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Application of pattern recognition and adaptive DSP methods for spatio-temporal analysis of satellite based hydrological datasets.

机译:模式识别和自适应DSP方法在基于卫星的水文数据集的时空分析中的应用。

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摘要

Data assimilation of satellite-based observations of hydrological varaiables with full numerical physics models can be used to downscale these observations from coarse to high resolution to improve microwave sensor-based soil moisture observations. Moreover, assimilation can also be used to predict related hydrological variables, e.g., precipitation products can be assimilated in a land information system to estimate soil moisture. High quality spatio-temporal observations of these processes are vital for a successful assimilation which in turn needs a detailed analysis and improvement. In this research, pattern recognition and adaptive signal processing methods are developed for the spatio-temporal analysis and enhancement of soil moisture and precipitation datasets. These methods are applied to accomplish the following tasks: (i) a consistency analysis of level-3 soil moisture data from the Advanced Microwave Scanning Radiometer -- EOS (AMSR-E) against in-situ soil moisture measurements from the USDA Soil Climate Analysis Network (SCAN). This method performs a consistency assessment of the entire time series in relation to others and provides a spatial distribution of consistency levels. The methodology is based on a combination of wavelet-based feature extraction and one-class support vector machines (SVM) classifier. Spatial distribution of consistency levels are presented as consistency maps for a region, including the states of Mississippi, Arkansas, and Louisiana. These results are well correlated with the spatial distributions of average soil moisture, and the cumulative counts of dense vegetation; (ii) a modified singular spectral analysis based interpolation scheme is developed and validated on a few geophysical data products including GODAE's high resolution sea surface temperature (GHRSST). This method is later employed to fill the systematic gaps in level-3 AMSR-E soil moisture dataset; (iii) a combination of artificial neural networks and vector space transformation function is used to fuse several high resolution precipitation products (HRPP). The final merged product is statistically superior to any of the individual datasets over a seasonal period. The results have been tested against ground based measurements of rainfall over our study area and average accuracies obtained are 85% in the summer and 55% in the winter 2007.
机译:具有完整数值物理模型的基于卫星的水文变量观测资料的数据同化可用于将这些观测值从粗分辨率缩减为高分辨率,以改善基于微波传感器的土壤湿度观测值。此外,同化还可以用于预测相关的水文变量,例如,可以在土地信息系统中对降水产物进行同化以估算土壤湿度。对这些过程的高质量时空观测对于成功地同化至关重要,这反过来又需要详细的分析和改进。在这项研究中,开发了模式识别和自适应信号处理方法,用于时空分析和增强土壤水分和降水数据集。这些方法可用于完成以下任务:(i)对美国农业部土壤气候分析所提供的原位土壤水分测量结果与先进微波扫描辐射计-EOS(AMSR-E)的3级土壤水分数据进行一致性分析网络(SCAN)。该方法对整个时间序列相对于其他时间序列执行一致性评估,并提供一致性级别的空间分布。该方法基于基于小波的特征提取和一类支持向量机(SVM)分类器的组合。一致性级别的空间分布表示为一个区域的一致性图,包括密西西比州,阿肯色州和路易斯安那州。这些结果与平均土壤水分的空间分布以及茂密植被的累积数量有很好的相关性。 (ii)在包括GODAE的高分辨率海面温度(GHRSST)在内的一些地球物理数据产品上开发并验证了一种基于奇异谱分析的改进插值方案。该方法后来被用于填补AMSR-E三级土壤水分数据集的系统空白; (iii)结合人工神经网络和向量空间变换功能来融合几种高分辨率降水产物(HRPP)。最终的合并产品在统计上在季节上要优于任何单个数据集。该结果已针对我们研究区域的地面降雨量进行了测试,平均准确度在夏季为85%,在2007年冬季为55%。

著录项

  • 作者

    Turlapaty, Anish Chand.;

  • 作者单位

    Mississippi State University.;

  • 授予单位 Mississippi State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 145 p.
  • 总页数 145
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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