一种基于神经网络的多光谱降雪检测与估计方法

Y. Mejia, H. Ghedira, S. Mahani, R. Khanbilvardi
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引用次数: 2

摘要

本研究的主要目的是:(a)研究AMSU被动微波数据在探测降雪事件和测量降雪强度方面的潜力;(b)评估土地覆盖和大气条件对检索精度的影响。额外的信息,如云量和气温被添加到这个过程中,以减少错误识别的降雪像素。从AMSU亮度温度中检索的两个产品用于估计地表温度和绘制积雪范围。在这个项目中,已经开发了一个基于神经网络的模型,并在检测和估计降雪事件的强度方面显示出巨大的潜力。该算法已应用于2002年至2003年间在美国东北部三个不同地点发生的不同暴风雪。选择这些地点是因为每年降雪量大。只有有云层覆盖且落在特定温度范围内的像素点才会呈现给降雪检测模型。该试验使用了国家气候数据中心(NCDC)存档的地面站观测数据收集的地表温度。选择与AMSU采集同时发生的不同强风暴事件和非降雪观测。利用NCDC采集的逐时积雪数据作为真值数据对模型进行训练和验证。为了减少错误识别降雪像素的风险,只选择持续时间超过3小时的风暴。这样的标准无疑会增加降雪与AMSU采集时间一致的可信度。将基于神经网络的降雪产品与Kongoli等人2003年开发的陆地降雪检测算法进行了比较。初步结果表明,与现有的基于卫星的方法相比,基于神经网络的模型在降雪检测精度方面有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural netwotk based approach for multi-spectral snowfall detection and estimation
The principal intent of this research is to: (a) investigate the potential of passive microwave data from AMSU in detecting snowfall events and in measuring their intensity, and (b) evaluate the effect of both land cover and atmospheric conditions on the retrieval accuracy. Additional information such as cloud cover and air temperature were added to the process to reduce misidentified snowfall pixels. Two products retrieved from AMSU brightness temperatures were used to estimate surface temperature and to map the snow cover extent. In this project, a neural-network-based model has been developed and has shown a great potential in detecting and estimating the intensity of snowfall events. This algorithm has been applied for different snow storms occurred between 2002 and 2003 in three different locations in the North-East of United States. These locations were selected because of the high amount of snowfall every year. Only pixels with cloud cover and falling within a specific range of temperature are presented to the snowfall detection model. Surface temperature collected from ground station-based observations archived by the National Climatic Data Center (NCDC) were used for this test. Different heavy storm events and non-snowfall observations that occurred at the same time as AMSU acquisition were selected. Hourly snow accumulation data collected by the NCDC were used as truth data to train and validate the model. To reduce the risk of erroneous identification of snowfall pixels, only storms lasting more than three hours were selected. Such criteria will undoubtedly increase the level of confidence that snowfall coincides with AMSU acquisition time. The neural network based snowfall product was compared with the snowfall detection algorithm over land developed in 2003 by Kongoli et al [1]. The preliminary results indicate that the neural-network-based model provides a significant improvement in snowfall detection accuracy over existing satellite-based methods.
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