2014
DOI: 10.1088/1748-9326/9/8/084015
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Can air temperature be used to project influences of climate change on stream temperature?

Abstract: Worldwide, lack of data on stream temperature has motivated the use of regression-based statistical models to predict stream temperatures based on more widely available data on air temperatures. Such models have been widely applied to project responses of stream temperatures under climate change, but the performance of these models has not been fully evaluated. To address this knowledge gap, we examined the performance of two widely used linear and nonlinear regression models that predict stream temperatures b… Show more

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Cited by 158 publications
(154 citation statements)
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References 58 publications
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“…Their main objections to regressive methods arose when modelling reaches of regulated rivers, but this is not our case. In addition, our model improves the models that were tested in both studies (Arismendi et al, 2014;Piccolroaz et al, 2016). Performance indicators of our models produce good results, showing that the models are sufficiently competent.…”
Section: Stream Temperaturementioning
confidence: 66%
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“…Their main objections to regressive methods arose when modelling reaches of regulated rivers, but this is not our case. In addition, our model improves the models that were tested in both studies (Arismendi et al, 2014;Piccolroaz et al, 2016). Performance indicators of our models produce good results, showing that the models are sufficiently competent.…”
Section: Stream Temperaturementioning
confidence: 66%
“…Arismendi et al (2014) hold that regression models based on air temperature can be inadequate for projecting future stream temperatures because they are only surrogates for air temperature, whereas Piccolroaz et al (2016) argued that the adequacy depends on the hydrological regime, type of model and the timescale analysis. Their main objections to regressive methods arose when modelling reaches of regulated rivers, but this is not our case.…”
Section: Stream Temperaturementioning
confidence: 99%
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“…Although water-air temperature regressions have often been used to predict climate change effects on freshwater temperatures (Mohseni et al, 1999;Rübbelke and Vögele, 2011), Arismendi et al (2014) cautioned against their use to predict temperatures outside the calibration period. To test the validity of using regressions, we compared the regression predictions to those of the processbased model CALNAT (Gosse et al, 2008).…”
Section: Management and Climate Scenariosmentioning
confidence: 99%
“…air temperature, water temperature of the previous days or streamflow). Use of air temperature as a surrogate for future water temperature can lead to errors when linear (Erickson and Stefan, 2000;Webb and Nobilis, 1997) or non-linear (Mohseni et al, 1998) regression models are applied (Arismendi et al, 2014). Stochastic models used to determine the long-term annual component of temperatures and their short-term residuals separately yield good results (Caissie et al, 2001).…”
Section: Introductionmentioning
confidence: 99%