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Neural network-based learning schemes for cognitive radio systems

机译:基于神经网络的认知无线电系统学习方案

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Intelligence is needed to keep up with the rapid evolution of wireless communications, especially in terms of managing and allocating the scarce, radio spectrum in the highly varying and disparate modern environments. Cognitive radio systems promise to handle this situation by utilizing intelligent software packages that enrich their transceiver with radio-awareness, adaptability and capability to learn. A cognitive radio system participates in a continuous process, the "cognition cycle", during which it adjusts its operating parameters, observes the results and, eventually takes actions, that is to say, decides to operate in a specific radio configuration (i.e., radio access technology, carrier frequency, modulation type, etc.) expecting to move the radio toward some optimized operational state. In such a process, learning mechanisms that are capable of exploiting measurements sensed from the environment, gathered experience and stored knowledge, are judged as rather beneficial for guiding decisions and actions. Framed within this statement, this paper introduces and evaluates learning schemes that are based on artificial neural networks and can be used for predicting the capabilities (e.g. data rate) that can be achieved by a specific radio configuration. In particular, the focus in this work is placed on obtaining insight on the behavior of the presented, learning schemes, whereas useful, indicative results from the benchmarking work, conducted in order to design and use an appropriate neural network structure, are also presented and discussed. In the near future, such learning schemes are expected to assist a cognitive radio system to compare among the whole of available, candidate radio configurations and finally select the best one to operate in.
机译:需要情报来跟上无线通信的快速发展,特别是在高度变化和分散的现代环境中管理和分配稀缺的无线电频谱方面。认知无线电系统有望通过利用智能软件包来解决这种情况,该软件包使它们的收发器具有无线电意识,适应性和学习能力。认知无线电系统参与一个连续的过程,即“认知周期”,在此过程中,它会调整其操作参数,观察结果并最终采取行动,也就是说,决定以特定的无线电配置(即无线电接入技术,载波频率,调制类型等),期望使无线电朝着某些优化的运行状态发展。在这样的过程中,可以利用能够从环境中感测到的测量值,所收集的经验和所存储的知识的学习机制被认为对指导决策​​和采取行动非常有益。在此陈述的框架内,本文介绍并评估了基于人工神经网络的学习方案,可用于预测特定无线电配置可实现的功能(例如数据速率)。尤其是,这项工作的重点是获得对所提出的学习方案的行为的见解,而基准测试工作的有益指示性结果是为了设计和使用适当的神经网络结构而提出的,并且讨论过。在不久的将来,预计这种学习方案将帮助认知无线电系统在所有可用的候选无线电配置之间进行比较,并最终选择最佳的无线电配置进行操作。

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