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首页> 外文期刊>IJIDeM: International Journal on Interactive Design and Manufacturing >Surface roughness evaluation in hardened materials by pattern recognition using network theory
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Surface roughness evaluation in hardened materials by pattern recognition using network theory

机译:采用网络理论的模式识别淬火材料的表面粗糙度评价

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摘要

Performance characteristics of the products made of metallic materials such as wear resistance, fatigue strength, stability of gaps and strain between the connections, corrosion resistance, etc., depend to a large extent by the quality of their surfaces roughness. An interactive control of the manufacturing parameters which influence the surface roughness is particularly crucial in the construction of many mechanical components. The present paper devises a new method for statistical pattern recognition on samples produced by the process of robot laser hardening using network theory and describes its application to the determination of surface roughness. The method is based on the analysis of SEM images. Indeed the data characterizing the state of surface irregularities detected as extremely small segments contain indicators of surface roughness. Different methods of machine learning techniques designed to predict the surface roughness of robot laser hardened material are discussed.
机译:产品采用金属材料制成的产品特点,如耐磨性,疲劳强度,间隙稳定性,在很大程度上取决于其表面粗糙度的很大程度上。 影响表面粗糙度的制造参数的交互式控制在许多机械部件的构造中尤其至关重要。 本文规定了一种新方法,用于使用网络理论的机器人激光硬化过程产生的样品上的统计模式识别,并描述了其应用于表面粗糙度的确定。 该方法基于SEM图像的分析。 实际上,表征被检测为极小段的表面不规则状态的数据包含表面粗糙度的指示。 讨论了设计用于预测机器人激光硬化材料的表面粗糙度的机器学习技术的不同方法。

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