Yang Fan, Liu Delong, Gong Xiaodong, Chen Ruizhi, Hyyppä Juha
Shaoguan Power Supply Bureau, Guangdong Power Grid Company, Shaoguan, 512000, China.
State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan, 430072, China.
Sci Rep. 2024 Sep 6;14(1):20846. doi: 10.1038/s41598-024-69927-x.
Real-time location tracking is essential for personal security in industrial scenes, e.g. monitoring worker safety in power substations. Ultra wideband (UWB) technology is suitable for indoor positioning thanks to its high penetration capability, high ranging accuracy and low power consumption. However, UWB based trilateration positioning requires high workload for field deployment of base stations. Indoor complex topology results in multipath and non-line of sight (NLOS) conditions of UWB signals, and degrades the positioning performance in terms of accuracy and reliability. This paper proposes a three-dimensional (3D) area recognition solution by integrating UWB time of flight (TOF) ranging and barometer measurements. The proposed solution utilizes a multi-tier distributed joint probabilistic inference model, which accomplishes the indoor 3D area recognition exploiting multiple clustering and prediction algorithms of machine learning. The field experiments showed that the proposed method can achieve an accuracy of 3D area recognition of more than 99.2%. The proposed method improves the computing efficiency by 93%. The errors of improved differential barometric height estimation method are less than 1 m, which means a success rate of 100% for floor identification, given a floor separation of 3-4 m. The proposed solution is suitable for personnel security applications of industrial scenes, which requires reliable real-time area information rather than just coordinates.
实时定位跟踪对于工业场景中的人员安全至关重要,例如在变电站中监测工人安全。超宽带(UWB)技术因其高穿透能力、高精度测距和低功耗而适用于室内定位。然而,基于UWB的三边定位在基站的现场部署方面需要大量工作。室内复杂的拓扑结构会导致UWB信号出现多径和非视距(NLOS)情况,并在准确性和可靠性方面降低定位性能。本文提出了一种通过集成UWB飞行时间(TOF)测距和气压计测量的三维(3D)区域识别解决方案。所提出的解决方案利用了多层分布式联合概率推理模型,该模型利用机器学习的多种聚类和预测算法实现室内3D区域识别。现场实验表明,所提出的方法可以实现超过99.2%的3D区域识别准确率。所提出的方法将计算效率提高了93%。改进后的差分气压高度估计方法的误差小于1米,这意味着在楼层间距为3至4米的情况下,楼层识别成功率为100%。所提出的解决方案适用于工业场景的人员安全应用,这种应用需要可靠的实时区域信息而不仅仅是坐标。