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Scientists develop new quantitative model to measure tree shade tolerance

Scientists develop new quantitative model to measure tree shade tolerance
The leaf inclination angle measurement for a tree and the schematic of leaf orientation. Credit: Forest Ecology and Management (2025). DOI: 10.1016/j.foreco.2025.123076

A research team led by Academician Zhu Jiaojun from the Institute of Applied Ecology (IAE) of the Chinese Academy of Sciences (CAS) has introduced a new quantitative method to classify shade tolerance in trees, offering a valuable tool for forest ecology research and management. The is published in Forest Ecology and Management.

Shade tolerance refers to a tree's ability to survive, grow, and complete its reproductive cycle under chronically low light conditions. It is a critical indicator in studying forest community dynamics. It plays a key role in understanding composition, forest structure, ecological succession, and the selection of tree species for afforestation.

Traditionally, tolerance has been divided qualitatively into broad categories such as shade-intolerant, shade-tolerant, and intermediate, but such classifications lack universal quantitative standards, limiting precision in research and forest management.

In this study, the researchers addressed this issue by using terrestrial laser scanning (TLS), a high-resolution ground-based remote sensing technique, to measure leaf inclination angle (LIA) as a central parameter for evaluating shade tolerance. They also developed a "Relative Shade Tolerance Index" (RSTI) model, providing a new tool to quantify light adaptation strategies in temperate forest species.

The study was conducted at two national field research stations: the Qingyuan Forest Ecosystem Research Station in Liaoning Province and the Changbai Mountain Forest Ecosystem Research Station in Jilin Province. Using TLS, the researchers performed multi-angle, high-precision 3D scans on 23 species of broadleaved trees, with each tree scanned from five to six points across different canopy heights. By applying a curvature-adaptive algorithm to extract leaf surface orientation, they achieved highly accurate LIA measurements.

A based on average LIA values, vertical distribution, and frequency characteristics divided the 23 tree species into five categories: very shade-intolerant, shade-intolerant, moderately shade-tolerant, shade-tolerant, and very shade-tolerant.

This led the researchers to propose the Relative Shade Tolerance Index. The RSTI treats shade tolerance as a continuous function, expressed through a nonlinear predictive model. Validation with published data on 61 temperate broadleaved tree species showed the model achieved an overall prediction accuracy of 83.6%, with particularly robust performance in the LIA range of 51° to 87°.

This approach introduces an operational method for quantitatively classifying shade tolerance and demonstrates the advantages of TLS scanning in improving the completeness and precision of canopy structural data.

The findings provide forestry practitioners with a measurable index. By simply calculating the RSTI value between 0 and 1, one can determine the degree of shade of a tree species with improved accuracy.

More information: Qingda Chen et al, Leaf inclination angle of broadleaved tree species and its application on estimating tree shade tolerance in temperate forests, Northeast China, Forest Ecology and Management (2025).

Journal information: Forest Ecology and Management

Citation: Scientists develop new quantitative model to measure tree shade tolerance (2025, September 22) retrieved 6 October 2025 from /news/2025-09-scientists-quantitative-tree-tolerance.html
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