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Neural network-based allocation and self-improved firefly-based optimal sizing of fuel cells in distributed generation systems

机译:基于神经网络的分配和基于自我改进的萤火虫的分布式发电系统中燃料电池的最佳尺寸

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摘要

The notion of Distributed Generation (DG) refers to the production of power at the level of consumption. Production of energy on-site, instead of offering it centrally, reduces the cost, internal dependencies, difficulties, inefficiencies, and risks that are related to transmission and distribution systems. In case DG is realized with fuel cells, several issues exist in respect to allocating and sizing of these fuel cells in the system. For solving those issues, dual stage intelligent technique is employed in this paper. First, the Neural Networks (NN) technique is adopted for determining the required location to place the fuel cells. Secondly, an enhanced version of Self Improved Fire-Fly (SIFF) algorithm is adopted for finding the optimal size of the fuel cells. The implemented technique is simulated in four IEEE benchmark test bus systems, and the respective performance analysis along with statistical analysis serves for validation purposes. The here proposed technique is compared with six other known algorithms, namely Particle Swarm Optimization (PSO), Firefly (FF) algorithm, Artificial Bee colony (ABC) algorithm, Improved Artificial Bee colony algorithm (IABC), Genetic Algorithm (GA) and Global Search Optimizer (GSO). The results obtained from the comparative analysis show the enhanced performance of the proposed mechanism.
机译:分布式发电(DG)的概念是指在消耗水平上的电力生产。现场生产能源,而不是集中提供能源,可以降低成本,内部依赖性,困难,效率低下以及与输配电系统有关的风险。在用燃料电池实现DG的情况下,在系统中这些燃料电池的分配和尺寸确定方面存在若干问题。为了解决这些问题,本文采用了双级智能技术。首先,采用神经网络(NN)技术确定放置燃料电池的所需位置。其次,采用了一种改进的自改进飞行算法(SIFF)来寻找燃料电池的最佳尺寸。所实施的技术在四个IEEE基准测试总线系统中进行了仿真,并且各自的性能分析以及统计分析用于验证目的。将此处提出的技术与其他六种已知算法进行比较,分别是粒子群优化(PSO),萤火虫(FF)算法,人工蜂群(ABC)算法,改进人工蜂群算法(IABC),遗传算法(GA)和全局算法搜索优化器(GSO)。通过比较分析获得的结果表明,该机制的性能得到了增强。

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