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A generalised fuzzy least-squares regression approach to modelling relationships in QFD

机译:QFD中关系建模的广义模糊最小二乘回归方法

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摘要

In quality function deployment (QFD), information regarding relationships between customer requirements and engineering specifications, and among various engineering specifications, is commonly both qualitative and quantitative. Therefore, modelling the relationships in QFD always involves both fuzziness and randomness. However, previous research only addressed fuzziness and randomness independently of one another. To take both the fuzziness and randomness into account while modelling the relationships in QFD, fuzzy least-squares regression (FLSR) could be considered. However, the existing FLSR is only limited to developing models based on fuzzy type observed data and modelling relationships in QFD often involves both crisp type and fuzzy type observed data. In this article, a generalised FLSR approach to modelling relationships in QFD is described that can be used to develop models of the relationships based on fuzzy observations and/or crisp observations. A case study of a packing machine design is used in this article to illustrate the proposed approach.
机译:在质量功能部署(QFD)中,有关客户需求和工程规格之间以及各种工程规格之间的关系的信息通常是定性的和定量的。因此,在QFD中对关系建模总是涉及模糊性和随机性。但是,先前的研究仅相互独立地解决了模糊性和随机性问题。为了在QFD中建立关系建模时同时考虑到模糊性和随机性,可以考虑使用模糊最小二乘回归(FLSR)。但是,现有的FLSR仅限于基于模糊类型的观测数据来开发模型,并且QFD中的建模关系通常同时涉及清晰类型和模糊类型的观测数据。在本文中,描述了一种用于在QFD中建模关系的通用FLSR方法,该方法可用于基于模糊观测和/或明晰观测来开发关系模型。本文使用包装机设计的案例研究来说明所提出的方法。

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