基于KE与EEG的壁挂式充电桩造型创新设计与评价
Innovative Design and Evaluation of Wall Mounted Charging Pile Based on KE and EEG
DOI: 10.12677/SEA.2021.102012, PDF,    国家自然科学基金支持
作者: 尹 鑫*, 林 丽#:贵州大学机械工程学院,贵州 贵阳
关键词: 感性工学脑电产品设计壁挂式充电桩感性意象Kansei Engineering Electroencephalogram Modeling Design Wall Mounted Charging Pile Perceptual Image
摘要: 为使壁挂式充电桩设计更符合用户的感性需求,完善壁挂式充电桩的设计方法,运用感性工学结合脑电技术指导壁挂式充电桩造型设计。首先,基于感性工学理论收集筛选感性意象词汇及壁挂式充电桩图片,提取关键造型元素,采用正交试验法重组实验样本;然后,进行意象评价与脑电实验,通过主观评价与客观脑电数据同步验证,获取壁挂式充电桩造型要素与用户感性需求的数量化关系,分析出用户偏好的壁挂式充电桩机身造型设计要素;最后,进行壁挂式充电桩感性创新设计,联合主客观情感测量手段进行感性评价。通过运用感性工学与脑电技术,有效地为壁挂式充电桩提供更客观的设计及评价方法,为同类型产品创新设计提供参考。
Abstract: In order to make the design of wall mounted charged posts more suitable to the users’ perceptual needs, and to refine the design method of wall mounted charged posts, this article used Kansei En-gineering (KE) combined with electroencephalogram (EEG) technology to guide the modeling de-sign of wall mounted charged pile. First, based on KE theory to collect the picture of screening perceptual image vocabulary and wall mounted charged pile, extracting key modeling elements and reorganizing experimental samples by orthogonal test method. Then, image evaluation and EEG experiments were conducted, which were confirmed by synchronization between subjective evaluation and objective EEG data, obtaining the quantitative relationship between modeling ele-ments of wall mounted charged pile and users’ perceptual demands, and analyzing the user pre-ferred wall mounted charged pile body modeling design elements. Finally, innovative design of wall mounted charged pile susceptibility is conducted and jointly evaluated through host guest emotion measurement. By applying KE and EEG technology, it effectively provides a more objective design and evaluation method for wall mounted charged posts, and provides a reference for innovative design of the same type of products.
文章引用:尹鑫, 林丽. 基于KE与EEG的壁挂式充电桩造型创新设计与评价[J]. 软件工程与应用, 2021, 10(2): 93-103. https://doi.org/10.12677/SEA.2021.102012

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