An Alternative Approach Using the Firefly Algorithm and a Hybrid Method Based on the Artificial Bee Colony and Cultural Algorithm for Reservoir Operation

Author:

Phumiphan Anujit1ORCID,Kosasaeng Suwapat2,Sivanpheng Ounla3,Hormwichian Rattana4,Kangrang Anongrit4ORCID

Affiliation:

1. School of Engineering, University of Phayao, Phayao District, Phayao 56000, Thailand

2. Water Management and Maintenance Division, Regional Irrigation Office 5, Udonthani 41000, Thailand

3. Faculty of Water Resources, National University of Laos, Vientiane 01020, Laos

4. Faculty of Engineering, Mahasarakham University, Kantharawichai District, Maha Sarakham 44150, Thailand

Abstract

In reservoir operation rule curves, it is necessary to apply rule curves to guide long-term reservoir management. This study proposes an approach to optimizing reservoir operation rule curves (RORCs) using intelligent optimization techniques from the firefly algorithm (FA) and a unique combination method utilizing the artificial bee colony and cultural algorithm (ABC-CA). The aim is to establish a connection with the simulation model to determine the optimal RORCs for flood control. The proposed model was used to determine the optimal flood control RORC for the Nam-Oon Reservoir (NOR) in northeastern Thailand. A minimum frequency and minimum average of excess water were provided as an objective function for assessing the efficiency of the search process. The evaluation of the effectiveness of flood control RORCs involved expressing water scarcity and excess water situations in terms of frequency, magnitude, and duration using historical inflow data synthesized from 1000 events. The results demonstrated that when using the obtained RORC to simulate the NOR system for reducing flooding in long-term operations, excess water scenarios were smaller than those using the current RORC. The results showed that the excess water scenario using the RORC obtained from the proposed model can reduce the excess water better than the current RORC usage scenario. In decreasing flood situations, the newly acquired RORC from the suggested FA and ABC-CA models performed better than the current RORC.

Funder

University of Phayao and Mahasarakham University

Publisher

MDPI AG

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