感性工学中基于本体的特征建模与组合

Qianru Qiu, Hongming Cai, Lihong Jiang, Kengo Omura
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引用次数: 3

摘要

如今,消费者的情感反应对开发成功的产品越来越有帮助。感性工学(KE)是智能时代产品开发中具有挑战性的以客户为导向的技术。它不仅要将人的感受转化为设计规范,而且要实现分类设计知识的共享和设计特征的整合,自动生成新的设计方案。本文提出了一种基于本体的感性工学系统构建方法。该方法基于层次本体模型和特征组合机制。在我们的本体模型中,设计元素和项目根据专业知识和统计分析结果被划分为几个层次。数据来源于感性评价实验。在特征选择和组合过程中,利用设计特征的分类来确定设计特征的优先级。在本研究中,层级模型被应用于建立卡片设计的智能系统,以证明所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ontology-Based Feature Modeling and Combination for Kansei Engineering
Nowadays consumers' affective responses have become more and more helpful for developing successful products. Kansei Engineering (KE) is a challenging customer-oriented technology for product development in the intelligent age. It should not only translate the humans' feeling into design specifications, but also share classified design knowledge and integrate design features to get a new design scheme automatically. In this paper, an ontology-based systematic approach is proposed to establish a Kansei Engineering System (KES). The approach is based on a hierarchical ontology model and a feature combination mechanism. In our ontology model, design elements and items are divided into several hierarchies according to the expertise and the results of statistical analysis. The source data is from Kansei Evaluation Experiment. The classification of design features is used to decide the priority during feature selection and combination. In the present study, the hierarchical model is applied to establish an intelligent system for card design to demonstrate the effectiveness of the proposed approach.
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