Evaluation of key impression of resilient supply chain based on
artificial intelligence of things (AIoT)
- URL: http://arxiv.org/abs/2207.13174v1
- Date: Mon, 18 Jul 2022 06:15:59 GMT
- Title: Evaluation of key impression of resilient supply chain based on
artificial intelligence of things (AIoT)
- Authors: Alireza Aliahmadi, Hamed Nozari, Javid Ghahremani-Nahr, Agnieszka
Szmelter-Jarosz
- Abstract summary: Supply chain organizations must always be prepared for challenges and dynamic environmental changes.
One of the effective solutions to face these challenges is to create a resilient supply chain.
The competitive advantage of this supply chain does not depend only on low costs, high quality, reduced latency and high level of service.
- Score: 1.0323063834827415
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In recent years, the high complexity of the business environment, dynamism
and environmental change, uncertainty and concepts such as globalization and
increasing competition of organizations in the national and international arena
have caused many changes in the equations governing the supply chain. In this
case, supply chain organizations must always be prepared for a variety of
challenges and dynamic environmental changes. One of the effective solutions to
face these challenges is to create a resilient supply chain. Resilient supply
chain is able to overcome uncertainties and disruptions in the business
environment. The competitive advantage of this supply chain does not depend
only on low costs, high quality, reduced latency and high level of service.
Rather, it has the ability of the chain to avoid catastrophes and overcome
critical situations, and this is the resilience of the supply chain. AI and IoT
technologies and their combination, called AIoT, have played a key role in
improving supply chain performance in recent years and can therefore increase
supply chain resilience. For this reason, in this study, an attempt was made to
better understand the impact of these technologies on equity by examining the
dimensions and components of the Artificial Intelligence of Things (AIoT)-based
supply chain. Finally, using nonlinear fuzzy decision making method, the most
important components of the impact on the resilient smart supply chain are
determined. Understanding this assessment can help empower the smart supply
chain.
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