Understanding Fields by Remote Sensing: Soil Zoning and Property Mapping

Precision agriculture aims to optimize field management to increase agronomic yield, reduce environmental impact, and potentially foster soil carbon sequestration. In 2015, the Copernicus mission, with Sentinel-1 and -2, opened a new era by providing freely available high spatial and temporal resolu...

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Main Authors: Onur Yuzugullu, Frank Lorenz, Peter Fröhlich, Frank Liebisch
Format: Article
Language:English
Published: MDPI AG 2020-04-01
Series:Remote Sensing
Subjects:
pH
Online Access:https://www.mdpi.com/2072-4292/12/7/1116
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spelling doaj-aa2e511702f745bb92e20604ee7a1dfe2020-11-25T03:10:55ZengMDPI AGRemote Sensing2072-42922020-04-01121116111610.3390/rs12071116Understanding Fields by Remote Sensing: Soil Zoning and Property MappingOnur Yuzugullu0Frank Lorenz1Peter Fröhlich2Frank Liebisch3AgriCircle, Rapperswil-Jona, 8640 St.Gallen, SwitzerlandLUFA Nord-West, Jägerstr. 23 - 27, 26121 Oldenburg, GermanyAgriCircle, Rapperswil-Jona, 8640 St.Gallen, SwitzerlandGroup of Crop Science, Department of Environmental Systems Science, ETH Zurich, 8092 Zurich, SwitzerlandPrecision agriculture aims to optimize field management to increase agronomic yield, reduce environmental impact, and potentially foster soil carbon sequestration. In 2015, the Copernicus mission, with Sentinel-1 and -2, opened a new era by providing freely available high spatial and temporal resolution satellite data. Since then, many studies have been conducted to understand, monitor and improve agricultural systems. This paper presents results from the SolumScire project, focusing on the prediction of the spatial distribution of soil zones and topsoil properties, such as pH, soil organic matter (SOM) and clay content in agricultural fields through random forest algorithms. For this purpose, samples from 120 fields were investigated. The zoning and soil property prediction has an accuracy greater than 90%. This is supported by a high agreement of the derived zones with farmer’s observations. The trained models revealed a prediction accuracy of 94%, 89% and 96% for pH, SOM and clay content, respectively. The obtained models for soil properties can support precision field management, the improvement of soil sampling and fertilization strategies, and eventually the management of soil properties such as SOM.https://www.mdpi.com/2072-4292/12/7/1116soil property predictionpHsoil organic mattersoil clay contentprecision agricultureCopernicus mission
collection DOAJ
language English
format Article
sources DOAJ
author Onur Yuzugullu
Frank Lorenz
Peter Fröhlich
Frank Liebisch
spellingShingle Onur Yuzugullu
Frank Lorenz
Peter Fröhlich
Frank Liebisch
Understanding Fields by Remote Sensing: Soil Zoning and Property Mapping
Remote Sensing
soil property prediction
pH
soil organic matter
soil clay content
precision agriculture
Copernicus mission
author_facet Onur Yuzugullu
Frank Lorenz
Peter Fröhlich
Frank Liebisch
author_sort Onur Yuzugullu
title Understanding Fields by Remote Sensing: Soil Zoning and Property Mapping
title_short Understanding Fields by Remote Sensing: Soil Zoning and Property Mapping
title_full Understanding Fields by Remote Sensing: Soil Zoning and Property Mapping
title_fullStr Understanding Fields by Remote Sensing: Soil Zoning and Property Mapping
title_full_unstemmed Understanding Fields by Remote Sensing: Soil Zoning and Property Mapping
title_sort understanding fields by remote sensing: soil zoning and property mapping
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-04-01
description Precision agriculture aims to optimize field management to increase agronomic yield, reduce environmental impact, and potentially foster soil carbon sequestration. In 2015, the Copernicus mission, with Sentinel-1 and -2, opened a new era by providing freely available high spatial and temporal resolution satellite data. Since then, many studies have been conducted to understand, monitor and improve agricultural systems. This paper presents results from the SolumScire project, focusing on the prediction of the spatial distribution of soil zones and topsoil properties, such as pH, soil organic matter (SOM) and clay content in agricultural fields through random forest algorithms. For this purpose, samples from 120 fields were investigated. The zoning and soil property prediction has an accuracy greater than 90%. This is supported by a high agreement of the derived zones with farmer’s observations. The trained models revealed a prediction accuracy of 94%, 89% and 96% for pH, SOM and clay content, respectively. The obtained models for soil properties can support precision field management, the improvement of soil sampling and fertilization strategies, and eventually the management of soil properties such as SOM.
topic soil property prediction
pH
soil organic matter
soil clay content
precision agriculture
Copernicus mission
url https://www.mdpi.com/2072-4292/12/7/1116
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AT peterfrohlich understandingfieldsbyremotesensingsoilzoningandpropertymapping
AT frankliebisch understandingfieldsbyremotesensingsoilzoningandpropertymapping
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