A 2020 forest age map for China with 30 m resolution
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Published:2024-02-07
Issue:2
Volume:16
Page:803-819
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ISSN:1866-3516
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Container-title:Earth System Science Data
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language:en
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Short-container-title:Earth Syst. Sci. Data
Author:
Cheng Kai,Chen Yuling,Xiang Tianyu,Yang Haitao,Liu Weiyan,Ren Yu,Guan Hongcan,Hu Tianyu,Ma Qin,Guo Qinghua
Abstract
Abstract. A high-resolution, spatially explicit forest age map is essential for quantifying forest carbon stocks and carbon sequestration potential. Prior attempts to estimate forest age on a national scale in China have been limited by sparse resolution and incomplete coverage of forest ecosystems, attributed to complex species composition, extensive forest areas, insufficient field measurements, and inadequate methods. To address these challenges, we developed a framework that combines machine learning algorithms (MLAs) and remote sensing time series analysis for estimating the age of China's forests. Initially, we identify and develop the optimal MLAs for forest age estimation across various vegetation divisions based on forest height, climate, terrain, soil, and forest-age field measurements, utilizing these MLAs to ascertain forest age information. Subsequently, we apply the LandTrendr time series analysis to detect forest disturbances from 1985 to 2020, with the time since the last disturbance serving as a proxy for forest age. Ultimately, the forest age data derived from LandTrendr are integrated with the result of MLAs to produce the 2020 forest age map of China. Validation against independent field plots yielded an R2 ranging from 0.51 to 0.63. On a national scale, the average forest age is 56.1 years (standard deviation of 32.7 years). The Qinghai–Tibet Plateau alpine vegetation zone possesses the oldest forest with an average of 138.0 years, whereas the forest in the warm temperate deciduous-broadleaf forest vegetation zone averages only 28.5 years. This 30 m-resolution forest age map offers crucial insights for comprehensively understanding the ecological benefits of China's forests and to sustainably manage China's forest resources. The map is available at https://doi.org/10.5281/zenodo.8354262 (Cheng et al., 2023a).
Funder
National Key Research and Development Program of China National Natural Science Foundation of China Nanjing Normal University
Publisher
Copernicus GmbH
Reference79 articles.
1. Abbasi, E., Alavi Moghaddam, M. R., and Kowsari, E.: A systematic and critical review on development of machine learning based-ensemble models for prediction of adsorption process efficiency, J. Clean. Prod., 379, 134588, https://doi.org/10.1016/j.jclepro.2022.134588, 2022. 2. Akiba, T., Sano, S., Yanase, T., Ohta, T., and Koyama, M.: Optuna: A Next-generation Hyperparameter Optimization Framework, Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, 2623–2631, Association for Computing Machinery, Anchorage, AK, USA, https://doi.org/10.48550/arXiv.1907.10902, 2019. 3. Alerskans, E., Zinck, A.-S. P., Nielsen-Englyst, P., and Høyer, J. L.: Exploring machine learning techniques to retrieve sea surface temperatures from passive microwave measurements, Remote Sens Environ., 281, 113220, https://doi.org/10.1016/j.rse.2022.113220, 2022. 4. Banfield, R. E., Hall, L. O., Bowyer, K. W., and Kegelmeyer, W. P.: A Comparison of Decision Tree Ensemble Creation Techniques, IEEE T. Pattern Anal. Mach. Intell., 29, 173–180, https://doi.org/10.1109/TPAMI.2007.250609, 2007. 5. Banskota, A., Kayastha, N., Falkowski, M. J., Wulder, M. A., Froese, R. E., and White, J. C.: Forest Monitoring Using Landsat Time Series Data: A Review, Can. J. Remote. Sens., 40, 362–384, https://doi.org/10.1080/07038992.2014.987376, 2014.
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