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Data analytics for time constraint adherence prediction in a semiconductor manufacturing use-case

机译:半导体制造用例中的时间约束粘附预测数据分析

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Semiconductor manufacturing represents a challenging industrial environments, where products require more than several hundred operations, each representing the technical state-of-the-art. Products vary greatly in volume, design and required production processes and, additionally, product portfolios and technologies change rapidly. Thus, technologically restricted rapid product development, stringent quality related clean room requirements and high precision manufacturing equipment application enforce operational excellence, in particular time constraints adherence. Product specific time constraints between two or more successive process operations are an industry-specific challenge, as violations lead to additional scrapping or reworking costs. Time constraint adherence is linked to dispatching and currently manually assessed. To overcome this error-prone manual task, this article presents a data-based decision process to predict time constraint adherence in semiconductor manufacturing. Real-world historical data is analyzed and appropriate statistical models and scoring functions derived. Compared to other relevant literature regarding time constraint violations, the central contribution of this article is the design, generation and validation of a model for product quality-related time constraint adherence based on a real-world semiconductor plant.
机译:半导体制造代表了一个具有挑战性的工业环境,其中产品需要超过数百个操作,每个操作都代表了技术最先进的。产品在体积,设计和所需的生产流程中有很大差异,以及产品组合和技术迅速变化。因此,技术限制了快速的产品开发,严格的质量相关洁净室要求和高精度制造设备应用程序实施卓越的运营卓越,特别是时间限制依从。在两个或多个连续的过程操作之间的产品特定时间限制是一个特定于行业的挑战,因为违规导致额外的额外报废或重新加工成本。时间约束遵守与调度和目前手动评估相关联。为了克服这种错误的手动任务,本文介绍了基于数据的决策过程,以预测半导体制造中的时间约束依从性。分析了现实世界的历史数据和适当的统计模型和得分函数。与其他有关限制违规的相关文献相比,本文的核心贡献是基于现实世界半导体厂的产品质量相关时间限制依据模型的设计,生成和验证。

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