Bubble Size Determination in a Half-Scale Curved Water Model Mold for Various Casting Conditions Using Imaging and Machine Learning

S. Dinda, Donghui Li, Fernando Guerra, Chad Cathcart, M. Barati
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Abstract

Parametric studies were performed in a 1:2 scaled, curved water model using shadowgraphy to estimate bubble sizes for different casting parameters such as gas flow rate, liquid flow rate and mold width. Bubble diameter calculations were based on a machine learning algorithm using ImageJ software. Bubble diameters were correlated with input parameters using a deep-learning algorithm. The model performance was determined based on the coefficient of determination (R 2 ). The model showed significant promise with bootstrapping aggregation, validated with five-fold cross-validation and improved accuracy.
利用成像和机器学习确定各种铸造条件下半刻度曲面水模中的气泡大小
在 1:2 比例的曲面水模型中进行了参数研究,使用阴影图估算不同铸造参数(如气体流速、液体流速和模具宽度)下的气泡大小。气泡直径的计算基于使用 ImageJ 软件的机器学习算法。使用深度学习算法将气泡直径与输入参数相关联。根据判定系数 (R 2 ) 确定模型性能。经五倍交叉验证后,该模型在引导聚合方面显示出了巨大的潜力,并提高了准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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