Abstract

(1) Background: Personalized product customization is an important direction in the development of the chair industry. This paper studies an intelligent design method for the rapid realization of personalized office chair customization; (2) Methods: based on the case-based reasoning (CBR) method, the characteristic attributes of office chair patterns are analyzed, and an attribute model is established. According to office chair data and customer demand, an intelligent design model using multi-layer weighted k-nearest neighbor (K-NN) for chair patterns is developed using the entropy weight method and an analytic hierarchy process. In addition, an example is employed for verification of the K-NN and multi-layer weighted K-NN retrieval models; (3) Results: both models are able to effectively retrieve chair type cases that meet the target requirements from the office chair pattern base; the case matching similarity of the multi-layer weighted K-NN retrieval model was higher, with an average increase of about 3.9%, and the chair pattern case results obtained by setting different customer needs are different, indicating that the case can be selected according to different customer preferences, which is more conducive to personalized product customization design; (4) Conclusions: The multi-layer weighted K-NN model for intelligent chair pattern design proposed in this paper is more conducive to personalized product customization design.

Highlights

  • Anji Intelligent Manufacturing Technology Research Institute Co., Ltd., Hangzhou Dianzi University, Abstract: (1) Background: Personalized product customization is an important direction in the development of the chair industry

  • The rapid transformation of customer demand into intelligent design of chair products has become the direction of development in the chair industry [1]

  • The traditional design process for office chairs typically includes chair pattern design, trial modeling, debugging, and revision, among which chair pattern design is closely related to the personalization and differentiation of customer demands

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Summary

Introduction

According to office chair data and customer demand, an intelligent design model using multi-layer weighted k-nearest neighbor (K-NN) for chair patterns is developed using the entropy weight method and an analytic hierarchy process. The rapid transformation of customer demand into intelligent design of chair products has become the direction of development in the chair industry [1]. The traditional design process for office chairs typically includes chair pattern design, trial modeling, debugging, and revision, among which chair pattern design is closely related to the personalization and differentiation of customer demands. Proposed a general office chair concept, adapting and customizing the design of office chairs in different places of use through module selection and combination; Tang [4] constructed an office chair product data system based on PDM, laying the foundation for Academic Editor: Paolo Renna

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