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林业科学 ›› 2026, Vol. 62 ›› Issue (6): 236-248.doi: 10.11707/j.1001-7488.LYKX20250770

• 综合评述 • 上一篇    

从经验模型到智能估算:东北森林碳储量遥感监测技术革新路径

全迎1,邵国凡2,李明泽1,3,*()   

  1. 1. 东北林业大学林学院 哈尔滨 150040
    2. 美国普渡大学林业与自然资源系 西拉法叶市 47906
    3. 森林生态系统可持续经营教育部重点实验室 哈尔滨 150040
  • 收稿日期:2025-12-23 修回日期:2026-04-06 出版日期:2026-06-10 发布日期:2026-06-13
  • 通讯作者: 李明泽 E-mail:mingzelee@nefu.edu.cn
  • 基金资助:
    国家自然科学基金项目(32401568);国家重点研发计划课题(2023YFD2201704);中央高校基本科研业务费专项资金(2572025DR01);中国博士后科学基金(2024M760385);黑龙江省博士后资助经费(LBH-Z24051)。

From Empirical Models to Intelligent Estimation: An Innovation Pathway of Remote Sensing Technology in Monitoring Forest Carbon Stocks in Northeast China

Ying Quan1,Guofan Shao2,Mingze Li1,3,*()   

  1. 1. School of Forestry, Northeast Forestry University Harbin 150040
    2. Department of Forestry and Natural Resources, Purdue University West Lafayette 47906
    3. Key Laboratory of Sustainable Forest Ecosystem Management, Ministry of Education Harbin 150040
  • Received:2025-12-23 Revised:2026-04-06 Online:2026-06-10 Published:2026-06-13
  • Contact: Mingze Li E-mail:mingzelee@nefu.edu.cn

摘要:

森林碳储量是陆地生态系统最大且最活跃的碳库,在调节全球碳平衡和减缓气候变化中发挥着至关重要的作用,准确估算并动态监测森林碳储量是深入理解陆地生态系统碳循环过程、助力实现国家“双碳”目标的重要基础。近年来,遥感技术的迅速发展显著提升了大尺度森林碳储量的估算能力;然而,由于我国东北地区森林在林分结构、树种组成、起源和林龄上存在极大空间异质性,碳储量的精确估算仍面临较大挑战。本研究依据233篇中英文文献总结东北地区森林碳储量遥感监测方向的研究工作,并综合REDD+机制确立与《巴黎协定》实施细则等制度节点以及激光雷达全球森林结构观测能力形成与云计算平台普及等关键技术进展,将其发展历程划分为3个阶段:粗分辨率经验估算阶段(2010年以前)、中分辨率机理建模阶段(2011—2018年)以及高分辨率智能估算阶段(2019年至今)。针对各阶段的数据源特征、模型方法和主要成果,进一步分析当前研究存在的关键问题以及未来发展方向。文献分析表明,东北地区森林碳储量遥感监测技术经历了由单一粗分辨率光学遥感数据向高分辨率多模态、多时相、多尺度遥感数据深度融合的演进,同时在估计方法上实现了由经验统计模型向过程模型、再向数据驱动的深度学习模型的持续转变。相关研究显著提升了碳储量估算的精度和时空表达能力,为支撑东北地区森林碳汇能力评估、推进生态安全屏障建设与林业高质量发展提供了重要的科学依据和技术支撑。

关键词: 森林碳储量, 多源遥感, 人工智能, 激光雷达, 随机森林

Abstract:

Forest carbon storage plays a crucial role in regulating the global carbon cycle and mitigating climate change. Accurate estimation and dynamic monitoring of forest carbon stocks constitute a fundamental basis for advancing the understanding of terrestrial ecosystem carbon cycling processes and for achieving national carbon neutrality and carbon peaking goals. In recent years, development in remote sensing technology has substantially enhanced the capability for large-scale estimation of forest carbon storage. However, accurate carbon stock estimation in northeast China still faces challenging due to the region’s high spatial heterogeneities in forest structure, species composition, origin, and age. This study systematically reviews research progress in forest carbon monitoring in northeast China based on 233 Chinese and English literature, and integrates key institutional milestones in global climate governance, including the establishment of the REDD+ mechanism and the implementation guidelines of the Paris Agreement, together with major technological advances such as the emergence of spaceborne LiDAR-enabled global forest structural observations and the widespread adoption of cloud-computing platforms. The development process is divided into three stages: coarse-resolution empirical estimation (pre-2010), medium-resolution mechanistic modeling (2011—2018), and high-resolution intelligent estimation (since 2019). Based on the characteristics of data sources, modeling approaches, and major achievements at each stage, a comprehensive analysis was conducted on the key challenges in current research and future development directions. Literature analysis indicated that forest carbon stock monitoring in northeast China has evolved from sole reliance on coarse resolution optical remote sensing data to the deep integration of high-resolution multimodal, multi-temporal, and multi-scale remote sensing datasets. Concurrently, estimation methods have transitioned from empirical statistical models to process-based models and, more recently, to data-driven deep learning approaches. These advances have significantly improved the accuracy and spatiotemporal representativeness of forest carbon stock estimates, providing essential scientific evidence and technical support for assessing forest carbon sink capacity, strengthening the shields for ecological security, and promoting high-quality forestry development in northeast China.

Key words: forest carbon storage, multi-source remote sensing, artificial-intelligence, light detection and ranging (LiDAR), random forest (RF)

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