用于工艺建模和预测的综合复合材料模具填充模式数据集

B. Chai, Jinze Wang, Thanh Kim Mai Dang, Mostafa Nikzad, B. Eisenbart, Bronwyn Fox
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引用次数: 0

摘要

树脂传递模塑工艺因其卓越的生产率和产品质量而受到学术界和工业界的高度关注。特别是,其模具填充阶段的进展对于确保完全加固饱和至关重要。当代的工艺模拟方法主要侧重于基于物理的方法来模拟复杂的树脂渗透现象,但这种方法的计算成本较高。因此,应用机器学习和数据驱动建模方法来最大限度地降低工艺模拟的成本是非常有意义的。在本研究中,针对一个复合仪表板案例研究,介绍了由树脂传递模塑过程中不同注塑位置的模具填充模式组成的综合数据集。研究概述了问题描述和数据集的重要性。该综合数据集的发布旨在降低复合材料成型应用中机器学习方法研究的门槛,同时为评估未来研究工作中新开发的算法和模型提供标准化基线。
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Comprehensive Composite Mould Filling Pattern Dataset for Process Modelling and Prediction
The Resin Transfer Moulding process receives great attention from both academia and industry, owing to its superior manufacturing rate and product quality. Particularly, the progression of its mould filling stage is crucial to ensure a complete reinforcement saturation. Contemporary process simulation methods focus primarily on physics-based approaches to model the complex resin permeation phenomenon, which are computationally expensive to solve. Thus, the application of machine learning and data-driven modelling approaches is of great interest to minimise the cost of process simulation. In this study, a comprehensive dataset consisting of mould filling patterns of the Resin Transfer Moulding process at different injection locations for a composite dashboard panel case study is presented. The problem description and significance of the dataset are outlined. The distribution of this comprehensive dataset aims to lower the barriers to entry for researching machine learning approaches in composite moulding applications, while concurrently providing a standardised baseline for evaluating newly developed algorithms and models in future research works.
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