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Machine learning for quality prediction in abrasion-resistant material manufacturing process

机译:机器学习用于耐磨材料制造过程中的质量预测

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Quality monitoring and prediction plays a key role in improving product quality and achieving automated quality control in manufacturing processes such as the abrasion-resistant material manufacturing process. Traditional methods that rely on the use of first-principle models are difficult to formulate due to the increasing complexity and high dimensionality of manufacturing processes. Data-driven machine learning methods offer an efficient way to learn models for quality prediction, in which the meaningful process information can be learned directly from large amounts of measured process data at different stages. In this paper, based on data collected throughout an abrasion-resistant material manufacturing process, product quality prediction of burned balls is achieved with the use of the Support Vector Machine classification algorithm.
机译:质量监视和预测在提高产品质量和实现诸如耐磨材料制造过程之类的制造过程中实现自动化质量控制方面起着关键作用。由于制造过程的复杂性和高维性,依靠第一原理模型的传统方法难以制定。数据驱动的机器学习方法提供了一种有效的方法来学习用于质量预测的模型,其中可以直接从不同阶段的大量测量过程数据中学习有意义的过程信息。在本文中,基于在整个耐磨材料制造过程中收集的数据,使用支持向量机分类算法可以实现对燃烧球的产品质量的预测。

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