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Performance of Machine Learning-Based Multi-Model Voting Ensemble Methods for Network Threat Detection in Agriculture

Nikolaos Peppes1, Emmanouil Daskalakis1, Theodoros Alexakis1

  • 1Institute of Communication and Computer Systems, National Technical University of Athens, 15773 Athens, Greece.

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This summary is machine-generated.

Machine learning (ML) models enhance network security for Agriculture 4.0 by classifying network traffic. Ensemble models, combining multiple ML classifiers, generally outperform individual models in accuracy for detecting cyber threats.

Keywords:
Agriculture 4.0active attackscybersecuritye-Commerceintrusion detectionmachine learningnetwork securitynetwork threatsnetwork traffic classificationvoting ensemble

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Area of Science:

  • Agricultural Technology
  • Cybersecurity
  • Machine Learning

Background:

  • Agriculture 4.0 integrates Information and Communication Technologies (ICT) into farming operations.
  • This integration introduces significant cyber threats, necessitating robust security measures.
  • Network traffic analysis and classification are crucial for mitigating these threats.

Purpose of the Study:

  • To evaluate the effectiveness of various Machine Learning (ML) classifiers for network traffic classification in the context of Agriculture 4.0.
  • To compare the performance of individual ML models against ensemble models.
  • To assess performance across different dataset variations (initial, undersampled, oversampled NSL-KDD).

Main Methods:

  • Implementation and evaluation of individual ML classifiers: K-Nearest Neighbors (KNN), Support Vector Classification (SVC), Decision Tree (DT), Random Forest (RF), and Stochastic Gradient Descent (SGD).
  • Development and assessment of ensemble models: hard voting and soft voting classifiers.
  • Utilized three variations of the NSL-KDD dataset for comprehensive performance analysis.

Main Results:

  • Individual ML algorithms demonstrated varying performance levels across dataset variations.
  • Ensemble models (hard and soft voting) generally achieved higher accuracy compared to individual ML classifiers.
  • The performance gains of ensemble methods were observed consistently across the tested dataset variations.

Conclusions:

  • Ensemble ML models offer superior network traffic classification accuracy for securing Agriculture 4.0 environments.
  • The proposed approach provides a viable solution for identifying and mitigating cyber threats in smart farming.
  • Further research can explore advanced ensemble techniques and real-world deployment scenarios.