In order to evaluate the performance of emerging mobile wireless networks with multihop coverage extensions, spatial-temporal network models are required. These models should include the directional characteristics of network information flows in order to exploit the spatial domain due to the deployment of advanced antenna systems. Furthermore, the models should be capable of handling non-stationary scenarios with dynamic evolution of mobile nodes. In an attempt to solve these two problems which have not been fully addressed in the existing literature, and motivated by the useful analogy between classical propagation channels and wireless networks, we propose a novel network modeling framework, where the relevant figure-of-merit (FOM) may be received signal power, event detection error exponent, channel capacity, etc., depending on the network’s type. We first formulate the general description methods of the framework including the double-directional FOM impulse response, angular spectrum, and angular dispersion. Subsequently, we propose the ray approaches including the geometry-based stochastic channel models (GSCMs) and the deterministic ray tracing techniques to support and enrich the description methods. The above analytical tools facilitate visualization of wireless network performance metrics in space-time. Due to their stochastic nature, the proposed methodology would be most useful for the design and analysis of networks featured by decentralized, randomized, and dense placement of nodes.

Visualizing Wireless Network Performance Metrics in Space-Time / Yifan Chen;Lorenzo Mucchi;Rui Wang. - In: IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY. - ISSN 0018-9545. - STAMPA. - 63:(2014), pp. 822-835. [10.1109/TVT.2013.2276011]

Visualizing Wireless Network Performance Metrics in Space-Time

MUCCHI, LORENZO;
2014

Abstract

In order to evaluate the performance of emerging mobile wireless networks with multihop coverage extensions, spatial-temporal network models are required. These models should include the directional characteristics of network information flows in order to exploit the spatial domain due to the deployment of advanced antenna systems. Furthermore, the models should be capable of handling non-stationary scenarios with dynamic evolution of mobile nodes. In an attempt to solve these two problems which have not been fully addressed in the existing literature, and motivated by the useful analogy between classical propagation channels and wireless networks, we propose a novel network modeling framework, where the relevant figure-of-merit (FOM) may be received signal power, event detection error exponent, channel capacity, etc., depending on the network’s type. We first formulate the general description methods of the framework including the double-directional FOM impulse response, angular spectrum, and angular dispersion. Subsequently, we propose the ray approaches including the geometry-based stochastic channel models (GSCMs) and the deterministic ray tracing techniques to support and enrich the description methods. The above analytical tools facilitate visualization of wireless network performance metrics in space-time. Due to their stochastic nature, the proposed methodology would be most useful for the design and analysis of networks featured by decentralized, randomized, and dense placement of nodes.
2014
63
822
835
Yifan Chen;Lorenzo Mucchi;Rui Wang
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/823261
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