基于微波数据的土壤水分时空变化影响因素研究

A. Sure, D. Varade, O. Dikshit
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引用次数: 5

摘要

土壤水分是气候变化研究中的一个关键因素,了解土壤水分在各种因素作用下的时空动态变化是非常重要的。土壤、作物和气象参数、当地地形和土地利用是影响当地和全球土壤湿度的主要因素。全面了解这些因素之间的相互关系,并结合土壤湿度,不仅可以为农业应用提供信息,也可以为气象过程提供信息。利用主动式(ASCAT)和被动式(AMSR-E)微波遥感土壤水分数据,采用基于累积分布频率(CDF)匹配的方法推导出土壤水分协调产品。该技术根据参考数据集将两个数据集耦合起来。该技术非常适合于数据的时间序列分析。进一步进行趋势分析,研究不同地理位置各因素对土壤湿度的影响。在本研究中,土壤水分评价的调查选择2009年。利用现有的地面数据对统一土壤水分产品进行评价,确定系数为0.64,均方根误差(RMSE)为0.142,基本可以接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Factors determining spatio-temporal variations of soil moisture using microwave data
Soil moisture is seen as a key element in climate change studies and it is very important to apprehend the dynamics of changing soil moisture spatially and temporally in accordance with various factors. Soil, crop and meteorological parameters, local topography and land use land cover are the major factors which affect soil moisture locally and globally. A comprehensive understanding of the interrelationship between these factors and in conjunction with soil moisture conveys information, not only for agricultural applications as well as for meteorological processes. Active (ASCAT) and passive (AMSR-E) microwave remote sensing soil moisture data is used to derive a harmonised soil moisture product using an approach based on cumulative distribution frequency (CDF) matching. This technique couples the two datasets with accordance to a reference dataset. This technique is well suitable for time series analysis of data. Trend analysis is further performed to study the influence of various factors over soil moisture at different geographical locations. In this study, for the investigations on soil moisture assessment, the year 2009 is selected. Evaluation of the harmonised soil moisture product is done with available ground data to obtain the coefficient of determination as 0.64 and root mean square error (RMSE) of 0.142, which is much acceptable.
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