School of Computer Science and Engineering, South China University of Technology, Guangzhou 510006, China.
Sensors (Basel). 2018 Jun 21;18(7):1995. doi: 10.3390/s18071995.
With the rapid development of indoor positioning technology, radio frequency identification (RFID) technology has become the preferred solution due to its advantages of non-line-of-sight, non-contact and rapid identification. However, the accuracy of existing RFID indoor positioning algorithms is easily affected by the tag density and algorithm efficiency, and their environmental robustness is not strong enough. In this paper, we have introduced an RFID positioning algorithm based on the Glowworm Swarm Optimization (GSO) fused with semi-supervised online sequential extreme learning machine (SOS-ELM), which is called the GSOS-ELM algorithm. The GSOS-ELM algorithm automatically adjusts the regularization weights of the SOS-ELM algorithm through the GSO algorithm, so that it can quickly obtain the optimal regularization weights under different initial conditions; at the same time, the semi-supervised characteristics of the GSOS-ELM algorithm can significantly reduce the number of labeled reference tags and reduce the cost of positioning systems. In addition, the online learning phase of the GSOS-ELM algorithm can continuously update the system to perceive changes in the environment and resist the environmental interference. We have carried out experiments to study the influence factors and validate the performance, both the simulation and testbed experiment results show that compared with other algorithms, our proposed GSOS-ELM localization system can achieve more accurate positioning results and has certain adaptability to the changes of the environment.
随着室内定位技术的快速发展,射频识别(RFID)技术由于具有非视距、非接触和快速识别等优点,已成为首选解决方案。然而,现有的 RFID 室内定位算法的精度容易受到标签密度和算法效率的影响,其环境鲁棒性不够强。在本文中,我们引入了一种基于萤火虫群优化(GSO)融合半监督在线序贯极端学习机(SOS-ELM)的 RFID 定位算法,称为 GSOS-ELM 算法。GSOS-ELM 算法通过 GSO 算法自动调整 SOS-ELM 算法的正则化权重,使其能够在不同的初始条件下快速获得最优正则化权重;同时,GSOS-ELM 算法的半监督特性可以显著减少标记参考标签的数量,降低定位系统的成本。此外,GSOS-ELM 算法的在线学习阶段可以不断更新系统,以感知环境变化并抵抗环境干扰。我们进行了实验来研究影响因素并验证性能,仿真和测试床实验结果均表明,与其他算法相比,我们提出的 GSOS-ELM 定位系统可以实现更精确的定位结果,并且对环境变化具有一定的适应性。