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Digital Twin Evolution for Sustainable Smart Ecosystems

Abstract

Smart ecosystems are the drivers of modern society. They control infrastructures of socio-techno-economic importance, ensuring their stable and sustainable operation. Smart ecosystems are governed by digital twins---real-time virtual representations of physical infrastructure. To support the open-ended and reactive traits of smart ecosystems, digital twins need to be able to evolve in reaction to changing conditions. However, digital twin evolution is challenged by the intertwined nature of physical and software components, and their individual evolution. As a consequence, software practitioners find a substantial body of knowledge on software evolution hard to apply in digital twin evolution scenarios and a lack of knowledge on the digital twin evolution itself. The aim of this paper, consequently, is to provide software practitioners with tangible leads toward understanding and managing the evolutionary concerns of digital twins. We use four distinct digital twin evolution scenarios, contextualized in a citizen energy community case to illustrate the usage of the 7R taxonomy of digital twin evolution. By that, we aim to bridge a significant gap in leveraging software engineering practices to develop robust smart ecosystems.

Authors

Michael J; David I; Bork D

Pagination

pp. 1061-1065

Publisher

Association for Computing Machinery (ACM)

Publication Date

September 22, 2024

DOI

10.1145/3652620.3688343

Name of conference

Proceedings of the ACM/IEEE 27th International Conference on Model Driven Engineering Languages and Systems
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