首页> 外文期刊>Journal of irrigation and drainage engineering >Combining Remotely Sensed Data and Ground-Based Radiometers to Estimate Crop Cover and Surface Temperatures at Daily Time Steps
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Combining Remotely Sensed Data and Ground-Based Radiometers to Estimate Crop Cover and Surface Temperatures at Daily Time Steps

机译:结合遥感数据和地基辐射计,以每日的时间步长估算作物覆盖率和地表温度

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摘要

Estimation of evapotranspiration (ET) is important for monitoring crop water stress and for developing decision support systems for irrigation scheduling. Techniques to estimate ET have been available for many years, while more recently remote sensing data have extended ET into a spatially distributed context. However, remote sensing data cannot be easily used in decision systems if they are not available frequently. For many crops ET estimates are needed at intervals of a week or less, but unfortunately due to cost, weather, and sensor availability constraints, high resolution (<100 m) remote sensing data are usually available no more frequently than 2 weeks. Since resolution of this problem is unlikely to occur soon, a modeling approach has been developed to extrapolate remotely sensed inputs needed to estimate ET. The approach accomplishes this by combining time-series observations from ground-based radiometers and meteorological instruments with episodic visible, near infrared, and thermal infrared remote sensing image data. The key components of the model are a vegetation density predictor and a diurnal land surface temperature disaggregator, both of which supply needed inputs to a surface energy balance model. To illustrate model implementation, remote sensing and ground-based experimental data were collected for cotton grown in 2003 at Maricopa, Ariz. Spatially distributed cotton canopy densities were forecasted for a 22-day interval using vegetation indices from remote sensing and fractional cover from ground-level photography. Spatially distributed canopy and soil surface temperatures were predicted at 15-min time steps for the same interval by scaling diurnal canopy temperatures according to time of day and vegetative cover. Considering that the predictions span a rapid growth phase of the cotton crop, comparison of spatially projected canopy cover with observed cover were reasonably good, with R~2=0.65 and a root-mean-squared error (RMSE) of 0.13. Comparison of predicted temperatures also showed fair agreement with RMSE=2.1 ℃. These results show that combining episodic remotely sensed data with continuous ground-based radiometric data are a technically feasible way to forecast spatially distributed input data needed for ET modeling over crops.
机译:蒸散量(ET)的估算对于监测作物水分胁迫和开发灌溉计划决策支持系统非常重要。估计ET的技术已经使用了很多年,而最近的遥感数据已经将ET扩展到了空间分布的环境中。但是,如果遥感数据不经常使用,则无法在决策系统中轻松使用。对于许多农作物,每隔一周或更短的时间就需要进行一次ET估算,但不幸的是,由于成本,天气和传感器可用性的限制,通常不超过2周就可以获得高分辨率(<100 m)的遥感数据。由于不可能很快解决该问题,因此开发了一种建模方法来推断估计ET所需的遥感输入。该方法通过将地面辐射计和气象仪器的时间序列观测结果与情节可见,近红外和热红外遥感影像数据相结合来实现。该模型的关键组成部分是植被密度预测器和昼夜地表温度分解器,两者都为地表能量平衡模型提供了所需的输入。为了说明模型的实施,收集了2003年在亚利桑那州Maricopa种植的棉花的遥感数据和基于地面的实验数据。根据遥感的植被指数和地面覆盖的部分覆盖率,预测了22天间隔内棉花分布的空间分布。级摄影。通过根据一天中的时间和植物覆盖度缩放昼间冠层温度,可以在15分钟的时间步长内以相同的间隔预测空间分布的冠层和土壤表面温度。考虑到这些预测跨越了棉花作物的快速生长期,因此空间投影的冠层覆盖率与观测到的覆盖率的比较是合理的,R〜2 = 0.65,均方根误差(RMSE)为0.13。预测温度的比较也显示出与RMSE = 2.1℃相当吻合。这些结果表明,将情景遥感数据与连续的地面辐射数据结合起来,是预测对作物进行ET建模所需的空间分布输入数据的技术可行方法。

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