An automatic case based reasoning system using similarity measures between 3D shapes to assist in the design of metal castings

PETRIDIS, MILTIADIS, Saeed, S. and Knight, B. (2010) An automatic case based reasoning system using similarity measures between 3D shapes to assist in the design of metal castings Expert Update, 10 (2). pp. 43-51. ISSN 1465-4091

Full text not available from this repository.

Abstract

In this paper, we present current research using the ShapeCBR system that automates the process of creation and selection of cases to populate a CBR system for retrieval of 3D shapes to assist with the design of metal castings. The special feature of this system is that similarity is derived primarily from graph matching algorithms. The particular problem of such a system is that it does not operate on simple search indices that may be derived from single cases and then used for visualisation and principal component analyses. Rather, the system is built on a similarity metric defined directly over pairs of cases and is primarily structural. An overview of previous research in this area is presented. This demonstrates the feasibility of a CBR approach to the design of metal castings. This paper describes further research into the use of the traditional componentisation as used in method engineering to provide a shape representation suitable for efficient retrieval of design knowledge. The paper presents current work aiming mainly at enhancing the efficiency and accuracy of the similarity metrics used in the ShapeCBR system. The architecture of the ShapeCBR system is presented. Finally, performance measures for the CBR system and the metrics used are given, and the results of trials of the system are presented and compared to results obtained from previous research.

Item Type: Journal article
Uncontrolled Keywords: Case-Based Reasoning; Spatial reasoning; Shape recognition; Casting design; Knowledge Based Systems; 3D Shapes; Casting; Foundry
Subjects: G000 Computing and Mathematical Sciences > G400 Computing
Faculties: Faculty of Science and Engineering > School of Computing, Engineering and Mathematics > Computational Intelligence
Depositing User: Converis
Date Deposited: 12 Jan 2012 12:18
Last Modified: 23 Sep 2013 14:58
URI: http://eprints.brighton.ac.uk/id/eprint/9676

Actions (login required)

View Item View Item

Downloads

Downloads per month over past year