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Wet Chemical Compositional and Near IR Spectra Data Sets for Biomass

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Near-infrared (NIR) calibration models are created by applying multivariate calibration methods to the combination of wet chemistry data and NIR spectra of a given set of biomass samples. Wet chemical compositional data and NIR spectra exist for the following types of biomass samples: corn stover, switchgrass, mixed hardwoods, mixed softwoods, sorghum, and miscanthus. These samples may be feedstock samples, washed and dried solids from one or more pretreatment processes, liquors derived from one or more pretreatment processes, or whole pretreated slurries.

Citation Formats

National Renewable Energy Laboratory. (2019). Wet Chemical Compositional and Near IR Spectra Data Sets for Biomass [data set]. Retrieved from 09c52d04-bbfa-44b7-a1f6-8cbb4dc83a9d.
Export Citation to RIS
Wolfrum, . Wet Chemical Compositional and Near IR Spectra Data Sets for Biomass. United States: N.p., 22 Nov, 2019. Web. 09c52d04-bbfa-44b7-a1f6-8cbb4dc83a9d.
Wolfrum, . Wet Chemical Compositional and Near IR Spectra Data Sets for Biomass. United States. 09c52d04-bbfa-44b7-a1f6-8cbb4dc83a9d
Wolfrum, . 2019. "Wet Chemical Compositional and Near IR Spectra Data Sets for Biomass". United States. 09c52d04-bbfa-44b7-a1f6-8cbb4dc83a9d.
@div{oedi_6339, title = {Wet Chemical Compositional and Near IR Spectra Data Sets for Biomass}, author = {Wolfrum, .}, abstractNote = {Near-infrared (NIR) calibration models are created by applying multivariate calibration methods to the combination of wet chemistry data and NIR spectra of a given set of biomass samples. Wet chemical compositional data and NIR spectra exist for the following types of biomass samples: corn stover, switchgrass, mixed hardwoods, mixed softwoods, sorghum, and miscanthus. These samples may be feedstock samples, washed and dried solids from one or more pretreatment processes, liquors derived from one or more pretreatment processes, or whole pretreated slurries.}, doi = {}, url = {09c52d04-bbfa-44b7-a1f6-8cbb4dc83a9d}, journal = {}, number = , volume = , place = {United States}, year = {2019}, month = {11}}

Details

Data from Nov 22, 2019

Last updated Dec 18, 2024

Submitted Nov 22, 2019

Organization

National Renewable Energy Laboratory

Contact

David Crocker

Authors

Wolfrum

National Renewable Energy Laboratory

DOE Project Details

Project Name Data Sets for Biomass Samples

Project Number GO10337

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