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Extreme learning machine and support vector regression wear loss predictions for magnesium alloys coated using various spray coating methods

机译:极端学习机和支持镁合金使用各种喷涂方法的镁合金的回归磨损预测

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摘要

Magnesium alloys are popular in the aerospace and automotive industries due to their light weights and high specific strengths. The major disadvantages of magnesium alloys are their weak wear and corrosion resistances. Surface coating is one of the most efficient methods of making material surfaces resistant to wear. Experimental determination of wear loss is expensive and time-consuming. These disadvantages can be eliminated by using machine learning algorithms to predict wear loss. This study used experimentally obtained wear loss data for AZ91D magnesium alloy samples coated via two different spray coating methods (plasma and high velocity oxy-fuel spraying) using various parameters. Support vector regression (SVR) and extreme learning machine (ELM) methods were used to predict wear loss quantities. In models tested using 10-k cross-validation, R~2 was calculated as 0.9601 and 0.9901 when the SVR and ELM methods were applied, respectively. The ELM method was more successful than SVR. Thus, the ELM method has excellent potential to support the production of wear-resistant parts for various applications via spray coating.
机译:由于其轻度和高比强度,镁合金在航空航天和汽车工业中受欢迎。镁合金的主要缺点是它们弱磨损和耐腐蚀性。表面涂层是制造耐磨材料表面的最有效的方法之一。耐磨损失的实验测定昂贵且耗时。可以通过使用机器学习算法来预测磨损损失来消除这些缺点。本研究使用了通过各种参数通过两种不同的喷涂方法(等离子体和高速氧气喷涂)涂覆的AZ91D镁合金样品的实验获得的磨损数据。支持向量回归(SVR)和极端学习机(ELM)方法用于预测磨损量。在使用10-K交叉验证的模型中,当施加SVR和ELM方法时,R〜2分别计算为0.9601和0.9901。 ELM方法比SVR更成功。因此,ELM方法通过喷涂具有优异的潜力,可以通过喷涂来支持各种应用的耐磨部件的产生。

著录项

  • 来源
    《Journal of Applied Physics》 |2020年第18期|185103.1-185103.9|共9页
  • 作者单位

    Department of Automotive Engineering Firat University 23119 Elazig Turkey;

    Department of Software Engineering Firat University 23119 Elazig Turkey;

    Department of Software Engineering Firat University 23119 Elazig Turkey;

    Department of Mechanical Engineering Firat University 23119 Elazig Turkey;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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