2-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selection

Industrial robots enable manufacturers to produce high-quality products at low cost, so they are a key component of advanced production technology. Welding, assembly, disassembly, painting of printed circuit boards, pick-and-place mass production of consumer products, laboratory research, surgery, p...

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Main Authors: Sumera Naz, Muhammad Akram, Afia Sattar, Mohammed M. Ali Al-Shamiri
Format: Article
Language:English
Published: AIMS Press 2022-07-01
Series:AIMS Mathematics
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/math.2022966
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author Sumera Naz
Muhammad Akram
Afia Sattar
Mohammed M. Ali Al-Shamiri
author_facet Sumera Naz
Muhammad Akram
Afia Sattar
Mohammed M. Ali Al-Shamiri
author_sort Sumera Naz
collection DOAJ
description Industrial robots enable manufacturers to produce high-quality products at low cost, so they are a key component of advanced production technology. Welding, assembly, disassembly, painting of printed circuit boards, pick-and-place mass production of consumer products, laboratory research, surgery, product inspection and testing are just some of the applications of industrial robots. All functions are done with a high level of endurance, speed and accuracy. Many competing attributes must be evaluated simultaneously in a comprehensive selection method to determine the performance of industrial robots. In this research article, we introduce the 2TLq-ROFS as a new advancement in fuzzy set theory to communicate complexities in data and presents a decision algorithm for selecting an arc welding robot utilizing the 2-tuple linguistic q-rung orthopair fuzzy (2TLq-ROF) set, which can dynamically delineate the space of ambiguous information. We propose the q-ROF Hamy mean (q-ROFHM) and the q-ROF weighted Hamy mean (q-ROFWHM) operators by combining the q-ROFS with Hamy mean operator. We investigate the properties of some of the proposed operators. Then based on the proposed maximization bias, a new optimization model is built, which is able to exploit the DM preference to find the best objective weights among attributes. Next, we extend the COmbinative Distance-Based ASsessment (CODAS) method to 2TLq-ROF-CODAS version which not only covers the uncertainty of human cognition but also gives DMs a larger space to represent their decisions. To validate our strategy, we present a case study of arc welding robot selection. Finally, the effectiveness and accuracy of the method are proved by parameter analysis and comparative analysis results. The results show that our method effectively addresses the evaluation and selection of arc welding robots and captures the relationship between an arbitrary number of attributes.
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spelling doaj.art-258f023852804232a0c93ecd5bd52dc92022-12-22T02:52:06ZengAIMS PressAIMS Mathematics2473-69882022-07-0179175291756910.3934/math.20229662-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selectionSumera Naz 0Muhammad Akram1Afia Sattar2Mohammed M. Ali Al-Shamiri31. Department of Mathematics, Division of Science and Technology, University of Education, Lahore, Pakistan2. Department of Mathematics, University of the Punjab, New Campus, Lahore 54590, Pakistan1. Department of Mathematics, Division of Science and Technology, University of Education, Lahore, Pakistan3. Department of Mathematics, Faculty of science and arts, Mahayl Assir, King Khalid University, Saudi Arabia 4. Department of Mathematics and Computer, Faculty of Science, Ibb University, Ibb, YemenIndustrial robots enable manufacturers to produce high-quality products at low cost, so they are a key component of advanced production technology. Welding, assembly, disassembly, painting of printed circuit boards, pick-and-place mass production of consumer products, laboratory research, surgery, product inspection and testing are just some of the applications of industrial robots. All functions are done with a high level of endurance, speed and accuracy. Many competing attributes must be evaluated simultaneously in a comprehensive selection method to determine the performance of industrial robots. In this research article, we introduce the 2TLq-ROFS as a new advancement in fuzzy set theory to communicate complexities in data and presents a decision algorithm for selecting an arc welding robot utilizing the 2-tuple linguistic q-rung orthopair fuzzy (2TLq-ROF) set, which can dynamically delineate the space of ambiguous information. We propose the q-ROF Hamy mean (q-ROFHM) and the q-ROF weighted Hamy mean (q-ROFWHM) operators by combining the q-ROFS with Hamy mean operator. We investigate the properties of some of the proposed operators. Then based on the proposed maximization bias, a new optimization model is built, which is able to exploit the DM preference to find the best objective weights among attributes. Next, we extend the COmbinative Distance-Based ASsessment (CODAS) method to 2TLq-ROF-CODAS version which not only covers the uncertainty of human cognition but also gives DMs a larger space to represent their decisions. To validate our strategy, we present a case study of arc welding robot selection. Finally, the effectiveness and accuracy of the method are proved by parameter analysis and comparative analysis results. The results show that our method effectively addresses the evaluation and selection of arc welding robots and captures the relationship between an arbitrary number of attributes.https://www.aimspress.com/article/doi/10.3934/math.20229662-tuple linguistic q-rung orthopair fuzzy setmagdmcodas methodarc welding robot
spellingShingle Sumera Naz
Muhammad Akram
Afia Sattar
Mohammed M. Ali Al-Shamiri
2-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selection
AIMS Mathematics
2-tuple linguistic q-rung orthopair fuzzy set
magdm
codas method
arc welding robot
title 2-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selection
title_full 2-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selection
title_fullStr 2-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selection
title_full_unstemmed 2-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selection
title_short 2-tuple linguistic q-rung orthopair fuzzy CODAS approach and its application in arc welding robot selection
title_sort 2 tuple linguistic q rung orthopair fuzzy codas approach and its application in arc welding robot selection
topic 2-tuple linguistic q-rung orthopair fuzzy set
magdm
codas method
arc welding robot
url https://www.aimspress.com/article/doi/10.3934/math.2022966
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AT afiasattar 2tuplelinguisticqrungorthopairfuzzycodasapproachanditsapplicationinarcweldingrobotselection
AT mohammedmalialshamiri 2tuplelinguisticqrungorthopairfuzzycodasapproachanditsapplicationinarcweldingrobotselection