Safe contextual Bayesian optimization integrated in industrial control for self-learning machines

Author:

De Blasi StefanoORCID,Bahrami Maryam,Engels Elmar,Gepperth AlexanderORCID

Abstract

AbstractIntelligent manufacturing applications and agent-based implementations are scientifically investigated due to the enormous potential of industrial process optimization. The most widespread data-driven approach is the use of experimental history under test conditions for training, followed by execution of the trained model. Since factors, such as tool wear, affect the process, the experimental history has to be compiled extensively. In addition, individual machine noise implies that the models are not easily transferable to other (theoretically identical) machines. In contrast, a continual learning system should have the capacity to adapt (slightly) to a changing environment, e.g., another machine under different working conditions. Since this adaptation can potentially have a negative impact on process quality, especially in industry, safe optimization methods are required. In this article, we present a significant step towards self-optimizing machines in industry, by introducing a novel method for efficient safe contextual optimization and continuously trading-off between exploration and exploitation. Furthermore, an appropriate data discard strategy and local approximation techniques enable continual optimization. The approach is implemented as generic software module for an industrial edge control device. We apply this module to a steel straightening machine as an example, enabling it to adapt safely to changing environments.

Funder

Hochschule Fulda

Publisher

Springer Science and Business Media LLC

Subject

Artificial Intelligence,Industrial and Manufacturing Engineering,Software

Reference92 articles.

1. Akametalu, A. K., Fisac, J. F., Gillula, J. H., Kaynama, S., Zeilinger, M. N., & Tomlin, C. J. (2014). Reachability-based safe learning with Gaussian processes. In: 53rd IEEE Conference on Decision and Control, pp. 1424–1431. IEEE.

2. Albrecht, J., Burchardt, G., & Kleinfeller, M. (Aug. 2019). Verfahren zum Adressieren von Datenobjekten in einem Steuerungssystem einer Maschine (German Patent 102019212471A1).

3. Albrecht, J., Burchardt, G., & Kleinfeller, M. (Jul. 2019). Method for transmitting data in a control system of a machine (U.S. Patent US020210055704A1).

4. Amodei, D., Olah, C., Steinhardt, J., Christiano, P., Schulman, J., & Mané, D. (2016). Concrete problems in ai safety. arXiv preprint arXiv:1606.06565

5. Azizi, A. (2019). Applications of artificial intelligence techniques in industry 4.0. Springer.

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