“Past studies, including one that we did one year ago, proposed ways of reducing the number of samples needed,” Potash said. “But it was unknown just how much more efficient those methods were. We put those methods to the test using a new high-quality dataset our research team put together.”
The team found that SOC stocks in agricultural fields can be more efficiently measured by using a method called doubly balanced sampling, which accounts for auxiliary information available in elevation maps, satellite images, and previous surveys. Doubly balanced sampling is a modern strategy that improves on the classic method of stratified sampling by selecting locations that are more representative of the field in terms of this auxiliary information.
“Quantifying soil carbon stock through soil sampling is a hard and expensive task, but our approach was found to reduce the number of soil samples needed by a very promising 30 percent,” said Kaiyu Guan, project lead and coauthor, Founding Director of ASC, and NRES Associate Professor. “We believe this is a significant advancement for improving soil sampling efficiency and should be promoted in future practices by carbon project developers or researchers.”
The work is made possible by unique field-level, high-resolution soil samples collected by scientists from different projects.
“I am glad that our hard work and collected soil sampling data enables the development of this approach,” said DoKyoung Lee, another coauthor and a Professor of Crop Sciences at the U of I.
The team has made its methods and data publicly available so that the scientific community can benefit from, and collaborate on, further improving the understanding of SOC.
“I am especially excited that we are publicly sharing the data for this study,” Potash said. “I hope that this will foster increased collaboration to accelerate progress on soil carbon research.”
Source : illinois.edu