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Aggregate Interference Prediction Based on Back-Propagation Neural Network

机译:基于反向传播神经网络的聚集干扰预测

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In dynamic spectrum access (DSA) scenarios, dense and complex deployment (e.g., in nonuniform or unknown radio propagation environment) of secondary systems (SSs) will make aggregate interference estimation highly complicated or challenging for reliable primary system (PS) protection. To tackle this problem, a back-propagation (BP) neural network based aggregate interference prediction method is proposed and evaluated via simulations. This paper also gives design guidelines of BP neural network appropriate for aggregate interference prediction via revealing the impact of several key factors on the prediction accuracy, such as the number of input parameters to the neural network, the coordinate system in use, and the number of hidden neurons.
机译:在动态频谱接入(DSA)方案中,辅助系统(SS)的密集和复杂部署(例如,在非均匀或未知的无线电传播环境中)将使聚合干扰估算变得非常复杂,或对可靠的主要系统(PS)保护具有挑战性。针对这一问题,提出了一种基于BP神经网络的聚集干扰预测方法,并通过仿真对其进行了评估。通过揭示一些关键因素对预测精度的影响,如神经网络的输入参数数量,使用的坐标系和数量,本文还提供了适用于聚集干扰预测的BP神经网络的设计指南。隐藏的神经元。

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