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Uncertainty-Aware and Non-Negative Hydrological Forecasting Using Gamma-Likelihood Chained Gaussian Processes for Sustainability-Oriented Water Management

Author

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  • Yesika Alexandra Bastidas-Pantoja

    (Automatics Research Group, Universidad Tecnológica de Pereira (UTP), Pereira 660003, Colombia)

  • Julián David Pastrana-Cortés

    (Automatics Research Group, Universidad Tecnológica de Pereira (UTP), Pereira 660003, Colombia)

  • Julián Gil-González

    (Automatics Research Group, Universidad Tecnológica de Pereira (UTP), Pereira 660003, Colombia)

  • David Cárdenas-Peña

    (Automatics Research Group, Universidad Tecnológica de Pereira (UTP), Pereira 660003, Colombia)

  • Jhoniers Gilberto Guerrero-Erazo

    (Water and Sanitation Research Group, Universidad Tecnológica de Pereira, Pereira 660003, Colombia)

Abstract

Sustainable water allocation, drought mitigation, and operational planning require reliable forecasting models that account for hydroclimatic variability while respecting physical constraints. This study proposes Chd-Gamma, a chained correlated Gaussian Process (GP) framework for multi-output hydrological forecasting. The proposed model extends chained GPs beyond independent or single-output settings by embedding their latent likelihood-parameter functions in a Linear Model of Coregionalization. Chd-Gamma also enhances conventional multi-output GP hydrological forecasting by replacing Gaussian likelihood assumptions with a Gamma likelihood, thereby enforcing non-negativity and representing skewed and heteroscedastic storage distributions. The proposed model was contrasted with the well-known Long Short-Term Memory (LSTM) network, the multi-output Linear Model of Coregionalization GP (LMC), and the chained correlated GP with Gaussian likelihood (Chd-Normal) for forecasting the daily useful storage volumes from 23 Colombian reservoirs recorded from 2010 to 2022 across multiple prediction horizons. The results over a two-year testing period show that Chd-Gamma provides the strongest overall performance across the four metrics considered. Chd-Gamma reduced the mean squared error by 80% with respect to LSTM and 20% relative to Chd-Normal. In terms of probabilistic performance, the average Negative Log Predictive Density (NLPD) improved by up to 21%. Compared to LMC, with narrow prediction intervals but low coverage, and Chd-Normal, also narrow but overcovering, Chd-Gamma achieves near-nominal coverage of 0.992 with a moderate increase in interval width, pointed towards the best calibration–sharpness trade-off. These findings demonstrate that Chd-Gamma improves accuracy and uncertainty representation while maintaining physically consistent forecasts, making it suitable for risk-aware reservoir-operation support.

Suggested Citation

  • Yesika Alexandra Bastidas-Pantoja & Julián David Pastrana-Cortés & Julián Gil-González & David Cárdenas-Peña & Jhoniers Gilberto Guerrero-Erazo, 2026. "Uncertainty-Aware and Non-Negative Hydrological Forecasting Using Gamma-Likelihood Chained Gaussian Processes for Sustainability-Oriented Water Management," Sustainability, MDPI, vol. 18(10), pages 1-23, May.
  • Handle: RePEc:gam:jsusta:v:18:y:2026:i:10:p:4823-:d:1940944
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