Maria Åsnes Moan, Ole Martin Bollandsås, Svetlana Saarela, Terje Gobakken, Erik Næsset, Hans Ole Ørka, Lennart Noordermeer
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引用次数: 0
Abstract
Site index (SI) is determined from the top height development and is a proxy for forest productivity, defined as the expected top height for a given species at a certain index age. In Norway, an index age of 40 years is used. By using bi-temporal airborne laser scanning (ALS) data, SI can be determined using models estimated from SI observed on field plots (the direct approach) or from predicted top heights at two points in time (the height differential approach). Time series of ALS data may enhance SI determination compared to conventional methods used in operational forest inventory by providing more detailed information about the top height development. We used longitudinal data comprising spatially consistent field and ALS data collected from training plots in 1999, 2010, and 2022 to determine SI using the direct and height differential approaches using all combinations of years and performed an external validation. We also evaluated the use of data assimilation. Values of root mean square error obtained from external validation were in the ranges of 16.3%–21.4% and 12.8%–20.6% of the mean field-registered SI for the direct approach and the height differential approach, respectively. There were no statistically significant effects of time series length or the number of points in time on the obtained accuracies. Data assimilation did not result in any substantial improvement in the obtained accuracies. Although a time series of ALS data did not yield greater accuracies compared to using only two points in time, a larger proportion of the study area could be used in ALS-based determination of SI when a time series was available. This was because areas that were unsuitable for SI determination between two points in time could be subject to SI determination based on data from another part of the time series.
林地指数(SI)是根据顶高发展确定的,是森林生产力的代用指标,定义为特定树种在一定指数龄期的预期顶高。挪威采用的指数年龄为 40 年。通过使用双时相机载激光扫描(ALS)数据,可以使用从实地小块观察到的 SI(直接方法)或从两个时间点的预测顶高(高度差方法)估算出的模型来确定 SI。与作业森林资源清查中使用的传统方法相比,ALS 数据的时间序列可提供有关顶高发展的更详细信息,从而提高 SI 测定的准确性。我们使用了由 1999 年、2010 年和 2022 年从训练地块收集的空间一致的实地数据和 ALS 数据组成的纵向数据,使用直接法和高度差法确定了所有年份组合的 SI,并进行了外部验证。我们还评估了数据同化的使用情况。外部验证得出的均方根误差值分别为直接法和高差法实地登记 SI 平均值的 16.3%-21.4% 和 12.8%-20.6% 之间。时间序列长度或时间点数量对获得的精度没有明显的统计学影响。数据同化并没有使获得的精确度有实质性提高。虽然与仅使用两个时间点相比,ALS 数据的时间序列并没有产生更高的精度,但如果有时间序列,则有更大比例的研究区域可用于基于 ALS 的 SI 测定。这是因为在两个时间点之间不适合测定 SI 的区域可以根据时间序列另一部分的数据来测定 SI。
Forest EcosystemsEnvironmental Science-Nature and Landscape Conservation
CiteScore
7.10
自引率
4.90%
发文量
1115
审稿时长
22 days
期刊介绍:
Forest Ecosystems is an open access, peer-reviewed journal publishing scientific communications from any discipline that can provide interesting contributions about the structure and dynamics of "natural" and "domesticated" forest ecosystems, and their services to people. The journal welcomes innovative science as well as application oriented work that will enhance understanding of woody plant communities. Very specific studies are welcome if they are part of a thematic series that provides some holistic perspective that is of general interest.