| Literature DB >> 30258032 |
Mary A Young1, Peter I Macreadie2, Clare Duncan2, Paul E Carnell2, Emily Nicholson2, Oscar Serrano3, Carlos M Duarte4, Glenn Shiell5, Jeff Baldock6, Daniel Ierodiaconou2.
Abstract
Researchers are increasingly studying carbon (C) storage by natural ecosystems for climate mitigation, including coastal 'blue carbon' ecosystems. Unfortunately, little guidance on how to achieve robust, cost-effective estimates of blue C stocks to inform inventories exists. We use existing data (492 cores) to develop recommendations on the sampling effort required to achieve robust estimates of blue C. Using a broad-scale, spatially explicit dataset from Victoria, Australia, we applied multiple spatial methods to provide guidelines for reducing variability in estimates of soil C stocks over large areas. With a separate dataset collected across Australia, we evaluated how many samples are needed to capture variability within soil cores and the best methods for extrapolating C to 1 m soil depth. We found that 40 core samples are optimal for capturing C variance across 1000's of kilometres but higher density sampling is required across finer scales (100-200 km). Accounting for environmental variation can further decrease required sampling. The within core analyses showed that nine samples within a core capture the majority of the variability and log-linear equations can accurately extrapolate C. These recommendations can help develop standardized methods for sampling programmes to quantify soil C stocks at national scales.Entities:
Keywords: carbon stock; mangrove; sampling design; seagrass; tidal marsh
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Year: 2018 PMID: 30258032 PMCID: PMC6170757 DOI: 10.1098/rsbl.2018.0416
Source DB: PubMed Journal: Biol Lett ISSN: 1744-9561 Impact factor: 3.703