Analysis of the possibility of using exploration and learning algorithms in the production of castings

IF 4.4 3区 工程技术 Q1 ENGINEERING, CIVIL
Adam Bitka, Mateusz Witkowski, Krzysztof Jaśkowiec, Marcin Małysza, Łukasz Marcjan, Dorota Wilk-Kołodziejczyk
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引用次数: 0

Abstract

The research presented in the article indicates the process of building models based on machine learning algorithms, linear regression, decision trees, ensemble learning, random forest, ensemble averaging, Boosting, stacking, and support vector regression (SVR) algorithms. The basis for building these models are experimental data collected during research conducted at the Łukasiewicz Research Network-Krakow Institute of Technology. An analysis of the initial state and the analysis of the state of correlation in the set were performed, which facilitated the development of models. To increase the amount of data, augmentation was performed using the Bootstrapping. For selected results, castings were made and tested in real conditions. The research results indicate the possibility of identifying the most appropriate input parameters for specific production processes of austempered ductile iron (ADI), the possibility of predicting the expected mechanical parameters based on the indicated parameters of the production process, chemical composition, specific parameters of the heat treatment process, and the thickness of the target product. A set of such models constitutes the basis of the system, enabling the end user to estimate the final parameters of the casting planned to be produced.

分析在铸件生产中使用探索和学习算法的可能性
文章中介绍的研究表明了基于机器学习算法、线性回归、决策树、集合学习、随机森林、集合平均、提升、堆叠和支持向量回归 (SVR) 算法建立模型的过程。建立这些模型的基础是在Łukasiewicz研究网络-克拉科夫技术研究所开展研究期间收集的实验数据。我们对初始状态进行了分析,并对数据集中的相关状态进行了分析,这为模型的开发提供了便利。为了增加数据量,使用 Bootstrapping 方法进行了扩充。针对选定的结果,制作了铸件并在实际条件下进行了测试。研究结果表明,有可能为奥氏体回火球墨铸铁(ADI)的特定生产工艺确定最合适的输入参数,有可能根据生产工艺的指定参数、化学成分、热处理工艺的特定参数和目标产品的厚度预测预期的机械参数。一套此类模型构成了系统的基础,使最终用户能够估算计划生产的铸件的最终参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Archives of Civil and Mechanical Engineering
Archives of Civil and Mechanical Engineering 工程技术-材料科学:综合
CiteScore
6.80
自引率
9.10%
发文量
201
审稿时长
4 months
期刊介绍: Archives of Civil and Mechanical Engineering (ACME) publishes both theoretical and experimental original research articles which explore or exploit new ideas and techniques in three main areas: structural engineering, mechanics of materials and materials science. The aim of the journal is to advance science related to structural engineering focusing on structures, machines and mechanical systems. The journal also promotes advancement in the area of mechanics of materials, by publishing most recent findings in elasticity, plasticity, rheology, fatigue and fracture mechanics. The third area the journal is concentrating on is materials science, with emphasis on metals, composites, etc., their structures and properties as well as methods of evaluation. In addition to research papers, the Editorial Board welcomes state-of-the-art reviews on specialized topics. All such articles have to be sent to the Editor-in-Chief before submission for pre-submission review process. Only articles approved by the Editor-in-Chief in pre-submission process can be submitted to the journal for further processing. Approval in pre-submission stage doesn''t guarantee acceptance for publication as all papers are subject to a regular referee procedure.
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