Grouping Parts Based on Group Technology Using a Neural Network

신경망을 이용한 GT 부품군 형성의 자동화

  • 이성열 (관동대학교 이공대학 산업공학과)
  • Received : 19971100
  • Published : 1998.07.31

Abstract

This paper proposes a new part family classification system (IPFACS: Image Processing and Fuzzy ART based Clustering System), which incorporates image processing techniques and a modified fuzzy ART neural network algorithm. IPFACS can classify parts based on geometrical shape and manufacturing attributes, simultaneously. With a proper reduction and normalization of an image data through the image processing methods and adding method in the modified Fuzzy ART, different types of geometrical shape data and manufacturing attribute data can be simultaneously classified in the same system. IPFACS has been tested for an example set of hypothetical parts. The results show that IPFACS provides a good feasible approach to form families based on both geometrical shape and manufacturing attributes.

Keywords

Acknowledgement

Supported by : 한국학술진흥재단