Optimal soil carbon sampling designs to achieve cost-effectiveness: a case study in blue carbon ecosystems
收藏DataONE2020-06-24 更新2025-04-19 收录
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Researchers are increasingly studying carbon (C) storage by natural ecosystems for climate mitigation, including coastal âblue carbonâ 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 best methods for extrapolating C to 1 m soil depth. We found that 40 core samples are optimal for capturing C variance across 1000âs of kilometres but higher density sampling is required across finer scales (100-200 km). Accounting for environmental v...
创建时间:
2025-04-09



