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Estimating Crop Coefficients Using Linear and Deep Stochastic Configuration Networks Models and UAV-Based Normalized Difference Vegetation Index (NDVI)

机译:使用线性和深度随机配置网络模型和基于无人机的归一化差异植被指数(NDVI)估算作物系数

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Crop coefficient (Kc) methods have been commonly used for evapotranspiration estimation. Researchers estimate Kc as a function of the vegetation index because of similarities between the Kc curve and the vegetation index curve. A linear regression model is usually developed between the Kc and the normalized difference vegetation index (NDVI) derived from satellite imagery. However, the spatial resolution of satellite imagery is in the range of meters or greater, which is often not enough for crops with clumped canopy structures, such as trees, and vines. In this study, the Unmanned Aerial Vehicles (UAVs) were used to collect high-resolution images in an experimental pomegranate orchard located at the USDA-ARS, San Joaquin Valley Agricultural Sciences Center, Parlier, CA. The NDVI values were derived from UAV images. The Kc values were measured from a weighing lysimeter in the pomegranate field. The relationship between the NDVI and Kc was established by using both a linear regression model and a deep stochastic configuration networks (DeepSCNs) model. Results show that the linear regression model has an R2 and RMSE value of 0.975 and 0.05, respectively. The DeepSCNs regression model has an R2 and RMSE value of 0.995 and 0.046, respectively. The DeepSCNs model showed improved performance than the linear regression model in predicting Kc from NDVI.
机译:作物系数(K c )方法通常用于蒸散估算。研究人员估计K c 由于K之间的相似性,它是植被指数的函数 c 曲线和植被指数曲线。通常在K之间建立线性回归模型 c 以及从卫星图像得出的归一化植被指数(NDVI)。但是,卫星图像的空间分辨率在米或更高的范围内,这通常不足以使树冠结构结块的农作物,例如树木和藤本植物。在这项研究中,无人驾驶飞机(UAV)用于在位于美国加利福尼亚州Parlier的San Joaquin Valley农业科学中心USDA-ARS的实验性石榴园中收集高分辨率图像。 NDVI值是从无人机图像得出的。 K c 值是通过石榴场中的称重测渗仪测得的。 NDVI和K之间的关系 c 通过使用线性回归模型和深度随机配置网络(DeepSCN)模型来建立。结果表明线性回归模型具有R 2 和RMSE值分别为0.975和0.05。 DeepSCN回归模型具有R 2 和RMSE值分别为0.995和0.046。在预测K值方面,DeepSCNs模型显示出比线性回归模型更高的性能 c 来自NDVI。

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