Graphical abstract
COVIDSum (
COVID
-19 scientific paper
Sum
marization) consists of four major modules: (1) Dataset Preprocessing, (2) Heuristic Sentence Extraction, (3) Word Cooccurrence Graph Construction, and (4) Linguistically Enriched Abstractive Summarization.
The Data Preprocessing module
retrieves abstract and textual content of each paper and removes papers which have missed abstracts or are not written in English language.
Sentence Extraction module
applies three heuristic methods to extract sentences of each paper. Word Co-occurrence Relationship Graph Construction module extracts word co-occurrence relationship to construct an un-weighted directed word co-occurrence graph.
Linguistically Enriched Abstractive Summarization
module proposes a hybrid summarization approach, which utilizes SciBERT and a GATbased graph encoder to encode the word sequences and word co-occurrence graphs respectively, adopts highway networks to fuse the above two encodings for obtaining context vectors of sentences, and applies Transformer decoder to generate summaries.
Forests are the largest terrestrial ecosystem carbon pool and provide the most important nature-based climate mitigation pathway. Compared with belowground biomass (BGB) and soil carbon, aboveground biomass (AGB) is more sensitive to human disturbance and climate change. Therefore, accurate forest AGB mapping will help us better assess the mitigation potential of forests against climate change. Here, we developed six models to estimate national forest AGB using six machine learning algorithms based on 52,415 spaceborne Light Detection and Ranging (LiDAR) footprints and 22 environmental features for China in 2007. The results showed that the ensemble model generated by the stacking algorithm performed best with a determination coefficient (R2) of 0.76 and a root mean square error (RMSE) of 22.40 Mg/ha. The verifications at pixel level (R2 = 0.78, RMSE = 16.08 Mg/ha) and provincial level (R2 = 0.53, RMSE = 14.05 Mg/ha) indicated the accuracy of the estimated forest AGB map is satisfactory. The forest AGB density of China was estimated to be 53.16 ± 1.63 Mg/ha, with a total of 11.00 ± 0.34 Pg. Net primary productivity (NPP), normalized difference vegetation index (NDVI), enhanced vegetation index (EVI), average annual rainfall, and annual temperature anomaly are the five most important environmental factors for forest AGB estimation. The forest AGB map we produced is expected to reduce the uncertainty of forest carbon source and sink estimations.
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