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Hybrid Algorithm of Particle Swarm Optimization and Grey Wolf Optimizer for Reservoir Operation Management

机译:粒子群优化和灰狼优化器的混合算法,用于储层管理

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Metaheuristics are highly efficient optimization methods that are widely used today. However, the performance of one method cannot be generalized and must be examined in each class of problems. The hybrid algorithm of particle swarm optimization and grey wolf optimizer (HPSOGWO) is new swarm-based metaheuristic with several advantages, such as simple implementation and low memory consumption. This study uses HPSOGWO for reservoir operation optimization. Real-coded genetic algorithm (RGA) and gravitational search algorithm (GSA) have been used as efficient methods in reservoir optimization management for comparative analysis between algorithms through two case studies. In the first case study, four benchmark functions were minimized, in which results revealed that HPSOGWO was more competitive compared with other algorithms and can produce high-quality solutions. The second case study involved minimizing the deficit between downstream demand and release from the Hammam Boughrara reservoir located in Northwest Algeria. A constrained optimization model with non-linear objective function was applied. Based on the average solutions, HPSOGWO performed better compared with RGA and was highly competitive with GSA. In addition, the reliability, resiliency, and vulnerability indices of the reservoir operation, which was derived from the three algorithms, were nearly similar to one another, which justified the usability of HPSOGWO in this field.
机译:弥撒是高效的优化方法,今天广泛使用。但是,一种方法的性能不能推广,并且必须在每类问题中进行检查。粒子群优化和灰狼优化器(HPPSogwo)的混合算法是新的群群成形培育师,具有几个优点,如简单的实现和低存储器消耗。本研究使用HPSogwo进行水库操作优化。实际编码的遗传算法(RGA)和重力搜索算法(GSA)已被用作储层优化管理中的有效方法,以通过两种情况研究进行算法之间的比较分析。在第一种案例研究中,最小化了四个基准函数,其中结果表明,与其他算法相比,HPSogwo更具竞争力,可以产生高质量的解决方案。第二种案例研究涉及最大限度地减少位于阿尔及利亚西北部的土耳其汉姆姆·布拉拉水库之间的下游需求与释放之间的赤字。应用了非线性物镜函数的约束优化模型。基于平均解决方案,与RGA相比,HPPSogwo更好地进行了更好,并对GSA具有竞争力。此外,从三种算法导出的储层操作的可靠性,弹性和漏洞指标几乎相似,彼此几乎类似,这证明了Hpsogwo在该领域的可用性。

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