A Back Propagation Neural Network Model based on kalman filter for water quality prediction
2015pp. 149–153
Citations Over Time
Abstract
The Back Propagation Neural Network Model has some disadvantages to decrease prediction accuracy. Combining the advantages of the Kalman filter, a new Back Propagation Neural Network Model Based on Kalman Filter is established for the prediction of the water pollutants concentration. The result of the case study shows that the method proposed can effectively improve the prediction accuracy, and the improved model is proved to be a better and more effective method in water quality prediction.
Related Papers
- → What is the ensemble Kalman filter and how well does it work?(2006)195 cited
- → Non-linear kalman filtering algorithms for on-line calibration of dynamic traffic assignment models(2006)27 cited
- → Comparative analysis of backpropagation and extended Kalman filter in pattern and batch forms for training neural networks(2002)22 cited
- Data assimilation in the MIKE 11 Flood Forecasting system using Kalman filtering(2003)
- → Sparsity-Based Kalman Filters for Data Assimilation(2021)