# Hybrid Deep Learning–Geostatistical Mapping of Forest Aboveground Biomass in Lishui, China

**Authors:** Rui Qian, Qilin Zhang, Yuying Gong, Jingyi Wang, Xiaolei Cui, Xiong Yin, Mingshi Li

PMC · DOI: 10.3390/plants15040587 · 2026-02-12

## TL;DR

This study improves forest biomass mapping in Lishui, China, by combining deep learning with geostatistical methods to better account for spatial patterns.

## Contribution

A novel hybrid CNN-Transformer and geostatistical Kriging approach is introduced for more accurate AGB mapping.

## Key findings

- The CNN-Transformer-CK model achieved an R2 of 0.72 and RMSE of 12.18 t/ha in predicting AGB.
- Sentinel-2 Band 8 and Band 12 were identified as the most influential predictors for AGB.
- The hybrid model outperformed traditional CNN-Transformer and Random Forest models in accuracy.

## Abstract

Forest aboveground biomass (AGB) is a key indicator of forest productivity and carbon sequestration, yet many remote sensing AGB models overlook spatial autocorrelation in plot observations and model residuals. This study proposes a hybrid framework that combines a CNN-Transformer (Convolutional Neural Network-Transformer) model with geostatistical Kriging of residuals to improve regional AGB mapping in Lishui City, Zhejiang Province, China. Using 398 forest plots and multi-source predictors derived from Sentinel-2 imagery, ALOS-2 PALSAR-2 SAR data, and ALOS 12.5 m DEM, relevant variables were screened using Random Forest importance ranking. The most influential predictors included Sentinel-2 Band 8 and Band 12, EVI, PC1, mean77, HH/HV, ARVI, NDVI, RVI, and elevation. Ten-fold cross-validation showed that the CNN-Transformer-CK model had the highest accuracy in predicting forest AGB, with a validation R2 of 0.72 and RMSE of 12.18 t/ha, followed by the CNN-Transformer model (R2 = 0.69, RMSE = 12.22 t/ha) and RF (R2 = 0.59 and RMSE = 14.31 t/ha). The proposed approach supports wall-to-wall AGB mapping for forest management and conservation planning.

## Full-text entities

- **Genes:** CMPK1 (cytidine/uridine monophosphate kinase 1) [NCBI Gene 51727] {aka CK, CMK, CMPK, UMK, UMP-CMPK, UMPK}, PCSK1 (proprotein convertase subtilisin/kexin type 1) [NCBI Gene 5122] {aka BMIQ12, NEC1, PC1, PC1/3, PC3, SPC3}
- **Diseases:** injury to (MESH:D014947), forest loss (MESH:D007733)
- **Chemicals:** AGB (-), oxygen (MESH:D010100), carbon (MESH:D002244)
- **Species:** Ilex chinensis (species) [taxon 1043419], Cinnamomum camphora (camphor tree, species) [taxon 13429], Pinus massoniana (Chinese red pine, species) [taxon 88730], Pistacia chinensis (Chinese pistachio, species) [taxon 289741], Cunninghamia lanceolata (China fir, species) [taxon 28977], Homo sapiens (human, species) [taxon 9606]

## Figures

11 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12943857/full.md

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Source: https://tomesphere.com/paper/PMC12943857