Abstract

Mangrove forests are important coastal ecosystems and are crucial for the equilibrium of the global carbon cycle. Monitoring and mapping of mangrove forests are essential for framing knowledge-based conservation policies and funding decisions by governments and managers. The purpose of this study was to monitor mangrove forest dynamics in the Quanzhou Bay Estuary Wetland Nature Reserve. To achieve this goal, we compared and analyzed the spectral discrimination among mangrove forests, mudflats and Spartina using multi-seasonal Landsat images from 1990, 1997, 2005, 2010, and 2017. We identified the spatio-temporal distribution of mangrove forests by combining an optimal segmentation scale model based on object-oriented classification, decision tree and visual interpretation. In addition, mangrove forest dynamics were determined by combining the annual land change area, centroid migration and overlay analysis. The results showed that there were advantages in the approaches used in this study for monitoring mangrove forests. From 1990 to 2017, the extent of mangrove forests increased by 2.48 km2, which was mostly converted from mudflats and Spartina. Environmental threats including climate change and sea-level rise, aquaculture development and Spartina invasion, pose potential and direct threats to the existence and expansion of mangrove forests. However, the implementation of reforestation projects and Spartina control plays a substantial role in the expansion of mangrove forests. It has been demonstrated that conservation activities can be beneficial for the restoration and succession of mangrove forests. This study provides an example of how the application of an optimal segmentation scale model and multi-seasonal images to mangrove forest monitoring can facilitate government policies that ensure the effective protection of mangrove forests.

Highlights

  • Mangrove forests, situated in the intertidal zone of tropical and sub-tropical coastal regions, are one of the most productive ecosystems on Earth

  • Considering the importance of tidal information for mangrove forest monitoring and the spectral differences among mangrove forests, mudflats, and Spartina, several multi-seasonal Landsat images acquired during low tide were selected as the basic data sources

  • Combining an optimal segmentation scale model based on object-oriented classification, centroid migration calculations and spatial analysis, we discerned dynamic changes in the mangrove forest and their influencing factors in the Quanzhou Bay Estuary Wetland Nature Reserve (QBEWNR) from 1990 to 2017

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Summary

Introduction

Mangrove forests, situated in the intertidal zone of tropical and sub-tropical coastal regions, are one of the most productive ecosystems on Earth. Their distinct marine and terrestrial characteristics [1,2,3] provide significant ecological services and functions in terms of coastal water purification, biodiversity conservation, shoreline stabilization, storm protection and fishery harvest [4,5,6]. Despite an abundant range of economic and ecological values, a third of mangrove forests worldwide have been lost in the last fifty years because of rapid urban growth, increasing population pressure, aquaculture expansion, and other impacts caused by anthropogenic disturbances and climate change [13,14,15,16]. To make appropriate decisions and polices, the spatio-temporal extent of mangrove forests needs to be inventoried and monitored, and the driving factors of change need to be identified [17,18]

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