An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process Selection

In nowadays industry 4.0 and changeable manufacturing context, designers and manufacturing engineers struggle to determine appropriate quick, accurate (with flawless quality), and cost-effective processes to design highly customized products to meet customer requirements. To determine manufacturing...

Full description

Bibliographic Details
Main Authors: Mohammed M. Mabkhot, Ali M. Al-Samhan, Lotfi Hidri
Format: Article
Language:English
Published: Hindawi Limited 2019-01-01
Series:Advances in Materials Science and Engineering
Online Access:http://dx.doi.org/10.1155/2019/2505183
id doaj-f3c405bf9135445ab0fdb307d2aed992
record_format Article
spelling doaj-f3c405bf9135445ab0fdb307d2aed9922020-11-25T02:15:30ZengHindawi LimitedAdvances in Materials Science and Engineering1687-84341687-84422019-01-01201910.1155/2019/25051832505183An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process SelectionMohammed M. Mabkhot0Ali M. Al-Samhan1Lotfi Hidri2Department of Industrial Engineering, King Saud University, 11400 Riyadh, Saudi ArabiaDepartment of Industrial Engineering, King Saud University, 11400 Riyadh, Saudi ArabiaDepartment of Industrial Engineering, King Saud University, 11400 Riyadh, Saudi ArabiaIn nowadays industry 4.0 and changeable manufacturing context, designers and manufacturing engineers struggle to determine appropriate quick, accurate (with flawless quality), and cost-effective processes to design highly customized products to meet customer requirements. To determine manufacturing processes, the matching between product features, material characteristics, and process capabilities needs to be optimized. Finding such an optimized matching is usually referred to as manufacturing process selection (MPS), which is not an easy task because of the infinite combinations of product features, numerous material characteristics, and various manufacturing processes. Although problems associated with MPS have received considerable attention, semantic web technologies are still underexplored and their potential is still uncovered. Almost no previous study has considered combining case-based reasoning (CBR) with ontologies, a famous and powerful semantic web enabler, to achieve MPS. In this study, we developed a decision support system (DSS) for MPS based on ontology-enabled CBR. By applying automatic reasoning and similarity retrieving on an industrial case study, we show that ontologies enable process selection by determining competitive matching between product features, material characteristics, and process capabilities and by endorsing effective case retrieval.http://dx.doi.org/10.1155/2019/2505183
collection DOAJ
language English
format Article
sources DOAJ
author Mohammed M. Mabkhot
Ali M. Al-Samhan
Lotfi Hidri
spellingShingle Mohammed M. Mabkhot
Ali M. Al-Samhan
Lotfi Hidri
An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process Selection
Advances in Materials Science and Engineering
author_facet Mohammed M. Mabkhot
Ali M. Al-Samhan
Lotfi Hidri
author_sort Mohammed M. Mabkhot
title An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process Selection
title_short An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process Selection
title_full An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process Selection
title_fullStr An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process Selection
title_full_unstemmed An Ontology-Enabled Case-Based Reasoning Decision Support System for Manufacturing Process Selection
title_sort ontology-enabled case-based reasoning decision support system for manufacturing process selection
publisher Hindawi Limited
series Advances in Materials Science and Engineering
issn 1687-8434
1687-8442
publishDate 2019-01-01
description In nowadays industry 4.0 and changeable manufacturing context, designers and manufacturing engineers struggle to determine appropriate quick, accurate (with flawless quality), and cost-effective processes to design highly customized products to meet customer requirements. To determine manufacturing processes, the matching between product features, material characteristics, and process capabilities needs to be optimized. Finding such an optimized matching is usually referred to as manufacturing process selection (MPS), which is not an easy task because of the infinite combinations of product features, numerous material characteristics, and various manufacturing processes. Although problems associated with MPS have received considerable attention, semantic web technologies are still underexplored and their potential is still uncovered. Almost no previous study has considered combining case-based reasoning (CBR) with ontologies, a famous and powerful semantic web enabler, to achieve MPS. In this study, we developed a decision support system (DSS) for MPS based on ontology-enabled CBR. By applying automatic reasoning and similarity retrieving on an industrial case study, we show that ontologies enable process selection by determining competitive matching between product features, material characteristics, and process capabilities and by endorsing effective case retrieval.
url http://dx.doi.org/10.1155/2019/2505183
work_keys_str_mv AT mohammedmmabkhot anontologyenabledcasebasedreasoningdecisionsupportsystemformanufacturingprocessselection
AT alimalsamhan anontologyenabledcasebasedreasoningdecisionsupportsystemformanufacturingprocessselection
AT lotfihidri anontologyenabledcasebasedreasoningdecisionsupportsystemformanufacturingprocessselection
AT mohammedmmabkhot ontologyenabledcasebasedreasoningdecisionsupportsystemformanufacturingprocessselection
AT alimalsamhan ontologyenabledcasebasedreasoningdecisionsupportsystemformanufacturingprocessselection
AT lotfihidri ontologyenabledcasebasedreasoningdecisionsupportsystemformanufacturingprocessselection
_version_ 1724895890566545408