Publications

Shi, M; Lin, F; Jing, X; Li, BY; Shi, Y; Hu, YM (2023). Ecological Environment Quality Assessment of Arid Areas Based on Improved Remote Sensing Ecological Index-A Case Study of the Loess Plateau. SUSTAINABILITY, 15(18), 13881.

Abstract
Ecosystems in arid and semi-arid areas are delicate and prone to different erosive effects. Monitoring and evaluating the environmental ecological condition in such areas contribute to the governance and restoration of the ecosystem. Remote sensing ecological indices (RSEIs) are widely used as a method for environmental monitoring and have been extensively applied in various regions. This study selects the arid and semi-arid Loess Plateau as the research area, in response to existing research on ecological monitoring that predominantly uses vegetation indices as monitoring indicators for greenness factors. A fluorescence remote sensing ecological index (SRSEI) is constructed by using monthly synthesized sun-induced chlorophyll fluorescence data during the vegetation growth period as a new component for greenness and combining it with MODIS product data. The study generates the RSEI and SRSEI for the research area spanning from 2001 to 2021. The study compares and analyzes the differences between the two indices and explores the evolution patterns of the ecosystem quality in the Loess Plateau over a 21-year period. The results indicate consistent and positively correlated linear fitting trend changes in the RSEI and SRSEI for the research area between 2001 and 2021. The newly constructed ecological index exhibits a higher correlation with rainfall data, and it shows a more significant decrease in magnitude during drought occurrences, indicating a faster and stronger response of the new index to drought in the research area. The largest proportions are found in the research area's regions with both substantial and minor improvements, pointing to an upward tendency in the Loess Plateau's ecosystem development. The newly constructed environmental index can effectively evaluate the quality of the ecosystem in the research area.

DOI:
10.3390/su151813881

ISSN:
2071-1050