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首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >Using Predictive Modeling and Classification Methods for Single and Overlapping Bead Laser Cladding to Understand Bead Geometry to Process Parameter Relationships
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Using Predictive Modeling and Classification Methods for Single and Overlapping Bead Laser Cladding to Understand Bead Geometry to Process Parameter Relationships

机译:使用预测建模和分类方法对单个和重叠的珠子激光熔覆进行了解,以了解珠子的几何形状与工艺参数之间的关系

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摘要

Developing a bead shape to process parameter model is challenging due to the multi-parameter, nonlinear, and dynamic nature of the laser cladding (LC) environment. This introduces unique predictive modeling challenges for both single bead and overlapping bead configurations. It is essential to develop predictive models for both as the boundary conditions for overlapping beads are different from a single bead configuration. A single bead model provides insight with respect to the process characteristics. An overlapping model is relevant for process planning and travel path generation for surface cladding operations. Complementing the modeling challenges is the development of a framework and methodologies to minimize experimental data collection while maximizing the goodness of fit for the predictive models for additional experimentation and modeling. To facilitate this, it is important to understand the key process parameters, the predictive model methodologies, and data structures. Two modeling methods are employed to develop predictive models: analysis of variance (ANOVA), and a generalized reduced gradient (GRG) approach. To assist with process parameter solutions and to provide an initial value for nonlinear model seeding, data clustering is performed to identify characteristic bead shape families. This research illustrates good predictive models can be generated using multiple approaches.
机译:由于激光熔覆(LC)环境具有多参数,非线性和动态特性,因此开发出用于加工参数模型的焊珠形状具有挑战性。这给单个焊珠和重叠焊珠配置带来了独特的预测建模挑战。由于重叠的珠子的边界条件不同于单个珠子的构造,因此必须为两者都建立预测模型。单个焊珠模型可提供有关过程特征的洞察力。重叠模型与表面熔覆操作的工艺计划和行进路径生成有关。与建模挑战相辅相成的是,开发了一种框架和方法,以最大程度地减少实验数据收集,同时最大程度地提高适用于其他实验和建模的预测模型的拟合优度。为了促进这一点,重要的是要了解关键过程参数,预测模型方法和数据结构。两种建模方法可用于开发预测模型:方差分析(ANOVA)和广义缩减梯度(GRG)方法。为了协助过程参数解决方案并为非线性模型播种提供初始值,执行数据聚类以识别特征性的磁珠形状族。这项研究表明,可以使用多种方法来生成良好的预测模型。

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