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High-accuracy reliability evaluation for the WC–Co-based cemented carbides assisted by machine learning

机译:基于机器学习的WC-Co基硬质合金的高精度可靠性评估

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? 2022 Elsevier Ltd and Techna Group S.r.l.Materials reliability analysis is one of the most important substances in industrial manufacturing and practical application. Weibull statistics is a common-used approach to evaluate reliability, especially for brittle materials. However, such a process is limited by the insufficient number of samples and complex analysis steps. Herein, a machine learning-assisted strategy to analyze the reliability of the materials was proposed. The WC–Co-based cemented carbides were taken as the target materials. The machine learning models coupled feature engineering methods with advanced machine learning algorithms. Through an evaluation by designed experiments, the artificial neural network algorithm is determined to be the best machine learning algorithm to accurately capture the variation of property data to identify their distribution and automatically predict the Weibull modulus for reliability evaluation. This study provided a novel approach to evaluate the reliability accurately and shows the application potential to design the process parameters of other materials.
机译:?2022 Elsevier Ltd 和 Techna Group S.r.l.材料可靠性分析是工业制造和实际应用中最重要的物质之一。Weibull 统计是评估可靠性的常用方法,尤其是对于脆性材料。然而,这样的过程受到样品数量不足和分析步骤复杂的限制。在此,提出了一种机器学习辅助的策略来分析材料的可靠性。以WC-Co基硬质合金为靶材。机器学习模型将特征工程方法与高级机器学习算法相结合。通过设计实验的评估,确定人工神经网络算法是准确捕捉属性数据变化以识别其分布并自动预测Weibull模量进行可靠性评估的最佳机器学习算法。该研究为准确评估可靠性提供了一种新的方法,并展示了设计其他材料工艺参数的应用潜力。

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