Guidelines for precise lime management based on high-resolution soil pH, texture and SOM maps generated from proximal soil sensing data

被引:0
|
作者
Eric Bönecke
Swen Meyer
Sebastian Vogel
Ingmar Schröter
Robin Gebbers
Charlotte Kling
Eckart Kramer
Katrin Lück
Anne Nagel
Golo Philipp
Felix Gerlach
Stefan Palme
Dirk Scheibe
Karin Zieger
Jörg Rühlmann
机构
[1] Leibniz-Institute of Vegetable and Ornamental Crops,Leibniz Institute for Agricultural Engineering and Bioeconomy (ATB)
[2] Engineering for Plant Production,Eberswalde University for Sustainable Development
[3] Landscape Management and Nature Conservation,undefined
[4] Gut Wilmersdorf GbR,undefined
[5] Land- und Forstwirtschaft Komturei Lietzen GmbH & Co KG,undefined
[6] Landwirtschaft Petra Philipp,undefined
[7] LAB Landwirtschaftliche Beratung Der Agrarverbände Brandenburg GmbH,undefined
[8] iXmap Service GmbH & Co. KG,undefined
来源
Precision Agriculture | 2021年 / 22卷
关键词
Variable rate soil liming; Soil texture; Soil pH; Soil organic matter; Soil sensing; Site specific soil management;
D O I
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中图分类号
学科分类号
摘要
Soil acidification is caused by natural paedogenetic processes and anthropogenic impacts but can be counteracted by regular lime application. Although sensors and applicators for variable-rate liming (VRL) exist, there are no established strategies for using these tools or helping to implement VRL in practice. Therefore, this study aimed to provide guidelines for site-specific liming based on proximal soil sensing. First, high-resolution soil maps of the liming-relevant indicators (pH, soil texture and soil organic matter content) were generated using on-the-go sensors. The soil acidity was predicted by two ion-selective antimony electrodes (RMSEpH: 0.37); the soil texture was predicted by a combination of apparent electrical resistivity measurements and natural soil-borne gamma emissions (RMSEclay: 0.046 kg kg−1); and the soil organic matter (SOM) status was predicted by a combination of red (660 nm) and near-infrared (NIR, 970 nm) optical reflection measurements (RMSESOM: 6.4 g kg−1). Second, to address the high within-field soil variability (pH varied by 2.9 units, clay content by 0.44 kg kg−1 and SOM by 5.5 g kg−1), a well-established empirical lime recommendation algorithm that represents the best management practices for liming in Germany was adapted, and the lime requirements (LRs) were determined. The generated workflow was applied to a 25.6 ha test field in north-eastern Germany, and the variable LR was compared to the conventional uniform LR. The comparison showed that under the uniform liming approach, 63% of the field would be over-fertilized by approximately 12 t of lime, 6% would receive approximately 6 t too little lime and 31% would still be adequately limed.
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页码:493 / 523
页数:30
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