Hydrological calibration in data-scarce catchments is challenged by non-stationary regimes, fragmented data, and systematic measurement errors. Conventional calibration approaches often assume continuous records and rely on standard performance metrics, which can bias calibration toward high flows and exacerbate parameter equifinality—ultimately reducing robustness under data limitations. This study compares three calibration strategies – Kling–Gupta Efficiency (KGE), a non-parametric variant (RNP), and Flow Duration Curve (FDC)-based calibration –together with their time-consistent counterparts (SKGE, SRNP, and SRMSE). All schemes are implemented for the lumped HBV-type TUW model across nine catchments in southern Italy and evaluated using independent metrics targeting overall hydrograph agreement, high-flow behavior, and FDC quantile matching (Q5–Q95). The results reveal that the time-consistent KGE-based strategy excels during calibration (NSE = 0.56, RMSE = 4.65 m3/s) but shows notable declines in validation (NSE = 0.40, RMSE = 3.91 m3/s), indicating sensitivity to non-stationarity. The RNP-based approach demonstrates enhanced validation robustness (NSE = 0.51, RMSE = 3.60 m3/s) and low-flow accuracy, with NSElnQ = 0.30, leveraging its non-parametric structure. The SRNP variant further enhances performance in validation (NSE = 0.52, and RMSE = 3.42 m3/s), along with superior low-flow performance (NSElnQ = 0.48). The FDC-based strategy effectively reproduces flow distributions during calibration (NSE = 0.41, minimal PBIAS = −0.03%) but exhibits limited temporal transferability (validation NSE = 0.25, RMSE = 4.50 m3/s). Time-consistent variants reduce parameters dispersion by approximately 2–8% (relative to full-period calibration) and improve validation metrics by 5–15% across all catchments. Overall, time-consistent calibration provides a practical pathway to increase robustness under non-stationary, data-scarce Mediterranean conditions, highlighting a systematic trade-off between calibration accuracy and validation reliability.
Keywords: data-scarce regions; hydrological modeling; calibration strategies
How to cite: Jahanshahi, F., Pacia, F. D., Perrini, P., Avino, A., Sarwar, A. N., Zhuang, R., Terracciano, U., Coccaro, P., Giuzio, L., & Manfreda, S. (2026). Hydrological Model Calibration in Data-Scarce Mediterranean Catchments: A Comparative Assessment of Three Strategies. Hydrology, 13, 66. [pdf]