基于光伏系统的多电平逆变器负载平衡高级控制策略

Venkedesh R, Anandha Kumar R, Renukadevi G
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摘要

在以可持续能源解决方案为驱动力的时代,光伏(PV)系统的协同作用是满足全球日益增长的能源需求,同时最大限度减少对环境影响的希望灯塔。这项研究将光伏系统无缝纳入可再生能源集成领域,并通过基于混沌授粉优化自适应神经模糊推理系统(ANFIS)的 MPPT(最大功率点跟踪)控制器进行巧妙控制,该控制器能够在瞬息万变的天气动态中优化效率。通过实施高增益修正罗转换器,光伏系统对最佳效率的追求得到了极大的提升。该转换器旨在实现最佳的光伏输出电压,在对精度和效率要求极高的电网应用中发挥了真正的作用。此外,这项研究还扩展了其范围,将双向转换器与蓄电池等储能解决方案通过共用直流链路连接起来。输出功率随后被输送到反激式转换器,无缝连接到由 PI 控制器控制的 31 级级联 H 桥多级逆变器(31 级 CHB MLI)。这种强大的逆变器结构有助于向电网高效输送电力,确保可再生能源资源的平稳、可控整合。这种战略整合增强了系统的适应性,实现了能量流和电网互动的无缝管理,以及 MLI 中的负载平衡。MATLAB 仿真平台用于确认系统的整体性能。根据仿真结果,建议的方法实现了最高效率和最低总谐波失真(THD)值,分别为 94.5% 和 2.5%。
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PV based Systems with Advanced Control Strategies for Load Balancing in Multilevel Inverter
In an era driven by sustainable energy solutions, the synergy of photovoltaic (PV) system stands as a beacon of hope for meeting the world's growing energy demands while minimizing environmental impact. This research ventures into the domain of renewable energy integration by seamlessly including a PV system, ingeniously controlled by Chaotic Flower Pollination Optimized Adaptive Neuro Fuzzy Inference System (ANFIS) based MPPT (Maximum Power Point Tracking) controller capable of optimizing the efficiency in the face of ever-changing weather dynamics. The PV system's quest for optimal efficiency receives a substantial boost through the implementation of the High Gain Modified Luo Converter. Designed to achieve an optimal PV output voltage, this converter's prowess finds its true calling in grid applications, where precision and efficiency are paramount. Furthermore, this research extends its purview to incorporate a bidirectional converter linked to an energy storage solution, such as a battery, through a common DC link. The output power is then passed to the Flyback Converter, seamlessly connected to a 31 level Cascaded H Bridge Multi-Level Inverter (31-level CHB MLI) controlled by PI controller. This formidable inverter architecture facilitates the efficient delivery of power to the grid, ensuring a smooth and controlled integration of renewable energy resources. This strategic integration bolsters the system's adaptability, enabling the seamless management of energy flows and grid interactions along with load balancing in MLI. The MATLAB simulation platform is used for confirming the system's overall performance. According to the simulation results, the proposed approach achieves the maximum efficiency with the lowest THD value of 94.5% and 2.5%, respectively.
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