{"title":"认知无线电分布式网络融合中心的贝叶斯决策","authors":"S. Mosleh, A. Tadaion, M. Derakhtian","doi":"10.1109/ICSIPA.2009.5478709","DOIUrl":null,"url":null,"abstract":"Cognitive Radio (CR) allows for usage of licensed frequency band by unlicensed Secondary Users (SU)s. However, these SUs need to monitor the spectrum continuously to avoid possible interference with the licensed Primary users (PU)s. In order to avoid causing harmful interference to a PU that is in operation, spectrum sensing is needed for the CRs. One of the great challenges of spectrum sensing is to detect the presence of the PU with little information about the channel and the signal transmitted from the PU. Cooperative spectrum sensing has been shown to greatly increase the probability of detecting the PU. Cooperative spectrum sensing refers to the spectrum sensing methods where local spectrum sensing information from multiple SUs are combined for PU detection. Distributed spectrum sensing methods have the potential to increase the spectral estimation reliability and decrease the probability of interference of CRs to primary communications. This paper considers the performance of a distributed Bayesian detection system consisting of N sensors and a fusion center, in which the decision rules of the sensors have been given and the decisions of different sensors are mutually independent conditioned on both hypotheses. Theoretical analysis on the performance of this fusion center is carried out. We obtain the conditions for the fusion center such that achieves the minimum average cost of making a decision for the overall system is smaller than the local risk of each sensor. The performance of our detector is compared to the traditional AND, OR and Majority decision fusion rules and numerical results show that AND, OR and Majority decision fusion rules are the special cases of the Bayesian fusion rule. In addition, we derive a lower bound for the risk of the fusion center for any given priori probability of hypothesis.","PeriodicalId":400165,"journal":{"name":"2009 IEEE International Conference on Signal and Image Processing Applications","volume":"17 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2009-11-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":"{\"title\":\"Bayesian decision for the fusion center of a distributed network in Cognitive Radio\",\"authors\":\"S. Mosleh, A. Tadaion, M. Derakhtian\",\"doi\":\"10.1109/ICSIPA.2009.5478709\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Cognitive Radio (CR) allows for usage of licensed frequency band by unlicensed Secondary Users (SU)s. However, these SUs need to monitor the spectrum continuously to avoid possible interference with the licensed Primary users (PU)s. In order to avoid causing harmful interference to a PU that is in operation, spectrum sensing is needed for the CRs. One of the great challenges of spectrum sensing is to detect the presence of the PU with little information about the channel and the signal transmitted from the PU. Cooperative spectrum sensing has been shown to greatly increase the probability of detecting the PU. Cooperative spectrum sensing refers to the spectrum sensing methods where local spectrum sensing information from multiple SUs are combined for PU detection. Distributed spectrum sensing methods have the potential to increase the spectral estimation reliability and decrease the probability of interference of CRs to primary communications. 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引用次数: 2
摘要
认知无线电(CR)允许未授权的辅助用户(SU)使用许可的频段。但是,这些单元需要持续监控频谱,以避免对授权的Primary user (Primary users)产生干扰。为了避免对正在运行的PU造成有害干扰,cr需要进行频谱感知。频谱感知的一个巨大挑战是在对信道和从PU传输的信号知之甚少的情况下检测PU的存在。协作频谱感知已被证明可以大大提高检测PU的概率。协同频谱感知是指将多个单元的本地频谱感知信息组合在一起进行PU检测的频谱感知方式。分布式频谱感知方法有可能提高频谱估计的可靠性,降低CRs对初级通信的干扰概率。本文考虑了一个由N个传感器和一个融合中心组成的分布式贝叶斯检测系统的性能,该系统给出了传感器的决策规则,并且不同传感器的决策在两个假设的条件下相互独立。对该融合中心的性能进行了理论分析。得到了融合中心的条件,使整个系统的决策平均成本最小且小于每个传感器的局部风险。将该检测器的性能与传统的AND、OR和多数决策融合规则进行了比较,数值结果表明AND、OR和多数决策融合规则是贝叶斯融合规则的特殊情况。此外,我们还导出了任意给定先验假设概率下融合中心风险的下界。
Bayesian decision for the fusion center of a distributed network in Cognitive Radio
Cognitive Radio (CR) allows for usage of licensed frequency band by unlicensed Secondary Users (SU)s. However, these SUs need to monitor the spectrum continuously to avoid possible interference with the licensed Primary users (PU)s. In order to avoid causing harmful interference to a PU that is in operation, spectrum sensing is needed for the CRs. One of the great challenges of spectrum sensing is to detect the presence of the PU with little information about the channel and the signal transmitted from the PU. Cooperative spectrum sensing has been shown to greatly increase the probability of detecting the PU. Cooperative spectrum sensing refers to the spectrum sensing methods where local spectrum sensing information from multiple SUs are combined for PU detection. Distributed spectrum sensing methods have the potential to increase the spectral estimation reliability and decrease the probability of interference of CRs to primary communications. This paper considers the performance of a distributed Bayesian detection system consisting of N sensors and a fusion center, in which the decision rules of the sensors have been given and the decisions of different sensors are mutually independent conditioned on both hypotheses. Theoretical analysis on the performance of this fusion center is carried out. We obtain the conditions for the fusion center such that achieves the minimum average cost of making a decision for the overall system is smaller than the local risk of each sensor. The performance of our detector is compared to the traditional AND, OR and Majority decision fusion rules and numerical results show that AND, OR and Majority decision fusion rules are the special cases of the Bayesian fusion rule. In addition, we derive a lower bound for the risk of the fusion center for any given priori probability of hypothesis.