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Using Cellular Probabilistic Self-Organizing Map in Borrowing Channel Assignment for Patterned Traffic Load

机译:借用信道概率自组织映射在有模式的交通负荷借用信道分配中

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摘要

The fast growing cellular mobile systems demand more efficient and faster channel allocation techniques. Borrowing channel assignment (BCA) is a compromising technique between fixed channel allocation (FCA) and dynamic channel allocation (DCA). However, in the case of patterned traffic load, BCA is not efficient to further enhance the performance because some heavy-traffic cells are unable to borrow channels from neighboring cells that do not have unused nominal channels. The performance of the whole system can be raised if the short-term traffic load can be predicted and the nominal channels can be re-assigned for all cells. This paper describes an improved BCA scheme using traffic load prediction. The prediction is obtained by using the short-term forecasting ability of cellular probabilistic self-organizing map (CPSOM). This paper shows that the proposed CPSOM-based BCA method is able to enhance the performance of patterned traffic load compared with the traditional BCA methods. Simulation results corroborate that the proposed method delivers significantly better performance than BCA for patterned traffic load situations, and is virtually as good as BCA in the other situations analyzed.
机译:快速增长的蜂窝移动系统需要更有效,更快的信道分配技术。借用信道分配(BCA)是固定信道分配(FCA)和动态信道分配(DCA)之间的一种折衷技术。但是,在有模式的流量负载的情况下,BCA不能有效地进一步提高性能,因为某些流量较大的小区无法从没有使用未使用的名义信道的相邻小区借用信道。如果可以预测短期话务量并且可以为所有小区重新分配名义信道,则可以提高整个系统的性能。本文介绍了一种使用流量负载预测的改进的BCA方案。通过使用细胞概率自组织图(CPSOM)的短期预测能力来获得预测。本文表明,与传统的BCA方法相比,基于CPSOM的BCA方法能够提高模式流量负载的性能。仿真结果证实了所提出的方法在有模式的交通负载情况下比BCA的性能要好得多,并且在其他情况下实际上与BCA一样好。

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