Transfer Learning as an Enabler of the Intelligent Digital Twin
Benjamin Maschler, Dominik Braun, Nasser Jazdi, Michael Weyrich

TL;DR
This paper explores how integrating transfer learning with intelligent Digital Twins can improve machine learning applications across different lifecycle phases of industrial systems, enabling faster deployment and more effective fault handling.
Contribution
It introduces the concept of cross-phase industrial transfer learning enabled by Digital Twins, demonstrating its benefits through real-world use cases in cyber-physical production systems.
Findings
Faster algorithm deployment with minimal real data needed
Enhanced fault simulation and training capabilities
Reduced commissioning time and costs
Abstract
Digital Twins have been described as beneficial in many areas, such as virtual commissioning, fault prediction or reconfiguration planning. Equipping Digital Twins with artificial intelligence functionalities can greatly expand those beneficial applications or open up altogether new areas of application, among them cross-phase industrial transfer learning. In the context of machine learning, transfer learning represents a set of approaches that enhance learning new tasks based upon previously acquired knowledge. Here, knowledge is transferred from one lifecycle phase to another in order to reduce the amount of data or time needed to train a machine learning algorithm. Looking at common challenges in developing and deploying industrial machinery with deep learning functionalities, embracing this concept would offer several advantages: Using an intelligent Digital Twin, learning…
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