修正模糊逻辑和人工蜂群:基于mpt的系统优化和电能质量改进的人工智能方法

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES
Musawenkosi Lethumcebo Thanduxolo Zulu , Rudiren Sarma , Remy Tiako
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引用次数: 0

摘要

微电网是利用本地分布式能源资源为用户发电、配电和调节电力的最有效方法。然而,由于太阳能和风能发电的不一致性,在微电网中实现最优经济调度和提高电能质量是一个重要而具有挑战性的课题。本文利用人工智能(AI)技术,研究了基于最大功率点跟踪器(MPPT)系统的优化和电能质量改善。通过使用人工智能优化策略来确定基于模糊逻辑的 MPPT 控制器的最佳缩放参数,光伏和风能系统的效率得以最大化。本文提出了一种改进的模糊逻辑和人工蜂群(FLABC)技术,用于优化基于 MPPT 的系统并提高电能质量。微电网的最佳经济调度方案,目标是满足负荷和平衡需求,同时降低发电成本和气体排放。为优化基于 MPPT 的混合可再生能源系统并提高其电能质量,提出了 FLABC 技术。这项研究的核心优势在于人工智能工程的应用,尤其是在可再生能源领域,因为它是化石燃料的重要替代品。从光伏风能到负载的功率直接受到输入和输出参数设置的影响。首先,建立了考虑到分布式发电装置和负载的各种特征的数学模型,目的是提高 ABC 的全局收敛性能,使模型更加合适。其次,概述了使用修正 ABC 解决电能质量优化问题的关键阶段。第三,通过几个场景模拟,强调了所建议的微电网电能质量优化策略的优势和有效性。研究使用 MATLAB/Simulink 软件进行模拟。在各种气候条件下,将建议的基于 ABC 的模糊控制器的性能与使用模糊逻辑和 ABC 控制器的性能进行了比较。仿真结果表明,建议的基于模糊逻辑的 ABC 控制器在获得太阳能方面的性能优于其他控制器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified fuzzy logic and artificial bee colony: An artificial intelligence approach to optimization and power quality improvement in an MPPT-based system
Microgrids are the most efficient method for generating, distributing, and regulating power for consumers using localized distributed energy resources. Nevertheless, achieving optimal economic dispatch and power quality enhancement in microgrids is a significant and challenging topic since solar and wind power generation are inconsistent. In this paper, optimization, and improvement of power quality in a maximum power point tracker (MPPT) based system utilizing artificial intelligence (AI) techniques are studied. The efficiency of a photovoltaic and wind energy system is maximized in this work by using an AI optimization strategy to determine the best scaling parameters for a fuzzy logic-based MPPT controller. This paper presents an improved fuzzy logic and artificial bee colony (FLABC) technique for optimization and power quality enhancement in an MPPT-based system. optimal economic dispatch solution for a microgrid, with the goal of meeting load and balance demand, while reducing the cost of power generation and gas emissions. The FLABC technique is proposed for optimization and power quality enhancement in an MPPT-based hybrid renewable system. The core strength of this study is in the application of AI engineering, particularly in the field of renewable energy as a significant replacement for fossil fuels. The power that goes from the PV wind to the load is directly impacted by the setting of the input and output parameters. Firstly, mathematical model that considers the various traits of distributed generation units and loads was built, with the aim to enhance ABC's global convergence performance to make the model fit. Second, the key stages were outlined for using the modified ABC to solve the optimal power quality enhancement. Thirdly, several scenarios simulations were highlighted the advantages and potency of the suggested strategy for optimal power quality enhancement in microgrids. The study was conducted using MATLAB/Simulink software for simulations. Under various climatic situations, the suggested ABC-based fuzzy controller's performances are compared to those attained using fuzzy logic and ABC controllers. The simulation results demonstrated that the suggested Fuzzy logic-based ABC controller outperformed the performance in terms of the solar energy gained.
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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