Research on Bandwidth Allocation of Multimedia Communication System Based on Internet of Things

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Abstract:

In Internet of Things applications rapidly globalizing trends, especially the applications based on multimedia, traditional static bandwidth allocation method or dynamic bandwidth allocation algorithm based on business segments has been difficult to adapt to the new situation, in order to ensure the transmission performance, a new bandwidth allocation scheme is proposed which is based on RBF neural network . Simulation results show that the new scheme can effectively improve system stability, improve the utilization of system bandwidth resources.

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1871-1874

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August 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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