A hybrid multi-model approach to river level forecasting
Open Access
- 1 August 2000
- journal article
- research article
- Published by Taylor & Francis in Hydrological Sciences Journal
- Vol. 45 (4) , 523-536
- https://doi.org/10.1080/02626660009492354
Abstract
This paper presents four different approaches for integrating conventional and AI-based forecasting models to provide a hybridized solution to the continuous river level and flood prediction problem. Individual forecasting models were developed on a stand alone basis using historical time series data from the River Ouse in northern England. These include a hybrid neural network, a simple rule-based fuzzy logic model, an ARMA model and naive predictions (which use the current value as the forecast). The individual models were then integrated via four different approaches: calculation of an average, a Bayesian approach, and two fuzzy logic models, the first based purely on current and past river flow conditions and the second, a fuzzification of the crisp Bayesian method. Model performance was assessed using global statistics and a more specific flood related evaluation measure. The addition of fuzzy logic to the crisp Bayesian model yielded overall results that were superior to the other individual and integrated approaches.Keywords
This publication has 10 references indexed in Scilit:
- Rainfall forecasting in space and time using a neural networkPublished by Elsevier ,2003
- A real-time combination method for the outputs of different rainfall-runoff modelsHydrological Sciences Journal, 1999
- Applying soft computing approaches to river level forecastingHydrological Sciences Journal, 1999
- An artificial neural network approach to rainfall-runoff modellingHydrological Sciences Journal, 1998
- Combining kohonen maps with arima time series models to forecast traffic flowTransportation Research Part C: Emerging Technologies, 1996
- Artificial neural networks as rainfall-runoff modelsHydrological Sciences Journal, 1996
- Neural-Network Models of Rainfall-Runoff ProcessJournal of Water Resources Planning and Management, 1995
- Artificial Neural Network Modeling of the Rainfall‐Runoff ProcessWater Resources Research, 1995
- Soft computing and fuzzy logicIEEE Software, 1994
- Neural Networks for River Flow PredictionJournal of Computing in Civil Engineering, 1994