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Sparse Bayesian RVM Regression Based Channel Estimation for IM/DD OFDM-VLC Systems with Reduced Training Overhead

机译:基于IM / DD OFDM-VLC系统的稀疏贝叶斯RVM回归基于IM / DD OFDM-VLC系统的频道估计

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We propose a novel channel estimation technique for intensity modulation/direct detection (IM/DD) based orthogonal frequency division multiplexing visible light communication (OFDM-VLC) systems, utilizing sparse Bayesian dual-variate relevance vector machine (RVM) regression. By exploiting sparse Bayesian framework, dual-variate RVM regression can provide accurate estimation of the real and imaginary parts of the complex channel response, and therefore the channel response can be estimated to perform channel compensation. Simulation results show that a 200 Mb/s OFDM-VLC system using sparse Bayesian RVM regression based channel estimation with only one complex training symbol (TS) achieves nearly the same bit error rate (BER) performance as the system using conventional time domain averaging (TDA) based channel estimation with a total of 20 complex TSs, indicating a significant reduction of training overhead. Moreover, by employing a fast marginal likelihood maximization method, the sparse Bayesian RVM regression based channel estimation can be computational efficient for practical application in high-speed OFDM-VLC systems.
机译:我们提出了一种用于强度调制/直接检测(IM / DD)基于正交频分复用可见光通信(OFDM-VLC)系统的新型信道估计技术,利用稀疏贝叶斯双变量相关矢量机(RVM)回归。通过利用稀疏贝叶斯框架,双变量RVM回归可以提供复杂信道响应的实数和虚部的精确估计,因此可以估计信道响应以执行信道补偿。仿真结果表明,200 MB / s使用基于稀疏贝叶斯RVM回归的频道估计的200 MB / s OFDM-VLC系统,只有一个复杂的训练符号(TS)实现了使用传统时域平均的系统与系统的几乎相同的比特错误率(BER)性能( TDA)基于信道估计,总共20个复杂的TSS,表明训练开销的显着降低。此外,通过采用快速边缘似然最大化方法,基于稀疏的贝叶斯RVM回归的信道估计可以是高速OFDM-VLC系统实际应用的计算有效。

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