Technical note: Dynamic INtegrated Gap-filling and partitioning for OzFlux (DINGO)

Standardised, quality-controlled and robust data from flux networks underpin the understanding of ecosystem processes and tools necessary to support the management of natural resources, including water, carbon and nutrients for environmental and production benefits. The Australian regional flux netw...

Full description

Bibliographic Details
Main Authors: J. Beringer, I. McHugh, L. B. Hutley, P. Isaac, N. Kljun
Format: Article
Language:English
Published: Copernicus Publications 2017-03-01
Series:Biogeosciences
Online Access:http://www.biogeosciences.net/14/1457/2017/bg-14-1457-2017.pdf
Description
Summary:Standardised, quality-controlled and robust data from flux networks underpin the understanding of ecosystem processes and tools necessary to support the management of natural resources, including water, carbon and nutrients for environmental and production benefits. The Australian regional flux network (OzFlux) currently has 23 active sites and aims to provide a continental-scale national research facility to monitor and assess Australia's terrestrial biosphere and climate for improved predictions. Given the need for standardised and effective data processing of flux data, we have developed a software suite, called the Dynamic INtegrated Gap-filling and partitioning for OzFlux (DINGO), that enables gap-filling and partitioning of the primary fluxes into ecosystem respiration (Fre) and gross primary productivity (GPP) and subsequently provides diagnostics and results. We outline the processing pathways and methodologies that are applied in DINGO (v13) to OzFlux data, including (1) gap-filling of meteorological and other drivers; (2) gap-filling of fluxes using artificial neural networks; (3) the <i>u</i>* threshold determination; (4) partitioning into ecosystem respiration and gross primary productivity; (5) random, model and <i>u</i>* uncertainties; and (6) diagnostic, footprint calculation, summary and results outputs. DINGO was developed for Australian data, but the framework is applicable to any flux data or regional network. Quality data from robust systems like DINGO ensure the utility and uptake of the flux data and facilitates synergies between flux, remote sensing and modelling.
ISSN:1726-4170
1726-4189