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A Novel Machine Learning Strategy for Anomaly Identification Scheme in Wireless Sensor Networks Using Supervised Training Principles | IEEE Conference Publication | IEEE Xplore

A Novel Machine Learning Strategy for Anomaly Identification Scheme in Wireless Sensor Networks Using Supervised Training Principles


Abstract:

Anomaly detection in Wireless Sensor Networks (WSN s) is critical for maintaining the integrity and reliability of various monitoring systems, especially in agricultural ...Show More

Abstract:

Anomaly detection in Wireless Sensor Networks (WSN s) is critical for maintaining the integrity and reliability of various monitoring systems, especially in agricultural settings. The core of this study is the development of a hybrid anomaly detection model, SVM-RFNet, which integrates Support Vector Machines (SVM), Random Forests (RF), and Neural Networks (NN). By applying noise reduction techniques, such as smoothing algorithms, the data quality is significantly enhanced, resulting in cleaner and more stable datasets. Feature engineering, including temporal trend analysis and Principal Component Analysis (PCA), further refines the dataset by extracting and selecting the most informative features. This model combines the strengths of each method, leveraging SVM's robustness in high-dimensional data, RF's ensemble learning capabilities, and NN's ability to learn complex patterns. The SVM-RFNet model achieved an impressive accuracy of 96%, demonstrating its efficacy in real-time anomaly detection. The paper concludes with a discussion on future research directions, including the integration of advanced deep learning techniques and the development of self-healing networks, which promise to further enhance the capabilities and applications of WSN s in various domains.
Date of Conference: 07-09 August 2024
Date Added to IEEE Xplore: 02 October 2024
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Conference Location: Coimbatore, India
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I. Introduction

In the modern age, Wireless Sensor Networks (WSNs) are crucial technology and have contributed relatively a lot in environmental monitoring, health care systems for patient Monitoring applications to improve quality of life; Industry automation system due evolution with cloud computing as well many others like military services. Generally, a WSN has many small autonomous sensors deployed over an area where they monitor physical or environmental conditions-such as temperature, sound levels (noise), humidity etc [1] [2]. They effectively form a mesh that blankets immense areas and digitally inspects something multiple times per minute. The real-time data and remote monitoring capability of these networks has introduced transformation across various sectors.

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