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A Passive Diagnosis for Self Organizing and Distributed Wireless Sensor Networks


Affiliations
1 ECE Department, SCSVMV University, Enathur, Kanchipuram, India
2 E&I Department, SCSVMV University, Enathur, Kanchipuram, India
 

Network diagnosis, an essential research topic for traditional networking systems, has not received much attention for wireless sensor networks (WSNs). Existing sensor debugging tools like sympathy or EmStar rely heavily on an add-in protocol that generates and reports a large amount of status information from individual sensor nodes, introducing network overhead to the resource constrained and usually traffic-sensitive sensor network. We report our initial attempt at providing a lightweight network diagnosis mechanism for sensor networks. We further propose PAD, a probabilistic diagnosis approach for inferring the ischolar_main causes of abnormal phenomena. PAD employs a packet marking scheme for efficiently constructing and dynamically maintaining the inference model. Our approach does not incur additional traffic overhead for collecting desired information. Instead, we introduce a probabilistic inference model that encodes internal dependencies among different network elements for online diagnosis of an operational sensor network system. Such a model is capable of additively reasoning ischolar_main causes based on passively observed symptoms. We can implement the PAD prototype in our sea monitoring sensor network test-bed.

Keywords

Diagnosis, Passive, Sensor Networks.
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  • A Passive Diagnosis for Self Organizing and Distributed Wireless Sensor Networks

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Authors

A. Rajasekaran
ECE Department, SCSVMV University, Enathur, Kanchipuram, India
K. Saraswathi
E&I Department, SCSVMV University, Enathur, Kanchipuram, India

Abstract


Network diagnosis, an essential research topic for traditional networking systems, has not received much attention for wireless sensor networks (WSNs). Existing sensor debugging tools like sympathy or EmStar rely heavily on an add-in protocol that generates and reports a large amount of status information from individual sensor nodes, introducing network overhead to the resource constrained and usually traffic-sensitive sensor network. We report our initial attempt at providing a lightweight network diagnosis mechanism for sensor networks. We further propose PAD, a probabilistic diagnosis approach for inferring the ischolar_main causes of abnormal phenomena. PAD employs a packet marking scheme for efficiently constructing and dynamically maintaining the inference model. Our approach does not incur additional traffic overhead for collecting desired information. Instead, we introduce a probabilistic inference model that encodes internal dependencies among different network elements for online diagnosis of an operational sensor network system. Such a model is capable of additively reasoning ischolar_main causes based on passively observed symptoms. We can implement the PAD prototype in our sea monitoring sensor network test-bed.

Keywords


Diagnosis, Passive, Sensor Networks.