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Spatio-temporal reconstruction of air temperature maps and their application to estimate rice growing season heat accumulation using multi-temporal MODIS data

机译:空气温度图的时空重建及其应用,以估算水稻生长季蓄热使用多时间MODIS数据

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The accumulation of thermal time usually represents the local heat resources to drive crop growth. Maps of temperature-based agro-meteorological indices are commonly generated by the spatial interpolation of data collected from meteorological stations with coarse geographic continuity. To solve the critical problems of estimating air temperature (Ta) and filling in missing pixels due to cloudy and low-quality images in growing degree days (GDDs) calculation from remotely sensed data, a novel spatio-temporal algorithm for Ta estimation from Terra and Aqua moderate resolution imaging spectroradiometer (MODIS) data was proposed. This is a preliminary study to calculate heat accumulation, expressed in accumulative growing degree days (AGDDs) above 10 °C, from reconstructed Ta based on MODIS land surface temperature (LST) data. The verification results of maximum Ta, minimum Ta, GDD, and AGDD from MODIS-derived data to meteorological calculation were all satisfied with high correlations over 0.01 significant levels. Overall, MODIS-derived AGDD was slightly underestimated with almost 10% relative error. However, the feasibility of employing AGDD anomaly maps to characterize the 2001–2010 spatio-temporal variability of heat accumulation and estimating the 2011 heat accumulation distribution using only MODIS data was finally demonstrated in the current paper. Our study may supply a novel way to calculate AGDD in heat-related study concerning crop growth monitoring, agricultural climatic regionalization, and agro-meteorological disaster detection at the regional scale.
机译:热时间的积累通常代表局部热量以推动作物生长。基于温度的农业气象指数的地图通常由具有粗糙地理连续性的气象站收集的数据的空间插值产生。为了解决估算空气温度(TA)和填充缺失像素的临界问题,由于多云和低质量的图像,从远程感测数据中的渐进天(GDDS)计算,一种新的TAR估计的新型时空算法建议Aqua适度分辨率成像光谱仪(MODIS)数据。这是计算热累积的初步研究,以基于MODIS陆地温度(LST)数据的重建TA以高于10°C的累积增长度(agdds)。 Modis衍生数据到气象计算的最大TA,最小TA,GDD和AGDD的验证结果全部满足于0.01的高度相关性。总的来说,Modis派生的AGDD略微低估了几乎10%的相对误差。然而,使用AGDD异常地图的可行性来表征2001-2010的热量积累和估计2011年使用MODIS数据的估算2011年热累积分布的可行性。我们的研究可以提供一种新的方法来计算关于作物生长监测,农业气候区域化和区域规模的农业气象灾害检测的热相关研究中的agdd。

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