Stuttgart Open Relay Degradation Dataset (SOReDD)
Benjamin Maschler, Angel Iliev, Thi Thu Huong Pham, Michael Weyrich

TL;DR
The SOReDD dataset provides diverse relay degradation data under various conditions to facilitate transfer learning in industrial failure prediction, addressing the scarcity of open-source datasets for such tasks.
Contribution
This paper introduces the SOReDD dataset, a comprehensive open-source resource for relay degradation, enabling research in transfer learning for industrial failure prediction.
Findings
Dataset covers multiple relay types and operating conditions.
Supports transfer learning research in industrial automation.
Aims to improve predictive maintenance accuracy.
Abstract
Real-life industrial use cases for machine learning oftentimes involve heterogeneous and dynamic assets, processes and data, resulting in a need to continuously adapt the learning algorithm accordingly. Industrial transfer learning offers to lower the effort of such adaptation by allowing the utilization of previously acquired knowledge in solving new (variants of) tasks. Being data-driven methods, the development of industrial transfer learning algorithms naturally requires appropriate datasets for training. However, open-source datasets suitable for transfer learning training, i.e. spanning different assets, processes and data (variants), are rare. With the Stuttgart Open Relay Degradation Dataset (SOReDD) we want to offer such a dataset. It provides data on the degradation of different electromechanical relays under different operating conditions, allowing for a large number of…
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