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Application of AHP and TOPSIS for the evaluation of Indian railway supply chain parameters

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Title Application of AHP and TOPSIS for the evaluation of Indian railway supply chain parameters
 
Creator Kumar, Manoj
Vipin
Agarwal, Ashish
 
Subject Supply chain management
Indian railway
Availability
Quality of railway service
Reliability
AHP
TOPSIS
Fuzzy rule
 
Description 193-207
Indian railways is a major public transportation system in India and one of the world’s largest and busiest rail networks.
It is owned and run by the Indian government. This study presents an alternate method for assessing the entire operating
performance of the Indian railway supply chain. To improve inventory control and customer service, we must examine
how Indian railways operates from a supply chain standpoint. Indian railways benefits from the research as it makes it
possible to categorize different government procurement-related difficulties. It examines inventory issues and provides
recommendations for public procurement. As a result of this research, Indian railways decision-makers will be able to create
an evaluation and relationship management model, allowing them to make procurement the main driver of their supply
chain. We propose a supply chain model to evaluate service expectations and quality. We have identified various issues of
the integration system, financial behavior, and management perspective related to supply chain management and analyzed
various factors affecting availability, railway service quality, and reliability for effective supply chain management. The
study employs the analytical hierarchy process (AHP), TOPSIS, and fuzzy rule base analysis.
 
Date 2024-05-28T06:35:45Z
2024-05-28T06:35:45Z
2024-05
 
Type Article
 
Identifier 0975-1017 (Online); 0971-4588 (Print)
http://nopr.niscpr.res.in/handle/123456789/63991
https://doi.org/10.56042/ijems.v31i2.2109
 
Language en
 
Publisher NIScPR-CSIR,India
 
Source IJEMS Vol.31(2) April 2024