School of Municipal and Environment Engineering, Harbin Institute of Technology, Harbin, 150090, Heilongjiang, China.
Environ Sci Pollut Res Int. 2013 Dec;20(12):8909-23. doi: 10.1007/s11356-013-1874-8. Epub 2013 Jun 8.
In this paper, bootstrapped wavelet neural network (BWNN) was developed for predicting monthly ammonia nitrogen (NH(4+)-N) and dissolved oxygen (DO) in Harbin region, northeast of China. The Morlet wavelet basis function (WBF) was employed as a nonlinear activation function of traditional three-layer artificial neural network (ANN) structure. Prediction intervals (PI) were constructed according to the calculated uncertainties from the model structure and data noise. Performance of BWNN model was also compared with four different models: traditional ANN, WNN, bootstrapped ANN, and autoregressive integrated moving average model. The results showed that BWNN could handle the severely fluctuating and non-seasonal time series data of water quality, and it produced better performance than the other four models. The uncertainty from data noise was smaller than that from the model structure for NH(4+)-N; conversely, the uncertainty from data noise was larger for DO series. Besides, total uncertainties in the low-flow period were the biggest due to complicated processes during the freeze-up period of the Songhua River. Further, a data missing-refilling scheme was designed, and better performances of BWNNs for structural data missing (SD) were observed than incidental data missing (ID). For both ID and SD, temporal method was satisfactory for filling NH(4+)-N series, whereas spatial imputation was fit for DO series. This filling BWNN forecasting method was applied to other areas suffering "real" data missing, and the results demonstrated its efficiency. Thus, the methods introduced here will help managers to obtain informed decisions.
本文提出了一种基于自举法的小波神经网络(BWNN)模型,用于预测中国东北地区哈尔滨市的月氨氮(NH(4+)-N)和溶解氧(DO)。Morlet 小波基函数(WBF)被用作传统三层人工神经网络(ANN)结构的非线性激活函数。根据模型结构和数据噪声计算的不确定性来构建预测区间(PI)。将 BWNN 模型的性能与四个不同的模型进行了比较:传统 ANN、WNN、自举 ANN 和自回归综合移动平均模型。结果表明,BWNN 能够处理水质严重波动且无季节性的时间序列数据,其性能优于其他四个模型。对于 NH(4+)-N 数据,数据噪声引起的不确定性小于模型结构引起的不确定性;而对于 DO 序列,数据噪声引起的不确定性较大。此外,由于松花江封冻期的复杂过程,低流量期的总不确定性最大。此外,还设计了一种数据缺失补全方案,发现 BWNN 对结构数据缺失(SD)的补全性能优于随机数据缺失(ID)。对于 ID 和 SD,时间方法对于 NH(4+)-N 系列的填充效果较好,而空间插补则适用于 DO 系列。该方法在其他遭受“真实”数据缺失的地区得到了应用,结果表明了其有效性。因此,这里介绍的方法将有助于管理者做出明智的决策。