Genetic algorithm optimized training for neural network spectrum prediction

Jian Yang, Hang-sheng Zhao, Xi Chen
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引用次数: 18

Abstract

Spectrum prediction forecasts future channel status based on history data, which partly solves the problem of robustness and reliability in spectrum sensing. A genetic algorithm optimized back propagation (GA-BP) training has been proposed to solve the problem that the neural network based spectrum prediction model always trapped in local optimal solution. Selection, crossover and mutation are performed to increase the randomness, which ensures the population converge to the set that contains the global optimal solution. Then the model continuously performs local searching with back propagation (BP) training. Simulation results show that the performance of GA-BP training outperforms BP training, and SU should choose training method according to his own requirements. The improvement of prediction accuracy will promote the application of spectrum prediction in cognitive radio networks, and maybe helpful to solve the problem in robustness and reliability of spectrum sensing.
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遗传算法优化训练神经网络频谱预测
频谱预测基于历史数据对未来信道状态进行预测,在一定程度上解决了频谱感知的鲁棒性和可靠性问题。针对基于神经网络的频谱预测模型经常陷入局部最优解的问题,提出了一种遗传算法优化的反向传播(GA-BP)训练方法。通过选择、交叉和变异来增加随机性,保证种群收敛于包含全局最优解的集合。然后通过BP训练对模型进行持续的局部搜索。仿真结果表明GA-BP训练的性能优于BP训练,SU应该根据自己的要求选择训练方法。预测精度的提高将促进频谱预测在认知无线电网络中的应用,并可能有助于解决频谱感知的鲁棒性和可靠性问题。
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