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首页> 外文期刊>Physica, C. Superconductivity and its applications >Predicting doped MgB2 superconductor critical temperature from lattice parameters using Gaussian process regression
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Predicting doped MgB2 superconductor critical temperature from lattice parameters using Gaussian process regression

机译:通过高斯过程回归预测掺杂MGB2超导体临界温度

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摘要

Magnesium boride, MgB2, has attracted much attention since the discovery of its superconductivity in 2001. The absence of weak-links in grain boundaries, less prominent anisotropy, rather simple powder-in-tube wire fabrication techniques, and much lower prices of raw materials, have made this new superconducting material a promising candidate for high-field magnet applications. Furthermore, it has been demonstrated that various methods, such as chemical doping, irradiations, and different processing parameters, can lead to lattice disorders in the materials and thus alter physical properties. Empirical results have shown that changes in lattice parameters through various methods correlate with changes in T-c but correlations are merely general tendencies and obviously not universal. In this work, the Gaussian process regression model is developed to predict critical temperature based on lattice parameters among disordered MgB2 in various materials systems. This modeling approach demonstrates a high degree of accuracy and stability, contributing to efficient and low-cost predictions of T-c and understandings of disorders and superconductivity in MgB2 superconductors.
机译:MGB2雄镁MGB2引起了很多关注,自2001年的超导性。谷物边界的缺失,较小的各向异性,相当简单的粉末管丝制造技术,以及原材料的价格远低得多,使这款新的超导材料成为高场磁体应用的有希望的候选者。此外,已经证明了各种方法,例如化学掺杂,照射和不同的加工参数,可以导致材料中的晶格障碍,从而改变物理性质。经验结果表明,通过各种方法的晶格参数的变化与T-C的变化相关,但相关性仅是普遍趋势,并且显然不普遍。在这项工作中,开发了高斯过程回归模型以预测各种材料系统中无序MGB2中的晶格参数的临界温度。这种建模方法展示了高度的精度和稳定性,有助于高效和低成本的T-C和MGB2超导体中的障碍和超导性的理解。

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