Uncertainty Guided Online Ensemble for Non-stationary Data Streams in Fusion Science
Kishansingh Rajput, Malachi Schram, Brian Sammuli, Sen Lin

TL;DR
This paper introduces an uncertainty-guided online ensemble method using Deep Gaussian Process Approximation to adaptively predict non-stationary fusion data, significantly improving accuracy and robustness in fusion device monitoring.
Contribution
It presents a novel uncertainty-guided online ensemble approach with DGPA for non-stationary fusion data streams, enhancing prediction accuracy and model reliability.
Findings
Reduces prediction error by 80% compared to static models.
Improves online learning performance with uncertainty-guided ensemble.
Provides calibrated uncertainty estimates for decision-making.
Abstract
Machine Learning (ML) is poised to play a pivotal role in the development and operation of next-generation fusion devices. Fusion data shows non-stationary behavior with distribution drifts, resulted by both experimental evolution and machine wear-and-tear. ML models assume stationary distribution and fail to maintain performance when encountered with such non-stationary data streams. Online learning techniques have been leveraged in other domains, however it has been largely unexplored for fusion applications. In this paper, we present an application of online learning to continuously adapt to drifting data stream for prediction of Toroidal Field (TF) coils deflection at the DIII-D fusion facility. The results demonstrate that online learning is critical to maintain ML model performance and reduces error by 80% compared to a static model. Moreover, traditional online learning can…
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Taxonomy
TopicsData Stream Mining Techniques · Magnetic confinement fusion research · Time Series Analysis and Forecasting
