首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Detection of diurnal variation in orchard canopy water content using MODIS/ASTER airborne simulator (MASTER) data
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Detection of diurnal variation in orchard canopy water content using MODIS/ASTER airborne simulator (MASTER) data

机译:使用MODIS / ASTER机载模拟器(MASTER)数据检测果园冠层水分的昼夜变化

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摘要

Retrievals of vegetation canopy water content (CWC) from remotely sensed imagery can improve our understanding of the water cycle and help manage irrigation of agricultural crops. Optical remote sensing data can be used to detect seasonal CWC variation but whether they are sensitive enough for detecting diurnal CWC variation remains unknown. This paper investigates whether MODIS/ASTER airborne simulator (MASTER) data can be used to detect diurnal variation in CWC over well irrigated almond and pistachio orchards in the southern San Joaquin Valley of California, USA. MASTER images were first corrected for the Bi-directional Reflectance Distribution Function (BRDF) effect to remove cross-track variation in reflectance amplitude. Two spectral indexes, the Normalized Difference Infrared Index (NDII) and the Normalized Difference Vegetation Index (NDVI), were derived from corrected morning and afternoon MASTER imagery and related to the field-measured CWC. At the ground level, a significant decrease (~9%) in CWC occurred from morning to afternoon (p<0.0001). The field-measured CWC was positively correlated with MASTER-derived NDII and NDVI for both morning (NDII: r~2=0.67, NDVI: r~2=0.56, p<0.0001) and afternoon (NDII: r~2=0.42, NDVI: r~2=0.39, p<0.001) data. The diurnal change in CWC also led to a statistically significant spectral change that was observed as a 4% decline in NDII (p<0.005) or 2% decline in NDVI (p<0.0005). Our results show that the diurnal variation in CWC can be detected for the irrigated orchards using simple spectral indexes derived from MASTER data, with higher sensitivity for NDII than for NDVI as expected. The results also demonstrate the potential for remote sensing to improve crop management and better understand plant physiological changes at field to regional scales.
机译:从遥感影像中检索植被冠层含水量(CWC)可以增进我们对水循环的理解,并有助于管理农作物的灌溉。光学遥感数据可用于检测季节性CWC变化,但是它们是否足够灵敏以检测CWC的昼夜变化尚不清楚。本文研究了MODIS / ASTER机载模拟器(MASTER)数据是否可用于检测美国加利福尼亚南部圣华金河谷灌溉良好的杏仁果园和开心果果园中CWC的日变化。首先针对双向反射率分布函数(BRDF)效果校正了MASTER图像,以消除反射率幅度中的跨轨变化。从校正后的上午和下午的MASTER影像中得出两个光谱指数,即归一化差异红外指数(NDII)和归一化差异植被指数(NDVI),它们与实地测得的CWC有关。在地面水平,从早上到下午,CWC发生了显着下降(〜9%)(p <0.0001)。现场测量的CWC与早晨(NDII:r〜2 = 0.67,NDVI:r〜2 = 0.56,p <0.0001)和下午(NDII:r〜2 = 0.42)的MASTER衍生NDII和NDVI正相关, NDVI:r〜2 = 0.39,p <0.001)数据。 CWC的昼夜变化还导致统计学上显着的光谱变化,观察到该变化为NDII下降4%(p <0.005)或NDVI下降2%(p <0.0005)。我们的结果表明,使用从MASTER数据得出的简单光谱指数,可以检测出灌溉果园的CWC日变化,与预期的相比,NDII的灵敏度更高。结果还表明,遥感技术可以改善作物管理并更好地了解田间到区域尺度的植物生理变化。

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