J Plant Ecol ›› 2025, Vol. 18 ›› Issue (6): rtaf117.DOI: 10.1093/jpe/rtaf117

• Method •    

Tracking forest overstory and understory phenology using a near-surface remote sensing system

Huanfa Sun1,2, Liming Yan1,2, Xingli Xia1,2, Yihang Fan1,2, Huizhu Li1,2, Kun Huang1,2, Xuhui Zhou1,3, and Jianyang Xia1,2,*   

  1. 1Zhejiang Tiantong Forest Ecosystem National Observation and Research Station, School of Ecological and Environmental Sciences, Research Center of Global Change and Ecological Forecasting, East China Normal University, Shanghai 200241, China, 2Institute of Eco- Chongming, East China Normal University, Shanghai 200241, China, 3Institute of Carbon Neutrality, Key Laboratory of Sustainable Forest Ecosystem Management-Ministry of Education, School of Forestry, Northeast Asia Ecosystem Carbon Sink Research Center, Northeast Forestry University, Harbin 150040, China

    *Corresponding author. E-mail: jyxia@des.ecnu.edu.cn

  • Received:2025-03-11 Accepted:2025-07-07 Online:2025-07-23 Published:2025-12-01
  • Supported by:
    This work was financially supported by the National Natural Science Foundation of China (32325033), the National Key R&D Program of China (2022YFF0802104) and the Shanghai Pilot Program for Basic Research (TQ20220102).

基于近地面遥感系统的森林林冠层与林下层物候监测

Abstract: Understanding leaf phenology is essential for capturing forest dynamics, yet traditional monitoring methods fail to resolve vertically stratified phenology due to canopy occlusion and limited spatial coverage. To address this gap, we developed an integrated unmanned aerial vehicle and ground-fixed camera system enabling simultaneous monitoring of forest overstory and understory phenology. Deployed in a subtropical forest during 2017–2023, this system archived 0.075 m × 0.075 m resolution aerial imagery and hourly ground photography, tracking vegetation dynamics across community and species scales. Our system-derived Green Chromatic Coordinate was strongly correlated with Normalized Difference Vegetation Index (r = 0.82), Enhanced Vegetation Index (r = 0.91), Gross Primary Productivity (r = 0.95) and Leaf Area Index (r = 0.79 for overstory; r = 0.92 for understory) validating its effectiveness as a phenological proxy in subtropical forests. Critically, the understory exhibited delayed leaf maturation (16.2 days) and senescence (61.2 and 11.6 days for start and end of leaf falling, respectively) compared with the overstory, revealing a vertical ‘phenological escape’ phenomenon. These phenological mismatches buffered seasonal productivity fluctuates, by sustaining carbon uptake during overstory senescence. Our approach overcomes the limitations of fixed observation towers and satellite imagery by offering flexible, scalable and cost-effective monitoring of vertical stratification in forests. By quantifying vertical layer interactions, our approach advances predictive modeling of ecosystem–climate feedback and guides forest management under climate change.

Key words: digital repeat photography, unmanned aerial vehicle, Green Chromatic Coordinates, forest, overstory, understory, phenology

摘要:
植物叶物候对于理解森林动态至关重要。然而,传统监测方法受限于冠层郁闭效应和空间覆盖范围的不足,难以系统刻画森林垂直层次的物候特征。为克服这一技术难题,本研究构建了一套集成无人机与地面固定相机的监测系统,实现了森林林冠层与林下层物候的协同监测。依托浙江天童森林生态系统国家野外科学观测研究站,该系统于2017–2023年间部署,获取了分辨率达0.075 m × 0.075 m的无人机影像及小时尺度的地面相机影像数据,在群落与物种尺度上追踪了植物的物候变化。基于该系统提取的绿色坐标指数(GCC)与归一化植被指数(NDVI,r = 0.82)、增强型植被指数(EVI,r = 0.91)、总初级生产力(GPP,r = 0.95)以及叶面积指数(LAI,林冠层r = 0.79;林下层r = 0.92)均呈显著相关关系,证实了GCC可作为亚热带森林物候监测的有效指标。监测结果显示,相较于林冠层,林下层叶片成熟时间延迟16.2天,叶片凋落开始和结束的时间分别延迟61.2与11.6天,揭示了林下层的 “物候逃逸” 现象。在林冠层衰老期间,这种物候错位可以维持林下层的碳吸收能力,有效缓冲森林生产力的季节性下降。本方法突破了基于卫星影像和固定观测塔监测物候的局限性,为森林垂直结构研究提供了灵活、可扩展且高性价比的监测手段。通过量化垂直层间的相互作用,本研究将推动生态系统-气候耦合模型的优化,并为气候变化背景下的森林管理提供科学依据。

关键词: 数码重复摄影, 无人机, 绿色坐标指数, 森林, 林冠层, 林下层, 物候