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2021
Conference Paper
Title

Embedded acoustic fault monitoring for water pumps

Abstract
Maintaining pumps, especially waste water pumps, is quite a cost-intensive task. The proper operation must be guaranteed under all circumstances. Accessing the pumps, however, is not easily done, as they are submerged in waste water. This paper describes the development of a fault classification system based on acoustic signals, with the focus on finding an optimal feature space and an efficient classifier in terms of energy and memory footprint. Those characteristics are especially important when the classifier has to run on a resource-constrained platform like an embedded system. In this paper, we show how the combination of a dimensionality reduction and a feature selection can be used to reduce the memory footprint of the entire system by 79%, with no significant loss in test set accuracy. With this strategy, a neural network with thirty input features was deployed on an embedded system with a memory footprint for the classification parameters of only 22.94 kB.
Author(s)
Oliveira, Iago
RUB Bochum
Latoschewski, Dennis  
Fraunhofer-Institut für Mikroelektronische Schaltungen und Systeme IMS  
Wiede, Christian  
Fraunhofer-Institut für Mikroelektronische Schaltungen und Systeme IMS  
Oettmeier, Martin
WILO SE, Dortmund
Graurock, David
WILO SE, Dortmund
Kolossa, Dorothea
RUB Bochum
Mainwork
28th IEEE International Conference on Electronics, Circuits, and Systems, ICECS 2021. Conference Proceedings  
Conference
International Conference on Electronics, Circuits, and Systems (ICECS) 2021  
DOI
10.1109/ICECS53924.2021.9665616
Language
English
Fraunhofer-Institut für Mikroelektronische Schaltungen und Systeme IMS  
Keyword(s)
  • predictive maintenance

  • artificial intelligence (AI)

  • neural networks

  • acoustic fault monitoring

  • feature selection

  • dimensionality reduction

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