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举一反三在航天产品质量管理中的应用

Quality and Reliability(2019)

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Abstract
研究类似产品前期发生的典型质量问题,对提高在研产品设计能力和制造水平具有重要意义.针对目前航天产品研制过程中因举一反三不到位导致质量问题频发的现状,提出了建立质量问题举一反三制度的原则和方法,并对其应用方法和有益效果进行了介绍.通过研究已发生的航天产品质量问题典型案例,对导致质量问题发生的原因进行深入的数据统计、分析,并归纳总结设计、生产过程控制、技术状态控制等方面的因素,将这些因素作为型号产品举一反三的输入,在航天产品质量管理中加以有效应用,可以有效提高举一反三工作的实效性和产品质量控制水平,降低型号产品重复性质量问题发生率.
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  • Pretraining has recently greatly promoted the development of natural language processing (NLP)
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