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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Artificial neural network-based techniques for the retrieval of SWE and snow depth from SSM/I data
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Artificial neural network-based techniques for the retrieval of SWE and snow depth from SSM/I data

机译:基于人工神经网络的SSM / I数据反演SWE和积雪深度的技术

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摘要

The retrieval of snow water equivalent (SWE) and snow depth is performed by inverting Special Sensor Microwave Imager (SSM/I) brightness temperatures at 19 and 37 GHz using artificial neural network ANN-based techniques. The SSM/I used data, which consist of Pathfinder Daily EASE-Grid brightness temperatures, were supplied by the National Snow and Ice Data Centre (NSIDC). They were gathered during the period of time included between the beginning of 1996 and the end of 1999 all over Finland. A ground snow data set based on observations of the Finnish Environment Institute (SYKE) and the Finnish Meteorological Institute (FMI) was used to estimate the performances of the technique. The ANN results were confronted with those obtained using the spectral polarization difference (SPD) algorithm, the HUT model-based iterative inversion and the Chang algorithm, by comparing the RMSE, the R{sup}2, and the regression coefficients. In general, it was observed that the results obtained through ANN-based technique are better than, or comparable to, those obtained through other approaches, when trained with simulated data. Performances were very good when the ANN were trained with experimental data.
机译:通过使用基于人工神经网络的ANN技术,将19和37 GHz的特殊传感器微波成像仪(SSM / I)的亮度温度反转,可以进行雪水当量(SWE)和雪深的检索。 SSM / I使用的数据由Pathfinder每日EASE-Grid亮度温度组成,由美国国家冰雪数据中心(NSIDC)提供。它们是在1996年初至1999年底的整个芬兰期间收集的。基于芬兰环境研究所(SYKE)和芬兰气象研究所(FMI)的观测结果的地面积雪数据集用于估算该技术的性能。通过比较RMSE,R {sup} 2和回归系数,ANN结果与使用光谱极化差(SPD)算法,基于HUT模型的迭代反演和Chang算法获得的结果相对。通常,观察到,当使用模拟数据训练时,通过基于ANN的技术获得的结果比通过其他方法获得的结果更好或可比。当用实验数据训练ANN时,性能非常好。

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