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Deep Learning-Based Approach to Fast Power Allocation in SISO SWIPT Systems with a Power-Splitting Scheme

机译:基于深入的学习方法,具有功率分裂方案的Siso Swipt系统的快速电力分配方法

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Recently, simultaneous wireless information and power transfer (SWIPT) systems, which can supply efficiently throughput and energy, have emerged as a potential research area in fifth-generation (5G) system. In this paper, we study SWIPT with multi-user, single-input single-output (SISO) system. First, we solve the transmit power optimization problem, which provides the optimal strategy for getting minimum power while satisfying sufficient signal-to-noise ratio (SINR) and harvested energy requirements to ensure receiver circuits work in SWIPT systems where receivers are equipped with a power-splitting structure. Although optimization algorithms are able to achieve relatively high performance, they often entail a significant number of iterations, which raises many issues in computation costs and time for real-time applications. Therefore, we aim at providing a deep learning-based approach, which is a promising solution to address this challenging issue. Deep learning architectures used in this paper include a type of Deep Neural Network (DNN): the Feed-Forward Neural Network (FFNN) and three types of Recurrent Neural Network (RNN): the Layer Recurrent Network (LRN), the Nonlinear AutoRegressive network with eXogenous inputs (NARX), and Long Short-Term Memory (LSTM). Through simulations, we show that the deep learning approaches can approximate a complex optimization algorithm that optimizes transmit power in SWIPT systems with much less computation time.
机译:最近,同时无线信息和电力传输(SWIPT)系统可以提供有效的吞吐量和能量,作为第五代(5G)系统中的潜在研究区域。在本文中,我们研究了多用户,单输入单输出(SISO)系统的SWIT。首先,我们解决了发射功率优化问题,它提供了用于获得最小功率的最佳策略,同时满足足够的信噪比(SINR)和收获的能量需求,以确保接收器的接收器在配备电力的SWIPT系统中工作 - 隔离结构。虽然优化算法能够实现相对高的性能,但它们通常需要大量的迭代,这在实时应用程序中提出了计算成本和时间的许多问题。因此,我们的目标是提供深入的学习方法,这是一个有助于解决这一具有挑战性问题的解决方案。本文中使用的深度学习架构包括一种深度神经网络(DNN):前馈神经网络(FFNN)和三种类型的复发性神经网络(RNN):层复发网络(LRN),非线性自回归网络随着外源输入(NARX)和长短期记忆(LSTM)。通过仿真,我们表明深度学习方法可以近似复杂的优化算法,其优化具有较少计算时间的SWIPT系统中的发射功率。

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