A knowledge-based system for overall supply chain performance evaluation : a multi-criteria decision making approach
Purpose: Existing supply chain (SC) performance models are not able to cope with the potential of intensive SC digitalisation and establish a relationship between decisions and decision criteria. The purpose of this paper is to develop an integrated knowledge-based system (KBS) that creates a link between decisions and decision criteria (attributes) and evaluates the overall SC performance. Design/methodology/approach: The proposed KBS is grounded on the fuzzy analytic hierarchy process (fuzzy AHP), which establishes a relationship between short-term and long-term decisions and SC performance criteria (short-term and long-term) for accurate and integrated Overall SC performance evaluation. Findings: The proposed KBS evaluates the overall SC performance, establishes a relationship between decisions (long-term and short-term) and decision criteria of SC functions and provides decision makers with a view of the impact of their short-term or long-term decisions on overall SC performance. The proposed system was implemented in a case company where the authors were able to develop a SC performance monitoring dashboard for the company’s top managers and operational managers. Practical implications: The proposed KBS assists organisations and decision makers in evaluating their overall SC performance and helps in identifying underperforming SC functions and their associated criteria. It may also be considered as a tool for benchmarking SC performance against competitors. It can efficiently point to improvement directions and help decision makers improve overall SC performance. Originality/value: The proposed KBS provides a holistic and integrated approach, establishes a relationship between decisions and decision criteria and evaluates overall SC performance, which is one of the main limitations in existing supply chain performance measurement systems.
Year of publication: |
2019
|
---|---|
Authors: | Khan, Sharfuddin Ahmed ; Chaabane, Amin ; Dweiri, Fikri |
Published in: |
Supply Chain Management: An International Journal. - Emerald, ISSN 1359-8546, ZDB-ID 2028208-4. - Vol. 24.2019, 3 (07.05.), p. 377-396
|
Publisher: |
Emerald |
Saved in:
Online Resource
Saved in favorites
Similar items by person
-
Khan, Sharfuddin Ahmed, (2018)
-
Unlocking the potential of digital twins in supply chains : a systematic review
Zaidi, Syed Adeel Haneef, (2024)
-
Production planning forecasting method selection in a supply chain: a case study
Dweiri, Fikri, (2015)
- More ...