AN ADAPTIVE LEARNING FRAMEWORK FOR FORECASTING SEASONAL WATER ALLOCATIONS IN IRRIGATED CATCHMENTS |
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Authors: | SHAHBAZ KHAN DHARMA DASSANAYAKE HAMZA F. GABRIEL |
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Affiliation: | 1. UNESCO Division of Water Sciences, 1 Rue Miollis, 75015 Paris, France E‐mail: s.khan@unesco.org;2. Department of Civil and Environmental Engineering and Construction Economics, Melbourne School of Design, Faculty of Architecture, Building & Planning, The University of Melbourne Victoria, 3010, Australia E‐mail: roseylakmini@yahoo.co.uk;3. NIT—School of Civil & Environmental Engineering (SCEE), National University of Sciences & Technology (NUST), NUST Islamabad Campus, Sector H ‐ 12 Islamabad, ICT, Pakistan and Charles Sturt University, Australia E‐mail: hfgabriel2001@yahoo.com |
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Abstract: | Abstract This paper describes an adaptive learning framework for forecasting end‐season water allocations using climate forecasts, historic allocation data, and results of other detailed hydrological models. The adaptive learning framework is based on artificial neural network (ANN) method, which can be trained using past data to predict future water allocations. Using this technique, it was possible to develop forecast models for end‐irrigation‐season water allocations from allocation data available from 1891 to 2005 based on the allocation level at the start of the irrigation season. The model forecasting skill was further improved by the incorporation of a set of correlating clusters of sea surface temperature (SST) and the Southern oscillation index (SOI) data. A key feature of the model is to include a risk factor for the end‐season water allocations based on the start of the season water allocation. The interactive ANN model works in a risk‐management context by providing probability of availability of water for allocation for the prediction month using historic data and/or with the incorporation of SST/SOI information from the previous months. All four developed ANN models (historic data only, SST incorporated, SOI incorporated, SST‐SOI incorporated) demonstrated ANN capability of forecasting end‐of‐season water allocation provided sufficient data on historic allocation are available. SOI incorporated ANN model was the most promising forecasting tool that showed good performance during the field testing of the model. |
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Keywords: | Water allocation sea surface temperature (SST) southern oscillation index (SOI) artificial neural networks (ANN) modeling Murrumbidgee catchment |
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