Research progress of forest ecological quality assessment methods

Haoshuang Han, Rongrong Wan

Article ID: 1606
Vol 4, Issue 2, 2021

VIEWS - 860 (Abstract) 221 (PDF)

Abstract


Forests have ecological functions in water conservation, climate regulation, environmental purification, soil and water conservation, biodiversity protection and so on. Carrying out forest ecological quality assessment is of great significance to understand the global carbon cycle, energy cycle and climate change. Based on the introduction of the concept and research methods of forest ecological quality, this paper analyzes and summarizes the evaluation of forest ecological quality from three comprehensive indicators: forest biomass, forest productivity and forest structure. This paper focuses on the construction of evaluation index system, the acquisition of evaluation data and the estimation of key ecological parameters, discusses the main problems existing in the current forest ecological quality evaluation, and looks forward to its development prospects, including the unified standardization of evaluation indexes, high-quality data, the impact of forest living environment, the acquisition of forest level from multi-source remote sensing data, the application of vertical structural parameters and the interaction between forest ecological quality and ecological function.


Keywords


Forest Ecological Quality; Biomass; Productivity; Forest Structure; Remote Sensing Technique

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DOI: https://doi.org/10.24294/sf.v4i2.1606

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