Improving Performance Classification in Wireless Body Area Sensor Networks Based on Machine Learning Techniques

Authors

  • Sabreen Waheed Kadhum Computer Engineering Department, College of Engineering, Mustansiriyah University, Baghdad, Iraq Author https://orcid.org/0009-0006-0486-6612
  • Mohammed Ali Tawfeeq Computer Engineering Department, College of Engineering, Mustansiriyah University, Baghdad, Iraq Author https://orcid.org/0000-0002-6935-0098

DOI:

https://doi.org/10.31272/jeasd.2491

Keywords:

Data analytics, Learning Vector Quantization, Machine Learning, Support Vector Machine, Wireless Body Area Network

Abstract

Wireless Body Area Sensor Networks (WBASNs) have garnered significant attention due to the implementation of self-automaton and modern technologies. Within the healthcare WBASN, certain sensed data hold greater significance than others in light of their critical aspect. Such vital data must be given within a specified time frame. Data loss and delay could not be tolerated in such types of systems. Intelligent algorithms are distinguished by their superior ability to interact with various data systems. Machine learning methods can analyze the gathered data and uncover previously unknown patterns and information. These approaches can also diagnose and notify critical conditions in patients under monitoring. This study implements two supervised machine learning classification techniques, Learning Vector Quantization (LVQ) and Support Vector Machine (SVM) classifiers, to achieve better search performance and high classification accuracy in a heterogeneous WBASN. These classification techniques are responsible for categorizing each incoming packet into normal, critical, or very critical, depending on the patient's condition, so that any problem affecting him can be addressed promptly. Comparative analyses reveal that LVQ outperforms SVM in terms of accuracy at 91.45% and 80%, respectively.

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Key Dates

Received

2024-02-04

Revised

2024-11-30

Accepted

2024-12-01

Published Online First

2025-01-01

Published

2025-01-01

How to Cite

Sabreen Waheed Kadhum, & Ali Tawfeeq, M. . (2025). Improving Performance Classification in Wireless Body Area Sensor Networks Based on Machine Learning Techniques. Journal of Engineering and Sustainable Development, 29(1), 112-119. https://doi.org/10.31272/jeasd.2491

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