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基于改进蜜獾算法的质子交换膜燃料电池和光伏电池精确参数辨识实现

Implementation of Accurate Parameter Identification for Proton Exchange Membrane Fuel Cells and Photovoltaic Cells Based on Improved Honey Badger Algorithm.

作者信息

Yu Wei-Lun, Wen Chen-Kai, Liu En-Jui, Chang Jen-Yuan

机构信息

Department of Power Mechanical Engineering, National Tsing Hua University, Hsinchu 30013, Taiwan.

Mechanical and Mechatronics Systems Research Laboratories, Industrial Technology Research Institute, Hsinchu 310401, Taiwan.

出版信息

Micromachines (Basel). 2024 Jul 31;15(8):998. doi: 10.3390/mi15080998.

Abstract

Predicting the system efficiency of green energy and developing forward-looking power technologies are key points to accelerating the global energy transition. This research focuses on optimizing the parameters of proton exchange membrane fuel cells (PEMFCs) and photovoltaic (PV) cells using the honey badger algorithm (HBA), a swarm intelligence algorithm, to accurately present the performance characteristics and efficiency of the systems. Although the HBA has a fast search speed, it was found that the algorithm's search stability is relatively low. Therefore, this study also enhances the HBA's global search capability through the rapid iterative characteristics of spiral search. This method will effectively expand the algorithm's functional search range in a multidimensional and complex solution space. Additionally, the introduction of a sigmoid function will smoothen the algorithm's exploration and exploitation mechanisms. To test the robustness of the proposed methodology, an extensive test was conducted using the CEC'17 benchmark functions set and real-life applications of PEMFC and PV cells. The results of the aforementioned test proved that with regard to the optimization of PEMFC and PV cell parameters, the improved HBA is significantly advantageous to the original in terms of both solving capability and speed. The results of this research study not only make definite progress in the field of bio-inspired computing but, more importantly, provide a rapid and accurate method for predicting the maximum power point for fuel cells and photovoltaic cells, offering a more efficient and intelligent solution for green energy.

摘要

预测绿色能源的系统效率并开发前瞻性电力技术是加速全球能源转型的关键点。本研究聚焦于使用蜜獾算法(一种群体智能算法)优化质子交换膜燃料电池(PEMFC)和光伏(PV)电池的参数,以准确呈现系统的性能特征和效率。尽管蜜獾算法搜索速度快,但发现该算法的搜索稳定性相对较低。因此,本研究还通过螺旋搜索的快速迭代特性增强了蜜獾算法的全局搜索能力。此方法将在多维复杂解空间中有效扩展算法的功能搜索范围。此外,引入sigmoid函数将使算法的探索和利用机制更加平滑。为测试所提方法的鲁棒性,使用CEC'17基准函数集以及PEMFC和PV电池的实际应用进行了广泛测试。上述测试结果证明,在优化PEMFC和PV电池参数方面,改进后的蜜獾算法在求解能力和速度上均明显优于原始算法。本研究结果不仅在生物启发式计算领域取得了明确进展,更重要的是,为预测燃料电池和光伏电池的最大功率点提供了一种快速准确的方法,为绿色能源提供了更高效智能的解决方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1ba5/11356161/02d26fdf0d32/micromachines-15-00998-g001.jpg

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