Zhang Lei, Zou Zhihong, Shan Wei
School of Economics and Management, Beihang University, Beijing 100191, China.
School of Economics and Management, Beihang University, Beijing 100191, China.
J Environ Sci (China). 2017 Jun;56:240-246. doi: 10.1016/j.jes.2016.07.017. Epub 2016 Oct 29.
Water quality forecasting is an essential part of water resource management. Spatiotemporal variations of water quality and their inherent constraints make it very complex. This study explored a data-based method for short-term water quality forecasting. Prediction of water quality indicators including dissolved oxygen, chemical oxygen demand by KMnO and ammonia nitrogen using support vector machine was taken as inputs of the particle swarm algorithm based optimal wavelet neural network to forecast the whole status index of water quality. Gubeikou monitoring section of Miyun reservoir in Beijing, China was taken as the study case to examine effectiveness of this approach. The experiment results also revealed that the proposed model has advantages of stability and time reduction in comparison with other data-driven models including traditional BP neural network model, wavelet neural network model and Gradient Boosting Decision Tree model. It can be used as an effective approach to perform short-term comprehensive water quality prediction.
水质预测是水资源管理的重要组成部分。水质的时空变化及其内在限制使其变得非常复杂。本研究探索了一种基于数据的短期水质预测方法。将利用支持向量机对包括溶解氧、高锰酸钾化学需氧量和氨氮在内的水质指标进行预测作为基于粒子群算法的最优小波神经网络的输入,以预测水质的整体状况指标。以中国北京密云水库古北口监测断面为例,检验该方法的有效性。实验结果还表明,与其他数据驱动模型(包括传统BP神经网络模型、小波神经网络模型和梯度提升决策树模型)相比,所提出的模型具有稳定性和时间缩短的优点。它可以作为一种有效的方法来进行短期综合水质预测。