Tap coefficient based cognitive framework for estimating a dynamic channel

Praharsha Sirsi, Kelvin Chelli, T. Herfet
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Abstract

The dynamic environment of a vehicular communication system poses a difficult task of estimating the chan­nel at minimal complexity. A time-varying multipath channel is estimated by computationally intensive algorithms that are generally not suitable for implementation on resource limited consumer hardware. Compressed Sensing (CS) schemes have been established to provide an accurate estimate by exploiting the inherent sparsity of a wireless communication channel. Correspondingly, the Rake-Matching Pursuit (RMP) and its low complexity variant, the Gradient Rake-Matching Pursuit (GRMP) algorithm, first identify different delay taps in the environment. The Doppler is then implicitly estimated by a tracking stage of respective tap coefficients. Although their performance is encouraging even under high Doppler shifts, its adoption for a static multipath environment is excessive due to the required computational resources. A low complexity scheme, like Least Squares (LS), is sufficient to estimate and compensate such channels. The cognitive framework envisages the switch between a high mobility scheme, like RMP, and a low mobility scheme, like LS, based on the channel conditions. In this paper, an enhanced cognitive framework is proposed to interchange between the channel estimation schemes to provide an adequate Bit Error Rate (BER) performance at optimum complexity. Even though the experimentation is performed for the IEEE 802.11p standard, the proposed metrics are relevant for any Orthogonal Frequency- Division Multiplexing (OFDM) based wireless communication system.
基于Tap系数的动态信道估计认知框架
车载通信系统的动态环境给如何在最小复杂度下估计信道提出了一个艰巨的任务。时变多径信道是通过计算密集型算法来估计的,这些算法通常不适合在资源有限的消费者硬件上实现。为了利用无线通信信道固有的稀疏性提供准确的估计,已经建立了压缩感知(CS)方案。相应的,耙匹配追踪算法(RMP)及其低复杂度变体梯度耙匹配追踪算法(GRMP)首先识别环境中不同的延迟点。然后通过各自抽头系数的跟踪阶段隐式估计多普勒。尽管在高多普勒频移下,它们的性能也令人鼓舞,但由于需要计算资源,在静态多径环境中采用它是过度的。一个低复杂度的方案,如最小二乘(LS),足以估计和补偿这些信道。认知框架设想了基于通道条件的高流动性方案(如RMP)和低流动性方案(如LS)之间的转换。本文提出了一种增强的认知框架,在信道估计方案之间进行交换,以在最佳复杂度下提供适当的误码率(BER)性能。尽管实验是针对IEEE 802.11p标准进行的,但所提出的指标适用于任何基于正交频分复用(OFDM)的无线通信系统。
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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