Modeling of hourly river water temperatures using artificial neural networks

IF 2 Q3 Environmental Science Water Quality Research Journal of Canada Pub Date : 2014-05-01 DOI:10.2166/WQRJC.2014.007
Cindie Hébert, D. Caissie, M. Satish, N. El‐Jabi
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引用次数: 4

Abstract

Water temperature is an important component for water quality and biotic conditions in rivers. A good knowledge of river thermal regime is critical for the management of aquatic resources and environmental impact studies. The objective of the present study was to develop a water temperature model as a function of air temperatures, water temperatures and water level data using artificial neural network (ANN) techniques for two thermally different streams. This model was applied on an hourly basis. The results showed that ANN models are an effective modeling tool with overall root-mean-square-error of 0.94 and 1.23 °C, coefficient of determination ( R 2) of 0.967 and 0.962 and bias of −0.13 and 0.02 °C, for Catamaran Brook and the Little Southwest Miramichi River, respectively. The ANN model performed best in summer and autumn and showed a poorer performance in spring. Results of the present study showed similar or better results to those of deterministic and stochastic models. The present study shows that the predicted hourly water temperatures can also be used to estimate the mean and maximum daily water temperatures. The many advantages of ANN models are their simplicity, low data requirements, their capability of modeling long-term time series as well as having an overall good performance.
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利用人工神经网络模拟每小时河水温度
水温是河流水质和生物条件的重要组成部分。良好的河流热状态知识对水生资源管理和环境影响研究至关重要。本研究的目的是利用人工神经网络(ANN)技术建立一个水温模型,该模型是空气温度、水温和水位数据的函数,适用于两个温度不同的河流。这个模型是按小时计算的。结果表明,对于双体河和小西南米拉米奇河,ANN模型是一种有效的建模工具,总体均方根误差分别为0.94和1.23°C,决定系数(r2)分别为0.967和0.962,偏差分别为- 0.13和0.02°C。人工神经网络模型在夏季和秋季表现最好,在春季表现较差。本研究的结果与确定性模型和随机模型的结果相似或更好。本研究表明,每小时的水温预报也可以用来估计平均和最高日水温。人工神经网络模型具有简单、数据要求低、对长期时间序列建模能力强、总体性能好等优点。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
18
审稿时长
>12 weeks
期刊介绍: The Water Quality Research Journal publishes peer-reviewed, scholarly articles on the following general subject areas: Impact of current and emerging contaminants on aquatic ecosystems Aquatic ecology (ecohydrology and ecohydraulics, invasive species, biodiversity, and aquatic species at risk) Conservation and protection of aquatic environments Responsible resource development and water quality (mining, forestry, hydropower, oil and gas) Drinking water, wastewater and stormwater treatment technologies and strategies Impacts and solutions of diffuse pollution (urban and agricultural run-off) on water quality Industrial water quality Used water: Reuse and resource recovery Groundwater quality (management, remediation, fracking, legacy contaminants) Assessment of surface and subsurface water quality Regulations, economics, strategies and policies related to water quality Social science issues in relation to water quality Water quality in remote areas Water quality in cold climates The Water Quality Research Journal is a quarterly publication. It is a forum for original research dealing with the aquatic environment, and should report new and significant findings that advance the understanding of the field. Critical review articles are especially encouraged.
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