Reducing uncertainty in carbon cycle science of North America: a synthesis program across United...

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Reducing uncertainty in carbon cycle science of North America: a synthesis program across United States and Mexico Rodrigo Vargas Department of Plant and Soil Sciences University of Delaware CoPIs: Nathaniel Brunsell University of Kansas Daniel Hayes University of Maine Contact: rvargas @udel.edu Agroclimatology PD meeting December 16-18, 2016 San Francisco, CA

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Page 1: Reducing uncertainty in carbon cycle science of North America: a synthesis program across United States and Mexico

Reducing uncertainty in carbon cycle science of North America: a synthesis program across United

States and Mexico Rodrigo Vargas

Department of Plant and Soil SciencesUniversity of Delaware

CoPIs: Nathaniel BrunsellUniversity of Kansas

Daniel HayesUniversity of Maine

Contact: [email protected]

Agroclimatology PD meetingDecember 16-18, 2016San Francisco, CA

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Interagency Carbon Cycle Science (FY 2014)(2014-67003-22070)

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• Synthesize new existing datasets and models across the United States (U.S.) and Mexico in a consistent analysis framework.

…directed towards improving our understanding of forest and soil carbon dynamics, and the validation of terrestrial ecosystem models.

The specific objectives:a) Harmonize available datasets b) Develop the synthesis approaches for scaling informationc) Develop a to identify knowledge gaps.

Objectives

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Biederman, et al (2016) Global Change Biology 22:1867–1879. Villarreal, et al (2016) Journal of Geophysical Research-Biogeosciences 121:494-508. Petrie, et al (2016) Journal of Geophysical Research- Biogeosciences 121:280-294. Reimer, et al (2016) Progress in Oceanography 143 (2016) 1–12 McKinney et al (2015) IEEE 11th International Conference on e-Science: 108-117. Programa de Investigación en Cambio Climático (PICC) (2015) Reporte Mexicano de Cambio Climático. (Mexican Report on Climate Change. Group I: Scientific Bases, Models and Modeling).FAO and ITPS (2015) Status of the World’s Soil Resources (SWSR) – Main Report. Vargas , et al (2015) EOS, 96. doi:10.1029/ 2015EO037893 Reimer, et al (2015) PLoS ONE. 10(4):e0125177Cueva, et al (2015) Journal of Geophysical Research-Biogeosciences 120:737-751. King, et al (2015) Biogeosciences 12:399-414 Milne, et al (2015) “Soil Carbon: science, management and policy for multiple benefits”. CABI. 10-25.Banwart, et al (2014) Carbon Management 5:185-19Hengl, et al. SoilGrids250m: global gridded soil information based on Machine Learning (in review) PlosONE

Vargas R, et al. (in review) Enhancing interoperability to facilitate implementation of REDD+: case study of Mexico. Carbon Management

Publications

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Soil carbon across North America

- For decades the USA and Mexico have collected soil organic carbon (SOC) information.

- Can we describe the spatial variability of SOC across North America?

- Can we relate observations with biophysical information to predict SOC?

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• Digital soil mapping (predictive soil mapping)

- Computer-assisted production of digital maps of soil properties.

- Use of field and laboratory observational (data and methods) with spatial and non-spatial inference systems.

Digital soil mapping

+ many others

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United States MexicoInternational Soil Carbon Network Federal agencies

NRCS N=94778 1938-2010

INEGI Legacy Series 1 N=21153 1969-2001

USGS N=5623 1928-2006

INEGI Legacy Series 2 N=2805 1999-2009

Oak Ridge National Lab N=588 1992-2006

INEGI – National land degradation project N=2472 2008-2012

Other institutions (e.g. Universities, Long Term Ecological Research sites) N=2330 1905-2009

CONAFOR – INFyS N=3061 2009-2011

TOTAL=103319 analyzed samples TOTAL=29491 analyzed samples

NRCS = Natural Resource Conservation ServiceUSGS = United States Geological SurveyINEGI = National Institute for Statistics and GeographyCONAFOR = National Forest Commission

SOC databases

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SOC databases

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0-30cm n=12,360

SOC database for USA (ISCN)

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• Randomized sample from INEGI series 1 & 2

0-30cm n=12,997

SOC database for Mexico (INEGI and CONAFOR)

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SOC = f(S,C,O,R,P,A,N)+eSoil- soil type mapsClimate, climatic propertiesOrganisms, land cover and natural vegetationRelief, terrain parameters from DEM`sParent material, geological maps Age, the time factorN, space, relative positione, autocorrelated random spatial variation

Dokuchayev 1883->Jenny 1941->McBratney et al., 2003,-> Grunwald et al., 2011

Conceptual model for SOC variability

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Model evaluation(e.g. cross valitacion,

AIC, BIC, Cp)

Variable selection(e.g. linear

model)

Prediction to

new data(e.g. random

forestCubist)

Uncertainty Estimation(e.g. different

models, Global/local)

SOC = f (Soils, Climate, Organisms, Parent material, Age, Space) + error

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Digital soil mapping

Guevara and Vargas (in preparation)

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Hypothesis driven

Machine learning

*Median

Statistical performance(explained variance)

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Unexplained variability

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Model r raca RMSEraca r inegi RMSE inegi MX (Pg) US (Pg)

linear 5km 0.45 0.94 0.47 0.23 16.6 ± 2.16e-05 23.16 ± 2.96e-05

rf 5km 0.46 0.95 0.33 0.24 17.4 ±2.68-e05 21.53 ± 3.36e-05

SOC stocks across North America (PRELIMINARY)

29.3Pg for 0-30 cm depth (SSURGO; Bliss et al 2014) for CONUS

14.2 Pg for 0-20 cm depth (+- 3.9 Pg; Murray-Tortarolo et al 2015) for Mexico

RaCA = Rapid Assessment of US Soil Carbon (USDA)INEGI = Series 1& 2

RaCA INEGI

Soil carbon density:CONUS = 2.8 Mg km-2

Mexico = 8.5 Mg km-2

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Towards a continental map of SOC for North America

SOC next steps

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- - This approach represents a regional baseline estimate of SOC (0-30cm) including variability

- - Useful in future soil sampling planning (i.e. for inventory, SOC monitoring networks) aiming to reduce areas dominated by high variability

- -This approach is reproducible (and semi automated) and can be periodically updated with new data and new covariates (Land use time 1, land use time2 and so on)

Conclusions

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Vargas et al (in review)

Stakeholder Scientists

Interoperability

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Vargas et al (in review)

Interoperability

Interoperability is a collective effort with the ultimate goal of sharing and using information to produce knowledge and apply knowledge gained, by removing conceptual, technological, organizational, and cultural barriers.

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Vargas et al (in review)

Interoperability

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Interagency Carbon Cycle Science (FY 2014)(2014-67003-22070)

THANK YOU