基于机载激光扫描、Sentinel-1和Sentinel-2的温带山林冠下光照状况制图

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Felix Glasmann , Cornelius Senf , Rupert Seidl , Peter Annighöfer
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引用次数: 0

摘要

阳光是森林生态系统的主要能量来源,冠层下的光照制度在很大程度上决定了植物的建立、生长和扩散,从而决定了森林地面植物群落。在空间和时间上,冠层下的光线状况都是高度可变的,这使得监测它们具有挑战性。在这项研究中,我们评估了Sentinel-1和Sentinel-2时间序列预测温带山地森林冠层下光照状况的潜力。我们训练了不同的随机森林回归模型,根据Sentinel-1和Sentinel-2时间序列的一组指标预测现场测量的总场地因子(TSF,到达森林地面的潜在直接和漫射太阳辐射的比例,这里定义为地下和地上生物量之间的过渡区)。模型性能的基准是基于基于机载激光扫描(ALS)数据的结构指标的模型,作为模拟冠层下光状态的经验金标准。我们发现Sentinel-1和Sentinel-2时间序列的表现几乎与基于高分辨率ALS数据的模型一样好(Sentinel-1/2的R2/RMSE为0.80/0.11,而ALS的R2/RMSE为0.90/0.08)。我们进一步测试了训练后的模型在两个没有用于训练的新地点的泛化性,这些地点的现场数据可用于验证。由于ALS数据质量和采集日期的变化,两个独立试验点的ALS模型预测精度大幅下降(ΔR2/ΔRMSE分别为0.29/0.05和0.11/0.03)。而Sentinel-1/2模型的预测精度更为稳定(ΔR2/ΔRMSE分别为0.13/0.02和0.13/0.04)。因此,我们得出结论,Sentinel-1和Sentinel-2时间序列的组合具有独立于高分辨率ALS数据可用性的时空映射冠层光照条件的潜力。这对大尺度森林生态系统的业务监测具有重要意义,而这种监测往往受到与获取机载数据集有关的挑战的限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping subcanopy light regimes in temperate mountain forests from Airborne Laser Scanning, Sentinel-1 and Sentinel-2

Sunlight is the primary source of energy in forest ecosystems and subcanopy light regimes largely determine the establishment, growth and dispersal of plants and thus forest floor plant communities. Subcanopy light regimes are highly variable in both space and time, which makes monitoring them challenging. In this study, we assess the potential of Sentinel-1 and Sentinel-2 time series for predicting subcanopy light regimes in temperate mountain forests. We trained different random forest regression models predicting field-measured total site factor (TSF, proportion of potential direct and diffuse solar radiation reaching the forest floor, here defined as the transition zone between belowground and aboveground biomass) from a set of metrics derived from Sentinel-1 and Sentinel-2 time series. Model performance was benchmarked against a model based on structural metrics derived from Airborne Laser Scanning (ALS) data, serving as an empirical gold-standard in modelling subcanopy light regimes. We found that Sentinel-1 and Sentinel-2 time series performed nearly as good as the model based on high-resolution ALS data (R2/RMSE of 0.80/0.11 for Sentinel-1/2 compared to R2/RMSE of 0.90/0.08 for ALS). We furthermore tested the generalizability of the trained models to two new sites not used for training for which field data was available for validation. Prediction accuracy for the ALS model decreased substantially for the two independent test sites due to variable ALS data quality and acquisition date (ΔR2/ΔRMSE of 0.29/0.05 and 0.11/0.03 for both independent test sites). The prediction accuracy of the Sentinel-1/2 model, however, remained more stable (ΔR2/ΔRMSE of 0.13/0.02 and 0.13/0.04). We therefore conclude that a combination of Sentinel-1 and Sentinel-2 time series has the potential to map subcanopy light conditions spatially and temporally independent of the availability of high-resolution ALS data. This has important implications for the operational monitoring of forest ecosystems across large scales, which is often limited by the challenges related to acquiring airborne datasets.

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