An Explainable Evolving Fuzzy Neural Network to Predict the k Barriers for Intrusion Detection Using a Wireless Sensor Network

Sensors (Basel). 2022 Jul 21;22(14):5446. doi: 10.3390/s22145446.

Abstract

Evolving fuzzy neural networks have the adaptive capacity to solve complex problems by interpreting them. This is due to the fact that this type of approach provides valuable insights that facilitate understanding the behavior of the problem being analyzed, because they can extract knowledge from a set of investigated data. Thus, this work proposes applying an evolving fuzzy neural network capable of solving data stream regression problems with considerable interpretability. The dataset is based on a necessary prediction of k barriers with wireless sensors to identify unauthorized persons entering a protected territory. Our method was empirically compared with state-of-the-art evolving methods, showing significantly lower RMSE values for separate test data sets and also lower accumulated mean absolute errors (MAEs) when evaluating the methods in a stream-based interleaved-predict-and-then-update procedure. In addition, the model could offer relevant information in terms of interpretable fuzzy rules, allowing an explainable evaluation of the regression problems contained in the data streams.

Keywords: evolving fuzzy neural networks; interpretability; intrusion detection; k barriers; wireless sensor networks.

MeSH terms

  • Algorithms
  • Fuzzy Logic*
  • Neural Networks, Computer*
  • Wireless Technology

Grants and funding

Open Access Funding by the Austrian Science Fund (FWF), contract number P32272-N38, acronym IL-EFS.