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Application of Machine Learning to Solid Particle Erosion of APS-TBC and EB-PVD TBC at Elevated Temperatures

机译:机器学习在高温下APS-TBC和EB-PVD TBC固体粒子侵蚀的应用

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Machine learning (ML) and deep learning (DL) for big data (BD) management are currently viable approaches that can significantly help in high-temperature materials design and development. ML-DL can accumulate knowledge by learning from existing data generated through multi-physics modelling (MPM) and experimental tests (ETs). DL mainly involves analyzing nonlinear correlations and high-dimensional datasets implemented through specifically designed numerical algorithms. DL also makes it possible to learn from new data and modify predictive models over time, identifying anomalies, signatures, and trends in machine performance, develop an understanding of patterns of behaviour, and estimate efficiencies in a machine. Machine learning was implemented to investigate the solid particle erosion of both APS (air plasma spray) and EB-PVD (electron beam physical vapour deposition) TBCs of hot section components. Several ML models and algorithms were used such as neural networks (NNs), gradient boosting regression (GBR), decision tree regression (DTR), and random forest regression (RFR). It was found that the test data are strongly associated with five key factors as identifiers. Following test data collection, the dataset is subjected to sorting, filtering, extracting, and exploratory analysis. The training and testing, and prediction results are analysed. The results suggest that neural networks using the BR model and GBR have better prediction capability.
机译:大数据(BD)管理的机器学习(ML)和深度学习(DL)是目前可行的方法,可显着帮助高温材料的设计和开发。 ML-DL可以通过从多物理建模(MPM)和实验测试(ETS)产生的现有数据中学习来累积知识。 DL主要涉及通过专门设计的数字算法来分析非线性相关性和高维数据集。 DL还可以从新数据中学习并随着时间的推移来修改预测模型,识别机器性能的异常,签名和趋势,了解机器中的行为模式和估算效率。实施机器学习以研究热部分组分的APS(空气等离子体喷雾)和EB-PVD(电子束物理气相沉积)TBC的固体粒子侵蚀。使用多种模型和算法,例如神经网络(NNS),渐变升压回归(GBR),决策树回归(DTR)和随机林回归(RFR)。发现测试数据与识别器的五个关键因素强烈相关。在测试数据收集之后,将数据集进行排序,过滤,提取和探索性分析。分析了培训和测试和预测结果。结果表明,使用BR模型和GBR的神经网络具有更好的预测能力。

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