Faculty of Civil Engineering, K. N. Toosi University of Technology, Tehran, Iran.
Department of Civil Engineering, Bijar Branch, Islamic Azad University, Bijar, Iran.
Environ Sci Pollut Res Int. 2017 Dec;24(36):28017-28025. doi: 10.1007/s11356-017-0405-4. Epub 2017 Oct 9.
This study explores two ideas to made an improvement on the artificial neural network (ANN)-based models for suspended sediment forecasting in several time steps ahead. In this regard, both observed and forecasted time series are incorporated as input variables of the models when applied for more than one lead time. Secondly, least-square ensemble models employing multiple wavelet-ANN models are developed to increase the performance of the single model. For this purpose, different wavelet families are linked with the ANN model and performance of each model is evaluated using error measures. The Skagit River near Mount Vernon in Washington county is selected as the case study. The daily flow discharge and suspended sediment concentration (SSC) in the current day are considered as input variables to predict suspended sediment concentration in the next day. For more lead times, the input structure is updated by adding the forecast of SSC in the previous time step. Results of this study demonstrate that incorporating both observed and predicted variables in the input structure improves performance of conventional models in which those only employ observed time series as input variables. Moreover, ensemble model developed for each lead time outperforms the best single wavelet-ANN model which indicates superiority of the ensemble model over the other one. Findings of this study reveal that acceptable forecasts of daily suspended sediment concentration up to 3 days in advance can be achieved using the proposed methodology.
本研究探讨了两种改进基于人工神经网络 (ANN) 的悬浮泥沙预测模型的思路,以实现多个提前时间的预测。为此,当应用于多个提前时间时,将观测到的和预测到的时间序列都作为模型的输入变量。其次,采用多个小波-ANN 模型的最小二乘集成模型被开发出来,以提高单一模型的性能。为此,将不同的小波族与 ANN 模型相关联,并使用误差度量来评估每个模型的性能。华盛顿县弗农山附近的斯卡吉特河被选为案例研究。将当日的流量和悬浮泥沙浓度 (SSC) 作为输入变量,以预测次日的悬浮泥沙浓度。对于更长的提前时间,通过在前一个时间步添加 SSC 的预测来更新输入结构。研究结果表明,在输入结构中同时包含观测值和预测值可以提高仅使用观测时间序列作为输入变量的传统模型的性能。此外,为每个提前时间开发的集成模型优于最佳的单个小波-ANN 模型,这表明集成模型优于其他模型。本研究的结果表明,使用提出的方法可以实现对提前 3 天的每日悬浮泥沙浓度的可接受预测。