Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-Making

The evaluation of a machining line product quality monitoring system assesses its effectiveness in ensuring consistent product quality during manufacturing. It involves analyzing the system’s ability to detect defects, monitor key process parameters, and provide real-time feedback for cor...

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Main Authors: Chunjiang He, Jian Jiang
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10851299/
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author Chunjiang He
Jian Jiang
author_facet Chunjiang He
Jian Jiang
author_sort Chunjiang He
collection DOAJ
description The evaluation of a machining line product quality monitoring system assesses its effectiveness in ensuring consistent product quality during manufacturing. It involves analyzing the system’s ability to detect defects, monitor key process parameters, and provide real-time feedback for corrective actions. Key evaluation criteria include accuracy, reliability, response speed, and integration with other production systems. By identifying strengths and areas for improvement, the evaluation ensures the system meets quality standards, enhances operational efficiency, and reduces waste. This process is crucial for maintaining high-quality output in automated or semi-automated machining lines. The quality evaluation control systems for machining line product processing fall under the category of multi-attribute group decision-making (MAGDM). To address this, the TODIM and MABAC approaches were applied, leveraging their strengths in solving MAGDM problems. Intuitionistic Fuzzy Sets (IFSs) were utilized as a decision-making tool to handle uncertain and imprecise data during the evaluation process. In this study, an integrated intuitionistic fuzzy TODIM-MABAC (IF-TODIM-MABAC) approach in light with intuitionistic fuzzy Euclidean distance (IFED) and intuitionistic fuzzy logarithmic distance (IFLD) is proposed to tackle MAGDM problems under the framework of IFSs. This approach combines the advantages of the TODIM and MABAC methods, enhanced with IFSs, to better manage uncertainty in decision-making. A numerical study is conducted to demonstrate the application of the proposed approach for the quality evaluation control systems of machining line product processing, validating its effectiveness and practicality. The main contributions of this study are outlined: 1) TODIM-MABAC approach in light with IFED and IFLD is extended and enhanced with IFSs to handle uncertainty in MAGDM. 2) The entropy method is employed to objectively determine weight values under the IFS framework. 3) IF-TODIM-MABAC approach is developed to solve MAGDM problems effectively. 4) A numerical example, along with comparative analyses, is provided to validate the practicality and reliability of the proposed approach.
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spelling doaj-art-862f39ff8bf543d48e1580cb59dfba912025-01-31T00:01:38ZengIEEEIEEE Access2169-35362025-01-0113180241803910.1109/ACCESS.2025.353296110851299Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-MakingChunjiang He0Jian Jiang1https://orcid.org/0009-0002-1747-9655School of Electrical and Information Engineering, Heilongjiang University of Technology, Jixi, Heilongjiang, ChinaSchool of Computer and Electrical Engineering, Hunan University of Arts and Science, Changde, Hunan, ChinaThe evaluation of a machining line product quality monitoring system assesses its effectiveness in ensuring consistent product quality during manufacturing. It involves analyzing the system’s ability to detect defects, monitor key process parameters, and provide real-time feedback for corrective actions. Key evaluation criteria include accuracy, reliability, response speed, and integration with other production systems. By identifying strengths and areas for improvement, the evaluation ensures the system meets quality standards, enhances operational efficiency, and reduces waste. This process is crucial for maintaining high-quality output in automated or semi-automated machining lines. The quality evaluation control systems for machining line product processing fall under the category of multi-attribute group decision-making (MAGDM). To address this, the TODIM and MABAC approaches were applied, leveraging their strengths in solving MAGDM problems. Intuitionistic Fuzzy Sets (IFSs) were utilized as a decision-making tool to handle uncertain and imprecise data during the evaluation process. In this study, an integrated intuitionistic fuzzy TODIM-MABAC (IF-TODIM-MABAC) approach in light with intuitionistic fuzzy Euclidean distance (IFED) and intuitionistic fuzzy logarithmic distance (IFLD) is proposed to tackle MAGDM problems under the framework of IFSs. This approach combines the advantages of the TODIM and MABAC methods, enhanced with IFSs, to better manage uncertainty in decision-making. A numerical study is conducted to demonstrate the application of the proposed approach for the quality evaluation control systems of machining line product processing, validating its effectiveness and practicality. The main contributions of this study are outlined: 1) TODIM-MABAC approach in light with IFED and IFLD is extended and enhanced with IFSs to handle uncertainty in MAGDM. 2) The entropy method is employed to objectively determine weight values under the IFS framework. 3) IF-TODIM-MABAC approach is developed to solve MAGDM problems effectively. 4) A numerical example, along with comparative analyses, is provided to validate the practicality and reliability of the proposed approach.https://ieeexplore.ieee.org/document/10851299/Multiple-attribute group decision-making (MAGDM)intuitionistic fuzzy sets (IFSs)TODIMMABACquality evaluation
spellingShingle Chunjiang He
Jian Jiang
Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-Making
IEEE Access
Multiple-attribute group decision-making (MAGDM)
intuitionistic fuzzy sets (IFSs)
TODIM
MABAC
quality evaluation
title Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-Making
title_full Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-Making
title_fullStr Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-Making
title_full_unstemmed Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-Making
title_short Improving Quality Evaluation for Control Systems of Machining Line Product Processing With Smart Algorithmic Techniques in Intuitionistic Fuzzy Multiple-Attribute Group Decision-Making
title_sort improving quality evaluation for control systems of machining line product processing with smart algorithmic techniques in intuitionistic fuzzy multiple attribute group decision making
topic Multiple-attribute group decision-making (MAGDM)
intuitionistic fuzzy sets (IFSs)
TODIM
MABAC
quality evaluation
url https://ieeexplore.ieee.org/document/10851299/
work_keys_str_mv AT chunjianghe improvingqualityevaluationforcontrolsystemsofmachininglineproductprocessingwithsmartalgorithmictechniquesinintuitionisticfuzzymultipleattributegroupdecisionmaking
AT jianjiang improvingqualityevaluationforcontrolsystemsofmachininglineproductprocessingwithsmartalgorithmictechniquesinintuitionisticfuzzymultipleattributegroupdecisionmaking