利用机器学习方法对钢的淬透性图表进行建模。

M. Gafarov, K. Okishev, K. P. Pavlova, E. A. Gafarova
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引用次数: 0

摘要

低碳钢和中碳钢钢管的主要生产阶段之一是热处理。在硬化过程中,金属结构会发生变化,因此机械性能也会发生变化。通过比较硬度、强度、塑性等各种指标,可以判断热处理制度的选择是否成功。因此,必须预先设定最佳条件,以获得具有必要机械性能的金属。可预测机械性能值的标准近似值通常不适合在不同生产条件下使用,因为在大多数情况下,这些近似值要么不准确,要么与特定生产单元相关,因此不适合在其他(不同)条件下使用。这项工作的目的是利用现代机器学习方法构建钢材淬透性图表。研究选择的是综合实验数据,其中包括过冷奥氏体分解图、表格值以及从各种来源获得的其他类型数据。本文详细介绍了初步数据处理、模型构建和验证阶段。其中特别强调了建模初始数据的处理过程以及模型基本特征与实验特征的比较。在一个综合体中对具有实际物理前提条件的迹象的重要性进行了分析。此外,还将仿真结果与实际的校准误差图进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of diagrams of hardenability of steels with using machine learning methods.
One of the production’s main stages of pipes from low-carbon and medium-carbon steel grades is heat treatment. During the hardening process, the structure of the metal changes and, as a result, the mechanical properties change. Comparing various indicators, for example, hardness, strength, plasticity, etc., it is possible to judge how successful the heat treatment regimes have been selected. Therefore, it is important to pre-establish optimal conditions in order to obtain a metal with the necessary mechanical properties. Standard approximations that allow predicting the values of mechanical properties are usually not adaptive for use in different production conditions due to the fact that in most cases they are either inaccurate or tied to a specific production unit and, as a result, are not suitable for use in other (different) conditions. The purpose of this work is to construct steel hardenability diagrams using modern machine learning methods. The choice for the study is a complex of aggregated experimental data, which includes diagrams of the decomposition of super cooled austenite, tabular values and other types of data obtained from various sources. This article describes in detail the stage of preliminary data processing, model construction and validation. Special emphasis is placed on the process of processing the initial data for modeling and comparing the fundamental features of the model with the experimental ones. The analysis of the significance of signs with real physical prerequisites is carried out in a complex. In addition, the simulation results are compared with real cal inability diagrams
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