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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Estimating Passive Microwave Brightness Temperature Over Snow-Covered Land in North America Using a Land Surface Model and an Artificial Neural Network
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Estimating Passive Microwave Brightness Temperature Over Snow-Covered Land in North America Using a Land Surface Model and an Artificial Neural Network

机译:利用陆面模型和人工神经网络估算北美积雪陆上的被动微波亮度温度

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摘要

An artificial neural network (ANN) is presented for the purpose of estimating passive microwave (PMW) brightness temperatures over snow covered land in North America. The NASA Catchment Land Surface Model (Catchment) is used to define snowpack properties; the Catchment-based ANN is then trained with PMW measurements acquired by the Advanced Microwave Scanning Radiometer (AMSR-E). A comparison of ANN output against AMSR-E measurements not used during training activities as well as a comparison against independent PMW measurements collected during airborne surveys demonstrates the predictive skill of the ANN. When averaged over the study domain for the 9-year study period, computed statistics (relative to AMSR-E measurements not used during training) for multiple frequencies and polarizations yielded a near-zero bias, a root mean squared error less than 10 K, and a time series anomaly correlation coefficient of approximately 0.5. The ANN demonstrates skill during the accumulation phase when the snowpack is relatively dry as well as during the ablation phase when the snowpack is ripe and relatively wet. Overall, the results suggest the ANN could serve as a computationally efficient measurement operator for data assimilation at the continental scale.
机译:提出了一个人工神经网络(ANN),用于估算北美积雪土地上的被动微波(PMW)亮度温度。 NASA集水区地面模型(集水区)用于定义积雪的性质;然后,采用高级微波扫描辐射计(AMSR-E)采集的PMW测量值对基于集水区的人工神经网络进行训练。将ANN输出与训练活动中未使用的AMSR-E测量值进行比较,以及将其与航空调查期间收集的独立PMW测量值进行比较,证明了ANN的预测能力。在为期9年的研究期内对研究范围进行平均时,针对多个频率和极化的计算统计数据(相对于训练期间未使用的AMSR-E测量)产生接近零的偏差,均方根误差小于10 K,时间序列异常相关系数约为0.5。在积雪相对干燥的积雪阶段以及积雪成熟且相对潮湿的消融阶段,人工神经网络展示了技能。总体而言,结果表明,人工神经网络可以作为大陆范围内数据同化的高效计算度量算子。

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