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The multivariable Cox-AIC model to predict the event of aerobic instability by the pre-ensiled traits.

The multivariable Cox-AIC model to predict the event of aerobic instability by the pre-ensiled traits.

<p>The multivariable Cox-AIC model to predict the event of aerobic instability by the pre-ensiled traits.</p>

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Bibliographic Details
Main Author: Lorenzo Serva (6184358) (author)
Published: 2024
Subjects:
Biochemistry
Microbiology
Ecology
Sociology
Developmental Biology
Science Policy
Environmental Sciences not elsewhere classified
Biological Sciences not elsewhere classified
Chemical Sciences not elsewhere classified
predictive models derived
field sensor technology
freshly harvested maize
incorporating additional factors
shaping silage quality
maize silage quality
maize silage
silage quality
various pre
source database
significant source
seasonality playing
seasonality exerts
screening purposes
robust algorithms
profound influence
ph level
machine learning
highly recommended
findings revealed
fermentative profile
ensiling circumstances
diverse pre
diverse databases
deep learning
crucial role
comprehensive approach
comparative evaluation
combining data
better elucidate
beef cattle
ammonia content
aerobic stability
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