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Kansei clustering for emotional design using a combined design structure matrix

机译:使用组合设计结构矩阵进行感性设计的Kansei聚类

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Consumers' emotional requirements, or so-called Kansei needs, have become one of the most important concerns in designing a product. Conventionally, Kansei engineering has been widely used to co-relate these requirements with product parameters. However, a typical Kansei engineering approach relies heavily on the intuition of the person who uses the method in clustering the Kansei adjectives, who may be the engineer or designer. As a result, the selection of Kansei adjectives may not be consistent with the consumers' opinions. In order to obtain a consumer-consistent result, all of the collected Kansei adjectives (usually hundreds) need to be evaluated by every survey participant, which is impractical in most design cases. Therefore, a Kansei clustering method based on a design structure matrix (DSM) is proposed in this work. The method breaks the Kansei adjectives up into a number of subsets so that each participant deals with only a portion of the words collected. Pearson correlations are used to establish the distances among the Kansei adjectives. The subsets are then integrated by merging the identical correlation pairs for an overall Kansei clustering result. The details of the proposed approach are presented and illustrated using a case study on wireless battery drills. The case study reveals that the proposed method is promising in handling Kansei adjective clustering problems. Relevance to industry: This study presents a generic method to deal with consumers' Kansei requirements for emotional design in new product development. It appears that the proposed method can be utilized to capture and analyze consumers' Kansei needs as well as to facilitate decision making in practical industrial design cases.
机译:消费者的情感要求或所谓的“感性”需求已成为设计产品时最重要的问题之一。按照惯例,Kansei工程已广泛用于将这些要求与产品参数关联起来。但是,典型的Kansei工程方法在很大程度上依赖于使用该方法对Kansei形容词进行聚类的人的直觉,他们可能是工程师或设计师。结果,关西形容词的选择可能与消费者的观点不一致。为了获得与消费者一致的结果,需要由每个调查参与者对所有收集的感性形容词(通常为数百个)进行评估,这在大多数设计案例中是不切实际的。因此,本文提出了一种基于设计结构矩阵(DSM)的Kansei聚类方法。该方法将Kansei形容词分解为多个子集,以便每个参与者仅处理所收集单词的一部分。皮尔逊相关性用于确定感性形容词之间的距离。然后,通过合并相同的相关对以获得整体的Kansei聚类结果,对子集进行整合。提出的方法的详细信息通过无线电池钻机的案例研究进行了介绍和说明。案例研究表明,该方法在处理感性形容词聚类问题中很有前途。与行业的相关性:本研究提出了一种通用方法,可以满足消费者在新产品开发中对感性设计的感性要求。看来,所提出的方法可用于捕获和分析消费者的感性需求,以及在实际工业设计案例中促进决策。

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