Home           Contact us           FAQs           
 
   Journal Page   |   Aims & Scope   |   Author Guideline   |   Editorial Board   |   Search
    Abstract
2013 (Vol. 5, Issue: 22)
Article Information:

Distributed Danger Assessment Model for the Internet of Things Based on Immunology

Run Chen, Jiliu Zhou and Caiming Liu
Corresponding Author:  Caiming Liu 

Key words:  Artificial immune system, danger assessment, internet of things, security threat, , ,
Vol. 5 , (22): 5255-5259
Submitted Accepted Published
October 22, 2012 December 19, 2012 May 25, 2013
Abstract:

The Internet of Things (IoT) confronts complicated and changeful security threats. It harms IoT and brings IoT potential danger. However, the research achievements of the danger assessment technology for IoT are rare. To calculate the danger value of IoT with many dispersive sense nodes, the theoretical model of distributed danger assessment for IoT is explored in this paper. The principles and mechanisms of Artificial Immune System (AIS) are introduced into the proposed model. Data packets in IoT are captured in each gateway and converted into antigens in the simulated immune environment. Detectors use self-learning and self-adaptation mechanisms in AIS to evolve themselves to adapt the local IoT environment and detect security threats. The mechanism of antibody density is simulated to reflect the intensity of security threats which are happening. Through the detected security threats and their intensity, the values of IoT property and security threatsí harm are combined to assess the quantitative value of danger for IoT. Theoretical analysis shows that the proposed model is significative of theory and practice.
Abstract PDF HTML
  Cite this Reference:
Run Chen, Jiliu Zhou and Caiming Liu, 2013. Distributed Danger Assessment Model for the Internet of Things Based on Immunology.  Research Journal of Applied Sciences, Engineering and Technology, 5(22): 5255-5259.
    Advertise with us
 
ISSN (Online):  2040-7467
ISSN (Print):   2040-7459
Submit Manuscript
   Current Information
   Sales & Services
   Contact Information
  Executive Managing Editor
  Email: admin@maxwellsci.com
  Publishing Editor
  Email: support@maxwellsci.com
  Account Manager
  Email: faisalm@maxwellsci.com
  Journal Editor
  Email: admin@maxwellsci.com
  Press Department
  Email: press@maxwellsci.com
Home  |  Contact us  |  About us  |  Privacy Policy
Copyright © 2009. MAXWELL Science Publication, a division of MAXWELLl Scientific Organization. All rights reserved