A Folk Evaluation Approach for Part Standardization

A Folk Evaluation Approach for Part Standardization

D. LiuM. K. He J. D. Chen  

Key Laboratory of Advanced Manufacturing Technology, Guizhou University, Ministry of Education China, Huaxi avenue, Huaxi district, GuiYang, 550025

Corresponding Author Email: 
gzu_dliu@163.com
Page: 
74-92
|
DOI: 
https://doi.org/10.18280/ama_b.600105
Received: 
15 March 2017
| |
Accepted: 
15 April 2017
| | Citation

OPEN ACCESS

Abstract: 

Product design standardization is a prevailing approach to promote the speed and quality of product development. Facts have proven that only cross-enterprise and large-scope standardization can exert the effect of standardization sufficiently. The traditional statistical methods of parts spectrum only apply within the enterprises; thus, a new approach is required for part standardization in a large scope. In this study, a folk evaluation approach for part standardization is proposed. This approach combines the philosophy of web 2.0 into the web-based parts library to facilitate part standardization in a large scope. According to the differences of evaluation data sources, the folk evaluation method includes two methods, namely, digg-based evaluation and user requirement-based evaluation. The technique details are discussed in this study, and the instance cases are conducted to demonstrate the method.

Keywords: 

part standardization, folk, web2.0, web-based parts library

1. Introduction
2. Some Basic Concepts of Part Standardization and Parts Library
3. Folk Evaluation Approach for Part Standardization
4. Conclusion
Acknowledgments

This study is supported by the project of the Natural Science Foundation of Guizhou Province (No.[2011]2331) and Project for Talent introduction of Guizhou University (No.[2010]025). The science and technology support program of Guizhou Province (No.[2015]3034,NO.[2016]2327)

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