Figure 7 Patch radius versus normalized substrate thickness for a patch radius necessary to suppress the surface-wave excitation in a single-mode operation. MAR, solid lines; MCR model, dashed lines; hra s 0.05 ## VII. CONCLUSION The method of analytical regularization combined with the Galerkin m
Design and analysis of a propagation delay tolerant ALOHA protocol for underwater networks
โ Scribed by Joon Ahn; Affan Syed; Bhaskar Krishnamachari; John Heidemann
- Publisher
- Elsevier Science
- Year
- 2011
- Tongue
- English
- Weight
- 894 KB
- Volume
- 9
- Category
- Article
- ISSN
- 1570-8705
No coin nor oath required. For personal study only.
โฆ Synopsis
Acoustic underwater wireless sensor networks (UWSN) have recently gained attention as a topic of research. Such networks are characterized by increased uncertainty in medium access due not only to when data is sent, but also due to significantly different propagation latencies from spatially diverse transmitters-together, we call these space-time uncertainty. We find that the throughput of slotted ALOHA degrades to pure ALOHA in such an environment with varying delay. We therefore propose handling this spatial uncertainty by adding guard times to slotted ALOHA, forming Propagation Delay Tolerant (PDT-)ALOHA. We show that PDT-ALOHA increases throughput by 17-100% compared to simple slotted ALOHA in underwater settings. We analyze the protocol's performance both mathematically and via extensive simulations. We find that the throughput capacity decreases as the maximum propagation delay increases, and identify protocol parameter values that realize optimal throughput. Our results suggest that shorter hops improve throughput in UWSNs.
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