An exploratory Bayesian network for estimating the magnitudes and uncertainties of selected water-quality parameters at streamgage 03374100 White River at Hazleton, Indiana, from partially observed data (Q57467): Difference between revisions

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Holtschlag, D.J., 2018, An exploratory Bayesian network for estimating the magnitudes and uncertainties of selected water-quality parameters at streamgage 03374100 White River at Hazleton, Indiana, from partially observed data: U.S. Geological Sur...
USGS Numbered Series published by U.S. Geological Survey in 2018
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Property / instance of: USGS Scientific Investigations Report / rank
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Property / instance of: USGS Scientific Investigations Report / reference
 
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2018
Timestamp+2018-01-01T00:00:00Z
Timezone+00:00
CalendarGregorian
Precision1 year
Before0
After0
 
Property / publication date: 2018 / rank
Normal rank
 
Property / publication date: 2018 / reference
 
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Property / instance of: USGS Open-File Report / rank
 
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15 July 2018
Timestamp+2018-07-15T00:00:00Z
Timezone+00:00
CalendarGregorian
Precision1 day
Before0
After0
Property / publication date: 15 July 2018 / rank
 
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Property / owner: National Water Quality Program / rank
 
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Revision as of 19:39, 15 July 2024

USGS Numbered Series published by U.S. Geological Survey in 2018
  • sir20185053
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English
An exploratory Bayesian network for estimating the magnitudes and uncertainties of selected water-quality parameters at streamgage 03374100 White River at Hazleton, Indiana, from partially observed data
USGS Numbered Series published by U.S. Geological Survey in 2018
  • sir20185053

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