Explainable, Interpretable & Trustworthy AI for Intelligent Digital Twin: Case Study on Remaining Useful Life
Kazuma Kobayashi, Syed Bahauddin Alam

TL;DR
This paper emphasizes the importance of explainable and interpretable AI in digital twin systems for accurate remaining useful life predictions, enhancing trustworthiness and decision-making in engineering applications.
Contribution
It demonstrates the integration of XAI and IML techniques within digital twin frameworks for RUL prediction, highlighting their role in improving transparency and trust.
Findings
Enhanced RUL prediction accuracy with XAI/IML methods
Improved trust and interpretability of AI models in digital twins
Validated approach using PiML toolbox for IML
Abstract
Artificial intelligence (AI) and Machine learning (ML) are increasingly used in energy and engineering systems, but these models must be fair, unbiased, and explainable. It is critical to have confidence in AI's trustworthiness. ML techniques have been useful in predicting important parameters and in improving model performance. However, for these AI techniques to be useful for making decisions, they need to be audited, accounted for, and easy to understand. Therefore, the use of explainable AI (XAI) and interpretable machine learning (IML) is crucial for the accurate prediction of prognostics, such as remaining useful life (RUL), in a digital twin system, to make it intelligent while ensuring that the AI model is transparent in its decision-making processes and that the predictions it generates can be understood and trusted by users. By using AI that is explainable, interpretable, and…
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Taxonomy
TopicsDigital Transformation in Industry · Technology Assessment and Management
MethodsRepair
