A review of the satellite remote sensing techniques for assessment of runoff and sediment in soil erosion

IF 2.3 4区 环境科学与生态学 Q3 WATER RESOURCES Journal Of Hydrology And Hydromechanics Pub Date : 2024-05-09 DOI:10.2478/johh-2024-0009
Cuicui Ji, Yiming Cao, Xiaosong Li, Xiangjun Pei, Bin Sun, Xuemei Yang, Wei Zhou
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Abstract

Soil erosion monitoring is essential for the ecological evaluation and dynamic monitoring of land resources via remote sensing technology. In this paper, we provide new insights into the existing problems and development directions of traditional models, which are supported by new technologies. An important role is played by remote sensing information acquisition technology in the qualitative and quantitative evaluation of soil erosion, and the data and technical support provided are systematically reviewed. We provide a detailed overview of the research progress associated with empirical statistical models and physically driven process models of soil erosion, and the limitations of their application are also summarized. The preliminary integration of remote sensing data sources with high spatial and temporal resolution and new technologies for soil erosion monitoring enables the high-precision quantitative estimation of sediment transport trajectories, the watershed river network density, and the terrain slope, enhancing the accuracy of erosion factor identification, such as spectral feature recognition from erosion information, gully erosion feature extraction, and vegetation coverage estimation. However, the current erosion models, driven by algorithms and models, are not comprehensive enough, particularly in terms of the spatial feature extraction of erosion information, and there are limitations in the applicability and accurate estimation of such models.
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评估土壤侵蚀中的径流和沉积物的卫星遥感技术综述
通过遥感技术对土地资源进行生态评价和动态监测离不开水土流失监测。本文针对传统模式存在的问题和发展方向,在新技术的支持下提出了新的见解。遥感信息获取技术在水土流失的定性和定量评价中发挥着重要作用,本文对其提供的数据和技术支持进行了系统综述。我们详细概述了与土壤侵蚀的经验统计模型和物理驱动过程模型相关的研究进展,并总结了其应用的局限性。高时空分辨率遥感数据源与土壤侵蚀监测新技术的初步融合,实现了对泥沙输移轨迹、流域河网密度和地形坡度的高精度定量估算,提高了侵蚀因子识别的准确性,如从侵蚀信息中识别光谱特征、沟谷侵蚀特征提取和植被覆盖估算等。然而,目前由算法和模型驱动的侵蚀模型还不够全面,尤其是在侵蚀信息的空间特征提取方面,这类模型的适用性和精确估算存在局限性。
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来源期刊
CiteScore
4.20
自引率
5.30%
发文量
30
审稿时长
>12 weeks
期刊介绍: JOURNAL OF HYDROLOGY AND HYDROMECHANICS is an international open access journal for the basic disciplines of water sciences. The scope of hydrology is limited to biohydrology, catchment hydrology and vadose zone hydrology, primarily of temperate zone. The hydromechanics covers theoretical, experimental and computational hydraulics and fluid mechanics in various fields, two- and multiphase flows, including non-Newtonian flow, and new frontiers in hydraulics. The journal is published quarterly in English. The types of contribution include: research and review articles, short communications and technical notes. The articles have been thoroughly peer reviewed by international specialists and promoted to researchers working in the same field.
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