2022
DOI: 10.1051/ijmqe/2022014
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Comparison of the RAFSI and PIV method in multi-criteria decision making: application to turning processes

Abstract: Multi-criteria decision-making (MCDM) methods are used in many fields so as to rank alternatives and find the best one. However, rank reversal after adding or removing an alternative can occur in using some of the methods. In this study, two methods RAFSI and PIV were compared for application of making multi-criteria decisions. They are known to be capable of avoiding rank reversal problems. Sixteen 9XC steel turning tests were performed for the experiment. Tool holder length, spindle speed, feed rate and dept… Show more

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Cited by 12 publications
(10 citation statements)
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“…Evolving as one of the recent multi-criteria decision-making tools, this method is gaining more attention, and thus it has been applied in various areas such as manufacturing job sequencing (Ahmad et al, 2021), material selection (Wakeel et al, 2021a;Wakeel et al, 2021b;Ajith et al, 2022;Jahan et al, 2022), manufacturing process selection (Raigar et al, 2020), selecting manufacturing parameter process (Trung, 2021a(Trung, , 2021b, cross counties logistics competitiveness comparison (Biswas and Anand, 2020), manufacturing facility location selection (Ulutas and Karakus, 2021), design combustion cooling system (Seraj et al, 2020), e-learning website selection (Khan et al, 2019), assessment of healthcare supply chain resiliency (Zamiela et al, 2022) and Offshore windfarm site selection (Yu et al, 2022). Several studies have validated the performance of the PVI by comparing it with other multi-criteria decision-making tools (Jahan et al, 2022;Trung et al, 2022). In addition, scholars have integrated the PVI with other multi-criteria decision-making tools (Trung et al, 2022).…”
Section: Proximity Value Index (Pvi) Methodsmentioning
confidence: 99%
See 2 more Smart Citations
“…Evolving as one of the recent multi-criteria decision-making tools, this method is gaining more attention, and thus it has been applied in various areas such as manufacturing job sequencing (Ahmad et al, 2021), material selection (Wakeel et al, 2021a;Wakeel et al, 2021b;Ajith et al, 2022;Jahan et al, 2022), manufacturing process selection (Raigar et al, 2020), selecting manufacturing parameter process (Trung, 2021a(Trung, , 2021b, cross counties logistics competitiveness comparison (Biswas and Anand, 2020), manufacturing facility location selection (Ulutas and Karakus, 2021), design combustion cooling system (Seraj et al, 2020), e-learning website selection (Khan et al, 2019), assessment of healthcare supply chain resiliency (Zamiela et al, 2022) and Offshore windfarm site selection (Yu et al, 2022). Several studies have validated the performance of the PVI by comparing it with other multi-criteria decision-making tools (Jahan et al, 2022;Trung et al, 2022). In addition, scholars have integrated the PVI with other multi-criteria decision-making tools (Trung et al, 2022).…”
Section: Proximity Value Index (Pvi) Methodsmentioning
confidence: 99%
“…Several studies have validated the performance of the PVI by comparing it with other multi-criteria decision-making tools (Jahan et al, 2022;Trung et al, 2022). In addition, scholars have integrated the PVI with other multi-criteria decision-making tools (Trung et al, 2022).…”
Section: Proximity Value Index (Pvi) Methodsmentioning
confidence: 99%
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“…These methods were chosen because they do not use (2), ( 3), ( 4), (7), and (8). Furthermore, TOPSIS is considered the most popular MCDM [24,25], and PIV was proven to have a lower reverse phenomenon rate [26,27]. Both TOPSIS and PIV methods are only used (1) for normalizing data.…”
Section: Case Studymentioning
confidence: 99%
“…Both TOPSIS and PIV methods are only used (1) for normalizing data. Detailed procedures for these methods can be found in [24][25][26][27]. Table IX shows the ranking results for this problem.…”
Section: Case Studymentioning
confidence: 99%