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基于条件原子搜索优化算法和条件遗传算法的联网水库系统优化调度

Optimum reservoir operation of a networking reservoirs system using conditional atom search optimization and a conditional genetic algorithm.

作者信息

Kosasaeng Suwapat, Kangrang Anongrit

机构信息

Mahasarakham University, Kantarawichai, Maha Sarakham, 44150, Thailand.

出版信息

Heliyon. 2023 Mar 10;9(3):e14467. doi: 10.1016/j.heliyon.2023.e14467. eCollection 2023 Mar.

Abstract

This study aimed to apply conditional atom search optimization (CASO) for searching optimum rule curves in a networking reservoirs system with a reservoir simulation model. The networking reservoirs system consisted of 5 reservoirs located in Sakon Nakhon Province, Thailand. The efficiency of the new optimum rule curves was determined by comparison of operating systems between a single reservoir and a networking reservoirs system. The results displayed circumstances of scarcity and excess of water. Where the circumstances of scarcity are frequency and duration. Whilst, excesses of water are average water and the highest water. In addition, the efficiency of searching for optimum rule curves was compared between conditional genetic algorithm (CGA) and CASO techniques. The new optimum rule curves from the networking reservoirs system had an average excess water of 43.828 MCM/year. This average excess water was less than that found for optimum curves from the single system in which the average excess of water was 45.602 MCM/year. CASO was more efficient in converging optimum rule curve solutions faster than CGA by 40.00%. In conclusion, the CASO can be used to search for optimum networking reservoirs rule curve solutions effectively. For the networking reservoirs system derived water from the upstream reservoirs, an analysis was performed of the downstream reservoir. The results showed that the optimum rule curves using CASO operated as a networking reservoirs system provided higher efficiency than a single reservoir system. In addition, they reduced the amount of time that water exceeded the river capacity at a downstream weir by one month compared with the original period of two months.

摘要

本研究旨在应用条件原子搜索优化(CASO),通过水库模拟模型在联网水库系统中搜索最优规则曲线。该联网水库系统由位于泰国呵叻府的5座水库组成。通过比较单水库系统和联网水库系统的运行情况,确定新的最优规则曲线的效率。结果显示了缺水和水过剩的情况。其中,缺水情况包括频率和持续时间。而水过剩情况包括平均水量和最高水量。此外,还比较了条件遗传算法(CGA)和CASO技术在搜索最优规则曲线方面的效率。联网水库系统的新最优规则曲线的年平均过剩水量为4382.8万立方米。这一平均过剩水量低于单系统最优曲线的平均过剩水量,单系统的平均过剩水量为4560.2万立方米。CASO在收敛最优规则曲线解方面比CGA更高效,速度快40.00%。总之,CASO可有效地用于搜索联网水库的最优规则曲线解。对于从上游水库取水的联网水库系统,对下游水库进行了分析。结果表明,使用CASO作为联网水库系统运行的最优规则曲线比单水库系统效率更高。此外,与原来两个月的时间相比,它们将下游堰坝处水超过河流容量的时间减少了一个月。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6ea/10011061/9448b0703bb4/gr1.jpg

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