Babaeian Ebrahim, Sidike Paheding, Newcomb Maria S, Maimaitijiang Maitiniyazi, White Scott A, Demieville Jeffrey, Ward Richard W, Sadeghi Morteza, LeBauer David S, Jones Scott B, Sagan Vasit, Tuller Markus
Department of Environmental Science, The University of Arizona, Tucson, AZ, United States.
Department of Electrical and Computer Engineering, Purdue University Northwest, Hammond, IN, United States.
Front Big Data. 2019 Nov 5;2:37. doi: 10.3389/fdata.2019.00037. eCollection 2019.
The recently developed OPtical TRApezoid Model (OPTRAM) has been successfully applied for watershed scale soil moisture (SM) estimation based on remotely sensed shortwave infrared (SWIR) transformed reflectance (TR) and the normalized difference vegetation index (NDVI). This study is aimed at the evaluation of OPTRAM for field scale precision agriculture applications using ultrahigh spatial resolution optical observations obtained with one of the world's largest field robotic phenotyping scanners located in Maricopa, Arizona. We replaced NDVI with the soil adjusted vegetation index (SAVI), which has been shown to be more accurate for cropped agricultural fields that transition from bare soil to dense vegetation cover. The OPTRAM was parameterized based on the trapezoidal geometry of the pixel distribution within the TR-SAVI space, from which wet- and dry-edge parameters were determined. The accuracy of the resultant SM estimates is evaluated based on a comparison with ground reference measurements obtained with Time Domain Reflectometry (TDR) sensors deployed to monitor surface, near-surface and root zone SM. The obtained results indicate an SM estimation error between 0.045 and 0.057 cm cm for the near-surface and root zone, respectively. The high resolution SM maps clearly capture the spatial SM variability at the sensor locations. These findings and the presented framework can be applied in conjunction with Unmanned Aerial System (UAS) observations to assist with farm scale precision irrigation management to improve water use efficiency of cropping systems and conserve water in water-limited regions of the world.
最近开发的光学梯形模型(OPTRAM)已成功应用于基于遥感短波红外(SWIR)变换反射率(TR)和归一化植被指数(NDVI)的流域尺度土壤湿度(SM)估算。本研究旨在评估OPTRAM在田间尺度精准农业中的应用,利用位于亚利桑那州马里科帕的世界上最大的田间机器人表型扫描仪之一获得的超高空间分辨率光学观测数据。我们用土壤调整植被指数(SAVI)取代了NDVI,对于从裸土过渡到茂密植被覆盖的种植农田,SAVI已被证明更准确。OPTRAM基于TR-SAVI空间内像素分布的梯形几何形状进行参数化,由此确定湿边和干边参数。基于与部署用于监测表层、近表层和根区土壤湿度的时域反射仪(TDR)传感器获得的地面参考测量值进行比较,评估所得土壤湿度估算值的准确性。获得的结果表明,近表层和根区的土壤湿度估算误差分别在0.045至0.057 cm/cm之间。高分辨率土壤湿度图清楚地捕捉到了传感器位置处土壤湿度的空间变异性。这些发现和所提出的框架可与无人机系统(UAS)观测结合应用,以协助农场尺度的精准灌溉管理,提高种植系统的用水效率,并在世界水资源有限的地区节约用水。