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Modeling and characterization of high carbon nanobainitic steels.

机译:高碳纳米贝氏体钢的建模和表征。

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摘要

Analytical models have been developed for the transformation kinetics, microstructure analysis and the mechanical properties in bainitic steels. Three models are proposed for the bainitic transformation based on the chemical composition and the heat treatment conditions of the steel as inputs: (1) thermodynamic model on kinetics of bainite transformation, (2) improved thermo-statistical model that eliminates the material dependent empirical constants and (3) an artificial neural network model to predict the volume fraction of bainite. Neural networks have also been used to model the hardness of high carbon steels, subjected to isothermal heat treatment. Collectively, for a steel of given composition and subjected to a particular isothermal heat treatment, the models can be used to determine the volume fraction of bainitic phase and the material hardness values.;The models have been extensively validated with the experimental data from literature as well as from three new high carbon experimental steels with various alloying elements that were used in the present work. For these experimental steels, data on the volume fraction of phases (via X-ray diffraction), yield strength (via compression tests) and hardness were obtained for various combinations of isothermal heat treatment times and temperatures. The heat treated steels were subjected to compression and hardness tests and the data have been used to develop a new correlation between the yield stress and the hardness. It was observed that while all three experimental steels exhibit a predominantly nanostructured bainite microstructure, the presence of Co and Al in one of the steels accelerated and maximized the nano-bainitic transformation within a reasonably short isothermal transformation time. Excellent yield strength (>1.7 GPa) and good deformability were observed in this steel after isothermal heat treatment at a low temperature of 250°C for a relatively short duration of 24 hours.
机译:已经开发出用于贝氏体钢的转变动力学,微观结构分析和力学性能的分析模型。根据钢的化学成分和热处理条件,提出了三种用于贝氏体转变的模型:(1)贝氏体转变动力学的热力学模型,(2)消除了材料相关经验常数的改进的热统计模型。 (3)人工神经网络模型来预测贝氏体的体积分数。神经网络也已被用来模拟经过等温热处理的高碳钢的硬度。总的来说,对于给定成分并经过特定等温热处理的钢,该模型可用于确定贝氏体相的体积分数和材料硬度值。;该模型已被文献的实验数据广泛验证为:以及目前工作中使用的三种具有不同合金元素的新型高碳实验钢。对于这些实验钢,获得了等温热处理时间和温度的各种组合的相体积分数(通过X射线衍射),屈服强度(通过压缩测试)和硬度的数据。对热处理过的钢进行压缩和硬度测试,并将数据用于在屈服应力和硬度之间建立新的关联。观察到,尽管所有三种实验钢均表现出主要为纳米结构的贝氏体显微组织,但其中一种钢中Co和Al的存在在相当短的等温转变时间内加速并最大化了纳米贝氏体转变。在250°C的低温下进行24小时的较短时间的等温热处理后,该钢具有出色的屈服强度(> 1.7 GPa)和良好的变形性。

著录项

  • 作者

    Sidhu, Gaganpreet.;

  • 作者单位

    Ryerson University (Canada).;

  • 授予单位 Ryerson University (Canada).;
  • 学科 Engineering Mechanical.;Engineering General.;Nanotechnology.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 214 p.
  • 总页数 214
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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