Global Optimization-Based Calibration Algorithm for a 2D Distributed Hydrologic-Hydrodynamic and Water Quality Model
Marcus N. Gomes Jr., Marcio H. Giacomoni, Fabricio A. R. Navarro,, Eduardo M. Mendiondo

TL;DR
This paper introduces a global optimization algorithm for calibrating high-resolution hydrologic-hydrodynamic models, enabling efficient parameter estimation using observed data despite computational challenges.
Contribution
It presents a novel calibration algorithm tailored for distributed hydrologic models, leveraging recent computational advances to improve accuracy and efficiency.
Findings
Achieved NSE of 0.99 in catchment calibration
Reduced equifinality by increasing event data and refining parameter ranges
Demonstrated applicability in urban and rural catchments
Abstract
Hydrodynamic models with rain-on-the-grid capabilities are usually computationally expensive. This makes the use of automatic calibration algorithms hard to apply due to the large number of model runs. However, with the recent advances in parallel processing, computational resources, and increasing high-resolution climatologic and GIS data, high-resolution hydrodynamic models can be used for optimization-based calibration. This paper presents a global optimization-based algorithm to calibrate a fully distributed hydrologic-hydrodynamic and water quality model (HydroPol2D) using observed data (i.e., discharge, or pollutant concentration) as input. The algorithm can find a near-optimal set of parameters to explain observed gauged data. The modeling framework presented here, although applied in a poorly-gauged catchment, can be adapted for catchments with more detailed observations. We…
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Taxonomy
TopicsHydrology and Watershed Management Studies · Flood Risk Assessment and Management · Hydrological Forecasting Using AI
