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Geometry-based modeling of the mold filling process using neural networks.

机译:使用神经网络对模具填充过程进行基于几何的建模。

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摘要

Composite materials have gained increasing attention in the past several years due to their superior mechanical properties and improved strength-to-weight ratio over traditional materials. Resin Transfer Molding (RTM) is an attractive composite processing method due to its potential for providing consistently superior parts at a lower cost than other composite manufacturing techniques. The resin transfer molding process involves a large number of variables that are linked to the design of the component, the selection and formulation of the constituent materials, such as resin and fiber, and the design of the mold and molding process. These variables are strongly coupled to the system performance, for example mold filling time and RTM part quality.; In this study, a geometry-based methodology is developed for process modeling of RTM using neural network techniques. The proposed process modeling approach is applicable to other manufacturing processes such as injection molding and casting. In this RTM model, the preforms are assumed to be thin and flat with isotropic, orthotropic or anisotropic permeabilities. The position of the weld lines formed by the merging of multiple flow fronts originated from specified inlet ports are predicted using a neural network based back-propagation algorithm. The neural network was trained with data obtained from simulation. The network was trained over a wide range of parameters and models and was applicable for a wide range of systems. This methodology is based on decomposition of part geometry into the subdomains containing only one inlet port and bounded by the part geometry and positions of the weld lines predicted using the neural network program. In addition, the neural network technique was also applied to predict the position of the weld lines formed by the recombination of a single flow front around the inserts in each subdomain. Once the mold was decomposed into subdomains containing only one inlet port, and the perimeter of the subdomains were identified, geometry-based solutions were applied to find the location of the vents required to avoid trapping air bubbles. Finally, the time required to fill the subdomains as well as the total mold filling time was found by analytical methods.; A variety of preforms with different shapes and with or without inserts were used to verify the approach. The location of the weld lines as well as the location of the vents predicted by the model were in a good agreement with the location of the weld lines and vents that were found by the simulation. Furthermore, the model was applied to predict the flow front advancement within the part, during the mold filling process. It was found that such flow front prediction is independent of the grid structure created within the part. The method is also applicable in modeling the edge-effect and race-tracking effect in a mold containing non-uniform fiber preform. The models developed in this study can be effectively utilized in iterative optimization methods where use of numerical simulation models is cumbersome. The savings in computational times and automated model evaluation resulting from the use of neural networks and domain decomposition approach for process simulations were the key advantages of this approach.
机译:在过去的几年中,复合材料由于其优越的机械性能和比传统材料更高的强度重量比而受到越来越多的关注。树脂传递模塑(RTM)是一种有吸引力的复合材料加工方法,因为它具有以比其他复合材料制造技术更低的成本提供始终如一的优质零件的潜力。树脂传递模塑工艺涉及大量变量,这些变量与组件的设计,组成材料(例如树脂和纤维)的选择和配方以及模具和模塑工艺的设计有关。这些变量与系统性能密切相关,例如模具填充时间和RTM零件质量。在这项研究中,开发了一种基于几何的方法,用于使用神经网络技术对RTM进行过程建模。所提出的过程建模方法适用于其他制造过程,例如注塑和铸造。在此RTM模型中,假定预成型坯薄而平坦,且各向同性,正交各向异性或各向异性渗透。使用基于神经网络的反向传播算法预测由指定入口端口产生的多个流锋合并所形成的焊缝位置。用从仿真获得的数据训练神经网络。该网络接受了各种参数和模型的培训,适用于各种系统。该方法基于零件几何形状分解为仅包含一个入口端口的子域,并受零件几何形状和使用神经网络程序预测的焊缝位置限制。此外,神经网络技术还被用于预测由围绕每个子域中的插入物的单个流动前沿的重组形成的焊缝的位置。一旦将模具分解成仅包含一个入口的子区域,并确定了子区域的周长,便可以应用基于几何的解决方案来找到避免陷入气泡所需的通风口位置。最后,通过分析方法找到了填充子区域所需的时间以及模具的总填充时间。各种形状不同,带有或不带有插入件的预成型件都被用来验证该方法。焊缝的位置以及模型预测的通风口的位置与通过仿真发现的焊缝和通风口的位置非常吻合。此外,该模型还用于预测模具填充过程中零件内部的流锋进展。已经发现,这种流锋预测与零件内创建的网格结构无关。该方法还适用于在包含不均匀的纤维预型件的模具中对边缘效应和跑道效应进行建模。在这项研究中开发的模型可以有效地用于迭代优化方法中,在这些方法中,数值模拟模型的使用很麻烦。使用神经网络和域分解方法进行过程仿真可节省计算时间和自动模型评估,是该方法的主要优势。

著录项

  • 作者

    Soltani, Faezeh.;

  • 作者单位

    Stevens Institute of Technology.;

  • 授予单位 Stevens Institute of Technology.;
  • 学科 Engineering Mechanical.; Computer Science.; Engineering System Science.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 178 p.
  • 总页数 178
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;自动化技术、计算机技术;系统科学;
  • 关键词

  • 入库时间 2022-08-17 11:47:42

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