Monthly streamflow forecasting based on meteorological data from a nearby station

Author:

Nohani Ebrahim1,Karimipour Ahmadreza2,Khazaei Solmaz3,Haroni Hossein Zamani4,Akhmatov Sheikh-Mansur5,Yegorov Aleksandr5,Zolfaghari Maryam6,Hatamiafkoueieh Javad7,Heddam Salim8,Tiefenbacher John9

Affiliation:

1. a Material and Energy Research Center, Dezful Branch, Islamic Azad University, Dezful, Iran

2. b Department of Civil Engineering, Faculty of Engineering, Payame Noor University (PNU), Tehran, Iran

3. c Department of Civil Engineering, Faculty of Hydraulic Structures, The Institute of Higher Education of Bonyan, Shahinshahr, Isfahan, Iran

4. d Department of Range and Watershed Management, Faculty of Natural Resources, Isfahan University of Technology, Isfahan 84156-83111, Iran

5. e Department of Subsoil Use and Oil and Gas, Academic of Engineering, People's Frienship University of Russia, (RUDN University), Mikaukho-Maklaya Str.6, Moscow 117198, Russian Federation

6. f Department of Watershed Management, Islamic Azad University, Sanandaj Branch, Sanandaj, Iran

7. g Department of Mechanics and Control Processes, Academy of Engineering, Peoples’ Friendship University of Russia (RUDN University), Miklukho-Maklaya Str. 6, Moscow 117198, Russian Federation

8. h Faculty of Science, Agronomy Department, Hydraulic Division, University 20 Août 1955 SKIKDA, Skikda, Algeria

9. i Department of Geography and Environmental Studies, Texas State University, San Marcos, TX, USA

Abstract

ABSTRACT Monthly streamflow forecasting is critical for improving water resource management. In this study, several base-classifier data-mining algorithms – conjunctive rule (CR), isotonic regression (ISOR), sequential minimal optimization regression (SMOR) – as well as several hybrid data-mining techniques – disjoint aggregating or dagging (DA)-CR, DA-ISOR, and DA-SMOR – that combine dagging with these algorithms were developed and applied to forecasting streamflow 3 and 12 months into the future (i.e., Qt+3 and Qt+12) based on meteorological data from a nearby station. Thirty years of data (from 1988 to 2018) that included precipitation, minimum relative humidity, maximum relative humidity, evaporation, hours of sunshine, maximum temperature, minimum temperature, wind speed, and streamflow were collected at the Kermanshah synoptic station were input to develop and evaluate several models. Varying combinations of the input data were tested to find the optimal set to employ. The models were validated and compared using several quantitative statistical indices. Though all satisfactorily predicted monthly streamflow, the hybrid models (DA-CR, DA-ISOR, and DA-SMOR) outperformed the base-classifier models (CR, ISOR, and SMOR), proving that dagging improved data-mining models significantly. Of the hybrid models, D-SMOR was the best. The models developed in this study are cost-effective tools for quick and accurate monthly streamflow forecasting.

Publisher

IWA Publishing

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