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Examining the Applicability of Wavelet Packet Decomposition on Different Forecasting Models in Annual Rainfall Prediction

Journal

WATER
Volume 13, Issue 15, Pages -

Publisher

MDPI
DOI: 10.3390/w13151997

Keywords

precipitation prediction; extreme learning machine; artificial neural network; wavelet packet decomposition; hybrid intelligent computing

Funding

  1. Project of key science and technology of the Henan province [202102310259, 202102310588]
  2. Henan province university scientific and technological innovation team [:18IRTSTHN009]

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This paper introduces a novel hybrid precipitation prediction framework (WPD-ELM) which utilizes wavelet packet decomposition (WPD) to improve annual rainfall forecasting accuracy, outperforming other models. WPD significantly enhances the performance of forecasting models and provides useful insights for water resources management.
Accurate precipitation prediction can help plan for different water resources management demands and provide an extension of lead-time for the tactical and strategic planning of courses of action. This paper examines the applicability of several forecasting models based on wavelet packet decomposition (WPD) in annual rainfall forecasting, and a novel hybrid precipitation prediction framework (WPD-ELM) is proposed coupling extreme learning machine (ELM) and WPD. The works of this paper can be described as follows: (a) WPD is used to decompose the original precipitation data into several sub-layers; (b) ELM model, autoregressive integrated moving average model (ARIMA), and back-propagation neural network (BPNN) are employed to realize the forecasting computation for the decomposed series; (c) the results are integrated to attain the final prediction. Four evaluation indexes (RMSE, MAE, R, and NSEC) are adopted to assess the performance of the models. The results indicate that the WPD-ELM model outperforms other models used in this paper and WPD can significantly enhance the performance of forecasting models. In conclusion, WPD-ELM can be a promising alternative for annual precipitation forecasting and WPD is an effective data pre-processing technique in producing convincing forecasting models.

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