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Evaluation of estimating daily maximum and minimum air temperature with MODIS data in east Africa

机译:利用MODIS数据评估东非每日最高和最低气温

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Real time and spatially distributed Ta (air temperature) data are desired for many applications. Ts (land surface temperature) derived from remote sensors has been used to estimate Ta in previous studies. Exploring MODIS Aqua Ts and station measured daily maximum and minimum Ta over east Africa, we found that Ts did not agree well with Ta during the day (MAE (Mean Absolute Error) = 6.9 ± 5.0 °C) but had better agreement during the night (MAE = 1.9 ± 1.7 °C). A stepwise linear regression method was applied to construct possible models to predict Ta based on MODIS data. Our results showed that, only considering elevation, high spatial resolution Ta could be obtained by simple linear models, with MAE = 1.9 °C, agreement index = 0.79 for daily maximum Ta, and MAE = 1.9 °C, agreement index = 0.92 for daily minimum Ta. MODIS Ts data could provide temporal variation information and slightly improve the accuracy of model predictions (by 0.2 °C of MAE). However, considering (i) major absences (about 2/3 of days) of Ts data due to cloud cover and (ii) small Ta variations in time (σ = 2.1 °C) over east Africa, models without Ts might be more practical in particular applications such as tsetse fly distribution models. Other variables including solar zenith angle, low level precipitable water content, and vegetation index (NDVI and EVI) were insignificant in the daily maximum and minimum Ta estimation models after elevation and Ts had already been considered as predictors.
机译:对于许多应用来说,需要实时且空间分布的Ta(气温)数据。在以前的研究中,从遥感器获得的Ts(陆地表面温度)已用于估算Ta。探索MODIS Aqua Ts并测量东非的每日最大和最小Ta,我们发现白天的Ts与Ta不太吻合(MAE(平均绝对误差)= 6.9±5.0°C),但夜间的一致性更好(MAE = 1.9±1.7°C)。应用逐步线性回归方法构建可能的模型,以基于MODIS数据预测Ta。我们的结果表明,仅考虑海拔高度,可以通过简单的线性模型获得高空间分辨率Ta,其中MAE = 1.9°C,每日最大Ta的一致性指数= 0.79,MAE = 1.9°C,每日的最大一致性Ta = 0.92最小Ta MODIS Ts数据可以提供时间变化信息,并略微提高模型预测的准确性(MAE为0.2°C)。但是,考虑到(i)由于云层覆盖而导致Ts数据的主要缺失(约2/3天),以及(ii)东非整个非洲的Ta时间变化很小(σ= 2.1°C),因此没有Ts的模型可能更实用特别是在采采蝇蝇分发模型等应用中。在已经将海拔和Ts视为预测因子之后,在每日最大和最小Ta估计模型中,太阳天顶角,低水平可沉淀水含量和植被指数(NDVI和EVI)等其他变量无关紧要。

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