Kusne Aaron Gilad, Gao Tieren, Mehta Apurva, Ke Liqin, Nguyen Manh Cuong, Ho Kai-Ming, Antropov Vladimir, Wang Cai-Zhuang, Kramer Matthew J, Long Christian, Takeuchi Ichiro
1] Department of Materials Science and Engineering, University of Maryland, College Park, MD 20742, USA [2] National Institute of Standards and Technology, Gaithersburg, MD 20899, USA [3].
1] Department of Materials Science and Engineering, University of Maryland, College Park, MD 20742, USA [2].
Sci Rep. 2014 Sep 15;4:6367. doi: 10.1038/srep06367.
Advanced materials characterization techniques with ever-growing data acquisition speed and storage capabilities represent a challenge in modern materials science, and new procedures to quickly assess and analyze the data are needed. Machine learning approaches are effective in reducing the complexity of data and rapidly homing in on the underlying trend in multi-dimensional data. Here, we show that by employing an algorithm called the mean shift theory to a large amount of diffraction data in high-throughput experimentation, one can streamline the process of delineating the structural evolution across compositional variations mapped on combinatorial libraries with minimal computational cost. Data collected at a synchrotron beamline are analyzed on the fly, and by integrating experimental data with the inorganic crystal structure database (ICSD), we can substantially enhance the accuracy in classifying the structural phases across ternary phase spaces. We have used this approach to identify a novel magnetic phase with enhanced magnetic anisotropy which is a candidate for rare-earth free permanent magnet.
随着数据采集速度和存储能力不断提高,先进的材料表征技术给现代材料科学带来了挑战,因此需要新的程序来快速评估和分析数据。机器学习方法在降低数据复杂性和快速锁定多维数据潜在趋势方面很有效。在此,我们表明,通过在高通量实验中将一种名为均值漂移理论的算法应用于大量衍射数据,可以以最小的计算成本简化描绘组合库中成分变化所对应的结构演变过程。在同步加速器光束线采集的数据会即时进行分析,并且通过将实验数据与无机晶体结构数据库(ICSD)相结合,我们可以大幅提高在三元相空间中对结构相进行分类的准确性。我们已使用这种方法识别出一种具有增强磁各向异性的新型磁相,它是无稀土永磁体的候选材料。