首页> 外文会议>Geoscience and Remote Sensing Symposium, 1996. IGARSS '96. 'Remote Sensing for a Sustainable Future.', International >Effects of system errors on combined MM/IR neural network inversion of surface snow properties
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Effects of system errors on combined MM/IR neural network inversion of surface snow properties

机译:系统误差对表面积雪特性的组合MM / IR神经网络反演的影响

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The University of Nebraska has recently developed a neural network inversion algorithm for the estimation of surface snow properties, viz., surface roughness, wetness, and average grain size. The algorithm uses concurrent measurements of the near-infrared reflectance and millimeter-wave backscatter of the snow surface. The performance of the inversion algorithm was found to be satisfactory under noise-free conditions. However, under operational conditions, noise is invariably present in the data, and the addition of noise causes errors in estimation. The performance of the inversion algorithm was investigated under noise-added conditions. A parameter that was varied was the signal-to-noise ratio. Inversions of free-water content and the grain size were relatively robust, while the surface roughness estimation was very sensitive to added noise. The results of the authors' study can be useful in setting bounds for system performance for accurate snow surface parameter inversion.
机译:内布拉斯加大学最近开发了一种神经网络反演算法,用于估算表面积雪特性,即表面粗糙度,湿度和平均晶粒尺寸。该算法同时测量雪表面的近红外反射率和毫米波反向散射。发现在无噪声条件下,该反演算法的性能令人满意。但是,在操作条件下,数据中始终存在噪声,并且噪声的添加会导致估计误差。在添加噪声的条件下研究了反演算法的性能。变化的参数是信噪比。自由水含量和晶粒尺寸的反演相对稳健,而表面粗糙度估算对增加的噪声非常敏感。作者的研究结果对于设定系统性能的界限以进行准确的雪面参数反演可能很有用。

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