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Applying a hybrid approach based on fuzzy neural network and genetic algorithm to product form design

机译:基于模糊神经网络和遗传算法的混合方法在产品形态设计中的应用

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摘要

When generating new design concepts, most industrial designers tend to draw upon stereotypical images and their own personal design experiences. The evaluation of each-individual design candidate in terms of its ability to meet the demands of the marketplace is a crucial step within the conceptual design stage. Consequently, this paper proposes a method which enables an automatic product form search or product image evaluation by means of fuzzy neural network and genetic algorithm. Initially, a feature-based hierarchical computer-aided design (CAD) model is constructed, in which the related form parameters are thoroughly defined in applicable domains to facilitate the automatic generation of new product forms. A fuzzy neural network algorithm is then applied to establish the relationships between the input form parameters and a series of adjectival image words. In a reverse process, genetic algorithm is employed to search for a near-optimal design which satisfies the designer's required product image by using the trained neural network as a fitness function. The proposed method provides an automatic design system, which gives designers the ability to rapidly obtain a product form and its corresponding image, or to search for the ideal form which fits a required image in a shorter lead-time. An electronic door lock design is chosen as the subject of the current investigation. However, the proposed method is equally applicable to the design of other products.
机译:当产生新的设计概念时,大多数工业设计师倾向于借鉴定型图像和他们自己的个人设计经验。在概念设计阶段,对每个候选设计方案满足市场需求的能力进行评估是至关重要的一步。因此,本文提出了一种利用模糊神经网络和遗传算法实现商品形式自动搜索或商品形象评价的方法。最初,构建基于特征的分层计算机辅助设计(CAD)模型,其中在适用的域中彻底定义了相关的表单参数,以促进新产品表单的自动生成。然后应用模糊神经网络算法来建立输入形式参数和一系列形容词图像词之间的关系。在反向过程中,采用遗传算法搜索经过优化的设计,该设计通过使用经过训练的神经网络作为适应度函数来满足设计者所需的产品形象。所提出的方法提供了一种自动设计系统,该系统使设计人员能够快速获得产品形式及其相应的图像,或者在更短的交货时间内搜索适合所需图像的理想形式。选择电子门锁设计作为当前研究的主题。但是,所提出的方法同样适用于其他产品的设计。

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