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A System on a Programmable Chip Architecture for Data-Dependent Superimposed Training Channel Estimation

机译:用于数据依赖性叠加训练信道估计的可编程芯片架构系统

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摘要

Channel estimation in wireless communication systems is usually accomplished by inserting, alongwith the information, a series of known symbols, whose analysis is used to define the parameters of the filters that remove the distortion of the data. Nevertheless, a part of the available bandwidth has to be destined to these symbols. Until now, no alternative solution has demonstrated to be fully satisfying for commercial use, but one technique that looks promising is superimposed training (ST). This work describes a hybrid software-hardware FPGA implementation of a recent algorithm that belongs to the ST family, known as Data-dependent Superimposed Training (DDST), which does not need extra bandwidth for its training sequences (TS) as it adds them arithmetically to the data. DDST also adds a third sequence known as data-dependent sequence, that destroys the interference caused by the data over the TS. As DDST's computational burden is too high for the commercial processors used in mobile systems, a System on a Programmable Chip (SOPC) approach is used in order to solve the problem.
机译:无线通信系统中的信道估计通常是通过插入信息的一系列已知符号来完成的,其分析用于定义除去数据失真的过滤器的参数。尽管如此,可用带宽的一部分必须注定到这些符号。到目前为止,没有替代解决方案已经证明完全满足商业用途,但是一种看起来有希望的技术是叠加训练(ST)。这项工作描述了一个混合软件 - 硬件FPGA实现了最近属于ST系列的算法,称为数据相关的叠加训练(DDST),这对于其训练序列(TS)不需要额外的带宽,因为它在算术中增加它们到数据。 DDST还添加了称为数据相关序列的第三个序列,其破坏了由TS上的数据引起的干扰。随着DDST的计算负担对于移动系统中使用的商业处理器来说太高,使用可编程芯片(SOPC)方法的系统以解决问题。

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