Modelling the surface roughness of steel after laser hardening by using 2D visibility network, convolutional neural networks and genetic programming

IF 1.2 Q3 ENGINEERING, MECHANICAL FME Transactions Pub Date : 2022-01-01 DOI:10.5937/fme2203393b
M. Babič, P. Wangyao, B. Ster, D. Marinković, C. Fragassa
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Abstract

The surface characterization of materials after Robot Laser Hardening (RLH) is a technically demanding procedure. RLH is commonly used to harden parts, especially when subject to wear. By changing their surface properties, this treatment can offer several benefits such as lower costs for additional machining, no use of cooling agents or chemicals, high flexibility, local hardening, minimal deformation, high accuracy, and automated and integrated process in the production process. However, the surface roughness strongly depends on the heat treatment and parameters used in the process. This article used a network theory approach (i.e., the visibility network in 2D space) to analyze the surface roughness of tool steel EN100083-1 upon RLH. Specifically, two intelligent methods were merged in this investigation. Firstly, a genetic algorithm was applied to derive a relationship between the parameters of the robot laser cell and topological surface properties. Furthermore, convolutional neural networks allowed the assessment of surface roughness based on 2D photographic images.
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利用二维可见性网络、卷积神经网络和遗传规划对激光硬化后钢材表面粗糙度进行建模
机器人激光硬化(RLH)后材料的表面表征是一个技术要求很高的过程。RLH通常用于硬化零件,特别是在易磨损的情况下。通过改变其表面特性,这种处理可以提供几个好处,例如降低额外加工的成本,不使用冷却剂或化学品,高灵活性,局部硬化,最小变形,高精度,以及生产过程中的自动化和集成过程。然而,表面粗糙度很大程度上取决于热处理和工艺中使用的参数。本文采用网络理论方法(即二维空间可见性网络)对工具钢EN100083-1在RLH上的表面粗糙度进行了分析。具体来说,两种智能方法在本次调查中被合并。首先,应用遗传算法推导出机器人激光单元参数与拓扑表面特性之间的关系;此外,卷积神经网络允许基于二维摄影图像评估表面粗糙度。
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来源期刊
FME Transactions
FME Transactions ENGINEERING, MECHANICAL-
CiteScore
3.60
自引率
31.20%
发文量
24
审稿时长
12 weeks
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