Intelligent supply chains through implementation of digital twins

Date published

2022-07-05

Free to read from

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

Springer

Department

Type

Book chapter

ISSN

2367-3370

Format

Citation

Kulaç O, Ekren BY, Toy AO. (2022) Intelligent supply chains through implementation of digital twins. In: Intelligent and Fuzzy Systems: Digital Acceleration and The New Normal - Proceedings of the INFUS 2022 Conference, Volume 504, Springer, pp. 957-964

Abstract

Data-driven decision-making process can be defined to be the sequential activities of real-time data collection, data analytics, optimization and decision making. Developments in Industry 4.0 technologies have made it possible to realize that new quality decision-making process. When that decision-making process is performed under the simulation model of a system developed on real-time data-based and end-to-end connection manner, to prevent the disruption risks and to improve resilience in a system, then it constitutes a digital twin (DT). A DT is a virtual representation of an object or system that can help organizations monitor operations, perform predictive analytics, and improve processes. For instance, a DT could provide a digital replica of the operations of a factory, communications network, or the flow of goods through a supply chain system. In this work, we focus on DT implementations in supply chain networks. We present state of the art implementation of DTs in supply chains and their prospective utilizations towards creating intelligent supply chains.

Description

Software Description

Software Language

Github

Keywords

Digital twin, Supply Chain Management, Data-driven decision making

DOI

Rights

Relationships

Relationships

Resources

Funder/s