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Main Authors: Mishra, Rahul, Jha, Sudhanshu Kumar, Osama, Omar Faruq, Bhusal, Bishnu, Sudhakaran, Sneha, Kshetri, Naresh
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.00481
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author Mishra, Rahul
Jha, Sudhanshu Kumar
Osama, Omar Faruq
Bhusal, Bishnu
Sudhakaran, Sneha
Kshetri, Naresh
author_facet Mishra, Rahul
Jha, Sudhanshu Kumar
Osama, Omar Faruq
Bhusal, Bishnu
Sudhakaran, Sneha
Kshetri, Naresh
contents Wireless Sensor Networks forms the backbone of modern cyber physical systems used in various applications such as environmental monitoring, healthcare monitoring, industrial automation, and smart infrastructure. Ensuring the reliability of data collected through these networks is essential as these data may contain anomalies due to many reasons such as sensor faults, environmental disturbances, or malicious intrusions. In this paper a lightweight and interpretable anomaly detection framework based on a first order Markov chain model has been proposed. The method discretizes continuous sensor readings into finite states and models the temporal dynamics of sensor transitions through a transition probability matrix. Anomalies are detected when observed transitions occur with probabilities below a computed threshold, allowing for real time detection without labeled data or intensive computation. The proposed framework was validated using the Intel Berkeley Research Lab dataset, as a case study on indoor environmental monitoring demonstrates its capability to identify thermal spikes, voltage related faults, and irregular temperature fluctuations with high precision. Comparative analysis with Z score, Hidden Markov Model, and Auto encoder based methods shows that the proposed Markov based framework achieves a balanced trade-off between accuracy, F1 score is 0.86, interoperability, and computational efficiency. The systems scalability and low resource footprint highlight its suitability for large-scale and real time anomaly detection in WSN deployments.
format Preprint
id arxiv_https___arxiv_org_abs_2511_00481
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Efficient Anomaly Detection Framework for Wireless Sensor Networks Using Markov Process
Mishra, Rahul
Jha, Sudhanshu Kumar
Osama, Omar Faruq
Bhusal, Bishnu
Sudhakaran, Sneha
Kshetri, Naresh
Cryptography and Security
Wireless Sensor Networks forms the backbone of modern cyber physical systems used in various applications such as environmental monitoring, healthcare monitoring, industrial automation, and smart infrastructure. Ensuring the reliability of data collected through these networks is essential as these data may contain anomalies due to many reasons such as sensor faults, environmental disturbances, or malicious intrusions. In this paper a lightweight and interpretable anomaly detection framework based on a first order Markov chain model has been proposed. The method discretizes continuous sensor readings into finite states and models the temporal dynamics of sensor transitions through a transition probability matrix. Anomalies are detected when observed transitions occur with probabilities below a computed threshold, allowing for real time detection without labeled data or intensive computation. The proposed framework was validated using the Intel Berkeley Research Lab dataset, as a case study on indoor environmental monitoring demonstrates its capability to identify thermal spikes, voltage related faults, and irregular temperature fluctuations with high precision. Comparative analysis with Z score, Hidden Markov Model, and Auto encoder based methods shows that the proposed Markov based framework achieves a balanced trade-off between accuracy, F1 score is 0.86, interoperability, and computational efficiency. The systems scalability and low resource footprint highlight its suitability for large-scale and real time anomaly detection in WSN deployments.
title An Efficient Anomaly Detection Framework for Wireless Sensor Networks Using Markov Process
topic Cryptography and Security
url https://arxiv.org/abs/2511.00481