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Parameter Sensitivity in Cognitive Radio Adaptation Engines

机译:认知无线电适配发动机的参数灵敏度

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Cognitive radio adaptation engines use machine learning techniques such as evolutionary algorithms or expert systems to adapt the transmission parameters of a wireless system in order to optimize the performance of the communication. The cognitive engine models the environment internally and uses relationships between the transmission parameters and environmental measurements to perform the adaptation. Selecting an appropriate set of transmission parameters is key to the design of a cognitive wireless system. Each additional parameter adds another dimension of control over the cognitive radio. However, with the added control comes added complexity in the implementation of the cognitive engine. Whether it be a more complex fitness function used in the evolutionary algorithm, an added dimension of rules in an expert system, or another similarity metric in a case-based reasoning engine, increasing the amount of parameters used by the cognitive engine increases the complexity of the system. In this paper we explore the sensitivity of the cognitive system to individual parameters. We use a genetic algorithm based cognitive engine, and fitness functions derived in previous work to demonstrate how the optimality of the cognitive engine decision is affected when certain parameters are held constant and not allowed to be adapted by the cognitive engine. By comparing the resulting cognitive engine decisions when not adapting specific parameters to those of systems that are fully adaptable, we identify the parameters that do not affect the outcome and can be disregarded in order to lessen the complexity of the system.
机译:认知无线电适配发动机使用机器学习技术,例如进化算法或专家系统来调整无线系统的传输参数,以优化通信的性能。认知发动机在内部模拟环境,并使用传输参数与环境测量之间的关系来执行适应。选择适当的传输参数是设计认知无线系统的关键。每个附加参数增加了对认知无线电的控制的另一个维度。然而,随着添加的控制,在认知引擎的实施中增加了复杂性。无论是在进化算法中使用的更复杂的健身功能,在专家系统中还有规则的附加维度,或基于案例的推理引擎中的另一相似度量,增加了认知引擎所使用的参数量增加了复杂性系统。在本文中,我们探讨了认知系统对单个参数的敏感性。我们使用基于遗传算法的认知引擎,并且在先前的工作中导出的健身功能,以演示在某些参数保持恒定时如何影响认知发动机决策的最优性,并且不允许由认知引擎调整。通过比较所产生的认知发动机决策,当没有适应完全适应的系统的系统时,我们识别不影响结果的参数,并且可以被忽略以减少系统的复杂性。

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