Improved aboveground biomass estimation and regional assessment with aerial lidar in California’s subalpine forests

IF 3.9 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Carbon Balance and Management Pub Date : 2024-12-20 DOI:10.1186/s13021-024-00286-w
Sara Winsemius, Chad Babcock, Van R. Kane, Kat J. Bormann, Hugh D. Safford, Yufang Jin
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Abstract

Background

Understanding the impacts of climate change on forest aboveground biomass is a high priority for land managers. High elevation subalpine forests provide many important ecosystem services, including carbon sequestration, and are vulnerable to climate change, which has altered forest structure and disturbance regimes. Although large, regional studies have advanced aboveground biomass mapping with satellite data, typically using a general approach broadly calibrated or trained with available field data, it is unclear how well these models work in less prevalent and highly heterogeneous forest types such as the subalpine. Monitoring biomass using methods that model uncertainty at multiple scales is critical to ensure that local relationships between biomass and input variables are retained. Forest structure metrics from lidar are particularly valuable alongside field data for mapping aboveground biomass, due to their high correlation with biomass.

Results

We estimated aboveground woody biomass of live and dead trees and uncertainty at 30 m resolution in subalpine forests of the Sierra Nevada, California, from aerial lidar data in combination with a collection of field inventory data, using a Bayesian geostatistical model. The ten-fold cross-validation resulted in excellent model calibration of our subalpine-specific model (94.7% of measured plot biomass within the predicted 95% credible interval). When evaluated against two commonly referenced regional estimates based on Landsat optical imagery, root mean square error, relative standard error, and bias of our estimations were substantially lower, demonstrating the benefits of local modeling for subalpine forests. We mapped AGB over four management units in the Sierra Nevada and found variable biomass density ranging from 92.4 to 199.2 Mg/ha across these management units, highlighting the importance of high quality, local field and remote sensing data.

Conclusions

By applying a relatively new Bayesian geostatistical modeling method to a novel forest type, our study produced the most accurate and precise aboveground biomass estimates to date for Sierra Nevada subalpine forests at 30 m pixel and management unit scales. Our estimates of total aboveground biomass within the management units had low uncertainty and can be used effectively in carbon accounting and carbon trading markets.

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利用航空激光雷达改进加利福尼亚亚高山森林的地上生物量估算和区域评估
了解气候变化对森林地上生物量的影响是土地管理者的首要任务。高海拔亚高山森林提供许多重要的生态系统服务,包括碳封存,并且容易受到气候变化的影响,气候变化改变了森林结构和干扰制度。尽管大型区域性研究已经利用卫星数据推进了地上生物量制图,这些研究通常使用经过广泛校准或训练的一般方法,使用现有的实地数据,但尚不清楚这些模型在亚高山等不太普遍和高度异质性的森林类型中是否有效。使用在多个尺度上模拟不确定性的方法监测生物量,对于确保生物量和输入变量之间的局部关系得到保留至关重要。由于与生物量高度相关,激光雷达的森林结构指标与地面生物量的野外数据一起特别有价值。研究人员利用贝叶斯地质统计模型,结合航空激光雷达数据和野外清查数据,估算了加州内华达山脉亚高山森林30米分辨率下的活树和死树的地上木质生物量和不确定性。十倍交叉验证结果表明,我们的亚高山特异性模型具有良好的模型校准效果(94.7%的测量地块生物量在预测的95%可信区间内)。当与基于Landsat光学图像的两种常用区域估计进行比较时,我们估计的均方根误差、相对标准误差和偏差都大大降低,这表明了亚高山森林局部建模的好处。我们绘制了内华达山脉四个管理单元的AGB分布图,发现这些管理单元的生物量密度变化范围为92.4至199.2 Mg/ha,突出了高质量的本地野外和遥感数据的重要性。通过将一种相对较新的贝叶斯地质统计建模方法应用于一种新型森林类型,我们的研究得出了迄今为止内华达山脉亚高山森林在30 m像素和管理单元尺度上最准确和精确的地上生物量估算。我们对管理单元内总地上生物量的估计具有较低的不确定性,可以有效地用于碳核算和碳交易市场。
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来源期刊
Carbon Balance and Management
Carbon Balance and Management Environmental Science-Management, Monitoring, Policy and Law
CiteScore
7.60
自引率
0.00%
发文量
17
审稿时长
14 weeks
期刊介绍: Carbon Balance and Management is an open access, peer-reviewed online journal that encompasses all aspects of research aimed at developing a comprehensive policy relevant to the understanding of the global carbon cycle. The global carbon cycle involves important couplings between climate, atmospheric CO2 and the terrestrial and oceanic biospheres. The current transformation of the carbon cycle due to changes in climate and atmospheric composition is widely recognized as potentially dangerous for the biosphere and for the well-being of humankind, and therefore monitoring, understanding and predicting the evolution of the carbon cycle in the context of the whole biosphere (both terrestrial and marine) is a challenge to the scientific community. This demands interdisciplinary research and new approaches for studying geographical and temporal distributions of carbon pools and fluxes, control and feedback mechanisms of the carbon-climate system, points of intervention and windows of opportunity for managing the carbon-climate-human system. Carbon Balance and Management is a medium for researchers in the field to convey the results of their research across disciplinary boundaries. Through this dissemination of research, the journal aims to support the work of the Intergovernmental Panel for Climate Change (IPCC) and to provide governmental and non-governmental organizations with instantaneous access to continually emerging knowledge, including paradigm shifts and consensual views.
期刊最新文献
Estimating carbon stocks and woody perennials diversity in cropland agroforestry on three different land ecosystems in Bangladesh Advancing forest carbon projections requires improved convergence between ecological and economic models Integrating territorial pattern changes into the relationship between carbon sequestration and water yield in the Yangtze River Basin, China Improved aboveground biomass estimation and regional assessment with aerial lidar in California’s subalpine forests Land-use change, no-net-loss policies, and effects on carbon dioxide removals
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