Department of Bioenvironmental Systems Engineering, National Taiwan University, Taipei 10617, Taiwan, ROC.
Department of Bioenvironmental Systems Engineering, National Taiwan University, Taipei 10617, Taiwan, ROC.
Sci Total Environ. 2016 Aug 15;562:228-236. doi: 10.1016/j.scitotenv.2016.03.219. Epub 2016 Apr 19.
This study attempts to model the spatio-temporal dynamics of total phosphate (TP) concentrations along a river for effective hydro-environmental management. We propose a systematical modeling scheme (SMS), which is an ingenious modeling process equipped with a dynamic neural network and three refined statistical methods, for reliably predicting the TP concentrations along a river simultaneously. Two different types of artificial neural network (BPNN-static neural network; NARX network-dynamic neural network) are constructed in modeling the dynamic system. The Dahan River in Taiwan is used as a study case, where ten-year seasonal water quality data collected at seven monitoring stations along the river are used for model training and validation. Results demonstrate that the NARX network can suitably capture the important dynamic features and remarkably outperforms the BPNN model, and the SMS can effectively identify key input factors, suitably overcome data scarcity, significantly increase model reliability, satisfactorily estimate site-specific TP concentration at seven monitoring stations simultaneously, and adequately reconstruct seasonal TP data into a monthly scale. The proposed SMS can reliably model the dynamic spatio-temporal water pollution variation in a river system for missing, hazardous or costly data of interest.
本研究旨在为有效进行水环境保护,对河流中总磷(TP)浓度的时空动态进行建模。我们提出了一种系统建模方案(SMS),这是一种巧妙的建模过程,配备了动态神经网络和三种精细的统计方法,可同时可靠地预测河流中的 TP 浓度。在对动态系统进行建模时,构建了两种不同类型的人工神经网络(BPNN-静态神经网络;NARX 网络-动态神经网络)。以台湾的大汉溪为例,使用了十年间在河流七个监测站采集的季节性水质数据进行模型训练和验证。结果表明,NARX 网络可以很好地捕捉到重要的动态特征,明显优于 BPNN 模型,而 SMS 可以有效地识别关键输入因素,适当地克服数据匮乏,显著提高模型可靠性,同时对七个监测站的特定地点的 TP 浓度进行满意的估计,并充分地将季节性 TP 数据重构到月度规模。该提出的 SMS 可以可靠地对河流系统中的动态时空水污染变化进行建模,适用于感兴趣的缺失、危险或昂贵的数据。