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A modified discrete recurrent neural network as vector detector

机译:改进的离散递归神经网络作为矢量检测器

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A vector-valued transmission model is useful in those cases, where multiuser, multisubchannel, or multiantenna systems or combinations thereof are considered. To cope with interblock interference (IBI), interuser (IUI) and/or intersubchannel interference (ISCI), different interference cancellation techniques have been proposed. Recurrent neural networks (RNNs) are known for their capability in minimization of suitable cost functions. However, they are susceptible to get stuck in local minima of the cost function. To avoid this, different methods have been presented in the past. In this paper we investigate the application of a modified RNN to the problem of vector detection and we compare the results with a zero-forcing block linear equalizer ZF-BLE, a minimum mean square error block linear equalizer MMSE-BLE, and with a RNN with linearly increased steepness parameter of the activation function. The advantage of the proposed modified RNN is, that it does not need an adjustable activation function and can be interpreted as a discretised analog RNN. Analog RNNs improve the power/speed ratio and minimize the area consumption in the very large scale integration (VLSI) chip.
机译:在考虑多用户,多子信道或多天线系统或其组合的情况下,矢量值传输模型很有用。为了应对块间干扰(IBI),用户间(IUI)和/或子信道间干扰(ISCI),已经提出了不同的干扰消除技术。递归神经网络(RNN)以最小化适当成本函数的能力而闻名。但是,它们很容易陷入成本函数的局部最小值中。为了避免这种情况,过去已经提出了不同的方法。在本文中,我们研究了改进的RNN在矢量检测问题上的应用,并将结果与​​强制零块线性均衡器ZF-BLE,最小均方误差块线性均衡器MMSE-BLE和RNN进行了比较线性增加激活函数的陡度参数。所提出的改进的RNN的优点在于,它不需要可调的激活函数,可以解释为离散的模拟RNN。模拟RNN在超大规模集成(VLSI)芯片中提高了功率/速度比,并最大程度地减少了面积消耗。

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