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Improving Jujube Fruit Tree Yield Estimation at the Field Scale by Assimilating a Single Landsat Remotely-Sensed LAI into the WOFOST Model

机译:通过将单个Landsat遥感LAI纳入WOFOST模型,在田间尺度上改善枣果树的产量估算

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Few studies were focused on yield estimation of perennial fruit tree crops by integrating remotely-sensed information into crop models. This study presented an attempt to assimilate a single leaf area index (LAI) near to maximum vegetative development stages derived from Landsat satellite data into a calibrated WOFOST model to predict yields for jujube fruit trees at the field scale. Field experiments were conducted in three growth seasons to calibrate input parameters for WOFOST model, with a validated phenology error of ?2, ?3, and ?3 days for emergence, flowering, and maturity, as well as an R 2 of 0.986 and RMSE of 0.624 t ha ?1 for total aboveground biomass (TAGP), R 2 of 0.95 and RMSE of 0.19 m 2 m ?2 for LAI, respectively. Normalized Difference Vegetation Index (NDVI) showed better performance for LAI estimation than a Soil-adjusted Vegetation Index (SAVI), with a better agreement (R 2 = 0.79) and prediction accuracy (RMSE = 0.17 m 2 m ?2 ). The assimilation after forcing LAI improved the yield prediction accuracy compared with unassimilated simulation and remotely sensed NDVI regression method, showing a R 2 of 0.62 and RMSE of 0.74 t ha ?1 for 2016, and R 2 of 0.59 and RMSE of 0.87 t ha ?1 for 2017. This research would provide a strategy to employ remotely sensed state variables and a crop growth model to improve field-scale yield estimates for fruit tree crops.
机译:通过将遥感信息整合到作物模型中,很少有研究专注于多年生果树作物的产量估算。这项研究提出了将来自Landsat卫星数据的接近最大营养发育阶段的单叶面积指数(LAI)吸收到经过校准的WOFOST模型中,以在田间尺度上预测枣果树产量的尝试。在三个生长季节中进行了田间试验,以校准WOFOST模型的输入参数,对于出苗,开花和成熟度,经验证的物候误差为?2,?3和?3天,R 2为0.986和RMSE地上总生物量(TAGP)为0.624 t ha?1,LAI的R 2为0.95,RMSE为0.19 m 2 m?2。归一化植被指数(NDVI)显示的LAI评估性能优于土壤调整植被指数(SAVI),具有较好的一致性(R 2 = 0.79)和预测精度(RMSE = 0.17 m 2 m?2)。与非同化模拟和遥感NDVI回归方法相比,强迫LAI后的同化提高了产量预测精度,2016年的R 2为0.62,RMSE为0.74 t ha?1,R 2为0.59,RMSE为0.87 t ha?1。 1表示2017年。这项研究将提供一种策略,以利用遥感状态变量和作物生长模型来改善果树作物的田间规模估计产量。

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