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集成计算加速新型马氏体时效钢的设计与性能控制

Integrated Computing Accelerates Design and Performance Control of New Maraging Steels.

作者信息

Chen Shixing, Zhu Jingchuan, Liu Tingyao, Liu Yong, Fu Yudong, Shimada Toshihiro, Liu Guanqi

机构信息

School of Material Science and Engineering, Harbin Institute of Technology, Harbin 150001, China.

State Key Laboratory of Vanadium and Titanium Resources Comprehensive Utilization, Chengdu 610300, China.

出版信息

Materials (Basel). 2023 Jun 8;16(12):4273. doi: 10.3390/ma16124273.

Abstract

This paper mainly used database technology, machine learning, thermodynamic calculation, experimental verification, etc., on integrated computational materials engineering. The interaction between different alloying elements and the strengthening effect of precipitated phases were investigated mainly for martensitic ageing steels. Modelling and parameter optimization were performed by machine learning, and the highest prediction accuracy was 98.58%. We investigated the influence of composition fluctuation on performance and correlation tests to analyze the influence of elements from multiple perspectives. Furthermore, we screened out the three-component composition process parameters with composition and performance with high contrast. Thermodynamic calculations studied the effect of alloying element content on the nano-precipitation phase, Laves phase, and austenite in the material. The heat treatment process parameters of the new steel grade were also developed based on the phase diagram. A new type of martensitic ageing steel was prepared by selected vacuum arc melting. The sample with the highest overall mechanical properties had a yield strength of 1887 MPa, a tensile strength of 1907 MPa, and a hardness of 58 HRC. The sample with the highest plasticity had an elongation of 7.8%. The machine learning process for the accelerated design of new ultra-high tensile steels was found to be generalizable and reliable.

摘要

本文主要运用数据库技术、机器学习、热力学计算、实验验证等方法,开展集成计算材料工程研究。主要针对马氏体时效钢,研究了不同合金元素之间的相互作用以及析出相的强化效果。通过机器学习进行建模和参数优化,最高预测准确率达98.58%。从多个角度研究了成分波动对性能的影响以及相关性测试,以分析元素的影响。此外,筛选出了成分与性能对比度高的三元成分工艺参数。热力学计算研究了合金元素含量对材料中纳米析出相、拉夫斯相和奥氏体的影响。还基于相图制定了新钢种的热处理工艺参数。通过选择真空电弧熔炼制备了一种新型马氏体时效钢。综合力学性能最佳的试样屈服强度为1887MPa,抗拉强度为1907MPa,硬度为58HRC。塑性最佳的试样伸长率为7.8%。发现用于新型超高强度钢加速设计的机器学习过程具有通用性和可靠性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4924/10303356/2d996f0dfb0b/materials-16-04273-g001.jpg

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