Particle Swarm Optimization-Based Control for Maximum Power Point Tracking Implemented in a Real Time Photovoltaic System

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Information (Switzerland) Pub Date : 2023-10-11 DOI:10.3390/info14100556
Asier del Rio, Oscar Barambones, Jokin Uralde, Eneko Artetxe, Isidro Calvo
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Abstract

Photovoltaic panels present an economical and environmentally friendly renewable energy solution, with advantages such as emission-free operation, low maintenance, and noiseless performance. However, their nonlinear power-voltage curves necessitate efficient operation at the Maximum Power Point (MPP). Various techniques, including Hill Climb algorithms, are commonly employed in the industry due to their simplicity and ease of implementation. Nonetheless, intelligent approaches like Particle Swarm Optimization (PSO) offer enhanced accuracy in tracking efficiency with reduced oscillations. The PSO algorithm, inspired by collective intelligence and animal swarm behavior, stands out as a promising solution due to its efficiency and ease of integration, relying only on standard current and voltage sensors commonly found in these systems, not like most intelligent techniques, which require additional modeling or sensoring, significantly increasing the cost of the installation. The primary contribution of this study lies in the implementation and validation of an advanced control system based on the PSO algorithm for real-time Maximum Power Point Tracking (MPPT) in a commercial photovoltaic system to assess its viability by testing it against the industry-standard controller, Perturbation and Observation (P&O), to highlight its advantages and limitations. Through rigorous experiments and comparisons with other methods, the proposed PSO-based control system’s performance and feasibility have been thoroughly evaluated. A sensitivity analysis of the algorithm’s search dynamics parameters has been conducted to identify the most effective combination for optimal real-time tracking. Notably, experimental comparisons with the P&O algorithm have revealed the PSO algorithm’s remarkable ability to significantly reduce settling time up to threefold under similar conditions, resulting in a substantial decrease in energy losses during transient states from 31.96% with P&O to 9.72% with PSO.
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基于粒子群优化的实时光伏系统最大功率点跟踪控制
光伏板具有零排放、低维护、无噪音等优点,是一种经济环保的可再生能源解决方案。然而,它们的非线性功率-电压曲线需要在最大功率点(MPP)高效运行。各种各样的技术,包括爬坡算法,由于它们的简单性和易于实现,通常在行业中使用。然而,像粒子群优化(PSO)这样的智能方法可以在减少振荡的情况下提高跟踪效率的准确性。PSO算法受到集体智慧和动物群体行为的启发,由于其效率和易于集成而脱颖而出,成为一种有前途的解决方案,仅依赖于这些系统中常见的标准电流和电压传感器,而不像大多数智能技术那样需要额外的建模或传感器,这大大增加了安装成本。本研究的主要贡献在于在商用光伏系统中实现并验证了一种基于PSO算法的先进控制系统,用于实时最大功率点跟踪(MPPT),通过对行业标准控制器摄动和观察(P&O)进行测试来评估其可行性,以突出其优势和局限性。通过严格的实验和与其他方法的比较,对所提出的基于pso的控制系统的性能和可行性进行了全面的评估。对算法的搜索动态参数进行了灵敏度分析,以确定最优实时跟踪的最有效组合。值得注意的是,与P&O算法的实验比较表明,PSO算法在相似条件下显著缩短了三倍的稳定时间,导致瞬态能量损失从P&O的31.96%大幅降低到PSO的9.72%。
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来源期刊
Information (Switzerland)
Information (Switzerland) Computer Science-Information Systems
CiteScore
6.90
自引率
0.00%
发文量
515
审稿时长
11 weeks
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