Rainfall prediction is a fundamental process in providing inputs for climate impact studies
and hydrological process assessments. Rainfall events are, however, a complicated phenomenon and
continues to be a challenge in forecasting. This paper introduces novel hybrid models for monthly
rainfall prediction in which we combined two pre-processing methods (Seasonal Decomposition
and Discrete Wavelet Transform) and two feed-forward neural networks (Artificial Neural Network
and Seasonal Artificial Neural Network). In detail, observed monthly rainfall time series at the
Ca Mau hydrological station in Vietnam were decomposed by using the two pre-processing data
methods applied to five sub-signals at four levels by wavelet analysis, and three sub-sets by seasonal
decomposition. After that, the processed data were used to feed the feed-forward Neural Network
(ANN) and Seasonal Artificial Neural Network (SANN) rainfall prediction models. For model
evaluations, the anticipated models were compared with the traditional Genetic Algorithm and
Simulated Annealing algorithm (GA-SA) supported by Autoregressive Moving Average (ARMA) and
Autoregressive Integrated Moving Average (ARIMA). Results showed both the wavelet transform
and seasonal decomposition methods combined with the SANN model could satisfactorily simulate
non-stationary and non-linear time series-related problems such as rainfall prediction, but wavelet
transform along with SANN provided the most accurately predicted monthly rainfall.
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Rainfall prediction is a fundamental process in providing inputs for climate impact studies
and hydrological process assessments. Rainfall events are, however, a complicated phenomenon and
continues to be a challenge in forecasting. This paper introduces novel hybrid models for monthly
rainfall prediction in which we combined two pre-processing methods (Seasonal Decomposition
and Discrete Wavelet Transform) and two feed-forward neural networks (Artificial Neural Network
and Seasonal Artific...
»