D'Amico Giovanni, Vangi Elia, Schwartz Martin, Giannetti Francesca, Francini Saverio, Corona Piermaria, Mattioli Walter, Chirici Gherardo
geoLAB - Laboratoy of Forest Geomatics, Department of Agricultural, Food, Environmental and Forestry Sciences and Technologies, University of Florence, via San Bonaventura 13, I-50144, Florence, Italy.
geoLAB - Laboratoy of Forest Geomatics, Department of Agricultural, Food, Environmental and Forestry Sciences and Technologies, University of Florence, via San Bonaventura 13, I-50144, Florence, Italy; Forest Modelling Laboratory, Institute for Agriculture and Forestry Systems in Mediterranean, National Research Council of Italy (CNR-ISAFOM), Perugia, Italy.
J Environ Manage. 2025 Sep 10;393:127197. doi: 10.1016/j.jenvman.2025.127197.
Agroforestry is a strategic asset for combating climate change and mitigating the environmental impacts of agricultural intensification, offering a nature-based solution for enhancing landscape resilience. In particular, poplar plantations contribute to the development of ecological networks within homogeneous agricultural landscapes, while also producing high-demand plywood and sequestering CO in durable manufactured goods. Monitoring short-rotation poplar plantations requires frequent updates, which are infeasible with conventional National Forest Inventories (NFIs). Remote sensing (RS) has emerged as a highly effective tool for monitoring the structural variables of poplar plantations. This study aims to estimate the carbon stocks of poplar plantations in the Padan Plain, which spans approximately 46,000 km in northern Italy. To achieve this, we developed a 10m high-resolution canopy height model (CHM) using a deep learning U-Net approach, with Sentinel-1 and Sentinel-2 multi-band imagery as predictors for GEDI waveforms derived tree height. The U-Net CHM for 2021 was evaluated with external validation data from NFI plots, achieving a mean absolute error of 2.6 m. Using annual poplar plantations data in the survey area, along with a poplar-specific yield table derived from terrestrial laser scanning, we applied the U-Net CHM to predict key forestry variables, including diameter at breast height (DBH), growing stock volume (GSV), aboveground biomass (AGB), and carbon stock (CS) in all stands. Results were compared with external validation data from NFI, yielding RMSE values of 30.7 %, 46.2 %, and 63.2 % for DBH, GSV, and AGB, respectively. Meanwhile, independent field surveys produced RMSE values of 19 % and 37.7 % for DBH and GSV, respectively. The average GSV estimated was 70 m ha, while total CS were 12 MgC ha. Based on poplar plantation maps for 2021 and 2022, we estimated the total harvested GSV of poplar trees to be 370,000 m, equal to 66,000 MgC. The corresponding average harvested area was 1.5 ha, with an average yield of 130 m per hectare. The integration of multiple RS datasets with advanced machine learning techniques facilitates the effective monitoring of dynamic poplar plantations, for both mapping purposes and quantifying key forest variables relevant to climate change mitigation, such as carbon stocks.
农林业是应对气候变化和减轻农业集约化对环境影响的一项战略资产,它提供了一种基于自然的解决方案,以增强景观恢复力。特别是杨树人工林有助于在单一的农业景观中发展生态网络,同时还能生产高需求的胶合板,并将碳封存在耐用制成品中。监测短轮伐期杨树人工林需要频繁更新数据,而传统的国家森林资源清查(NFI)无法做到这一点。遥感(RS)已成为监测杨树人工林结构变量的一种高效工具。本研究旨在估算意大利北部波河平原上杨树人工林的碳储量,该平原面积约46000平方公里。为此,我们使用深度学习U-Net方法,以哨兵-1和哨兵-2多波段影像作为GEDI波形衍生树高的预测因子,开发了一个10米高分辨率的树冠高度模型(CHM)。利用来自NFI样地的外部验证数据对2021年的U-Net CHM进行了评估,平均绝对误差为2.6米。利用调查区域内杨树人工林的年度数据,以及从地面激光扫描得出的特定杨树产量表,我们应用U-Net CHM预测了所有林分的关键林业变量,包括胸径(DBH)、蓄积量(GSV)、地上生物量(AGB)和碳储量(CS)。将结果与来自NFI的外部验证数据进行比较,DBH、GSV和AGB的均方根误差(RMSE)值分别为30.7%、46.2%和63.2%。同时,独立的实地调查得出DBH和GSV的RMSE值分别为19%和37.7%。估算的平均GSV为70立方米/公顷,而总CS为12吨碳/公顷。根据2021年和2022年的杨树人工林地图,我们估计杨树的总采伐GSV为370000立方米,相当于66000吨碳。相应的平均采伐面积为1.5公顷,平均产量为每公顷130立方米。将多个RS数据集与先进的机器学习技术相结合,有助于对动态杨树人工林进行有效监测,这既有助于制图,也有助于量化与减缓气候变化相关的关键森林变量,如碳储量。