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Evaluating spectral indices for winter wheat health status monitoring in Bloemfontein using Lsat 8 data

机译:利用Lsat 8数据评价布隆方丹冬小麦健康状况监测的光谱指数

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摘要

Monitoring wheat growth under different weather and ecological conditions is vital for a reliable supply of wheat yield estimations. Remote sensing techniques have been applied in the agricultural sector for monitoring crop biophysical properties and predicting crop yields. This study explored the application of Land Surface Temperature (LST)-vegetation index relationships for winter wheat in order to determine indices that are sensitive to changes in the wheat health status. The indices were derived from Landsat 8 scenes over the wheat growing area across Bloemfontein, South Africa. The vegetation abundance indices evaluated were the Normalised Difference Vegetation Index (NDVI) and the Green Normalised Difference Vegetation Index (GNDVI). The moisture indices evaluated were the Normalised Difference Water Index (NDWI) and the Normalised Difference Moisture Index (NDMI). The results demonstrated that LST exhibited an opposing trend with the vegetation abundance indices and an analogous trend with the moisture indices. Furthermore, NDVI proved to be a better index for winter wheat abundance as compared to the GNDVI. The NDWI proved to be a better index for determining water stress in winter wheat as compared to the NDMI. These results indicate that NDVI and NDWI are very sensitive to LST. These indices can be comprehensive indicators for winter wheat health status. These pilot results prove that LST-vegetation index relationships can be used for agricultural applications with a high level of accuracy.
机译:监测不同天气和生态条件下的小麦生长对于可靠地提供小麦产量估算至关重要。遥感技术已用于农业部门,以监测作物的生物物理特性并预测作物的产量。这项研究探索了地表温度(LST)-植被指数关系在冬小麦中的应用,以便确定对小麦健康状况变化敏感的指数。这些指数来自南非布隆方丹的小麦种植区的Landsat 8个场景。评估的植被丰度指数为归一化植被指数(NDVI)和绿色归一化植被指数(GNDVI)。评估的水分指数是归一化水差指数(NDWI)和归一化水份湿度指数(NDMI)。结果表明,LST与植被丰度指数呈相反趋势,与水分指数呈相似趋势。此外,与GNDVI相比,NDVI被证明是更好的冬小麦丰度指数。与NDMI相比,NDWI被证明是确定冬小麦水分胁迫的更好指标。这些结果表明,NDVI和NDWI对LST非常敏感。这些指标可以作为冬小麦健康状况的综合指标。这些试验结果证明,LST-植被指数关系可以用于农业应用,具有很高的准确性。

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