利用SAR偏振数据估算不同作物土壤水分

Q3 Engineering Open Civil Engineering Journal Pub Date : 2023-06-01 DOI:10.28991/cej-2023-09-06-08
K. Kanmani, Vasanthi P., P. Pari, N. S. S. Ahamed
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引用次数: 1

摘要

土壤水分是影响农业生产力和水文过程的重要因素。使用现场检测方法估算土壤湿度需要时间,并且具有挑战性。然而,利用遥感(RS)和地理信息系统(GIS)技术,土壤湿度参数的检测变得更加容易。在微波遥感中,合成孔径雷达(SAR)数据由于其高穿透能力和光源的照明功率,有助于从更大的深度获取土壤水分。本研究旨在处理SAR Sentinel-1A数据,并利用水云模型(Water Cloud Model, WCM)估算土壤湿度。许多物理模型和经验模型已经被开发出来,以确定微波遥感平台上的土壤湿度。然而,水云模式给出了更准确的结果。在本研究中,WCM模型用于混合作物类型。实验土壤水分是通过从不同农区收集的原位土壤样品来测定的。不同土壤采样点对应的土壤后向散射值来源于Sentinel SAR数据。通过线性回归分析,将实验室土壤湿度结果与土壤后向散射值进行关联,得到模型。利用同一时期的第二组原位含水率值对模型进行了验证。模型的R2和RMSE分别为0.825和0.0274,表明混合作物类型的试验土壤湿度与卫星反演土壤湿度具有较强的相关性。本文阐述了建立土壤水分估算模型的方法。该模型有助于根据预测的水分含量在大而复杂的地区推荐合适的作物类型。Doi: 10.28991/CEJ-2023-09-06-08全文:PDF
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Estimation of Soil Moisture for Different Crops Using SAR Polarimetric Data
Soil moisture is an essential factor that influences agricultural productivity and hydrological processes. Soil moisture estimation using field detection methods takes time and is challenging. However, using Remote Sensing (RS) and Geographic Information System (GIS) technology, soil moisture parameters become easier to detect. In microwave remote sensing, synthetic aperture radar (SAR) data helps to retrieve soil moisture from more considerable depths because of its high penetration capability and the illumination power of its light source. This study aims to process the SAR Sentinel-1A data and estimate soil moisture using the Water Cloud Model (WCM). Many physical and empirical models have been developed to determine soil moisture from microwave remote sensing platforms. However, the Water Cloud Model gives more accurate results. In this study, the WCM model is used for mixed crop types. The experimental soil moisture was determined from in-situ soil samples collected from various agricultural areas. The soil backscattering values corresponding to the different soil sampling locations were derived from Sentinel SAR data. Using linear regression analysis, the laboratory's soil moisture results and soil backscattering values were correlated to arrive at a model. The model was validated using a secondary set of in-situ moisture content values taken during the same period. The R2 and RMSE of the model were observed to be 0.825 and 0.0274, respectively, proving a strong correlation between the experimental soil moisture and satellite-derived soil moisture for mixed crop field types. This paper explains the methodology for arriving at a model for soil moisture estimation. This model helps to recommend suitable crop types in large, complex areas based on predicted moisture content. Doi: 10.28991/CEJ-2023-09-06-08 Full Text: PDF
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来源期刊
Open Civil Engineering Journal
Open Civil Engineering Journal Engineering-Civil and Structural Engineering
CiteScore
1.90
自引率
0.00%
发文量
17
期刊介绍: The Open Civil Engineering Journal is an Open Access online journal which publishes research, reviews/mini-reviews, letter articles and guest edited single topic issues in all areas of civil engineering. The Open Civil Engineering Journal, a peer-reviewed journal, is an important and reliable source of current information on developments in civil engineering. The topics covered in the journal include (but not limited to) concrete structures, construction materials, structural mechanics, soil mechanics, foundation engineering, offshore geotechnics, water resources, hydraulics, horology, coastal engineering, river engineering, ocean modeling, fluid-solid-structure interactions, offshore engineering, marine structures, constructional management and other civil engineering relevant areas.
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