Please use this identifier to cite or link to this item: doi:10.22028/D291-44363
Title: Robust Distribution-Aware Ensemble Learning for Multi-Sensor Systems
Author(s): Goodarzi, Payman
Schauer, Julian
Schütze, Andreas
Language: English
Title: Sensors
Volume: 25
Issue: 3
Publisher/Platform: MDPI
Year of Publication: 2025
Free key words: prognostics and health management (PHM)
sensor-based systems
AutoML
deep ensemble learning
out-of-distribution (OOD) detection
domain adaptation
structural health monitoring
condition monitoring
anomaly detection
DDC notations: 500 Science
Publikation type: Journal Article
Abstract: Detecting distribution and domain shifts is critical in decision-sensitive applications, such as industrial monitoring systems. This paper introduces a novel, robust multi-sensor ensemble framework that integrates principles of automated machine learning (AutoML) to address the challenges of domain shifts and variability in sensor data. By leveraging diverse model architectures, hyperparameters (HPs), and decision aggregation strategies, the proposed framework enhances adaptability to unnoticed distribution shifts. The method effectively handles tasks with various data properties, such as the number of sensors, data length, and information domains. Additionally, the integration of HP optimization and model selection significantly reduces the training cost of ensemble models. Extensive evaluations on five publicly available datasets demonstrate the effectiveness of the proposed framework in both targeted supervised tasks and unsupervised distribution shift detection. The proposed method significantly improves common evaluation metrics compared to single-model baselines. Across the selected datasets, the framework achieves near-perfect test accuracy for classification tasks, leveraging the AutoML approach. Additionally, it effectively identifies distribution shifts in the same scenarios, with an average AUROC of 90% and an FPR95 of 20%. This study represents a practical step toward a distribution-aware front-end approach for addressing challenges in industrial applications under real-world scenarios using AutoML, highlighting the novelty of the method.
DOI of the first publication: 10.3390/s25030831
URL of the first publication: https://doi.org/10.3390/s25030831
Link to this record: urn:nbn:de:bsz:291--ds-443635
hdl:20.500.11880/39690
http://dx.doi.org/10.22028/D291-44363
ISSN: 1424-8220
Date of registration: 18-Feb-2025
Faculty: NT - Naturwissenschaftlich- Technische Fakultät
Department: NT - Systems Engineering
Professorship: NT - Prof. Dr. Andreas Schütze
Collections:SciDok - Der Wissenschaftsserver der Universität des Saarlandes

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