A BA-RRT-Based Indoor Geomagnetic Positioning Algorithm

Yudi Sun, Hongfei Yang
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Abstract

With the development of the navigation technology, the geomagnetic positioning method is widely used due to its superior characteristics, such as the non-accumulating error, high positioning accuracy, and all-weather applications. Currently, most of the geomagnetic positioning methods need to be combined with external sensors to obtain positioning results, which leads to the limitation of the application environment of traditional geomagnetic positioning methods according to their combined sensors, so it is necessary to implement independent geomagnetic positioning. However, without external sensors providing path information, the process of geomagnetic matching will be more complex, making it more difficult to locate. To solve this problem, a geomagnetic independent positioning method based on the Bat Algorithm combined with the improved Rapidly-exploring Random Tree (BA-RRT) algorithm is proposed in this paper, which can locate with geomagnetic measurement sequence and a priori geomagnetic map in the absence of path information. Each bat position in the Bat Algorithm represents the path starting point, the improved Rapidly-exploring Random Tree is used to match the geomagnetic sequences. The motion path with the best adaptation is obtained by iterative meritocracy, and the localization results are obtained. Positioning experiments were conducted by indoor measurement of geomagnetic data, and the localization accuracy exceeds 90% with accurate geomagnetic map and no obvious interference, verifying the effectiveness of BA-RRT. The method proposed in this paper can provide a new approach for future research on geomagnetic independent positioning.
基于ba - rrt的室内地磁定位算法
随着导航技术的发展,地磁定位方法以其无累积误差、定位精度高、全天候适用等优点得到了广泛的应用。目前,大多数地磁定位方法需要与外部传感器相结合才能获得定位结果,这导致传统地磁定位方法根据其组合传感器的应用环境存在局限性,因此有必要实现独立的地磁定位。然而,如果没有外部传感器提供路径信息,地磁匹配过程将更加复杂,定位难度更大。针对这一问题,本文提出了一种基于Bat算法与改进的快速探索随机树(BA-RRT)算法相结合的地磁独立定位方法,该方法可以在没有路径信息的情况下利用地磁测量序列和先验地磁图进行定位。蝙蝠算法中的每个蝙蝠位置代表路径起点,采用改进的快速探索随机树来匹配地磁序列。通过迭代择优算法获得适应性最佳的运动路径,并得到定位结果。通过室内测量地磁数据进行定位实验,定位精度超过90%,地磁图准确,无明显干扰,验证了BA-RRT的有效性。该方法可为今后地磁独立定位的研究提供新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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