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STUDY OF DIGITAL MODULATION RECOGNITION IN UNDERGROUND MINE CHANNEL BASED ON HIGHER ORDER CUMULANT

机译:基于Heyer阶累积量的地下矿井通道数字调制识别研究

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摘要

Coal mine is still one of the main energy sources in many countries in the world,and its safety production has always been the most concerned problem of coal enterprises.In order to determine the signal modulation in the underground mine environment,an algorithm based on higher order cumulant is proposed in this study.In which,the Deep Neural Network (DNN) model is adopted and the method can be used to effectively identify the variety of digital modulation signals in mine fading channel.Considering the recognition problem of many kinds of digital modulation,such as MASK,MPSK,MFSK,MQAM,OFDM in underground mine environment,we analyze the influence of Nakagami fading channel and shadow fading channel on higher order cumulant.The expression of higher-order cumulant is derived after the downhole fading channel,which is used to construct the training DNN model of characteristic parameters.Simulation results show that the classification performance based on higher order cumulant and DNN model is excellent at low SNR.The correct recognition rate of the proposed method is more than 90 when SNR is - 2dB and 100 when SNR is more than 5dB in two kinds of mine fading environments.
机译:煤矿仍是世界许多国家的主要能源之一,其安全生产一直是煤炭企业最关心的问题。为了确定井下矿井环境下的信号调制,该文提出一种基于高阶累积量的算法。其中,采用深度神经网络(DNN)模型,该方法可有效识别矿井衰落通道中各种数字调制信号。针对MASK、MPSK、MFSK、MQAM、OFDM等多种数字调制在地下矿井环境下的识别问题,分析了Nakagami衰落信道和阴影衰落信道对高阶累积量的影响。推导井下衰落通道后高阶累积量的表达式,用于构建特征参数的训练DNN模型。仿真结果表明,基于高阶累积量和DNN模型的分类性能在低信噪比下具有优异的性能。在两种矿井衰落环境下,所提方法在信噪比为-2dB时为90%以上,信噪比大于5dB时为100%。

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