监测干旱和半干旱地区生态系统动态的遥感指标的长期动态:对可持续资源管理的贡献

Hadjer Keria, E. Bensaci, Asma Zoubiri, Zineb Ben Si Said
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摘要

由于气候变化,预计水体中的干旱会加剧。监测湿地的长期变化对于识别波动和保护生物多样性至关重要。在这项研究中,我们评估了阿尔及利亚 25 个以生物多样性著称的流域的遥感指标的长期变化情况。我们采用了两种统计方法,即线性回归和曼-肯德尔(MK)检验,通过整合来自不同来源的数据(包括 Modis 和 Landsat 卫星数据)来捕捉长期波动。我们建立了一个跨度为 22 年的时间序列数据集,其中包括以下指标:归一化差异植被指数(NDVI)、增强植被指数(EVI)、归一化差异水分指数(NDWI)、归一化差异水分指数(NDMI)和地表温度(LST)。我们评估了这些变量之间的关系。结果表明,与 EVI、NDWI 和 NDMI 相比,NDVI 表现出更强的时间响应。此外,NDVI 和 LST 之间的负相关证实了干旱和植物胁迫对研究区域植被的影响(R2 = 0.109-R2 = 0.5701)。NDMI 结果表明,水体中的水压力呈显著下降趋势。MK 趋势分析的结果突出了 NDVI 的重要性,并强调了它与 EVI、NDWI 和 NDMI 的密切联系。了解植被和水压力的动态对于生态系统预测至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long-term dynamics of remote sensing indicators to monitor the dynamism of ecosystems in arid and semi-arid areas: contributions to sustainable resource management
Drought is expected to increase in water bodies due to climate change. Monitoring long-term changes in wetlands is crucial for identifying fluctuations and conserving biodiversity. In this study, we assessed the long-term variability of remote sensing indicators in 25 watershed areas in Algeria known for their significant biodiversity. We employed two statistical methods, namely linear regression and the Mann–Kendall (MK) test, to capture long-term fluctuations by integrating data from various sources, including Modis and Landsat satellite data. A time-series dataset spanning 22 years was developed, consisting of the following indicators: normalized difference vegetation index (NDVI), enhanced vegetation index (EVI), normalized difference water index (NDWI), normalized difference moisture index (NDMI), and land surface temperature (LST). We evaluated the relationships between these variables. The results indicated that NDVI exhibited a stronger temporal response compared to EVI, NDWI, and NDMI. Additionally, negative associations between NDVI and LST confirmed the impact of drought and plant stress on vegetation in the study areas (R2 = 0.109–R2 = 0.5701). The NDMI results pointed to water stress in the water bodies, showing a significant decreasing trend. The results from the MK trend analysis underscored the importance of NDVI and highlighted its strong association with EVI, NDWI, and NDMI. Understanding the dynamics of vegetation and water stress has become crucial for ecosystem forecasts.
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