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An improved primary user emulation attack detection in cognitive radio networks based on firefly optimization algorithm

机译:基于萤火虫优化算法的认知无线电网络中改进的主用户仿真攻击检测

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Cognitive Radio Network (CRN) has been developed to solve the spectrum scarcity problem. In this network, unlicensed users share the spectrum of primary users (PUs) using a spectrum sensing process while do not cause any interference to the PUs. The spectrum sensing process can be disrupted by a security problem called Primary User Emulation Attack (PUEA). In this paper, this problem is solved using localization defence model based on time-difference-of-arrival measurements using the firefly optimization. Cognitive Radio (CR) users cooperate together to detect and localize the attacker by comparing its location with the position of the PU. A firefly optimization algorithm is used to minimize the nonlinear least squares cost function and minimize the maximum likelihood cost function. Simulation results are compared with the previous Taylor series estimation method and show that the firefly optimization algorithm reduces the localization error and require less number of SUs needed for cooperation. It is also shown that the maximum likelihood method gives higher accuracy than the nonlinear least squares and Taylor series methods.
机译:已经开发了认知无线电网络(CRN)来解决频谱稀缺问题。在该网络中,未许可用户使用频谱感测过程共享主要用户(PU)的频谱,而不会对PU造成任何干扰。频谱检测过程可能会被称为主要用户仿真攻击(PUEA)的安全性问题打乱。在本文中,使用基于萤火虫最优化的到达时间差测量的定位防御模型解决了这个问题。认知无线电(CR)用户通过将攻击者的位置与PU的位置进行比较,共同合作来检测和定位攻击者。使用萤火虫优化算法来最小化非线性最小二乘成本函数并最小化最大似然成本函数。仿真结果与先前的泰勒级数估计方法进行了比较,结果表明萤火虫优化算法减少了定位误差,并且需要较少的SU进行协作。还表明,最大似然法比非线性最小二乘法和泰勒级数法具有更高的准确性。

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