DONATE

IAHR Document Library


« Back to Library Homepage « Proceedings of the 22nd IAHR APD Congress (Sapporo, 2020)

Hybrid DWT with NARX Neural Network for Reservoir Inflow Forecasting in a Changing Climate

Author(s): Thannob Aribarg; Serre Supharatid

Linked Author(s):

Keywords: Climate change; Discrete wavelet transform; Nonlinear autoregressive exogenous neural network; RCPs; Reservoir inflow

Abstract: Accurate and reliable long-term forecasting of reservoir inflow is necessary for efficient water resources’ planning and management. In this study, a hybrid model using discrete wavelet transform (DWT) and the nonlinear autoregressive exogenous (NARX) neural network is developed for the simulation of the monthly inflow into Bhumibol and Sirikit reservoirs in Thailand under present and future climate scenarios. For this purpose, we have compiled an ensemble of nineteen downscaled climate data from NASA earth exchange global daily downscaled projections (NEX-GDDP). Two climate scenario projections (RCP 4.5 and RCP 8.5) are used to evaluate the climate change impacts for the future period up to 2099. Results indicate that climate change has a clear impact on both reservoirs inflow and show an increase in annual inflow into both reservoirs except in dry seasons. In the wet season (May-October), the inflow of Bhumibol and Sirikit reservoirs will increase by 6.61% and 17.41%, respectively, in the far future period (2079 - 2099) under RCP 8.5. Findings from this study imply how to adapt for the optimize water resource management in the future.

DOI:

Year: 2020

Copyright © 2024 International Association for Hydro-Environment Engineering and Research. All rights reserved. | Terms and Conditions