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Proposed particle swarm optimization approaches for detection and localization of the primary user emulation attack in cognitive radio networks

机译:提出的粒子群优化方法,用于认知无线电网络中主要用户仿真攻击的检测和定位

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The primary user emulation attack (puea) is considered to be one of the common threats in cognitive radio networks (crns). in this problem, an attacker emulates the primary user (pu) signal to deceive other secondary users (sus) and forcing them to leave the white spaces (free spaces) in the spectrum assigned before to the PU. The PUEA is detected and localized using the time-difference-of-arrival (TDOA) localization technique based on stochastic optimization algorithms. Particle swarm optimization (PSO) algorithms are proposed to minimize the cost function provided by the TDOA measurements and to increase the accuracy of the detection. The PSO variants are evolved by changing the parameters of the standard PSO such as inertia weight and acceleration constants. These approaches are presented and compared with the standard PSO in terms of convergence speed and processing time. This paper presents the first study of designing a PSO algorithm suitable for the localization problem and it will be considered as a good guidance for applying the optimization algorithms in wireless positioning techniques. Mean square error (MSE) and cumulative distribution function (CDF) are used as the evaluation metrics to measure the accuracy of the proposed algorithms. Simulation results show that the proposed PSO approaches provide higher accuracy and faster convergence than the standard PSO, social spider optimization (SSO), cuckoo search (CS), firefly optimization (FA) and Taylor series estimation (TSE) methods.
机译:主要用户仿真攻击(PUEA)被认为是认知无线电网络(CRN)中的共同威胁之一。在这个问题中,攻击者模拟主用户(PU)信号来欺骗其他辅助用户(SUS)并强迫它们将在PU之前分配的频谱中的白色空间(自由空间)留下。使用基于随机优化算法的时间差的差异(TDOA)定位技术来检测和定位PUEA。提出了粒子群优化(PSO)算法,以最小化TDOA测量提供的成本函数,并提高检测的准确性。通过改变标准PSO的参数如惯性重量和加速度常数来演化PSO变体。呈现这些方法,并在收敛速度和处理时间方面与标准PSO进行比较。本文介绍了设计适用于定位问题的PSO算法的第一研究,它将被认为是应用无线定位技术中优化算法的良好指导。均方误差(MSE)和累积分布函数(CDF)用作测量所提出的算法的准确性的评估度量。仿真结果表明,所提出的PSO方法提供比标准PSO,社交蜘蛛优化(SSO),Cuckoo搜索(CS),Firefly优化(FA)和泰勒系列估计(TSE)方法提供更高的精度和更快的收敛。

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