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Accelerating parameter identification of proton exchange membrane fuel cell model with ranking-based differential evolution

机译:基于等级差异演化的质子交换膜燃料电池模型加速参数辨识

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摘要

Parameter identification of PEM (proton exchange membrane) fuel cell model is a very active area of research. Generally, it can be treated as a numerical optimization problem with complex nonlinear and multi-variable features. DE (differential evolution), which has been successfully used in various fields, is a simple yet efficient evolutionary algorithm for global numerical optimization. In this paper, with the objective of accelerating the process of parameter identification of PEM fuel cell models and reducing the necessary computational efforts, we firstly present a generic and simple ranking-based mutation operator for the DE algorithm. Then, the ranking-based mutation operator is incorporated into five highly-competitive DE variants to solve the PEM fuel cell model parameter identification problems. The main contributions of this work are the proposed ranking-based DE variants and their application to the parameter identification problems of PEM fuel cell models. Experiments have been conducted by using both the simulated voltage-current data and the data obtained from the literature to validate the performance of our approach. The results indicate that the ranking-based DE methods provide better results with respect to the solution quality, the convergence rate, and the success rate compared with their corresponding original DE methods. In addition, the voltage-current characteristics obtained by our approach are in good agreement with the original voltage-current curves in all cases.
机译:PEM(质子交换膜)燃料电池模型的参数识别是一个非常活跃的研究领域。通常,可以将其视为具有复杂非线性和多变量特征的数值优化问题。 DE(微分进化)已成功应用于各个领域,是一种用于全局数值优化的简单高效的进化算法。为了加快PEM燃料电池模型参数识别过程并减少必要的计算工作,本文首先提出了一种通用且简单的基于排序的DE变异算子。然后,将基于排名的变异算子合并到五个高度竞争的DE变体中,以解决PEM燃料电池模型参数识别问题。这项工作的主要贡献是提出的基于排名的DE变体及其在PEM燃料电池模型的参数识别问题中的应用。通过使用模拟的电压-电流数据和从文献中获得的数据进行了实验,以验证我们方法的性能。结果表明,与相应的原始DE方法相比,基于排名的DE方法在解决方案质量,收敛速度和成功率方面提供了更好的结果。此外,通过我们的方法获得的电压-电流特性在所有情况下都与原始电压-电流曲线非常吻合。

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