一种神经网络自适应归零的新方法

A. Zooghby, Y.G. Christodoulou, M. Georgiopoulos
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引用次数: 2

摘要

提出了一种求解一维和二维自适应阵列权值的神经网络方法。在现代蜂窝、卫星移动通信系统和GPS系统中,期望信号和干扰信号都在不断地改变方向。因此,需要一个快速跟踪系统来持续跟踪用户,然后调整天线的辐射方向图,将多个窄波束引导到期望的用户,并将零波束引导到干扰源。在本文提出的方法中,最优权重的计算被视为一个映射问题,可以用一个适当的输入输出对训练的人工神经网络来建模。将三层径向基函数神经网络(RBFNN)应用于一维和二维阵列天线的设计。该网络得到的结果与维纳解非常吻合。实现这些功能的网络成功地跟踪了移动用户在天线视野范围内的移动。
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A novel approach to adaptive nulling with neural networks
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive arrays is presented. In modern cellular, satellite mobile communications systems, and in GPS systems, both the desired and interfering signals change their directions continuously. Therefore, a fast tracking system is needed to constantly track the users, and then adapt the radiation pattern of the antenna to direct multiple narrow beams to the desired users and nulls to the sources of interference. In the approach suggested in this paper, the computation of the optimum weights is viewed as a mapping problem which can be modeled using a suitable artificial neural network trained with input output pairs. Three-layer radial basis function neural networks (RBFNN) are used in the design of one and two-dimensional array antennas. The results obtained from this network are in excellent agreement with the Wiener solution. The networks implementing these functions are successful in tracking mobile users as they move across the antenna's field of view.
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