Simultaneous Customers and Supplier’s Prioritization: An AHP-Based Fuzzy Inference Decision Support System (AHP-FIDSS)

Traditionally in supply chain management suppliers and customers are evaluated independently. This is in spite of the fact that supplier performance has direct impact on the performance of the customer. This research develops a mechanism for simultaneous evaluation and prioritization of supplier and...

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Veröffentlicht in:International journal of fuzzy systems 2020-11, Vol.22 (8), p.2625-2651
Hauptverfasser: Imran, Muhammad, Agha, Mujtaba Hassan, Ahmed, Waqas, Sarkar, Biswajit, Ramzan, Muhammad Babar
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container_issue 8
container_start_page 2625
container_title International journal of fuzzy systems
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creator Imran, Muhammad
Agha, Mujtaba Hassan
Ahmed, Waqas
Sarkar, Biswajit
Ramzan, Muhammad Babar
description Traditionally in supply chain management suppliers and customers are evaluated independently. This is in spite of the fact that supplier performance has direct impact on the performance of the customer. This research develops a mechanism for simultaneous evaluation and prioritization of supplier and customer using the sustainability metrics comprising economic, environment and social measures. In order to quantify the qualitative factors, priority index is introduced to measure the prioritization of customers and suppliers simultaneously. To get the priority index for each customer and supplier, a novel analytical hierarchical process-based fuzzy inference decision support system (AHP-FIDSS) has been introduced. An AHP-FIDSS involves the factor screening, hierarchical structure modeling, quantification of qualitative factors, and their conversion to quantitative values. AHP-FIDSS is knowledge-based system involving expert’s decision alternatives or logical rules. The number of input variables and their levels are proportional to the number of logical rules and rule size. In order to reduce the numbers of rules, a Taguchi orthogonal array is used that reduces the numbers of rules, thereby substantially simplifying the evaluation process A case study of a supply chain of surgical instruments has been presented for the real-time application of the proposed model. The results exhibited the simultaneous classification of customers and suppliers with respect to their priority index. Higher value of priority index indicates higher importance and vice versa. This research is useful for the supply chain mangers in procurement, sales and production to develop an importance classification for customers and suppliers in a supply chain.
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In order to reduce the numbers of rules, a Taguchi orthogonal array is used that reduces the numbers of rules, thereby substantially simplifying the evaluation process A case study of a supply chain of surgical instruments has been presented for the real-time application of the proposed model. The results exhibited the simultaneous classification of customers and suppliers with respect to their priority index. Higher value of priority index indicates higher importance and vice versa. 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subjects Analytic hierarchy process
Artificial Intelligence
Case studies
Classification
Computational Intelligence
Customers
Decision analysis
Decision making
Decision support systems
Design of experiments
Engineering
Flexibility
Fuzzy logic
Fuzzy sets
Inference
Knowledge based systems
Literature reviews
Management Science
Operations Research
Orthogonal arrays
Performance evaluation
Suppliers
Supply chains
Surgical equipment
Surgical instruments
Sustainability
title Simultaneous Customers and Supplier’s Prioritization: An AHP-Based Fuzzy Inference Decision Support System (AHP-FIDSS)
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