Lin Yun, Wang Chao, Wang Jiaxing, Dou Zheng
College of Information and Communication Engineering, Harbin Engineering University, Harbin 150001, China.
Beijing Huawei Digital Technologies Co., Ltd., Beijing 100032, China.
Sensors (Basel). 2016 Oct 12;16(10):1675. doi: 10.3390/s16101675.
Cognitive radio sensor networks are one of the kinds of application where cognitive techniques can be adopted and have many potential applications, challenges and future research trends. According to the research surveys, dynamic spectrum access is an important and necessary technology for future cognitive sensor networks. Traditional methods of dynamic spectrum access are based on spectrum holes and they have some drawbacks, such as low accessibility and high interruptibility, which negatively affect the transmission performance of the sensor networks. To address this problem, in this paper a new initialization mechanism is proposed to establish a communication link and set up a sensor network without adopting spectrum holes to convey control information. Specifically, firstly a transmission channel model for analyzing the maximum accessible capacity for three different polices in a fading environment is discussed. Secondly, a hybrid spectrum access algorithm based on a reinforcement learning model is proposed for the power allocation problem of both the transmission channel and the control channel. Finally, extensive simulations have been conducted and simulation results show that this new algorithm provides a significant improvement in terms of the tradeoff between the control channel reliability and the efficiency of the transmission channel.
认知无线电传感器网络是可以采用认知技术的应用类型之一,具有许多潜在应用、挑战和未来研究趋势。根据研究调查,动态频谱接入是未来认知传感器网络的一项重要且必要的技术。传统的动态频谱接入方法基于频谱空洞,存在一些缺点,如可接入性低和中断率高,这对传感器网络的传输性能产生负面影响。为解决此问题,本文提出一种新的初始化机制,用于在不采用频谱空洞来传输控制信息的情况下建立通信链路并设置传感器网络。具体而言,首先讨论了一种用于分析衰落环境中三种不同策略的最大可接入容量的传输信道模型。其次,针对传输信道和控制信道的功率分配问题,提出了一种基于强化学习模型的混合频谱接入算法。最后,进行了广泛的仿真,仿真结果表明,这种新算法在控制信道可靠性和传输信道效率之间的权衡方面有显著改进。