Abstract

Given the importance of input data, particularly precipitation, in hydrologic modeling for streamflow simulation, there has been growing emphasis on developing frameworks that harness multiple data sources concurrently to achieve more precise results. In the proposed framework of this study, which relies on the integrated capabilities of the multiobjective optimization model [nondominated sorting genetic algorithm-II (NSGA-II)], the ensemble Kalman filter data assimilation method, and data fusion, rainfall data from multiple sources are incorporated. The utilized framework leads to an improvement in the mean absolute relative error (MARE) index of streamflow simulation results. The innovation of the proposed methodology is the calculation of optimal weights corresponding to the simulated runoff time-series in the fusion model. This is accomplished through a competitive process among a multitude of optimized scenarios simulated within the framework provided. MARE as the main index identified in the objective functions and standard deviation, centered root mean square distance, and the correlation coefficient as auxiliary indices have been considered in this process. In this framework, satellite-based and in situ precipitation data sets are used as the forcing data. The main challenge has been to choose the greatest scenario for fusion among the selected scenarios, which the proposed methodology has overcome. The performance of the suggested methodology is demonstrated for the Siakh-Darengon catchment located in the Fars Province of Iran. According to the results, an average of 14.07% improvement in the MARE index has been achieved after applying the proposed methodology. By utilizing the proposed method, satellite-based rainfall data are integrated alongside ground-based rainfall data in the flood modeling process, resulting in enhanced accuracy in simulation outcomes within the utilized watersheds.

Practical Applications

Today, influenced by factors such as climate change and anthropogenic alterations to the environment, the issue of flooding and its associated hazards has garnered unprecedented attention from researchers. One of the crucial components in flood modeling is rainfall data, which are collected through various means such as ground stations and satellite sensing instruments. In the past, the primary focus in the process of flood modeling has been on rainfall data recorded at ground stations; nowadays, efforts are being made to further enhance the role of satellite-derived rainfall data in flood modeling, aiming at enhancing their precision. In this study, a fusion model has been developed using the data fusion method and simultaneous utilization of ground-based and satellite rainfall data. Various flood simulation scenarios have been generated using a multiobjective optimization model, and the best scenario is selected through a competitive process. By implementing the proposed methodology in the Siakh-Darengon watershed located in Fars Province, Iran, improvements in simulation results have been achieved, resulting in based on the calculated performance indicators.

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Data Availability Statement

Some or all data, models, or code that support the findings of this study are available from the corresponding author upon reasonable request.

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Volume 29Issue 6December 2024

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Received: Jan 28, 2024
Accepted: Jun 27, 2024
Published online: Sep 10, 2024
Published in print: Dec 1, 2024
Discussion open until: Feb 10, 2025

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Maziyar Bahrami [email protected]
Ph.D. Student, Dept. of Civil and Environmental Engineering, Shiraz Univ., Shiraz 7134851156, Iran. Email: [email protected]
Nasser Talebbeydokhti [email protected]
Professor, Dept. of Civil and Environmental Engineering, Shiraz Univ., Shiraz 7184983959, Iran. Email: [email protected]
Professor, Dept. of Civil and Environmental Engineering, Shiraz Univ., Shiraz 7134851156, Iran. ORCID: https://orcid.org/0000-0001-6153-264X. Email: [email protected]
Associate Professor, Dept. of Civil and Architectural Engineering, Sultan Qaboos Univ., P.O. Box 33, Muscat PC 123, Oman (corresponding author). ORCID: https://orcid.org/0000-0002-3740-4389. Email: [email protected]
Nasrin Alamdari, A.M.ASCE [email protected]
Assistant Professor, Dept. of Civil and Environmental Engineering, Florida A&M-Florida State (FAMU-FSU) College of Engineering, Tallahassee, FL 32309. Email: [email protected]

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