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Deep Sensing for Next-Generation Dynamic Spectrum Sharing: More Than Detecting the Occupancy State of Primary Spectrum

机译:下一代动态频谱共享的深度传感:不仅仅是检测主频谱的占用状态

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摘要

In this paper, spectrum sensing is investigated and a new detection framework, namely, deep sensing (DS), is proposed for more challenging scenarios of future dynamic spectrum sharing. In contrast to existing methods, the DS scheme is designed to proactively recover and exploit some other informative states associated with realistic cognitive links (e.g., fading gains), except detecting the occupancy of primary-band. A unified mathematical model, relying on the dynamic state-space approach, is formulated, in which the Bernoulli random finite set (RFS) is further exploited to theoretically characterize complex DS procedures. A Bernoulli filter algorithm is suggested to recursively estimate unknown PU states accompanying related link information, which is implemented by particle filtering based on numerical approximations. The proposed DS algorithm is applied to detect primary users under time-varying fading channel, which may increase the observation uncertainty and, therefore, deteriorate the sensing performance. With this new framework, the time-varying fading gain, modeled as a stochastic discrete-state Markov chain (DSMC), is estimated along with unknown PU states. Simulations demonstrate that, by exploiting the underlying dynamic fading property, the sensing performance will surpass other traditional schemes. The DS scheme may be conveniently generalized to other applications, which will promote sensing performance and provides a new paradigm for next-generation spectrum sharing.
机译:在本文中,对频谱感测进行了研究,并提出了一种新的检测框架,即深度感测(DS),以应对未来动态频谱共享的更具挑战性的场景。与现有方法相比,DS方案旨在主动恢复和利用与实际认知链接相关的其他一些信息状态(例如,衰减增益),除了检测主频带的占用。建立了基于动态状态空间方法的统一数学模型,其中进一步利用了伯努利随机有限集(RFS)来从理论上表征复杂的DS过程。提出了一种伯努利滤波算法来递归估计伴随相关链接信息的未知PU状态,该算法通过基于数值近似的粒子滤波来实现。所提出的DS算法被应用于在时变衰落信道下检测主要用户,这可能会增加观测的不确定性,从而降低感知性能。利用这一新框架,可以将时变衰落增益与未知的PU状态一起进行估算,该时变衰减建模为随机离散状态马尔可夫链(DSMC)。仿真表明,通过利用潜在的动态衰落特性,传感性能将超过其他传统方案。 DS方案可以方便地推广到其他应用程序,这将提高感测性能并为下一代频谱共享提供新的范例。

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