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A Web-Based Model of N Mineralization from Cover Crop Residue Decomposition.

Authors :
Woodruff, L. K.
Kissel, D. E.
Cabrera, M. L.
Habteselassie, M. Y.
Hitchcock, R.
Gaskin, J.
Vigil, M.
Sonon, L.
Romano, N.
Rema, J.
Source :
Soil Science Society of America Journal; Jul/Aug2018, Vol. 82 Issue 4, p983-993, 11p
Publication Year :
2018

Abstract

Cover crops can provide substantial quantities of N for subsequent crops, but estimating the amount of N that will be mineralized from residues is challenging. Complex interactions of residue chemistry with soil temperature and soil water content affect N mineralization during residue decomposition. A simulation model can describe these interactions and provide estimates of N mineralized if specific soil water and temperature data are available. Our objectives are (i) to describe a web-based N mineralization model and its operation, (ii) to calibrate the model with results from published N mineralization studies, and (iii) to validate it using field studies investigating decomposition of surface-applied or incorporated crimson clover (Trifolium incarnatum L.) or rye (Secale cereale L.) residues over 3 yr. Inputs required by the model include residue N, nonstructural carbohydrates, cellulose + hemi-cellulose, and lignin contents, as well as 5-yr average values of daily soil temperature and soil water content from a user-selected weather station. The model was successfully calibrated with published data from eight laboratory and field studies and was validated with data from field studies that used soil cores with cover crop residues. Simulated values of N mineralized were acceptable for incorporated residues but tended to overpredict N mineralized from surface residues because soil temperature and water content are not good drivers to simulate N mineralization from residues on the soil surface. Additional research is needed to develop algorithms to estimate temperature and water content/water potential of surface residues so they can be used as driver variables for the model. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03615995
Volume :
82
Issue :
4
Database :
Complementary Index
Journal :
Soil Science Society of America Journal
Publication Type :
Academic Journal
Accession number :
132004768
Full Text :
https://doi.org/10.2136/sssaj2017.05.0144