Maximizing Gathered Samples in Wireless Sensor Networks with Slepian-Wolf Coding

IEEE Transactions on Wireless Communications(2012)

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摘要
We consider an energy constrained wireless sensor network, with arbitrary number of nodes, where source nodes utilize Slepian-Wolf (SW) coding before transmission to a joint decoder. We investigate optimal and near-optimal SW coding rates, transmit powers, and transmit durations that maximize the number of collected samples during the network lifetime, subject to channel capacity, SW rate region, and residual energy constraints. We find optimal (near-optimal) closed-form solutions in the absence (presence) of an energy constraint at the joint decoder. We take into account the energy consumption of SW encoding and decoding and communication circuitry. Numerical results demonstrate the effectiveness of the proposed optimization, especially when the joint decoder is not energy constrained.
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closed-form solutions,optimal sw coding rates,network lifetime,transmission duration,residual energy constraints,transmit powers,near-optimal slepian-wolf coding rates,transmit power adaptation,slepian-wolf coding,circuit power consumption,encoding,residual energy,energy constrained wireless sensor network,source nodes,rate allocation,optimization,channel capacity,energy consumption,transmit durations,communication circuitry,wireless sensor networks,decoding,rate region,joint decoder,linear approximation,wireless sensor network,closed form solution
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