利用电鳗觅食优化算法优化并网光伏和风力涡轮机混合系统的控制和优化

S. Abdelwahab, Ali M. El-Rifaie, Hossam Youssef Hegazy, M. Tolba, Wael I. Mohamed, M. Mohamed
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引用次数: 0

摘要

本文全面探讨了风力涡轮机与光伏(PV)的混合能源系统,以解决这些能源发电的间歇性问题。光伏电池和风力涡轮机发电的间歇性决定了这种技术的必要性。设想的结果是一种无排放、更高效的传统能源替代品。我们采用了多种优化技术,特别是粒子群优化(PSO)算法和电鳗觅食优化(EEFO)算法,以实现最佳的电力调节和与公共电网的无缝集成,并减轻预期的负载问题。本文采用数学建模和仿真技术来评估 EEFO 在优化并网光伏和风力涡轮机混合系统运行方面的有效性。本文详细描述了应用于系统架构的优化方法,使人们清楚地了解该方法的复杂性。通过使用 MATLAB/SIMULINK 模拟各种运行场景,对这些优化策略的功效进行了严格评估。结果表明,所提出的优化策略不仅能够精确、迅速地补偿关联负载,还能有效控制能源供应,将负载功率维持在所需水平。研究结果凸显了这种混合能源系统的潜力,为满足电力需求提供了一种可持续的可靠解决方案,为清洁高效能源技术的发展做出了贡献。研究结果表明,所提出的方法有能力改善系统性能,最大限度地提高能源产出,加强电网整合,从而促进可再生能源技术和可持续能源系统的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Control and Optimization of Grid-Connected PV and Wind Turbine Hybrid Systems Using Electric Eel Foraging Optimization Algorithms
This paper presents a comprehensive exploration of a hybrid energy system that integrates wind turbines with photovoltaics (PVs) to address the intermittent nature of electricity production from these sources. The necessity for such technology arises from the sporadic nature of electricity generated by PV cells and wind turbines. The envisioned outcome is an emissions-free, more efficient alternative to traditional energy sources. A variety of optimization techniques are utilized, specifically the Particle Swarm Optimization (PSO) algorithm and Electric Eel Foraging Optimization (EEFO), to achieve optimal power regulation and seamless integration with the public grid, as well as to mitigate anticipated loading issues. The employed mathematical modeling and simulation techniques are used to assess the effectiveness of EEFO in optimizing the operation of grid-connected PV and wind turbine hybrid systems. In this paper, the optimization methods applied to the system’s architecture are described in detail, providing a clear understanding of the intricate nature of the approach. The efficacy of these optimization strategies is rigorously evaluated through simulations of diverse operating scenarios using MATLAB/SIMULINK. The results demonstrate that the proposed optimization strategies are not only capable of precisely and swiftly compensating for linked loads, but also effectively controlling the energy supply to maintain the load’s power at the desired level. The findings underscore the potential of this hybrid energy system to offer a sustainable and reliable solution for meeting power demands, contributing to the advancement of clean and efficient energy technologies. The results demonstrate the capability of the proposed approach to improve system performance, maximize energy yield, and enhance grid integration, thereby contributing to the advancement of renewable energy technologies and sustainable energy systems.
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