Abstract

Background: As the Internet of Things (IoT) has become more prevalent in recent years, digital twins have attracted a lot of attention. A digital twin is a virtual representation that replicates a physical object or process over a period of time. These tools directly assist in reducing the manufacturing and supply chain lead time to produce a lean, flexible, and smart production and supply chain setting. Recently, reinforced machine learning has been introduced in production and logistics systems to build prescriptive decision support platforms to create a combination of lean, smart, and agile production setup. Therefore, there is a need to cumulatively arrange and systematize the past research done in this area to get a better understanding of the current trend and future research directions from the perspective of Industry 4.0. Methods: Strict keyword selection, search strategy, and exclusion criteria were applied in the Scopus database (2010 to 2021) to systematize the literature. Results: The findings are snowballed as a systematic review and later the final data set has been conducted to understand the intensity and relevance of research work done in different subsections related to the context of the research agenda proposed. Conclusion: A framework for data-driven digital twin generation and reinforced learning has been proposed at the end of the paper along with a research paradigm.

Highlights

  • IntroductionDigital twin technology creates relatively close connectivity between both the virtual and physical worlds, allowing you to monitor and command systems and components remotely

  • This research will answer the following research questions: RQ1) What are the applications of digital twin simulation modelling in Supply chain and logistics? RQ2) What is the impact of digital twin and reinforced machine Learning on supply chain and logistics? RQ3) What are the prospects and scope for prescriptive modelling in supply chain and logistics? How will that ease the process of building a decision support system for a supply chain or logistics 4.0? This paper has discussed the research problem and purpose of study in the introduction part followed by a state-of-the-art literature review discussing past research work and gaps

  • (RQ1) What are the applications of digital twin simulation modelling in Supply chain and logistics? (RQ2) What is the impact of digital twin and reinforced machine Learning on supply chain and logistics? (RQ3) What are the prospects and scope for prescriptive modelling in supply chain and logistics? How will that ease the process of building a decision sup-port system for a supply chain or logistics 4.0?

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Summary

Introduction

Digital twin technology creates relatively close connectivity between both the virtual and physical worlds, allowing you to monitor and command systems and components remotely. Organizations are getting significant benefits from digital twin technology that assists in mapping and analyzing details related to operations performance, product and service innovation, and shorter on time delivery [1,2]. A digital twin is a virtual representation that replicates a physical object or process over a period of time. These tools directly assist in reducing the manufacturing and supply chain lead time to produce a lean, flexible, and smart production and supply chain setting. Methods: Strict keyword selection, search strategy, and exclusion criteria were applied in the Scopus database (2010 to 2021) to systematize the literature

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