Long-Term Monitoring and Analysis of Key Driving Factors in Environmental Quality: A Case Study of Fujian Province

Author:

Kong Weiwei12,Chang Weipeng345,Xie Mingjiang12,Li Yi12,Wan Tianyong12,Nie Xiaoli12,Mo Dengkui345ORCID

Affiliation:

1. Changsha General Survey of Natural Resources Centre, China Geological Survey, Changsha 410004, China

2. Huangshan Observation and Research Station for Land-Water Resources, Changsha 410004, China

3. Research Center of Forestry Remote Sensing & Information Engineering, Central South University of Forestry& Technology, Changsha 410004, China

4. Hunan Provincial Key Laboratory of Forestry Remote Sensing Based Big Data & Ecological Security, Changsha 410004, China

5. Key Laboratory of National Forestry and Grassland Administration on Forest Resources Management and Monitoring in Southern China, Changsha 410004, China

Abstract

Ecological environment quality reflects the overall condition and health of the environment. Analyzing the spatiotemporal dynamics and driving factors of ecological environment quality across large regions is crucial for environmental protection and policy-making. This study utilized the Google Earth Engine (GEE) platform to efficiently process large-scale remote sensing data and construct a multi-scale Remote Sensing Ecological Index (RSEI) based on Landsat and Sentinel data. This approach overcomes the limitations of traditional single-scale analyses, enabling a comprehensive assessment of ecological environment quality changes across provincial, municipal, and county levels in Fujian Province. Through the Mann–Kendall mutation test and Sen + Mann–Kendall trend analysis, the study identified significant change points in the RSEI for Fujian Province and revealed the temporal dynamics of ecological quality from 1987 to 2023. Additionally, Moran’s I statistic and Geodetector were employed to explore the spatial correlation and driving factors of ecological quality, with a particular focus on the complex interactions between natural factors. The results indicated that: (1) the integration of Landsat and Sentinel data significantly improved the accuracy of RSEI construction; (2) the RSEI showed a consistent upward trend across different scales, validating the effectiveness of the multi-scale analysis approach; (3) the ecological environment quality in Fujian Province experienced significant changes over the past 37 years, showing a trend of initial decline followed by recovery; (4) Moran’s I analysis demonstrated strong spatial clustering of ecological environment quality in Fujian Province, closely linked to human activities; and (5) the interaction between topography and natural factors had a significant impact on the spatial patterns of RSEI, especially in areas with complex terrain. This study not only provides new insights into the dynamic changes in ecological environment quality in Fujian Province over the past 37 years, but also offers a scientific basis for future environmental restoration and management strategies in coastal areas. By leveraging the efficient data processing capabilities of the GEE platform and constructing multi-scale RSEIs, this study significantly enhances the precision and depth of ecological quality assessment, providing robust technical support for long-term monitoring and policy-making in complex ecosystems.

Funder

Comprehensive Survey on Ecological Restoration in Key Areas of Wuyi Mountain of China

Survey of Surface Substrate in Typical Red Soil Areas of Nanping City of China

Obser-vation, Monitoring and Evaluation of Natural Resources and Ground Substrate in the Southeastern Hilly Region of China

Science and Technology Innovation Fund of Command Center of Integrated Natural Resources Survey Center

Remote Sensing Monitoring Technology and Dynamic Evaluation Method for Forest Ecological Quality in the Wuyishan Project of China

Publisher

MDPI AG

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