Integration of Novel Sensors and Machine Learning for Predictive Maintenance in Medium Voltage Switchgear to Enable the Energy and Mobility Revolutions
Martin W. Hoffmann,
Stephan Wildermuth,
Ralf Gitzel,
Aydin Boyaci,
Jörg Gebhardt,
Holger Kaul,
Ido Amihai,
Bodo Forg,
Michael Suriyah,
Thomas Leibfried,
Volker Stich,
Jan Hicking,
Martin Bremer,
Lars Kaminski,
Daniel Beverungen,
Philipp zur Heiden,
Tanja Tornede
Affiliations
Martin W. Hoffmann
ABB AG, Corporate Research Germany, 68526 Ladenburg, Germany
Stephan Wildermuth
ABB AG, Corporate Research Germany, 68526 Ladenburg, Germany
Ralf Gitzel
ABB AG, Corporate Research Germany, 68526 Ladenburg, Germany
Aydin Boyaci
ABB AG, Corporate Research Germany, 68526 Ladenburg, Germany
Jörg Gebhardt
ABB AG, Corporate Research Germany, 68526 Ladenburg, Germany
Holger Kaul
ABB AG, Corporate Research Germany, 68526 Ladenburg, Germany
Ido Amihai
ABB AG, Corporate Research Germany, 68526 Ladenburg, Germany
Bodo Forg
Heimann Sensor GmbH, 01109 Dresden, Germany
Michael Suriyah
Institute of Electric Energy Systems and High Voltage Technology, Karlsruhe Institute of Technology (KIT), 76131 Karlsruhe, Germany
Thomas Leibfried
Institute of Electric Energy Systems and High Voltage Technology, Karlsruhe Institute of Technology (KIT), 76131 Karlsruhe, Germany
Volker Stich
FIR (Institute for Industrial Management) at the RWTH Aachen University, 52074Aachen, Germany
Jan Hicking
FIR (Institute for Industrial Management) at the RWTH Aachen University, 52074Aachen, Germany
Martin Bremer
FIR (Institute for Industrial Management) at the RWTH Aachen University, 52074Aachen, Germany
Lars Kaminski
FIR (Institute for Industrial Management) at the RWTH Aachen University, 52074Aachen, Germany
Daniel Beverungen
Chair of Business Information Systems, Paderborn University, 33098 Paderborn, Germany
Philipp zur Heiden
Chair of Business Information Systems, Paderborn University, 33098 Paderborn, Germany
Tanja Tornede
Software Innovation Campus Paderborn, Department of Computer Science and Heinz Nixdorf Institute, Paderborn University, 33098 Paderborn, Germany
The development of renewable energies and smart mobility has profoundly impacted the future of the distribution grid. An increasing bidirectional energy flow stresses the assets of the distribution grid, especially medium voltage switchgear. This calls for improved maintenance strategies to prevent critical failures. Predictive maintenance, a maintenance strategy relying on current condition data of assets, serves as a guideline. Novel sensors covering thermal, mechanical, and partial discharge aspects of switchgear, enable continuous condition monitoring of some of the most critical assets of the distribution grid. Combined with machine learning algorithms, the demands put on the distribution grid by the energy and mobility revolutions can be handled. In this paper, we review the current state-of-the-art of all aspects of condition monitoring for medium voltage switchgear. Furthermore, we present an approach to develop a predictive maintenance system based on novel sensors and machine learning. We show how the existing medium voltage grid infrastructure can adapt these new needs on an economic scale.