The 2020-2021 catalyst project Refining Techniques for High-Frequency Monitoring of Chlorophyll in the NERRS brought together twelve biogeochemically diverse reserves to compare results from new YSI in situ sensor technology with ex
Resources
Resources
A repository of data, publications, tools, and other products from project teams, Science Collaborative program, and partners.
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Recommendations for the NERRS SWMP, summarizing outputs in an archivable format deemed useful by end users (NERRS research staff).
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Thin-layer placement (TLP) is an emergent climate adaptation strategy that mimics natural deposition processes in tidal marshes by adding a small amount of sediment on top of marsh in order to maintain elevation relative to sea level rise.
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This collection of reports summarizes Surface Elevation Table (SET) data at fiften reserves. A technical report analyzing of surface elevation change and a summary for oureach purposes is provided for each reserve.
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This protocol is intended to enable wetland managers, conservationists, and other practitioners to monitor and estimate a wetland ’s long-term Total Phosphorus (TP) retention capacity threshold.
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This paper describes management and structural practices that can be used to manage stormwater runoff from a development site after construction is complete.
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This report summarizes the results of interviews with 18 stormwater professionals in Ohio as part of a 2011 Collaborative Research project led by Old Woman Creek Reserve.
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This report contains feedback and reflections on the collaborative part of the “Implementing Credits and Incentives for Innovative Stormwater Solutions in Ohio. ”
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This document summarizes a tool developed by the NERRS to evaluate and compare the ability of tidal marshes to thrive as sea level rises.
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This code (R and MATLAB) can be used to analyze NERRS System-Wide Monitoring Program time series data.