1. Knowledge‐Based Deep Learning to Predict Vegetation Carbon, Nitrogen and Phosphorus Densities in China’s Shrublands
- Author
-
Ying Deng, Wenting Xu, Gaoming Xiong, Changming Zhao, Yang Wang, Chenyang Zhou, Jiaxiang Li, Qing Liu, Zhiyao Tang, and Zongqiang Xie
- Subjects
shrublands ,deep learning ,biological stoichiometry ,nutrient allocation ,Geophysics. Cosmic physics ,QC801-809 - Abstract
Abstract Accurate estimations of carbon (C), nitrogen (N), and phosphorus (P) densities in shrublands are pivotal for assessing terrestrial ecosystem carbon sequestration. Combining in‐situ investigations and machine learning facilitates large‐scale patterns mapping, however, which often overlooks underlying ecological regulations. Here we utilize data from 1,122 survey plots across China's shrublands and develop a novel knowledge‐based deep learning framework that integrates a structural equation model (SEM) to elucidate mechanisms and construct an artificial neural network (ANN) based on these causal relationships. Results show that biomass allocation to different organs follows allometric regulations and that N and P concentrations maintain a degree of stoichiometric homeostasis following biological stoichiometry theory. This insight guides the construction of our ANN, which outperforms both SEM and other prevalent machine learning methods. By leveraging ecological theories to inform model construction, our framework not only enhances prediction accuracy and explainability but also provides a methodological blueprint for ecological research.
- Published
- 2024
- Full Text
- View/download PDF