氧化铝和铬强化镍基高速氧化涂层的侵蚀预测高斯过程回归算法

Q4 Engineering
Jashanpreet Singh, Satish Kumar, Hitesh Vasudev, Ranvijay Kumar
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引用次数: 0

摘要

机器学习(ML)方法已在确定侵蚀率和材料去除率方面显示出功效。在此背景下,开发了一种新型侵蚀预测高斯过程回归算法(EPGPRA),用于预测热喷涂涂层的体积侵蚀。在本专利中,开发了一种基于 EPGPRA 的新型模型,用于预测使用高速纯氧燃料(HVOF)工艺沉积的 30Al2O3 和 20Cr2O3 增强镍基涂层的体积损失。本专利的目的是开发一个用于预测镍-30Al2O3 和镍-20Cr2O3 涂层的 GPR 模型。为了开发涂层,在 SS316L 钢基体上喷涂了粉末。为了研究 HVOF 涂层钢的耐磨性,使用了侵蚀测试仪。为了证明 GPR 模型的准确性,将生成的模型与各种先进的机器学习方法进行了对比评估。这项创新成功地开发出了用于磨损预测的新 GPR 模型。在验证集中,Matern 5/2 (M5/2) GPR 的实际值与预期值之间的差异最小。在验证集中,Matern 5/2 (M5/2) GPR 的实际值与预期值之间的差异最小,与集合提升树、支持向量机、线性回归和精细树相比也较小。就 MSE、MAE、RMSE 和 R2 而言,M5/2 GPR 模型的准确度分别为 9.8565×10-5、0.0048884、0.009928 和 0.93。根据这项专利,开发了一种基于 EPGPRA 的新型模型,这是一种用于镍基 HVOF 涂层磨损预测的更好的机器学习技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Erosion Prediction Gaussian Process Regression Algorithm for Alumina and Chromia Reinforced Nickel-Based High-Velocity Oxy-Fuel Coatings
Machine learning (ML) methodologies have demonstrated efficacy in the determination of erosion rates and material removal. In this context, a novel Erosion Prediction Gaussian Process Regression Algorithm (EPGPRA) was developed to predict the volumetric erosion in thermal spray coatings. In this patent, a novel EPGPRA based model was developed to predict the volumetric loss of 30Al2O3 and 20Cr2O3 reinforced Ni-based coatings deposited using a high-velocity oxy-fuel (HVOF) process. The objective of this patent is to develop a GPR model for the prediction of Ni-30Al2O3 and Ni-20Cr2O3 coatings. Spraying powders were applied to the SS316L steel substrate in order to develop coatings. An erosion tester was used in order to investigate the wear resistance of HVOF-coated steel. The gathered experimental dataset is put to use in the construction of a powerful GPR model. The outcomes from GPR model were then measured against the values obtained from the experiments. To demonstrate the accuracy of the GPR model, the produced model is evaluated against various cutting-edge machine learning methods. This innovation was successful in terms of developing a new GPR model for wear prediction. The discrepancy between the actual and expected values is the smallest for Matern 5/2 (M5/2) GPR in the validation set. It was also lesser as compared to Ensemble Boosted Trees, Support Vector Machine, Linear regression, and Fine Tree. In terms of MSE, MAE, RMSE, and R2 the accuracy performance of the M5/2 GPR model was determined to be 9.8565×10-5, 0.0048884, 0.009928, and 0.93 correspondingly. Ni-Chromia coating performed better than the Ni-Alumina. As per this patent, a novel EPGPRA-based model was developed, which is the better machine learning technique for wear prediction of Ni-based HVOF coatings.
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来源期刊
Recent Patents on Mechanical Engineering
Recent Patents on Mechanical Engineering Engineering-Mechanical Engineering
CiteScore
0.80
自引率
0.00%
发文量
48
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