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STL-decomposition ensemble deep learning models for daily reservoir inflow forecast for hydroelectricity production

Njogho Kenneth Tebong, Théophile Simo, Armand Nzeukou Takougang, Patrick Herve Ntanguen

2023Heliyon31 citationsDOIOpen Access PDF

Abstract

Accurate reservoir inflow forecasting is crucial for efficient water management. In this study, different deep learning models, including Dense, Long short-term memory (LSTM), and one-dimensional convolutional neural networks (Conv1D), were used to build ensembles. Seasonal-trend decomposition using loess (STL) was applied to decompose reservoir inflows and precipitations into random, seasonal, and trend components. Seven ensemble models, namely STL-Dense, STL-Conv1D, STL-LSTM, STL-Dense-LSTM-Conv1D, STL-Dense multivariate, STL-LSTM multivariate, and STL-Conv1D multivariate, were proposed and evaluated using daily inflows and precipitation decomposed data from the Lom Pangar reservoir from 2015 to 2020. Evaluation metrics, such as Mean Absolute Error (MAE), Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE), and Nash Sutcliff Efficiency (NSE), were applied to assess model performance. Results showed that the STL-Dense multivariate model was the best ensemble among the thirteen models with MAE of 14.636 m 3 /s, RMSE of 20.841 m 3 /s, MAPE of 6.622%, and NSE of 0.988. These findings stress the importance of considering multiple inputs and models for accurate reservoir inflow forecasting and optimal water management. Not all ensemble models were good for Lom pangar inflow forecast as the Dense, Conv1D, and LSTM models performed better than their proposed STL monovariate ensemble models.

Topics & Concepts

InflowMean squared errorMultivariate statisticsMean absolute percentage errorComputer scienceEnsemble learningArtificial neural networkArtificial intelligenceStatisticsMachine learningMathematicsGeologyOceanographyHydrological Forecasting Using AIEnergy Load and Power ForecastingHydrology and Watershed Management Studies
STL-decomposition ensemble deep learning models for daily reservoir inflow forecast for hydroelectricity production | Litcius