Ronny Berndtsson
Professor, Dep Director, MECW Dep Scientific Coordinator
Rainfall-Runoff Modelling Using Artificial Neural Networks (ANNs)
Author
Summary, in English
The thesis starts with the issue of understanding of a trained ANN model by using neural interpretation diagram (NID), Garson's algorithm and a randomization approach. Then the applicability of the SOM algorithm within water resources applications is reviewed and compared to the well-known feed-forward MLP. Moreover, the thesis deals with the problem of missing values in the context of a monthly precipitation database. This part deals with the problem of missing values by using SOM and feed-forward MLP models along with inclusion of regionalization properties obtained from the SOM. The problem of filling in of missing data in a daily precipitation-runoff database is also considered. This study deals with the filling in of missing values using SOM and feed-forward MLP along with multivariate nearest neighbour (MNN), regularized expectation-maximization algorithm (REGEM) and multiple imputation (MI). Finally, once a complete database was obtained, SOM and feed-forward MLP models were developed in order to forecast one-month ahead runoff. Some issues such as the applicability of the SOM algorithm for modularization and the effect of the number of modules in modelling performance were investigated.
It was found that it is indeed possible to make an ANN reveal some information about the mechanisms governing rainfall-runoff processes. The literature review showed that SOMs are becoming increasingly popular but that there are hardly any reviews of SOM applications. In the case of imputation of missing values in the monthly precipitation, the results indicated the importance of the inclusion of regionalization properties of SOM prior to the application of SOM and feed-forward MLP models. In the case of gap-filling of the daily precipitation-runoff database, the results showed that most of the methods yield similar results. However, the SOM and MNN tended to give the most robust results. REGEM and MI hold the assumption of multivariate normality, which does not seem to fit the data at hand. The feed-forward MLP is sensitive to the location of missing values in the database and did not perform very well. Based on the one-month ahead forecasting, it was found that although the idea of modularization based on SOM is highly persuasive, the results indicated a need for more principled procedures to modularize the processes. Moreover, the modelling results indicated that a supervised SOM model can be considered as a viable alternative approach to the well-known feed-forward MLP model.
Department/s
- Division of Water Resources Engineering
Publishing year
2007
Language
English
Full text
Document type
Dissertation
Publisher
Department of Water Resources Engineering, Lund Institute of Technology, Lund University
Topic
- Water Engineering
Keywords
- Hydrogeology
- geographical and geological engineering
- Hydrogeologi
- teknisk geologi
- teknisk geografi
- Self-organizing map
- Feed-forward multilayer perceptron
- Forecasting
- Hydrological modelling
- Missing values
- Rainfall-runoff modelling
- Estimation
- Artificial neural networks
Status
Published
Supervisor
- Ronny Berndtsson
ISBN/ISSN/Other
- ISBN: 978-91-628-7138-3
Defence date
11 May 2007
Defence time
13:00
Defence place
Lecture Hall V:C, V-building Department of Water Resources Engineering, John Ericssons väg 1, Lund University Faculty of Engineering
Opponent
- Robin Clarke (Prof.)