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Energy Efficient Water Filling Ultra Wideband Waveform Shaping Based on Radius Basis Function Neural Networks

机译:基于半径基础函数神经网络的节能水填充超宽带波形整形

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In the emerging energy efficient framework, power allocation for ultra wide band (UWB) is much significant given its extremely large bandwidth. For multi-band UWB, this area has been extensively researched in the context of OFDM resources allocation. For pulse-based UWB, however, there is still an urgent need for efficient waveform design technique to embody arbitrary power allocation strategy. In this paper, we present a UWB waveform design method based on the radius basis network neural networks (RBF). The power density spectrum of emitted waveform is firstly abstract to a general mathematic function. Then based on the interpolation theory, RBF network is adopted to generate UWB waveforms given any spectrum shape. Numerical simulations validate our algorithms through the water filling (WF) waveforms shaping.
机译:在新兴节能框架中,鉴于其极大的带宽,超宽带(UWB)的功率分配很大。对于多频带UWB,在OFDM资源分配的上下文中已经广泛地研究了该区域。然而,对于基于脉冲的UWB,仍然迫切需要高效的波形设计技术来体现任意功率分配策略。在本文中,我们介绍了一种基于半径基网络神经网络(RBF)的UWB波形设计方法。发射波形的功率密度谱首先抽出一般的数学函数。然后基于插值理论,采用RBF网络生成给定任何频谱形状的UWB波形。数值模拟通过水填充(WF)波形整形来验证我们的算法。

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