Early forecasting of future drought conditions during continuing dry periods can improve water resources management strategies. In this study, a drought forecasting approach is developed and presented using an aggregated drought index (ADI) and artificial neural network (ANN) using a monthly time step. The use of ADI forecasts the overall availability of water resources beyond the traditional forecasting of rainfall deficiency to represent future drought conditions. The paper compares two types of ANN; namely, recursive multi-step neural networks (RMSNN) and direct multi-step neural networks (DMSNN). The results show that the RMSNN approach is slightly better than the DMSNN approach for forecasts with lead time up to 3 months. The DMSNN approach gives slightly better results than the RMSNN approach when forecast lead time is over 3 months, and can give reasonable results up to 6 months ahead of forecasts.
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Research Article|
September 01 2010
Drought forecasting using an aggregated drought index and artificial neural network
S. Barua;
1School of Engineering and Science, Victoria University, Melbourne Victoria 8001, Australia
Tel.: +61 (0)3 9919 4879 Fax: +61 (0)3 9919 4908; E-mail: [email protected]
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B. J. C. Perera;
B. J. C. Perera
2Faculty of Health, Engineering and Science, Victoria University, Melbourne Victoria 8001, Australia
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A. W. M. Ng;
A. W. M. Ng
1School of Engineering and Science, Victoria University, Melbourne Victoria 8001, Australia
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D. Tran
D. Tran
1School of Engineering and Science, Victoria University, Melbourne Victoria 8001, Australia
3Institute for Sustainability and Innovation, Victoria University, Melbourne Victoria 8001, Australia
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Journal of Water and Climate Change (2010) 1 (3): 193–206.
Citation
S. Barua, B. J. C. Perera, A. W. M. Ng, D. Tran; Drought forecasting using an aggregated drought index and artificial neural network. Journal of Water and Climate Change 1 September 2010; 1 (3): 193–206. doi: https://doi.org/10.2166/wcc.2010.000
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