A platform for research: civil engineering, architecture and urbanism
Water level forecasting using a hybrid algorithm of artificial neural networks and local Kalman filtering
The dynamic processes in the tidal reaches of the Yangtze River lead to the complexity of short-term water level forecasting. Historical data of daily water level are obtained for the lower reaches (Anqing–Wuhu–Nanjing) of the Yangtze River. Stationary time series of water level is derived by making the first-order difference with the raw datasets. An artificial neural network–Kalman hybrid model is proposed for water level forecasting, in which the Kalman filtering is introduced for partial data reconstruction. The model is calibrated with the hydrologic daily water level data of years 2014–2016 for MaAnshan station. Comparing with the traditional artificial neural network model, daily water level predictions are improved by the hybrid algorithm. Discrepancies appear under the circumstance of sharp variations of water level observations. Moreover, the implementation strategy of Kalman filtering algorithm is explored, which indicates the superiority of local Kalman filtering.
Water level forecasting using a hybrid algorithm of artificial neural networks and local Kalman filtering
The dynamic processes in the tidal reaches of the Yangtze River lead to the complexity of short-term water level forecasting. Historical data of daily water level are obtained for the lower reaches (Anqing–Wuhu–Nanjing) of the Yangtze River. Stationary time series of water level is derived by making the first-order difference with the raw datasets. An artificial neural network–Kalman hybrid model is proposed for water level forecasting, in which the Kalman filtering is introduced for partial data reconstruction. The model is calibrated with the hydrologic daily water level data of years 2014–2016 for MaAnshan station. Comparing with the traditional artificial neural network model, daily water level predictions are improved by the hybrid algorithm. Discrepancies appear under the circumstance of sharp variations of water level observations. Moreover, the implementation strategy of Kalman filtering algorithm is explored, which indicates the superiority of local Kalman filtering.
Water level forecasting using a hybrid algorithm of artificial neural networks and local Kalman filtering
Zhong, Cheng ( author ) / Jiang, Zhonglian ( author ) / Chu, Xiumin ( author ) / Guo, Tao ( author ) / Wen, Quan ( author )
2019-02-01
12 pages
Article (Journal)
Electronic Resource
English
Water demand forecasting using Kalman filtering
Tema Archive | 2007
|Demand forecasting of water usage based on Kalman filtering
Tema Archive | 2007
|Streamflow Forecasting Using Artificial Neural Networks
British Library Conference Proceedings | 1998
|River Stage Forecasting Using Artificial Neural Networks
British Library Online Contents | 1998
|