Integrated fuzzy linguistic preference relations approach and fuzzy Quality Function Deployment to the sustainable design of hybrid electric vehicles

Xinhui Kang, Qi Zhu
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引用次数: 3

Abstract

Through the prevalence of sustainable ideas, automobiles are increasingly pursuing environmental protection strategies for green design, the non-traditional hybrid electric vehicles (HEV) are promoted continuously. If the company can add emotional value to the modeling of HEV, it will be helpful to its sustainable design and sales promotion of it. Therefore, an innovative model combining fuzzy linguistic preference relations (FLPR) and fuzzy quality function deployment (QFD) is proposed here to explore the connection between customer sentiment and the front view of the HEV. Compared with the previous methods, FLPR has the advantages of fewer comparison times and high consistency. First, find out the customer’s emotional expectations and attribute weight ranking for HEV through FLPR, and import customer requirements (CRs) on the left side of fuzzy QFD. Second, the grey prediction model was used to screen out the key engineering features (ECs) and the initial weight of HEV. Finally, based on human subjective imprecise natural semantics, fuzzy QFD established a matrix association between CRs and key ECs, then finally obtained the optimal combination of ECs' final weight and morphological design. The results can assist designers to shorten product development cycles and improve customers' emotional satisfaction, which provides a theoretical reference for the sustainable design and marketing of environmentally friendly cars in the future.
基于模糊语言偏好关系和模糊质量功能部署的混合动力汽车可持续设计
随着可持续理念的盛行,汽车越来越追求绿色设计的环保策略,非传统混合动力汽车(HEV)不断推广。如果公司能够在HEV的造型中加入情感价值,将有助于其可持续设计和销售推广。因此,本文提出了一种结合模糊语言偏好关系(FLPR)和模糊质量功能部署(QFD)的创新模型,以探索消费者情绪与混合动力汽车前视图之间的联系。与以往的方法相比,FLPR具有比对次数少、一致性高的优点。首先,通过FLPR找出客户对HEV的情感期望和属性权重排序,并在模糊QFD左侧输入客户需求(CRs)。其次,利用灰色预测模型筛选出混合动力汽车的关键工程特征(ECs)和初始权值;最后,基于人的主观不精确的自然语义,模糊QFD建立了cr与关键ec之间的矩阵关联,最终得到ec的最终权重与形态设计的最优组合。研究结果可以帮助设计师缩短产品开发周期,提高消费者的情感满意度,为未来环保汽车的可持续设计和营销提供理论参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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