考虑环境因素的光伏 MPPT 控制和改进策略:基于 PID 型滑模控制和改进型灰狼优化法

Leijia Liu
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摘要

鉴于促进更环保、更可持续的未来的重要性,及时解决和改善与传统能源相关的碳排放和低效率问题至关重要。本研究提出了一种新的光伏系统优化方法。它将 IGWO 算法与 PID 型 SMC 相结合,以提高 MPPT 的有效性。利用 IGWO,即使面对不断变化的环境条件,也能确定最佳 MPP 电压。然后,PID 型 SMC 根据预期电压调整升压器的实际输出电压,以产生所需的占空比。这种综合方法考虑了光伏系统的自然波动,因为环境的变化会极大地影响最大功率点。我们使用基于 MATLAB 的仿真软件进行了深入评估,并建立了相应的实际测试平台。实际场景中的仿真和实验结果表明,与现有算法相比,新的 MPPT 策略具有出色的综合性能,能快速确定并跟踪 MPP 的电压值。这项研究为在可再生能源发电领域应用 IGWO 和新的 SMC 控制理论奠定了基础。考虑到受控环境带来的挑战,它还有助于 MPPT 技术的发展。
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Photovoltaic MPPT control and improvement strategies considering environmental factors: based on PID-type sliding mode control and improved grey wolf optimization
Given the importance of promoting a greener and more sustainable future, it is crucial to promptly tackle and improve the issues surrounding carbon emissions and inefficiency linked to traditional energy sources. This study presents a new optimization method for PV systems. It combines an IGWO Algorithm with PID-type SMC to enhance the effectiveness of MPPT. Using IGWO, the optimal MPP voltage is determined even in the face of changing environmental conditions. Afterwards, the PID-type SMC adjusts the actual output voltage of the Boost based on the expected voltage to generate the required duty cycle. The integrated approach considers the natural fluctuations in PV systems, where changes in the environment can greatly affect the maximum power point. An in-depth evaluation was conducted using simulation software based on MATLAB, and a practical testing platform was built accordingly. The simulation and experimental results in real-world scenarios show that the new MPPT strategy has excellent overall performance and can quickly determine and track the voltage value for MPP compared to established algorithms. This study lays the groundwork for applying IGWO and new SMC control theories in the field of renewable energy generation. It also contributes to the development of MPPT technology, considering the challenges posed by the controlled environment.
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