Human Cognition Inspired Procedures for Part Family Formation Based on Novel Inspection Based Clustering Approach
Author(s): |
Naga-sai-ram Gopisetti
Maria Leonilde Rocha Varela Jose Machado |
---|---|
Medium: | journal article |
Language(s): | Spanish |
Published in: | DYNA, 1 September 2021, n. 5, v. 96 |
Page(s): | 546-552 |
DOI: | 10.6036/9997 |
Abstract: |
Human cognition based procedures are promising approaches for solving different kind of problems, and this paper addresses the part family formation problem inspired by a human cognition procedure through a graph-based approach, drawing on pattern recognition. There are many algorithms which consider nature inspired models for solving a broad range of problem types. However, there is a noticeable existence of a gap in implementing models based on human cognition, which are generally characterized by “visual thinking”, rather than complex mathematical models. Hence, the natural power of reasoning - by detecting the patterns that mimic the natural human cognition - is used in this study as this paper is based on the partial implementation of graph theory in modelling and solving issues related to part machine grouping, regardless of their size. The obtained results have shown that most of the problems solved by using the proposed approach have provided interesting benchmark results when compared with previous results given by GRASP (Greedy Randomized Adaptive Search Procedure) heuristics. Keywords: Cellular manufacturing systems; part family formation; human cognition; inspection-based clustering. |
- About this
data sheet - Reference-ID
10628521 - Published on:
05/09/2021 - Last updated on:
05/09/2021