Estimation of leaf area index by combining multi-source remote sensing data and machine learning optimization model.

Journal: Frontiers in plant science
Published Date:

Abstract

The Leaf Area Index (LAI) is an essential parameter that affects the exchange of energy and materials between the vegetative canopy and the surrounding environment. Estimating LAI using machine learning models with remote sensing data has become a prevalent method for large-scale LAI estimation. However, existing machine learning models have exhibited various flaws, hindering the accurate estimation of LAI. Thus, a new method for large-scale estimation of LAI was proposed, which integrates ICESat-2/ATLAS, and Sentinel-1/-2 data, and refines machine learning models through the application of Bayesian Optimization (BO), Particle Swarm Optimization (PSO), Genetic Algorithms (GA), and Simulated Annealing (SA). First, spatial interpolation was performed using the Sequential Gaussian Conditional Simulation (SGCS) method. Then, multi-source remote sensing data were leveraged to optimize feature variables through the Pearson correlation coefficient approach. Subsequently, optimization algorithms were applied to Random Forest Regression (RFR), Gradient Boosting Regression Tree (GBRT), and Support Vector Machine Regression (SVR) models, leading to efficient large-scale LAI estimation. The results showed that the BO-GBRT model achieved high accuracy in LAI estimation, with a coefficient of determination ( ) of 0.922, a root mean square error () of 0.263, a mean absolute error () of 0.187, and an overall estimation accuracy ( ) of 92.38%. Compared to existing machine learning methods, the proposed approach demonstrated superior performance. This method holds significant potential for large-scale forest LAI inversion and can facilitate further research on other forest structure parameters.

Authors

  • Zhen Qin
    College of Forestry, Southwest Forestry University, Kunming, Yunnan, China.
  • Huanfen Yang
    College of Forestry, Southwest Forestry University, Kunming, Yunnan, China.
  • Qingtai Shu
    College of Forestry, Southwest Forestry University, Kunming, Yunnan, China.
  • Jinge Yu
    School of Ecology and Applied Meteorology, Nanjing University of Information Science & Technology, Nanjing, China.
  • Zhengdao Yang
    College of Forestry, Southwest Forestry University, Kunming, Yunnan, China.
  • Xu Ma
    College of Geography and Remote Sensing Sciences, Xinjiang University, Urumqi, China.
  • Dandan Duan
    Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing, China.

Keywords

No keywords available for this article.