Abstract

The determination of soil texture and organic carbon across agricultural areas provides important information to derive soil condition. Precise digital soil maps can help to till agricultural fields with more accuracy, greater cost-efficiency and better environmental protection. In the present study, the laboratory analysis of sand, silt, clay and soil organic carbon (SOC) content was combined with hyperspectral image data to estimate the distribution of soil texture and SOC across an agricultural area. The aim was to identify regions with similar soil properties and derive uniform soil regions based on this information. Soil parameter data and corresponding laboratory spectra were used to calibrate cross-validated (leave-one-out) partial least squares regression (PLSR) models, resulting in robust models for sand (R2 = 0.77, root-mean-square error (RMSE) = 5.37) and SOC (R2 = 0.89, RMSE = 0.27), as well as moderate models for silt (R2 = 0.62, RMSE = 5.46) and clay (R2 = 0.53, RMSE = 2.39). The regression models were applied to Airborne Imaging Spectrometer for Applications DUAL (aisaDUAL) hyperspectral image data to spatially estimate the concentration of these parameters. Afterwards, a decision tree, based on the Food and Agriculture Organization (FAO) soil texture classification scheme, was developed to determine the soil texture for each pixel of the hyperspectral airborne data. These soil texture regions were further refined with the spatial SOC estimations. The developed method is useful to identify spatial regions with similar soil properties, which can provide a vital information source for an adapted treatment of agricultural fields in terms of the necessary amount of fertilizers or water. The approach can also be adapted to wider regions with a larger sample size to create detailed digital soil maps (DSMs). Further, the presented method should be applied to future hyperspectral satellite missions like Environmental Mapping and Analysis Program (EnMap) and Hyperspectral Infrared Imager (HyspIRI) to cover larger areas in shorter time intervals. Updated DSMs on a regular basis could particularly support precision farming aspects.

Highlights

  • Many human interests, such as food production and water quality, are fundamentally connected to soils

  • On average the sand fraction content is represented with 34.3%, while silt contents occur with an average of 47.4%

  • The approach presented in this study allowed for a successful determination of soil texture and soil organic carbon (SOC) from hyperspectral image data

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Summary

Introduction

Many human interests, such as food production and water quality, are fundamentally connected to soils. To prevent soils from degradation, reasonable and sustainable soil management on both a global and local scale is mandatory [1]. Precision agriculture can essentially support these challenges by improving nutrient efficiency and productivity, reducing environmental damages [2]. Current agricultural machinery can provide farmers with additional information about soils and plants. This information can be Remote Sens. 2016, 8, 927; doi:10.3390/rs8110927 www.mdpi.com/journal/remotesensing

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