Enhancing Anomaly Detection in Smart Water Metering Networks with LSTM-Autoencoder and Data Augmentation Techniques

Publikation: Beitrag in Buch/Konferenzbericht/Sammelband/GutachtenBeitrag in KonferenzbandBeigetragenBegutachtung

Beitragende

  • Maria Nelago Kanyama - , Namibia University of Science and Technology (Autor:in)
  • Fungai Bhunu Shava - , Namibia University of Science and Technology (Autor:in)
  • Attlee M. Gamundani - , Namibia University of Science and Technology (Autor:in)
  • Andreas Hartmann - , Professur für Grundwassersysteme (Autor:in)

Abstract

Machine Learning (ML) based anomaly detection in Smart Water Metering Networks (SWMNs) and traditional water metering networks faces significant challenges, including small dataset sizes, unlabeled data, and class imbalance. These issues often lead to high false detection rates, model overfitting, and increased model complexity. This paper aims to enhance anomaly detection in SWMNs using a ML-based Long Short-Term Memory Autoencoder (LSTM-AE) augmented with data augmentation techniques. The dataset, collected from Location A in Windhoek, Namibia, comprised of only 72 monthly water consumption data points per household, which is insufficient for effectively training ML models. To address this limitation, we employed two interpolation-based data augmentation techniques: Piecewise Cubic Hermite Interpolating Polynomial (PCHIP) and Cubic Spline, to generate synthetic data instances to expand the dataset. These techniques were selected based on the patterns and trends of water consumption data and were compared for their accuracy. The original and augmented datasets were then used to train the LSTM-AE model. The results demonstrate that, despite the limited data available in the water sector, data augmentation techniques can significantly enrich datasets, leading to substantial performance improvement with augmented data. The proposed approach greatly enhanced the accuracy of the LSTM-AE model in reconstructing data from small datasets. This study underscores the potential of data augmentation to overcome data scarcity in the water sector and enhance anomaly detection in SWMNs.

Details

OriginalspracheEnglisch
Titel2024 4th International Multidisciplinary Information Technology and Engineering Conference (IMITEC)
Seiten20-28
Seitenumfang9
ISBN (elektronisch)979-8-3503-8798-8
PublikationsstatusVeröffentlicht - 2024
Peer-Review-StatusJa

Konferenz

Titel4th International Multidisciplinary Information Technology and Engineering Conference
KurztitelIMITEC 2024
Veranstaltungsnummer4
Dauer27 - 29 November 2024
Webseite
OrtVaal University of Technology
StadtVanderbijlpark
LandSüdafrika

Externe IDs

ORCID /0000-0003-0407-742X/work/188438481

Schlagworte

Schlagwörter

  • Anomaly Detection, Data Augmentation, LSTM Autoencoder, Smart Water Metering Networks, Unsupervised Learning