Metadata Access | Data from: Modeling tree canopy height using machine learning over mixed vegetation landscapes (xml)
- Data from: Modeling tree canopy height using machine learning over mixed vegetation landscapes
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Although the random forest algorithm has been widely applied to remotely sensed data to predict characteristics of forests, such as tree canopy height, the effect of spatial non-stationarity in the modeling process is oftentimes neglected....
UV-Vis spectroscopic titration studies of ATF ligands 6, 8 and 10 with Cu salts were prepared as follows: ligand solutions were prepared to 1.45 x 10-4 M in acetonitrile. 1.2 mL of ATF solution was added to a quartz cuvette. Titrations were...
Forests mitigate climate change by sequestering massive amounts of carbon, but recent increases in wildfire activity are threatening carbon storage. Currently, our understanding of wildfire impacts on forest resilience and the mechanisms...
**This dataset has been updated** Version 2.0 of this dataset is now available at https://doi.org/10.7923/CN15-JW37. Please utilize the most recent version of this dataset for future use and reference. **Abstract** Forests mitigate climate change...