Trust Based Intrusion Detection in Wireless Sensor Networks

Abstract

We propose a trust-based intrusion detection scheme utilizing a highly scalable hierarchical trust management protocol for clustered wireless sensor networks. Unlike existing work, we consider a trust metric considering both quality of service (QoS) trust and social trust for detecting malicious nodes. By statistically analyzing peer-to-peer trust evaluation results collected from sensor nodes, each cluster head applies trust-based intrusion detection to assess the trustworthiness and maliciousness of sensor nodes in its cluster. Cluster heads themselves are evaluated by the base station. We develop an analytical model based on stochastic Petri nets for performance evaluation of the proposed trust-based intrusion detection scheme, as well as a statistical method for calculating the false alarm probability. We analyze the sensitivity of false alarms with respect to the minimum trust threshold below which a node is considered malicious. Our results show that there exists an optimal trust threshold for minimizing false positives and false negatives. Further, the optimal trust threshold differs depending on the anticipated wireless sensor network lifetime.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 2011
Accession Number
AD1004661

Entities

People

  • Fenye Bao
  • Ingray Chen
  • Jin-Hee Cho
  • Moonjeong Chang

Organizations

  • United States Army Research Laboratory

Tags

Communities of Interest

  • Cyber
  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Communication Networks
  • Computer Science
  • Detection
  • Detectors
  • Energy Consumption
  • Equations
  • False Alarms
  • Information Science
  • Intrusion
  • Intrusion Detection
  • Intrusion Detection Systems
  • Intrusion Detectors
  • Mobile Ad Hoc Networks
  • Probability
  • Sensor Networks
  • Statistical Analysis
  • Wireless Sensor Networks

Fields of Study

  • Computer science

Readers

  • Agent-Based Social Robotics and Mobile-Assisted Learning in Virtual Environments.
  • Regression Analysis.
  • Sensor Fusion and Tracking Systems.