Fast Channel Estimation for Massive Machine Type Communications1

Yonghong Zeng, Sumei Sun, Yuhong Wang, Yugang Ma
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Abstract

For massive machine type communications (mMTC), it is critical to squeeze the transmission overhead as packet length is usually short and power is limited. Reducing preamble/pilot length for channel estimation is thus very important. In this paper, we propose to use short preamble for channel estimation in generalized frequency division multiplexing (GFDM) communication. Based on the short preamble, we can estimate a short channel first. We then show that the conventional zero-padding method for extending short channel to long channel in GFDM is not accurate. A new efficient method to construct the long effective channel from the obtained short channel is proposed. The proposed new method can construct a long channel for GFDM equalization without knowing the time sync error. It is proved theoretically that the constructed channel is correct given that the length of cyclic prefix (CP) and cyclic suffix (CS) are longer than the original channel length plus the time sync error. Simulations at various situations are shown to verify the results.
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大规模机器通信的快速信道估计[j]
对于大规模机器类型通信(mMTC),压缩传输开销至关重要,因为数据包长度通常很短,功率有限。因此,减少导频长度对于信道估计非常重要。在本文中,我们提出了在广义频分复用(GFDM)通信中使用短序文进行信道估计。根据短前导,我们可以先估计一个短信道。然后,我们证明了传统的零填充方法在GFDM中将短信道扩展到长信道是不准确的。提出了一种利用得到的短信道构造长有效信道的新方法。该方法可以在不知道时间同步误差的情况下构造一个长信道进行GFDM均衡。从理论上证明了在循环前缀(CP)和循环后缀(CS)长度大于原信道长度的情况下,加上时间同步误差,所构造的信道是正确的。在各种情况下进行了仿真,以验证结果。
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