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Mapping customer needs to design parameters in the front end of product design by applying deep learning

机译:通过应用深度学习,映射客户需要在产品设计前端设计参数

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摘要

The key to successful product design is better understanding of customer needs (CNs), and efficiently translating CNs into design parameters (DPs). With the recent trend toward the diversification of CNs, the rapid introduction of new products, and shortened lead times, there is a growing need to speed up the mapping from CNs to DPs. By leveraging on product review data extracted e-commerce websites, this paper proposes a deep learning-based approach to improve the effectiveness and efficiency of mapping CNs to DPs. The results show that the proposed approach can meet customer needs with high efficiency. (C) 2018 Published by Elsevier Ltd on behalf of CIRP.
机译:成功产品设计的关键是更好地了解客户需求(CNS),并将CNS有效地将CNS转化为设计参数(DPS)。 随着近期CNS多样化的趋势,新产品的快速引入,缩短了交货时间,越来越需要加快从CNS到DPS的映射。 通过利用产品审查数据提取了电子商务网站,提出了一种基于深度学习的方法,提高将CNS映射到DPS的效果和效率。 结果表明,该方法可以高效满足客户需求。 (c)2018年由elsevier有限公司发布代表CIRP。

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