Improving Forest Above-Ground Biomass Estimation by Integrating Individual Machine Learning Models

Author:

Luo Mi12,Anees Shoaib Ahmad3ORCID,Huang Qiuyan12,Qin Xin4,Qin Zhihao125ORCID,Fan Jianlong6,Han Guangping7,Zhang Liguo12,Shafri Helmi Zulhaidi Mohd8ORCID

Affiliation:

1. Key Laboratory of Remote Sensing for Subtropical Agriculture, School of Geography and Planning, Nanning Normal University, Nanning 530001, China

2. Key Laboratory of Environment Change and Resources Use in Beibu Gulf, Nanning Normal University, Nanning 530001, China

3. Department of Forestry, The University of Agriculture, Dera Ismail Khan 29050, Pakistan

4. Guangxi Vocational Normal University, Nanning 530001, China

5. State Key Laboratory of Efficient Utilization of Arid and Semi-Arid Arable Land in Northern China, Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, China

6. National Satellite Meteorological Center, Beijing 100081, China

7. Guangxi Zhuang Autonomous Region Institute of Natural Resources Remote Sensing, Nanning 530028, China

8. Department of Civil Engineering, Faculty of Engineering, Universiti Putra Malaysia (UPM), Serdang 43400, Malaysia

Abstract

The accurate estimation of forest above-ground biomass (AGB) is crucial for sustainable forest management and tracking the carbon cycle of forest ecosystem. Machine learning algorithms have been proven to have great potential in forest AGB estimation with remote sensing data. Though many studies have demonstrated that a single machine learning model can produce highly accurate estimations of forest AGB in many situations, efforts are still required to explore the possible improvement in forest AGB estimation for a specific scenario under study. This study aims to investigate the performance of novel ensemble machine learning methods for forest AGB estimation and analyzes whether these methods are affected by forest types, independent variables, and spatial autocorrelation. Four well-known machine learning models (CatBoost, LightGBM, random forest (RF), and XGBoost) were compared for forest AGB estimation in the study using eight scenarios devised on the basis of two study regions, two variable types, and two validation strategies. Subsequently, a hybrid model combining the strengths of these individual models was proposed for forest AGB estimation. The findings indicated that no individual model outperforms the others in all scenarios. The RF model demonstrates superior performance in scenarios 5, 6, and 7, while the CatBoost model shows the best performance in the remaining scenarios. Moreover, the proposed hybrid model consistently has the best performance in all scenarios in spite of some uncertainties. The ensemble strategy developed in this study for the hybrid model substantially improves estimation accuracy and exhibits greater stability, effectively addressing the challenge of model selection encountered in the forest AGB forecasting process.

Funder

Science and Technology Base and Talent Project of Guangxi

Guangxi Young and Middle-aged University Teachers’ Scientific Research Ability Enhancement Project

Ecosystem Soil and Water Conservation Function Assessment Project in Beibu Gulf, Guangxi Province

MNR-CN Key Laboratory of China-ASEAN Satellite Remote Sensing Applications

Publisher

MDPI AG

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