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Adaptive Aperture Aided Antenna Design for SISO-MIMO Systems using Fuzzy C-Mean Clustering

机译:使用模糊C均值聚类的SISO-MIMO系统自适应孔径辅助天线设计

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摘要

One of the most relevant themes of wireless communication is to achieve better spectral efficiency and provide high reliability while providing rich-content data services despite the existence of several serious challenges. A few of them are multipath fading, multi-user interference, co-channel interference (CCI), inter symbol interference (IS/) etc to name a few. Several techniques have already been developed and deployed to eliminate the fading effects. One of the less explored techniques which have been adopted and discussed in this chapter is based on the structure of the transmitting antenna. The physical dimension of the antenna is varied as per the fading condition by adopting a dynamic process which adjusts the structure to provide the best quality of service (QoS). Two types of antenna set-ups are considered - Single Input-Single Output (SISO) and Multiple Input-Multiple Output (MIMO). The transmitting antenna in this system adoptively updates its aperture to improve the system performance and at the same time optimizes the driving power of the antenna as per requirement. The system changes the effective aperture of the transmitting antenna in high data rate, time varying Rayleigh channels to adapt to a previously set Bit error Rate (BER). However, in a real time environment the BER keeps on changing based on the channel condition. It is difficult to attain a fixed value of BER and hence even more difficult to model the antenna structure for a single time instant. As a result there exist a number of effective aperture dimensions for various BER in a single time instant. Out of the various values, two specific limits of the effective aperture of the transmitting antenna needs to be decided. Fuzzy C-Mean (FCM) Clustering method being one of the most popular and efficient clustering technique is used to set two limits of the aperture within which a particular threshold of the BER is obtained at one particular instant of time. The results derived show the effectiveness of the entire system.
机译:无线通信最相关的主题之一是,尽管存在若干严峻挑战,但在提供丰富内容的数据服务的同时实现更高的频谱效率并提供高可靠性。其中一些是多径衰落,多用户干扰,同信道干扰(CCI),符号间干扰(IS /)等。已经开发并部署了多种技术来消除衰落效应。本章已采用和讨论的较少探索的技术之一是基于发射天线的结构。通过采用动态过程来调整衰落条件,从而改变天线的物理尺寸,该过程会调整结构以提供最佳服务质量(QoS)。考虑了两种类型的天线设置-单输入单输出(SISO)和多输入多输出(MIMO)。该系统中的发射天线会不断更新其孔径,以提高系统性能,同时根据需要优化天线的驱动功率。该系统在高数据速率,时变瑞利信道中更改发射天线的有效孔径,以适应先前设置的误码率(BER)。但是,在实时环境中,BER会根据信道状况不断变化。很难获得BER的固定值,因此甚至更难在单个时刻为天线结构建模。结果,在单个时刻存在用于各种BER的许多有效孔径尺寸。从各种值中,需要确定发射天线有效孔径的两个特定限制。模糊C均值(FCM)聚类方法是最流行和最有效的聚类技术之一,用于设置孔径的两个极限,在该极限内在某个特定时间获得BER的特定阈值。得出的结果表明了整个系统的有效性。

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