基于提升小波变换的FBMC可见光通信系统

V. G. Krishnan, J. Deepa, G. Vishnupriya, B. S. Gowri, S. Raja
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引用次数: 0

摘要

在VLC中提升基于小波变换(LWT)和脉冲调幅(PAM)的FBMC,通过简化信号处理,降低了信号处理的难度,解决了VLC的测试问题。本文利用4-PAM对不同小波电平的VLC系统进行了单电平和四电平lwt滤波器组多载波(FBMC)仿真。在BER和PAPR方面,LWT-FBMC与使用QPSK和4-QAM的FFT-FBMC和使用4-PAM的DCT-FBMC进行了比较。在模拟的各种信道条件下,LWT-FBMC的误码率低于FFT-FBMC和DCT-FBMC。LWT-FBMC在信噪比为17dB和18dB时达到10-3,而FFT-FBMC在信噪比为23dB时达到10-3。另一方面,DCT-FBMC的误码率只能在信噪比为40 dB的情况下降低到10-2。LWT-FBMC降低了4个等级的BER和PAPR。使用db1 (7.7753 dB)和haar (7.7995 dB)的四电平DWT-FBMC的PAPR比FFT-FBMC低,而FFT-FBMC的PAPR更高。这项研究非常详细地介绍了调查是如何进行的。
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Lifting Wavelet Transform based FBMC for Visible Light Communication System
Lifting Wavelet Transform (LWT) and Pulse Amplitude Modulation (PAM)-based FBMC in VLC will lessen the difficulty of signal processing and address the test of VLC by simplifying the signal processing. Single and four-level LWT-based filter bank multi-carrier (FBMC) simulations using 4-PAM for VLC systems with various wavelet levels have been successfully simulated in this paper. LWT-FBMC is compared to FFT-FBMC using QPSK and 4-QAM and DCT-FBMC using 4-PAM in terms of BER and PAPR. For various channel conditions that are modelled, the BER of LWT-FBMC is lower than that of FFT-FBMC and DCT-FBMC. LWT-FBMC reaches 10-3 at SNR 17dB and 18dB, whereas FFT-FBMC reaches 10-3 at SNR 23dB for =0o and 10o BER. The BER of DCT-FBMC, on the other hand, can only be reduced to a minimum of 10-2 with an SNR of 40 dB. The BER and PAPR are reduced by four levels of LWT-FBMC. Four-level DWT-FBMC using db1 (7.7753 dB) and haar (7.7995 dB) has a lower PAPR than FFT-FBMC, which has a higher PAPR. This study goes into great detail about how the investigation was carried out.
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