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Granger Causality-Based Forecasting Model for Rainfall at Ratnapura Area, Sri Lanka: A Deep Learning Approach

Author

Listed:
  • Shanthi Saubhagya

    (Department of Statistics, University of Colombo, Colombo P.O. Box 1490, Sri Lanka)

  • Chandima Tilakaratne

    (Department of Statistics, University of Colombo, Colombo P.O. Box 1490, Sri Lanka)

  • Pemantha Lakraj

    (Department of Statistics, University of Colombo, Colombo P.O. Box 1490, Sri Lanka)

  • Musa Mammadov

    (School of Info Technology, Faculty of Science, Engineering and Built Environment, Geelong Waurn Ponds Campus, Deakin University, Geelong P.O. Box 423, Australia)

Abstract

Rainfall forecasting, especially extreme rainfall forecasting, is one of crucial tasks in weather forecasting since it has direct impact on accompanying devastating events such as flash floods and fast-moving landslides. However, obtaining rainfall forecasts with high accuracy, especially for extreme rainfall occurrences, is a challenging task. This study focuses on developing a forecasting model which is capable of forecasting rainfall, including extreme rainfall values. The rainfall forecasting was achieved through sequence learning capability of the Long Short-Term Memory (LSTM) method. The identification of the optimal set of features for the LSTM model was conducted using Random Forest and Granger Causality tests. Then, that best set of features was fed into Stacked LSTM, Bidirectional LSTM, and Encoder-Decoder LSTM models to obtain three days-ahead forecasts of rainfall with the input of the past fourteen days-values of selected features. Out of the three models, the best model was taken through post hoc residual analysis and extra validation approaches. This entire approach was illustrated utilizing rainfall and weather-related measurements obtained from the gauging station located in the city of Ratnapura, Sri Lanka. Originally, twenty-three features were collected including relative humidity, ssunshine hours, and mean sea level pressure. The performances of the three models were compared using R M S E . The Bidirectional LSTM model outperformed the other methods (RMSE < 5 mm and MAE < 3 mm) and this model has the capability to forecast extreme rainfall values with high accuracy.

Suggested Citation

  • Shanthi Saubhagya & Chandima Tilakaratne & Pemantha Lakraj & Musa Mammadov, 2024. "Granger Causality-Based Forecasting Model for Rainfall at Ratnapura Area, Sri Lanka: A Deep Learning Approach," Forecasting, MDPI, vol. 6(4), pages 1-28, November.
  • Handle: RePEc:gam:jforec:v:6:y:2024:i:4:p:56-1151:d:1533295
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