Improved Genetic Algorithm for 2D Resin Flow Model Optimization in VARTM Process

IF 1.9 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY Modelling and Simulation in Materials Science and Engineering Pub Date : 2023-10-19 DOI:10.1088/1361-651x/ad01cc
Meijun Liu, Liwei Cheng, Jiazhong Xu
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Abstract

Abstract In this study, a combination of block-centered grid modeling and an enhanced genetic algorithm (GA) is introduced with the aim of optimizing the random permeability field within the Vacuum Assisted Resin Transfer Molding (VARTM) infusion model to enhance the accuracy of predicted resin flow distribution. Within the established 2D-VARTM model, random permeability values in the x and y directions are assigned to each grid. The model is then solved using the central difference method in conjunction with the upstream weighting method to predict the resin flow distribution. Subsequently, an improved GA based on heuristic mutation strategies was designed and validated. This algorithm employs the discrepancy between model predictions and actual sampling results as its fitness function and integrates heuristic strategies for iterative optimization. Simulation results revealed a significant improvement in the predictive accuracy of the model, with a jump from an initial 87.49%–97.19%. In practical applications, the predictive accuracy of the model reached 95.25%. This research offers an effective optimization approach for VARTM models and underscores the potential applicability of the enhanced GA in related fields.
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基于改进遗传算法的VARTM工艺二维树脂流模型优化
摘要本研究将以块为中心的网格建模与增强型遗传算法(GA)相结合,对真空辅助树脂传递成型(VARTM)注射模型中的随机导磁场进行优化,以提高预测树脂流动分布的准确性。在建立的2D-VARTM模型中,将x和y方向的随机渗透率值分配给每个网格。然后采用中心差分法结合上游加权法对模型进行求解,预测树脂流动分布。随后,设计并验证了一种基于启发式突变策略的改进遗传算法。该算法以模型预测与实际抽样结果的差异作为适应度函数,结合启发式策略进行迭代优化。仿真结果表明,该模型的预测精度有了显著提高,从初始的87.49%提高到97.19%。在实际应用中,该模型的预测准确率达到95.25%。该研究为VARTM模型提供了一种有效的优化方法,并强调了增强遗传算法在相关领域的潜在适用性。
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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
96
审稿时长
1.7 months
期刊介绍: Serving the multidisciplinary materials community, the journal aims to publish new research work that advances the understanding and prediction of material behaviour at scales from atomistic to macroscopic through modelling and simulation. Subject coverage: Modelling and/or simulation across materials science that emphasizes fundamental materials issues advancing the understanding and prediction of material behaviour. Interdisciplinary research that tackles challenging and complex materials problems where the governing phenomena may span different scales of materials behaviour, with an emphasis on the development of quantitative approaches to explain and predict experimental observations. Material processing that advances the fundamental materials science and engineering underpinning the connection between processing and properties. Covering all classes of materials, and mechanical, microstructural, electronic, chemical, biological, and optical properties.
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