基于元学习和集成学习的高熵合金相预测算法

A PHASE PREDICTION ALGORITHM OF HIGH ENTROPY ALLOYS BASED ON META-LEARNING AND ENSEMBLE LEARNING

  • 摘要: 准确预测高熵合金的相,有利于减少材料设计的工作量和研发周期,并提高材料的性能,因此提出一种基于元学习和集成学习的高熵合金相预测算法。该算法由关系映射模型和优化模型两个部分组成。前者建立了结合材料知识的元特征与选择性集成学习性能的映射关系,来推荐合适的集成算法;后者采用基于单体精度约束的人工蜂群算法来提高集成学习的准确率。实验结果表明,该算法的预测性能优于其他选择性集成学习算法。

     

    Abstract: Accurate phase prediction of high entropy alloys is beneficial to reduce the workload of material design and development cycle, and improve the performance of materials. Therefore, a phase prediction algorithm of high entropy alloys based on meta-learning and ensemble learning is proposed. The algorithm consisted of relation mapping model and optimization model. Among them, the former established a mapping relationship the meta-features combined with material knowledge and the performance of the selective ensemble learning to recommend an appropriate ensemble algorithm. The latter adopted artificial bee colony algorithm based on single accuracy constraint to improve the accuracy of ensemble learning. The experimental results show that the prediction performance of this algorithm is better than that of other selective ensemble learning algorithms.

     

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