Fusion-Based Supply Chain Collaboration Using Machine Learning Techniques

Ali, N, Ghazal, T M, Ahmed, A, Abbas, S, A. Khan, M, Alzoubi, H M, Farooq, U, Ahmad, M and Adnan Khan, M (2022) Fusion-Based Supply Chain Collaboration Using Machine Learning Techniques. Intelligent Automation & Soft Computing, 31 (3). pp. 1671-1687. ISSN 1079-8587

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Abstract

Supply Chain Collaboration is the network of various entities that work cohesively to make up the entire process. The supply chain organizations’ success is dependent on integration, teamwork, and the communication of information. Every day, supply chain and business players work in a dynamic setting. They must balance competing goals such as process robustness, risk reduction, vulnerability reduction, real financial risks, and resilience against just-in-time and cost-efficiency. Decision-making based on shared information in Supply Chain Collaboration constitutes the recital and competitiveness of the collective process. Supply Chain Collaboration has prompted companies to implement the perfect data analytics functions (e.g., data science, predictive analytics, and big data) to improve supply chain operations and, eventually, efficiency. Simulation and modeling are powerful methods for analyzing, investigating, examining, observing and evaluating real-world industrial and logistic processes in this scenario. Fusion-based Machine learning provides a platform that may address the issues/limitations of Supply Chain Collaboration. Compared to the Classical probable data fusion techniques, the fused Machine learning method may offer a strong computing ability and prediction. In this scenario, the machine learning-based Supply Chain Collaboration model has been proposed to evaluate the propensity of the decision-making process to increase the efficiency of the Supply Chain Collaboration.

Affiliation: Skyline University College
SUC Author(s): Ghazal, T M ORCID: https://orcid.org/0000-0003-0672-7924 and Alzoubi, H M ORCID: https://orcid.org/0000-0003-3178-4007
All Author(s): Ali, N, Ghazal, T M, Ahmed, A, Abbas, S, A. Khan, M, Alzoubi, H M, Farooq, U, Ahmad, M and Adnan Khan, M
Item Type: Article
Uncontrolled Keywords: Business intelligence; k-nearest neighbor; machine learning; simulation; supply chain collaboration; support vector machine
Subjects: B Information Technology > BL Machine Learning
Divisions: Skyline University College > School of IT
Depositing User: Mr Veeramani Rasu
Date Deposited: 13 Apr 2022 08:40
Last Modified: 13 Apr 2022 08:40
URI: https://research.skylineuniversity.ac.ae/id/eprint/156
Publisher URL: https://doi.org/10.32604/iasc.2022.019892
Publisher OA policy: https://v2.sherpa.ac.uk/id/publication/24946
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