2021
DOI: 10.3389/fenvs.2021.738322
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Development of a Multilayer Deep Neural Network Model for Predicting Hourly River Water Temperature From Meteorological Data

Abstract: Water temperature is a vital attribute of physical riverine habitat and one of the focal objectives of river engineering and management. However, in most rivers, there are not enough water temperature measurements to characterize thermal regimes and evaluate its effect on ecosystem functions such as fish migration. To aid in river restoration, machine learning-based algorithms were developed to predict hourly river water temperature. We trained, validated, and tested single-layer and multilayer linear regressi… Show more

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Cited by 6 publications
(1 citation statement)
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“…Recently, non-parametric methods have also been gaining increased attention (e.g., artificial neural networks, random forecasts, nearest-neighbour approaches, etc. (Abdi et al, 2021;DeWeber and Wagner, 2014;Feigl et al, 2021;Graf et al, 2019;Liptay, 2022;Piotrowski et al, 2015;Rahmani et al, 2021;Sapin et al, 2017;Zhu et al, 2019Zhu et al, , 2018).…”
Section: Introductionmentioning
confidence: 99%
“…Recently, non-parametric methods have also been gaining increased attention (e.g., artificial neural networks, random forecasts, nearest-neighbour approaches, etc. (Abdi et al, 2021;DeWeber and Wagner, 2014;Feigl et al, 2021;Graf et al, 2019;Liptay, 2022;Piotrowski et al, 2015;Rahmani et al, 2021;Sapin et al, 2017;Zhu et al, 2019Zhu et al, , 2018).…”
Section: Introductionmentioning
confidence: 99%