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Non-standard situation detection in smart water metering

Non-standard situation detection in smart water metering AbstractIn this paper an algorithm for detection of nonstandard situations in smart water metering based on machine learning is designed. The main categories for nonstandard situation or anomaly detection and two common methods for anomaly detection are analyzed. The proposed solution needs to fit the requirements for correct, efficient and real-time detection of non-standard situations in actual water consumption with minimal required consumer intervention to its operation. Moreover, a proposal to extend the original hardware solution is described and implemented to accommodate the needs of the detection algorithm. The final implemented and tested solution evaluates anomalies in water consumption for a given time in specific day and month using machine learning with a semi-supervised approach. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png Open Computer Science de Gruyter

Non-standard situation detection in smart water metering

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Publisher
de Gruyter
Copyright
© 2021 O. Kainz et al., published by De Gruyter
eISSN
2299-1093
DOI
10.1515/comp-2020-0190
Publisher site
See Article on Publisher Site

Abstract

AbstractIn this paper an algorithm for detection of nonstandard situations in smart water metering based on machine learning is designed. The main categories for nonstandard situation or anomaly detection and two common methods for anomaly detection are analyzed. The proposed solution needs to fit the requirements for correct, efficient and real-time detection of non-standard situations in actual water consumption with minimal required consumer intervention to its operation. Moreover, a proposal to extend the original hardware solution is described and implemented to accommodate the needs of the detection algorithm. The final implemented and tested solution evaluates anomalies in water consumption for a given time in specific day and month using machine learning with a semi-supervised approach.

Journal

Open Computer Sciencede Gruyter

Published: Jan 1, 2021

Keywords: anomaly detection; machine learning; nonstandard situation detection; smart water metering; water consumption

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