Full TGIF Record # 135260
Item 1 of 1
DOI:10.2135/cropsci2006.01.0040
Web URL(s):https://dl.sciencesocieties.org/publications/cs/pdfs/48/2/763
    Last checked: 11/16/2016
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https://dl.sciencesocieties.org/publications/cs/articles/48/2/763
    Last checked: 11/16/2016
    Access conditions: Item is within a limited-access website
Publication Type:
i
Refereed
Author(s):Dettman-Kruse, Jason K.; Christians, Nick E.; Chaplin, Michael H.
Author Affiliation:Dettman-Kruse: University of Florida, Gainesville, Florida; Christians and Chaplin: Department of Horticulture, Iowa State University, Ames, Iowa
Title:Predicting soil water content through remote sensing of vegetative characteristics in a turfgrass system
Section:Turfgrass science
Other records with the "Turfgrass science" Section
Source:Crop Science. Vol. 48, No. 2, March/April 2008, p. 763-770.
Publishing Information:Madison, WI: Crop Science Society of America
# of Pages:8
Related Web URL:https://dl.sciencesocieties.org/publications/cs/abstracts/48/1/763
    Last checked: 11/16/2016
    Notes: Abstract only
Keywords:TIC Keywords: Soil water content; Remote sensing; Soil moisture sensors; Lolium perenne; Agrostis stolonifera; Irrigation program; Evapotranspiration; Time domain reflectometry
Abstract/Contents:"Scouting to determine soil water status throughout a golf course or large athletic field complex is quite time consuming and requires numerous observations to characterize variability across the site. The objective of this research was to evaluate the use of a ground-based remote sensing system to predict soil water content through partial least squares regression analysis of canopy reflectance data collected from perennial ryegrass (Lolium perenne L.) maintained at 12.7 mm and creeping bentgrass (Agrostis stolonifera L.) maintained at 6.3 mm during 2002 and 2003 on a Coland silty clay loam. Volumetric soil water at a 5 cm depth was measured by time domain reflectometry and was collected in conjunction with spectral radiance measurements obtained using a fiber optic spectrometer. Volumetric soil water content was best predicted with partial least squares regression analysis of creeping bentgrass canopy reflectance data with a maximum r2 of 0.64 (P < 0.001) 1 d before development of drought stress symptoms. Similar results were observed for canopy reflectance data collected from perennial ryegrass plots, indicating that this technology and method of data analysis may be useful in the development of automated turfgrass irrigation management systems."
Language:English
References:35
Note:Tables
Graphs
ASA/CSSA/SSSA Citation (Crop Science-Like - may be incomplete):
Dettman-Kruse, J. K., N. E. Christians, and M. H. Chaplin. 2008. Predicting soil water content through remote sensing of vegetative characteristics in a turfgrass system. Crop Sci. 48(2):p. 763-770.
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DOI: 10.2135/cropsci2006.01.0040
Web URL(s):
https://dl.sciencesocieties.org/publications/cs/pdfs/48/2/763
    Last checked: 11/16/2016
    Requires: PDF Reader
    Access conditions: Item is within a limited-access website
https://dl.sciencesocieties.org/publications/cs/articles/48/2/763
    Last checked: 11/16/2016
    Access conditions: Item is within a limited-access website
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