Detect Changes in Marsh Plant Communities Based on Landsat Long Time Series Data and BFAST Model

IF 3.7 2区 农林科学 Q2 ENVIRONMENTAL SCIENCES
Yunlong Yao, Yuna Liu, Yi Fu, Xuguang Zhang, Lei Wang, Renping Liu
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引用次数: 0

Abstract

Due to the combined effects of human activities and climate change, freshwater wetlands, especially in agricultural watersheds, face severe degradation threats. Therefore, it is necessary to explore in depth the changes in plant communities within these wetlands. This study investigates changes in wetland plant communities within these watersheds and assesses the feasibility of the Breaks for Additive Season and Trend (BFAST) method for detecting abrupt shifts in vegetation over long time series. Using long‐term Landsat imagery (1984–2016), annual maximum NDVI values were calculated for the Naolihe Basin Nature Reserve in Northeast China. The BFAST algorithm was then applied to detect NDVI changes in wetland plant communities, with results validated through field surveys. The results revealed four distinct NDVI change trends: no significant change, high‐to‐low shift, low‐to‐high shift, and continuous decline. NDVI deviations ranged from −0.85 to 0.94, with 1 to 5 abrupt changes mainly occurring between 1993 and 2006. The study confirms BFAST's effectiveness in detecting changes in wetland plant communities and, combined with field data, proposes a conceptual model to explain the degradation processes in freshwater wetlands. The model reveals the degradation process of different vegetation types under the influence of water competition and other factors, which contribute to a clearer understanding of vegetation change in freshwater wetlands and provide strong support for its sustainable conservation and management.
基于Landsat长时间序列数据和BFAST模型的沼泽植物群落变化检测
由于人类活动和气候变化的共同影响,淡水湿地,特别是农业流域的淡水湿地,面临着严重的退化威胁。因此,有必要深入探讨这些湿地内植物群落的变化。本研究调查了这些流域内湿地植物群落的变化,并评估了BFAST方法在长时间序列上检测植被突变的可行性。利用1984-2016年长期Landsat影像,计算了东北直里河流域自然保护区NDVI的年最大值。应用BFAST算法检测湿地植物群落NDVI变化,并通过野外调查验证结果。结果显示,NDVI的变化趋势有四种:无显著变化、从高到低的变化、从低到高的变化和持续下降。NDVI偏差范围为- 0.85 ~ 0.94,1993 ~ 2006年主要发生1 ~ 5次突变。该研究证实了BFAST在探测湿地植物群落变化方面的有效性,并结合实地数据提出了一个解释淡水湿地退化过程的概念模型。该模型揭示了不同植被类型在水资源竞争等因素影响下的退化过程,有助于更清晰地认识淡水湿地的植被变化,为其可持续保护和管理提供有力支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Land Degradation & Development
Land Degradation & Development 农林科学-环境科学
CiteScore
7.70
自引率
8.50%
发文量
379
审稿时长
5.5 months
期刊介绍: Land Degradation & Development is an international journal which seeks to promote rational study of the recognition, monitoring, control and rehabilitation of degradation in terrestrial environments. The journal focuses on: - what land degradation is; - what causes land degradation; - the impacts of land degradation - the scale of land degradation; - the history, current status or future trends of land degradation; - avoidance, mitigation and control of land degradation; - remedial actions to rehabilitate or restore degraded land; - sustainable land management.
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