Zakerabbasi Pouya, Maghsoudy Sina, Baghban Alireza, Habibzadeh Sajjad, Esmaeili Amin
Surface reaction and advanced energy materials laboratory, Department of Chemical Engineering, Amirkabir University of Technology (Tehran Polytechnic), PO Box 15875-4413, Tehran, Iran.
Department of Chemical Engineering, School of Engineering Technology and Industrial Trades, University of Doha for Science and Technology (UDST), 24449, Arab League St, Doha, Qatar.
Sci Rep. 2025 Apr 12;15(1):12677. doi: 10.1038/s41598-025-97287-7.
Achieving a high energy density in liquid metal batteries (LMBs) still remains a big challenge. Due to the multitude of affecting parameters within the system, traditional ways may not fully capture the complexity of LMBs. The artificial intelligence approach can be effectively applied to deal with low energy density issues. Herein, we represented the first implementation of the Gaussian Process Regression to predict the LMBs' energy density to attain the highest accuracy compared to existing models. Four different kernels, namely Exponential, Matern5/2, Rational Quadratic, and Squared Exponential were utilized to achieve the most accurate GPR model. A huge dataset containing 2158 LMB datapoint was gathered from the literature. It contains 41 input parameters, including alloy-related, LMB-related, and creative features. The GPR-Exponential model showed the greatest battery energy density estimate accuracy among the proposed models. The training and testing R values were 0.9976 and 0.9975, respectively, indicating the near-perfect accuracy which makes it the most precise model that has been presented so far. According to sensitivity analysis outcomes, it can be claimed that Sb mole fraction, average ionization energy, and average melting temperature with the respective relevancy factors of 0.6672, 0.6550, and 0.6507 could noticeably affect the LMBs' energy density. Furthermore, the results showed that the LMBs' energy density is more sensitive to the electrode-dependent and operational parameters rather than the electrolyte situation.
在液态金属电池(LMBs)中实现高能量密度仍然是一个巨大的挑战。由于系统中存在众多影响参数,传统方法可能无法完全捕捉LMBs的复杂性。人工智能方法可以有效地应用于处理低能量密度问题。在此,我们首次实现了高斯过程回归,以预测LMBs的能量密度,与现有模型相比达到最高精度。使用了四种不同的核函数,即指数核、Matern5/2核、有理二次核和平方指数核,以实现最精确的高斯过程回归(GPR)模型。从文献中收集了一个包含2158个LMB数据点的大型数据集。它包含41个输入参数,包括与合金相关的、与LMB相关的和创新特征。在所提出的模型中,GPR-指数模型显示出最大的电池能量密度估计精度。训练和测试的R值分别为0.9976和0.9975,表明近乎完美的精度,这使其成为迄今为止提出的最精确的模型。根据敏感性分析结果,可以声称锑摩尔分数、平均电离能和平均熔化温度,其各自的相关因子分别为0.6672、0.6550和0.6507,会显著影响LMBs的能量密度。此外,结果表明,LMBs的能量密度对电极相关和操作参数比对电解质情况更敏感。