A link-based variable probability learning approach for partially overlapping channels assignment on multi-radio multi-channel wireless mesh information-centric iot networks

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Abstract

The performance of the wireless mesh information-centric Internet of Thing (IC-IoT) networks can be greatly enhanced by adopting multi-radio multi-channel (MRMC) and partially overlapping channels (POCs). However, the network interference and channel assignment in IC-IoT networks become more complicated while using both MRMC and POCs. In this paper, a logical link-based partially overlapping channels interference model is analyzed to mitigate the inter-channel interference, and a channel selection scheme is formulated as a potential game. Moreover, a variable probability learning algorithm is proposed by selecting a channel in the strategy space based on its probability. The channel usage probability can be changed by its link utility. The channel with a larger link utility is then with a bigger probability in the strategy space. The simulation results show that our proposed algorithm can achieve high system throughput with fast network convergence.

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Zhao, X., Li, L., Geng, S., Zhang, H., & Ma, Y. (2019). A link-based variable probability learning approach for partially overlapping channels assignment on multi-radio multi-channel wireless mesh information-centric iot networks. IEEE Access, 7, 45137–45145. https://doi.org/10.1109/ACCESS.2019.2908872

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