attention for undeveloped and disadvantaged countries. The temporal scale is very important in this context, where long time series of data are required to compute consistent analyses. In this research, we discuss the results regarding long-term grass biomass estimation in an extended African region. The results are obtained by means of a procedure that is mostly automatic and replicable in other contexts. Zambia has been identified as a significant test area due to its vulnerability to the adverse impacts of climate change as a result of its geographic location, socioeconomic stresses, and low adaptive capacity. In fact, analysis and estimations were performed over a long time window (21 years) to identify correlations with climate variables, such as precipitation, to clarify sensitivity to climate change and possible effects already in place. From the analysis, decline in both grass quality and quantity was not currently evident in the study area. However, pastures in the considered area were found to be vulnerable to changing climate and, in particular, to the water shortages accompanying drought periods.
topic climate change
biomass estimation
land cover classification
neural networks
long-term analysis
multitemporal data
url https://www.mdpi.com/2072-4292/12/13/2160
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