Prediction of protein content in malting barley using proximal and remote sensing

被引:0
作者
Mats Söderström
Thomas Börjesson
Carl-Göran Pettersson
Knud Nissen
Olle Hagner
机构
[1] Swedish University of Agricultural Sciences,Department of Soil and Environment
[2] Lantmännen Lantbruk,Department of Forest Resource Management
[3] Sweco Position AB,undefined
[4] Swedish University of Agricultural Sciences,undefined
来源
Precision Agriculture | 2010年 / 11卷
关键词
Malting barley; Yara N-Sensor; Satellite image; Proximal sensing; Remote sensing; Vegetation index;
D O I
暂无
中图分类号
学科分类号
摘要
This paper examines the prediction of within-field differences in protein in malting barley at a late growth stage using the Yara N-Sensor and prediction of its regional variation with medium resolution satellite images. Field predictions of protein in the crop at a late growth stage could be useful for harvest planning, whereas regional prediction of barley quality before harvest would be useful for the grain industry. The project was carried out in central Sweden where the variation in protein content of malting barley has been documented both within fields and regionally. Scanning with an N-sensor and crop sampling were carried out in 2007 and 2008 at several fields. The regional data used consisted of weather data, quality analyses of the malting barley delivered to the major farmers’ co-operative, crops grown and field boundaries. Satellite scenes (SPOT 5 and IRS-P6 LISS-III) were acquired from a date as close as possible to the N-sensor scans. Reasonable partial least squares (PLS) models could be constructed based on weather and reflectance data from either the N-sensor or satellite. The models used mainly reflectance data, but the weather data improved them. Better field models could be created with data from the N-sensor than from the satellite image, but a local satellite-based model based on a simple ratio (middle infrared/green) in combination with weather was useful in regional prediction of malting barley protein. A regional prediction model based only on the weather variables explained about half the variation in recorded protein.
引用
收藏
页码:587 / 599
页数:12
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