Semantic Scholar Open Access 2022 26 sitasi

High-resolution landscape-scale biomass mapping using a spatiotemporal patchwork of LiDAR coverages

L. Johnson M. Mahoney E. Bevilacqua S. Stehman G. Domke +1 lainnya

Abstrak

Estimating forest AGB at large scales and fine spatial resolutions has become increasingly important for greenhouse gas accounting, monitoring, and verification efforts to mitigate climate change. Airborne LiDAR is highly valuable for modeling attributes of forest structure including AGB, yet most LiDAR collections take place at local or regional scales covering irregular, non-contiguous footprints, resulting in a patchwork of different landscape segments at various points in time. Here, as part of a statewide forest carbon assessment for New York State (USA), we addressed common obstacles in leveraging a LiDAR patchwork for AGB mapping at landscape scales, including selection of training data, the investigation of regional or coverage specific patterns in prediction error, and map agreement with field inventory across multiple scales. Three machine learning algorithms and an ensemble model were trained with FIA field measurements, airborne LiDAR, and topographic, climatic and cadastral geodata. Using a strict set of plot selection criteria, 801 FIA plots were selected with co-located point clouds drawn from a patchwork of 17 leaf-off LiDAR coverages (2014-2019). Our ensemble model was used to produce 30 m AGB prediction surfaces within a predictor-defined area of applicability (98% of LiDAR coverage), and the resulting AGB maps were compared with FIA plot-level and areal estimates at multiple scales of aggregation. Our model was overall accurate (% RMSE 22-45%; MAE 11.6-29.4 Mg ha$^{-1}$; ME 2.4-6.3 Mg ha$^{-1}$), explained 73-80% of field-observed variation, and yielded estimates that were consistent with FIA's design-based estimates (89% of estimates within FIA's 95% CI). We share practical solutions to challenges faced in using spatiotemporal patchworks of LiDAR to meet growing needs for AGB mapping in support of applications in forest carbon accounting and ecosystem.

Penulis (6)

L

L. Johnson

M

M. Mahoney

E

E. Bevilacqua

S

S. Stehman

G

G. Domke

C

Colin M. Beier

Format Sitasi

Johnson, L., Mahoney, M., Bevilacqua, E., Stehman, S., Domke, G., Beier, C.M. (2022). High-resolution landscape-scale biomass mapping using a spatiotemporal patchwork of LiDAR coverages. https://doi.org/10.1016/j.jag.2022.103059

Akses Cepat

Lihat di Sumber doi.org/10.1016/j.jag.2022.103059
Informasi Jurnal
Tahun Terbit
2022
Bahasa
en
Total Sitasi
26×
Sumber Database
Semantic Scholar
DOI
10.1016/j.jag.2022.103059
Akses
Open Access ✓