计算机集成制造系统 ›› 2021, Vol. 27 ›› Issue (4): 1135-1145.DOI: 10.13196/j.cims.2021.04.018

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基于神经网络的电动汽车造型意象预测模型

程永胜1,徐骁琪1,陈国强2+,孙利2,吴俭涛2   

  1. 1.厦门大学嘉庚学院设计与创意学院
    2.燕山大学艺术与设计学院
  • 出版日期:2021-04-30 发布日期:2021-04-30
  • 基金资助:
    国家自然科学基金资助项目(51675464);河北省社会科学基金资助项目(HB19YS004)。

Image prediction model of electric vehicle based on neural network

  • Online:2021-04-30 Published:2021-04-30
  • Supported by:
    Project supported by the National Natural Science Foundation,China(No.51675464),and the Hebei Provincial Social Science Foundation,China(No.HB19YS004).

摘要: 为使电动汽车造型设计更符合目标用户认知,提升电动汽车设计评选中对于造型意象的预测能力,降低电动汽车开发风险等问题,提出一种基于神经网络的电动汽车造型意象预测模型。该模型运用统计学方法,结合神经网络对电动汽车造型特征和感性意象隐性关联进行研究。利用多维尺度分析和聚类分析获取代表性样本,通过造型特征解构,采用层次分析法计算得到造型特征权重系数,并利用语义差异法和主成分分析确定了代表性意象词汇,降低目标用户对于造型特征与感性意象认知维度。采用BP神经网络构建造型意象预测模型,以样本造型特征权重编码作为输入层,用户感性意象评价得分作为输出层,进行模型训练;利用留一交叉训练方法对预测模型进行了测试,并以某电动SUV前脸造型设计方案为例进行了案例应用,验证了该预测模型的可行性。研究结果表明,该预测模型能有效地解决造型意象研究当中造型特征和感性意象之间匹配问题,辅助设计人员快速识别出关键造型特征与感性意象目标,提高了设计方案决策的科学性。

关键词: 神经网络, 造型意象, 预测模型, 电动汽车, 产品设计

Abstract: To make the styling design of electric vehicles more in line with the cognition of target users for improving the ability of predicting styling images in electric vehicle design selection and reduce the risk of electric vehicle development,a neural network-based model for predicting styling images of electric vehicles was proposed.This predictive model used statistical methods  with neural networks to study the implicit correlation between the styling characteristics of electric vehicles and the perceptual images.Using multi-dimensional scale analysis and cluster analysis to obtain representative samples,and the modeling feature weight coefficients were calculated using analytic hierarchy process by deconstructing modeling features.The representative image vocabulary was determined by semantic difference method and principal component analysis to reduce the target user's perception of modeling characteristics and cognitive dimension of perceptual image.The Back Propagation (BP) neural network was used to construct the modeling image prediction model,the sample modeling feature weight coding was used as the input layer,and the user perceptual image evaluation score was used as the output layer for model training.The prediction model was tested with leave-one-out cross-training method.An electric Sport Utility Vehicle (SUV) front face design scheme was taken as an example to verify the feasibility of the prediction model.The research results showed that the predictive model could effectively solve the matching problem between modeling features and perceptual image in modeling image research,assist designers to quickly identify key modeling features and perceptual image targets,and improve the scientificity of design plan decision-making.

Key words: neural network, modeling image, prediction model, electric cars, product design

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