Stochastic geometry for wireless networks
By: Haenggi, Martin.Material type: BookPublisher: New York: Cambridge University Press, ©2013Description: xv, 284 p. : ill. ; 26 cm.ISBN: 9781107014695.Subject(s): Wireless communication systems -- Mathematics | Stochastic models | TECHNOLOGY & ENGINEERING / Mobile & Wireless CommunicationsOnline resources: Cover image
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|Books||IIITD Reference||Electronics and Communication Engineering||REF 621.39 HAE-S (Browse shelf)||Checked out Not For Loan||19/05/2020||004785|
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Includes bibliographical references (pages 275-279) and index.
Machine generated contents note: Part I. Point Process Theory: 1. Introduction; 2. Description of point processes; 3. Point process models; 4. Sums and products over point processes; 5. Interference and outage in wireless networks; 6. Moment measures of point processes; 7. Marked point processes; 8. Conditioning and Palm theory; Part II. Percolation, Connectivity and Coverage: 9. Introduction; 10. Bond and site percolation; 11. Random geometric graphs and continuum percolation; 12. Connectivity; 13. Coverage; Appendix: introduction to R.
"Covering point process theory, random geometric graphs and coverage processes, this rigorous introduction to stochastic geometry will enable you to obtain powerful, general estimates and bounds of wireless network performance and make good design choices for future wireless architectures and protocols that efficiently manage interference effects. Practical engineering applications are integrated with mathematical theory, with an understanding of probability the only prerequisite. At the same time, stochastic geometry is connected to percolation theory and the theory of random geometric graphs and accompanied by a brief introduction to the R statistical computing language. Combining theory and hands-on analytical techniques with practical examples and exercises, this is a comprehensive guide to the spatial stochastic models essential for modelling and analysis of wireless network performance"--