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working_groups:cp:collection_of_publications [2021/12/20 10:34] ameier |
working_groups:cp:collection_of_publications [2021/12/22 11:30] ameier |
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- | ==== Collection of Publications ==== | + | ==== Collection of Publications |
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2) Then grab the DOI of interest as in this example " | 2) Then grab the DOI of interest as in this example " | ||
- | A) If that fails, then open a new tab in your browser and paste this address | + | If that fails, then try this hack [[.collection_of_publications:ups_doi_access_hack| UPC DOI access hack]] |
- | https:// | + | |
- | into the address bar WITHOUT hitting enter. Then | + | |
- | + | ||
- | B) grab the tail of your DOI html address like " | + | |
- | + | ||
- | | + | |
- | or directly from (restrictive) publisher site like this one | + | |
- | | + | |
- | + | ||
- | C) and paste it into the same new tab's address bar to obtain something like this (from our example): | + | |
- | https:// | + | |
- | and hit enter. | + | |
- | If you are lucky your publication may be found and accessed that way as in this example.... | + | |
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^ Author | ^ Author | ||
+ | | Suzanne E. Cotillon | West Africa land use and land cover time series: U.S. Geological Survey Fact Sheet 2017–3004 | | ||
+ | | 2017 | The data shows snapshots of 1975, 2000 and 2013 at typically 2km resolution, is based on Landsat imagery and validated with aerial photography, | ||
+ | | | https:// | ||
+ | | | {{ : | ||
+ | | Livia C.P. Dias | Patterns of land use, extensification, | ||
+ | | 2016 | Periods 1940-2000 and 2000-2012: Based on Hansen' | ||
+ | | | https:// | ||
+ | | | {{ : | ||
+ | | Yaqian He, E.L.Timothy & A. Warner | A time series of annual land use and land cover maps of China from 1982 to 2013 generated using AVHRR GIMMS NDVI3g data | | ||
+ | | 2017 | 1982-2013: A 32-year annual land use and land cover (LULC) maps of China were generated. The LULC map created for 2012 has no significant differences from the corresponding MODIS map (available since 2001). The LULC classification methods can be applied to other geographical regions. | | ||
+ | | | https:// | ||
+ | | | {{ : | ||
| Masayuki Kondo | State of the science in reconciling top-down and bottom-up approaches for terrestrial CO2 budget | | | Masayuki Kondo | State of the science in reconciling top-down and bottom-up approaches for terrestrial CO2 budget | | ||
| 2019 | Their set of atmospheric inversions and bio-sphere models, showed a high level of agreement for global and hemispheric CO2 budgets in the 2000s as well as for the regions of North America and South-east Asia. Differences in budget estimates are substantial for East Asia and South America. There is uncertainty in several regions as to whether these represent a carbon sink or source. Given these findings, caution should be taken when interpreting regional CO2 budgets.Those uncertainties continue to limit our ability to project the mitigation potential by the terrestrial biosphere. | | | 2019 | Their set of atmospheric inversions and bio-sphere models, showed a high level of agreement for global and hemispheric CO2 budgets in the 2000s as well as for the regions of North America and South-east Asia. Differences in budget estimates are substantial for East Asia and South America. There is uncertainty in several regions as to whether these represent a carbon sink or source. Given these findings, caution should be taken when interpreting regional CO2 budgets.Those uncertainties continue to limit our ability to project the mitigation potential by the terrestrial biosphere. | | ||
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| | https:// | | | https:// | ||
| | {{ : | | | {{ : | ||
+ | | Yidi XU et al. | Annual 30-m land use/land cover maps of China for 1980–2015 from the integration of AVHRR, MODIS and Landsat data using the BFAST algorithm | | ||
+ | | 2020 | Annual land use land cover (LULC) change information at 30m spatial resolution covering 1980 to 2015. The data integrates MODIS and Global Inventory Modelling and Mapping Studies (GIMMS) normalized difference vegetation index (NDVI)) with high spatial resolution datasets (China’s Land-Use/ | ||
+ | | | https:// | ||
+ | | | {{ : | ||
| Hui Yang | Comparison of forest above-ground biomass from dynamic global vegetation models with spatially explicit remotely sensed observation-based estimates | | | Hui Yang | Comparison of forest above-ground biomass from dynamic global vegetation models with spatially explicit remotely sensed observation-based estimates | | ||
| 2020 | Uses the GlobBiomass data set of forest above-ground biomass (AGB) density for the year 2010, obtained from multiple remote sensing and in situ observations at 100 m spatial resolution to evaluate AGB estimated by nine dynamic global vegetation models (DGVMs).Model estimates are 365 ± 66 Pg C compared to 275 (±13.5%) Pg C from GlobBiomass. The results suggest that TRENDY v6 DGVMs tend to underestimate biomass loss from anthropogenic disturbances.| | | 2020 | Uses the GlobBiomass data set of forest above-ground biomass (AGB) density for the year 2010, obtained from multiple remote sensing and in situ observations at 100 m spatial resolution to evaluate AGB estimated by nine dynamic global vegetation models (DGVMs).Model estimates are 365 ± 66 Pg C compared to 275 (±13.5%) Pg C from GlobBiomass. The results suggest that TRENDY v6 DGVMs tend to underestimate biomass loss from anthropogenic disturbances.| |