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首页> 外文期刊>電気学会論文誌 C:電子·情報·システム部門誌 >A Random Time-varying Particle Swarm Optimization For The Real Time Location Systems
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A Random Time-varying Particle Swarm Optimization For The Real Time Location Systems

机译:实时定位系统的随机时变粒子群算法

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The particle swarm optimizer (PSO) is a stochastic, population-based optimization technique that can be applied to a wide range of applications. This paper presents a random time variable PSO algorithm, called the PSO-RTVIWAC, introducing random time-varying inertia weight and acceleration coefficients to significantly improve the performance of the original algorithms. The PSO-RTVIWAC method originates from the random inertia weight (PSO-RANDIW) and time-varying acceleration coefficients (PSO-TVAC) methods. Through the efficient control of search and convergence to the global optimum solution, the PSO-RTVIWAC method is capable of tracking and optimizing the position evaluate in the highly nonlinear real-time location systems (RTLS). Experimental results are compared with three previous PSO approaches from the literatures, showing that the new optimizer significantly outperforms previous approaches. Simply employing a few particles and iterations, a reasonable good positioning accuracy is obtained with the PSO-RTVIWAC method. This property makes the PSO-RTVIWAC method become more attractive since the computation efficiency is improved considerably, i.e. the computation can be completed in an extremely short time, which is crucial for the RTLS. By implementing a hardware design of PSO-RTVIWAC, the computations can simultaneously be performed using hardware to reduce the processing time. Due to a small number of particles and iterations, the hardware resource is saved and the area cost is reduced in the FPGA implementation. An improvement of positioning accuracy is observed with PSO-RTVIWAC method, compared with Taylor Series Expansion (TSE) and Genetic Algorithm (GA). Our experiments on the PSO-RTVIWAC to track and optimize the position evaluate have demonstrated that it is especially effective in dealing with optimization functions in the nonlinear dynamic environments.
机译:粒子群优化器(PSO)是一种基于种群的随机优化技术,可以应用于广泛的应用程序。本文提出了一种随机时间变量PSO算法,称为PSO-RTVIWAC,引入了随机时变惯性权重和加速度系数以显着提高原始算法的性能。 PSO-RTVIWAC方法源自随机惯性权重(PSO-RANDIW)和时变加速度系数(PSO-TVAC)方法。通过有效地控制搜索和收敛到全局最优解,PSO-RTVIWAC方法能够跟踪和优化高度非线性实时定位系统(RTLS)中的位置评估。将实验结果与文献中的三种先前的PSO方法进行了比较,表明新的优化程序明显优于先前的方法。只需使用一些粒子和迭代,即可使用PSO-RTVIWAC方法获得合理的良好定位精度。该性质使PSO-RTVIWAC方法变得更具吸引力,因为计算效率得到了显着提高,即,计算可以在极短的时间内完成,这对于RTLS至关重要。通过实施PSO-RTVIWAC的硬件设计,可以使用硬件同时执行计算,以减少处理时间。由于粒子和迭代的数量少,因此在FPGA实现中节省了硬件资源,并降低了面积成本。与泰勒级数展开(TSE)和遗传算法(GA)相比,使用PSO-RTVIWAC方法观察到定位精度有所提高。我们在PSO-RTVIWAC上进行的跟踪和优化位置评估的实验表明,它在处理非线性动态环境中的优化功能时特别有效。

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