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China's annual forest age dataset at a 30 m...
Journal article

China's annual forest age dataset at a 30 m spatial resolution from 1986 to 2022

Abstract

Abstract. Forest age is crucial for both carbon cycle modeling and effective forest management. Remote sensing provides crucial data for large-scale forest age mapping, but existing products often suffer from a low spatial resolution (typically 1000 m), making them unsuitable for most forest stands in China, which are generally smaller than this threshold. Recent studies have generated static forest age products for 2019 (CAFA V1.0) (Shang et al., 2023a) and 2020 (Cheng et al., 2024) at a 30 m spatial resolution. However, their low temporal resolution limits their applicability to track multiyear forest carbon changes. This study aims to generate China's annual forest age dataset (CAFA V2.0) at a 30 m resolution from 1986 to 2022, utilizing forest disturbance monitoring and machine learning techniques. Forest disturbance monitoring, which typically has lower uncertainty compared to machine learning approaches, is primarily employed to update annual forest age. The modified COLD (mCOLD) algorithm, which incorporates spatial information and bidirectional monitoring, was used for forest disturbance monitoring. For undisturbed forests, forest age was estimated using machine learning models trained separately for different regions and forest cover types, with inputs including forest height, vegetation indices, climate, terrain, and soil data. Additionally, adjustments were made for underestimations in the Northeastern and Southwestern regions of China identified in CAFA V1.0 using additional reference age samples and region-specific and forest-type-specific models. Validation, using a randomly selected 30 % of two reference datasets, indicated that the mapped age of disturbed forest exhibited a small error of ±2.48 years, while the mapped age of undisturbed forest from 1986 to 2022 had a larger error of ±7.91 years. The generated 30 m annual forest age dataset can facilitate forest carbon cycle modeling in China, offering valuable insights for national forest management practices. The CAFA V2.0 dataset is publicly available at https://doi.org/10.6084/m9.figshare.24464170 (Shang et al., 2023b).

Authors

Shang R; Lin X; Chen JM; Liang Y; Fang K; Xu M; Yan Y; Ju W; Yu G; He N

Journal

Earth System Science Data, Vol. 17, No. 7, pp. 3219–3241

Publisher

Copernicus Publications

Publication Date

July 4, 2025

DOI

10.5194/essd-17-3219-2025

ISSN

1866-3508

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