2024
DOI: 10.22541/essoar.171136943.37512936/v1
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Prediction of Distributed River Sediment Respiration Rates using Community-Generated Data and Machine Learning

Stefan F. Gary,
Timothy D. Scheibe,
Em Rexer
et al.

Abstract: River sediment microbial respiration is a key indicator of ecosystem functioning and the biogeochemical fluxes across this critical zone link surface and subsurface waters. As such, there is tremendous interest in measuring and mapping these respiration rates. Respiration observations are expensive and labor intensive; there is limited data available to the community. An open science, collaborative initiative is collecting samples for respiration rate analysis and multi-scale metadata; this evolving data set i… Show more

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