利用遥感数据探测上Mzingwane子流域陆地地表水的变化

Bright Chisadza, Onalenna Gwate, F. Ncube, Nkosinathi Moyo, P. Chiwara
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引用次数: 1

摘要

在全球范围内,水被认为是不可或缺的。它对人类生活和环境需求都是必不可少的。然而,地表水资源受到人类和气候影响的威胁,这可能导致大小和密度的变化。本研究旨在利用Landsat卫星数据,评价归一化差水指数(NDWI)、修正归一化差水指数(MNDWI)和自动水提取指数(AWEI)在陆地地表水变化探测中的有效性。结果表明,awi在提取Mzingwane上游子流域水面面积方面的总体精度为0.93,kappa系数为0.82,明显优于MNDWI和NDWI。MNDWI和NDWI的总体精度/kappa值分别为0.88/0.74和0.89/0.73。awi可以增强地表水特征,同时有效抑制或消除周围植被和泥泞土壤的污染和噪声。NDWI/MDWI水体信息往往与污染噪声、植被、泥质土壤等混杂,高估水体面积。应用的所有指标都表明,该子集水区水体的表面积呈逐渐减少的趋势。水面面积的减少可能是退化的结果,因为水面面积的减少模式与植被覆盖的减少和退化地区的增加相吻合。未来的研究需要研究子流域对气候、变率、变化和LULC变化的潜在影响的水文响应。
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Detecting land surface water changes in the Upper Mzingwane sub-catchment using remotely sensed data
Globally, water is acknowledged as indispensable. It is essential for both human life and environmental needs. However, surface water resources are threatened by human and climatic influences, which may result in changes in size and density. This study aimed to evaluate the effectiveness of the normalised difference water index (NDWI), modified normalised difference water index (MNDWI) and automated water extraction index (AWEI) in detecting land surface water changes using Landsat satellite data. The results showed that the AWEI performed considerably better than the MNDWI and NDWI for extracting water surface area in the Upper Mzingwane sub-catchment, with an overall accuracy of 0.93 and a kappa coefficient of 0.82. The MNDWI and NDWI, had overall accuracy/kappa values of 0.88/0.74 and 0.89/0.73, respectively. The AWEI can enhance surface water features while effectively suppressing or eliminating pollution and noise from surrounding vegetation and muddy soil. NDWI/MDWI water information is often mixed with pollution noise, vegetation and muddy soil, overestimating the area of water. All the applied indices indicate a progressive loss in the surface area of the water bodies in the sub-catchment. The decrease in water surface area could be a result of degradation, as the decreasing patterns of water surface area coincide with a decrease in vegetation cover and an increase in degraded areas. Future research needs to investigate the hydrological response of the sub-catchment to the potential influence of climate, variability, change, and LULC changes.
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