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By David W. Neumann, Balaji Rajagopalan, and Edith A. Zagona. Published
in the Journal of Environmental
Engineering, Vol. 129, No. 7, July 1, 2003.
Abstract: An empirical model is developed to predict daily maximum
stream temperatures for the summer period. The model is created using
a stepwise linear regression procedure to select significant predictors.
The predictive model includes a prediction confidence interval to quantify
the uncertainty. The methodology is applied to the Truckee River in California
and Nevada. The stepwise procedure selects daily maximum air temperature
and average daily flow as the variables to predict maximum daily stream
temperature at Reno, Nev. The model is shown to work in a predictive mode
by validation using three years of historical data. Using the uncertainty
quantification, the amount of required additional flow to meet a target
stream temperature with a desired level of confidence is determined.
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