TWIRLD: Transformer Generated Terahertz Waveform for Improved Radio Link Distance

Shuvam Chakraborty;Claire Parisi;Dola Saha;Ngwe Thawdar
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Abstract

terahertz (THz) band communication is envisioned as one of the leading technologies to meet the exponentially growing data rate requirements of emerging and future wireless communication networks. Utilizing the contiguous bandwidth available at THz frequencies requires a transceiver design tailored to tackle issues existing at these frequencies such as strong propagation and absorption loss, small scale fading (e.g. scattering, reflection, refraction), hardware non-linearity, etc. In prior works, multicarrier waveforms (e.g., Orthogonal Frequency Division Multiplexing (OFDM)) are shown to be efficient in tackling some of these issues. However, OFDM introduces a drawback in the form of peak-to-average power ratio (PAPR) which, compounded with strong propagation and absorption loss and high noise power due to large bandwidth at THz and sub-THz frequencies, severely limits link distances and, in turn, capacity, preventing efficient bandwidth usage. In this work, we propose TWIRLD - a deep learning (DL)-based joint optimization method, modeled and implemented as components of end-to-end transceiver chain. TWIRLD performs a symbol remapping at baseband of OFDM signals, which increases average transmit power while also optimizing the bit error rate (BER). We provide theoretical analysis, statistical equivalence of TWIRLD to the ideal receiver, and comprehensive complexity and footprint estimates. We validate TWIRLD in simulation showing link distance improvement of up to 91% and compare the results with legacy and state of the art methods and their enhanced versions. Finally, TWIRLD is validated with over the air (OTA) communication using a state-of-the-art testbed at 140 GHz up to a bandwidth of 5 GHz where we observe improvement of up to 79% in link distance accommodating for practical channel and other transmission losses.
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TWIRLD:用于改善无线电链路距离的变压器产生的太赫兹波形
太赫兹(THz)波段通信被认为是满足新兴和未来无线通信网络急剧增长的数据传输速率要求的领先技术之一。要利用太赫兹频率的连续带宽,就必须设计出专门的收发器,以解决这些频率存在的问题,如强传播和吸收损耗、小尺度衰减(如散射、反射、折射)、硬件非线性等。在之前的研究中,多载波波形(如正交频分复用(OFDM))被证明能有效解决其中一些问题。然而,OFDM 引入了峰均功率比(PAPR)形式的缺点,再加上太赫兹和亚太赫兹频率的大带宽造成的强传播和吸收损耗以及高噪声功率,严重限制了链路距离,进而限制了容量,阻碍了带宽的有效利用。在这项工作中,我们提出了基于深度学习(DL)的联合优化方法 TWIRLD,并将其作为端到端收发器链的组件进行建模和实现。TWIRLD 在 OFDM 信号的基带执行符号重映射,在提高平均发射功率的同时优化误码率 (BER)。我们提供了理论分析、TWIRLD 与理想接收器的统计等价性以及全面的复杂性和占用空间估计。我们对 TWIRLD 进行了仿真验证,结果显示链路距离改善高达 91%,并将结果与传统方法、最新方法及其增强版本进行了比较。最后,我们使用最先进的测试平台在 140 GHz 至 5 GHz 的带宽范围内对 TWIRLD 进行了空中 (OTA) 通信验证,结果显示,在考虑到实际信道和其他传输损耗的情况下,TWIRLD 的链路距离最多可改善 79%。
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