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Particle swarm optimization-based minimum residual algorithm for mobile robot localization in indoor environment

机译:基于粒子群优化的室内环境移动机器人定位的最小剩余算法

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摘要

For indoor mobile robots, many localization systems based on wireless sensor network have been reported. Received signal strength indicator is often used for distance measurement. However, the value of received signal strength indicator always has large fluctuation because radio signal is easily influenced by environmental factors. This will bring adverse effect on the distance measurement and deteriorate the performance of robot localization. In this article, the measured data are dealt with weighted recursive filter, which can depress the measurement noise effectively. In the linearization procedure, the least square method often causes additional error because it seriously relies on anchor nodes. Therefore, a minimum residual localization algorithm based on particle swarm optimization is proposed for a mobile robot running in indoor environment. With continuous optimization and update of particle swarm, the position that gets the best solution of objective function can be adopted as the final estimated position. Experiment results show that the proposed algorithm, compared with traditional algorithms, can attain better localization accuracy and is closer to Cramer-Rao lower bound.
机译:对于室内移动机器人,已经报道了许多基于无线传感器网络的定位系统。接收信号强度指示器通常用于距离测量。然而,接收信号强度指示器的值总是具有大的波动,因为无线电信号容易受环境因素的影响。这将对对距离测量产生不利影响并恶化机器人定位的性能。在本文中,测量的数据处理加权递归过滤器,其可以有效地抑制测量噪声。在线化过程中,最小二乘法通常会导致额外的错误,因为它严重依赖于锚节点。因此,提出了一种基于粒子群优化优化的最小残余定位算法,用于在室内环境中运行的移动机器人。通过连续优化和更新粒子群,可以采用最佳目标函数解决方案的位置作为最终估计位置。实验结果表明,与传统算法相比,该算法可以获得更好的本地化准确性,更接近克拉姆 - 饶的下限。

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