A new strategy for mobility prediction in the PCS network

Abeer M. Hekal, Ahmed I. Saleh, Magdi Zakria
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Abstract

Mobility prediction is one of the main challenges that faced Personal Communication Service (PCS) network. It is probable for many users to move among cells (coverage areas) during their calls. Therefore, the network needs to predict their next location in order to reserve another resource in that next cell to keep their calls going on. In this paper, a new strategy is proposed for mobility prediction named Mixed Mobility Prediction (MMP). It is composed of two predictors. The first one is named Association Rules Predictor (ARP), and the second one is called Weighted Ant Colony Predictor (WACP). In ARP the prediction is based on Association rules in data mining and detecting the time of calls. In WACP the prediction is based on Ant Colony (AC) in swarm intelligence. In addition to that, roads lead to their predicted next locations, and priority of famous places found in those locations. Finally, MMP merges the decisions of both predictors to get the final accurate decision in the absence of sufficient history for a MT. The proposed approach outperformed the compared the state-of-arts methods in terms of; Prediction Accuracy (PA), and Quality of Measure (QM).
一种新的PCS网络移动预测策略
移动性预测是个人通信服务(PCS)网络面临的主要挑战之一。许多用户在通话期间可能会在蜂窝(覆盖区域)之间移动。因此,网络需要预测他们的下一个位置,以便在下一个小区中保留另一个资源,以保持他们的呼叫继续进行。本文提出了一种新的迁移率预测策略——混合迁移率预测。它由两个预测因子组成。第一个被称为关联规则预测器(ARP),第二个被称为加权蚁群预测器(WACP)。在ARP中,预测是基于数据挖掘中的关联规则和检测调用时间。在WACP中,预测是基于群体智能中的蚁群(AC)。除此之外,道路会通向他们预测的下一个地点,以及在这些地点发现的著名地点的优先级。最后,MMP将两个预测器的决策合并在一起,在没有足够历史记录的情况下获得最终的准确决策。该方法在以下方面优于目前的方法;预测精度(PA)和测量质量(QM)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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