Chen Kebing, Xu Jiaxin, Chang Lu, Luo Qiyong, Song Jie, Zhou Yang, Yi Yujun
Key Laboratory for Water and Sediment Sciences, Ministry of Education, School of Environment, Beijing Normal University, Beijing, 100875, China; School of Environment, Beijing Normal University, Beijing, 100875, China.
School of Water Resources and Hydropower Engineering, North China Electric Power University, Beijing, 102206, China.
J Environ Manage. 2025 Aug;389:126204. doi: 10.1016/j.jenvman.2025.126204. Epub 2025 Jun 19.
Salt marshes, valued for their ecological importance, have been increasingly degraded in recent decades. Preserving salt marshes necessitates a critical approach that involves monitoring vegetation distribution and species composition. This study presents a high-precision salt marsh mapping framework for the Yellow River Delta (YRD), integrating Unmanned Aerial Vehicle (UAV), machine learning and seasonal phenological features from Landsat data. UAV data facilitate sampling efficiency, while seasonal phenology improves species differentiation in classification models. Among the tested algorithms, the Random Forest algorithm achieved the highest overall accuracy (89 %), outperforming support vector machines, gradient-boosted decision trees and deep neural network, particularly in identifying mixed-vegetation zones. Autumn phenological features emerged as critical discriminators for vegetation type classification. From 1991 to 2022, the salt marsh area exhibited an initial decline, followed by stabilization, and subsequent expansion, reaching 259.15 km in 2022. Notably, the invasive species Spartina alterniflora expanded significantly after 2009, reaching 61.4 km before its eradication in 2021. This research demonstrates that integrating UAV and seasonal phenological data provides a scalable, high-precision approach for long-term salt marsh monitoring. The framework provides robust tools and actionable insights for conservation, invasive species management, and ecosystem restoration.
盐沼因其重要的生态价值而备受关注,但近几十年来却日益退化。保护盐沼需要一种关键方法,即监测植被分布和物种组成。本研究提出了一种用于黄河三角洲的高精度盐沼测绘框架,该框架整合了无人机、机器学习以及来自陆地卫星数据的季节性物候特征。无人机数据提高了采样效率,而季节性物候则提升了分类模型中的物种区分度。在测试的算法中,随机森林算法的总体准确率最高(89%),优于支持向量机、梯度提升决策树和深度神经网络,尤其是在识别混合植被区方面。秋季物候特征成为植被类型分类的关键判别因素。1991年至2022年期间,盐沼面积先下降,后稳定,随后扩大,2022年达到259.15平方千米。值得注意的是,入侵物种互花米草在2009年后显著扩张,在2021年根除之前达到了61.4平方千米。这项研究表明,整合无人机和季节性物候数据为长期盐沼监测提供了一种可扩展的高精度方法。该框架为保护、入侵物种管理和生态系统恢复提供了强大的工具和可行的见解。