基于Sentinel-1和Sentinel-2数据的半干旱区土壤水分灌溉制图

S. Bousbih, M. Zribi, M. El-Hajj, N. Baghdadi, Z. Lili-Chabaane, P. Fanise, G. Boulet
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引用次数: 5

摘要

确定灌溉区对负责大规模分配这一资源的水资源管理人员至关重要。水、土壤含量和灌溉监测是水资源管理的有力工具。研究了Sentinel-1 (S1)和Sentinel-2 (S2)数据在被覆盖地表估算土壤水分和灌溉的潜力。在突尼斯半干旱区凯鲁万平原对水云模式(WCM)进行标定和验证后,提出了一种水云模式的反演算法。其目的是恢复整个地区的土壤水分。该算法利用了S1、VV偏振雷达数据和S2高空间分辨率光学数据衍生的NDVI之间的协同作用。结果表明,土壤水分反演与实测值精度较好,均方根误差(RMSE)小于6 vol.%。然后,将得到的土壤水分图用于灌溉制图。该过程使用支持向量机(SVM)和决策树分类相结合来区分灌溉和非灌溉农田。灌溉水年图结果表明,分类总体精度约为77%。
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Sentinel-1 and Sentinel-2 Data for Soil Moisture and Irrigation Mapping Over Semi-Arid Region
Identifying the irrigated areas is essential for waters managers who are in charge of distributing this resource over a large scale. The monitoring of water soil content and irrigation is a powerful tool for water resource management. The potential of Sentinel-1 (S1) and Sentinel-2 (S2) data for estimating the soil moisture and irrigation is studied over covered surfaces. An inversion algorithm of the Water Cloud Model (WCM) was developed after calibrating and validating the model over the Kairouan plain, a semi-arid region in Tunisia. The aim is to restitute soil moisture over the whole region. The developed algorithm used a synergy between S1, radar data in VV polarization, and NDVI derived from S2 optical data at high spatial resolution. The results showed good accuracy between retrieved and measured soil moisture with a Root Mean Square Error (RMSE) lower than 6 vol.%. Then, the resulting soil moisture maps were used for irrigation mapping. The process used a combination of Support Vector Machine (SVM) and Decision Tree classifications to distinguish between irrigated and non-irrigated agricultural fields. Results from the annual irrigation map show that the overall accuracy on the classification is about 77%.
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