江苏商贸职业学院 电子与信息学院,江苏 南通 226011
姚瑶,实验师。E-mail:xiariniunai@163.com
收稿:2024-09-13,
修回:2024-10-08,
纸质出版:2026-02-10
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姚瑶,朱亚丽,邵鑫玉. 基于Transformer模型的可见光通信室内定位[J]. 光通信研究,2026(1): 240201.
Yao Y, Zhu Y L, Shao X Y. Indoor Positioning of Visible Light Communication based on Transformer Model[J]. Study on Optical Communications, 2026(1): 240201.
姚瑶,朱亚丽,邵鑫玉. 基于Transformer模型的可见光通信室内定位[J]. 光通信研究,2026(1): 240201. DOI: 10.13756/j.gtxyj.2026.240201.
Yao Y, Zhu Y L, Shao X Y. Indoor Positioning of Visible Light Communication based on Transformer Model[J]. Study on Optical Communications, 2026(1): 240201. DOI: 10.13756/j.gtxyj.2026.240201.
目的
2
可见光在室内进行了多径传播时,符号间干扰(ISI)导致基于接收信号强度的室内可见光定位精度不足。针对此问题,文章结合Transformer模型提出了一种新的基于接收信号强度的室内可见光定位系统。
方法
2
首先,文章推导了室内可见光接收信号强度的数学模型,分析了ISI和室内噪声对室内可见光通信系统的影响;然后,收集了各参考点的接收信号强度和真实坐标构建室内指纹数据库,文章所提神经网络模型在指纹数据库上进行端到端训练,学习从接收信号强度指纹到对应位置坐标的映射关系。
结果
2
仿真结果表明,文章所提定位系统的定位误差达到厘米级,在地面、0.5、1.0、1.5和2.0 m高度接收面的平均定位误差分别为0.73、0.94、1.13、1.92和2.97 cm,在室内不同高度的定位精度均优于其他基于接收信号强度的定位方法。此外,文章所提系统的平均定位时间为2.3 ms,虽然其速度不具备优势,但所提定位系统的定位精度更高,因此综合性能更具优势。
结论
2
Transformer模型提取了接收信号强度指纹内部各元素间的依赖性,而且提取了接收信号强度指纹间的依赖性,可挖掘出接收信号强度指纹结构中隐含的空间信息,从而提升了特征关于室内位置的判别性。因此,当接收面高度升至1.5和2.0 m时,文章所提定位系统的平均定位误差并未出现大幅提高的现象。经比较,文章所提系统的累积分布函数图显著好于对比方法。
Objective
2
In the multipath propagation scenario of indoor visible light communication
Inter-Symbol Interference (ISI) leads to low precision of indoor visible light positioning due to low received signal strength. In view of this
a new received signal strength based indoor visible light positioning system combined with Transformer model is proposed.
Methods
2
Firstly
the indoor visible light received signal strength is analyzed by mathematical derivation
and the impact of ISI and indoor noise on indoor visible light communication systems is analyzed. Then
the received signal strength and real coordinate of each reference point are collected to construct the indoor fingerprint database. The proposed neural network model is end-to-end trained on the fingerprint database
so as to learn the mapping relationship from the received signal strength fingerprint to the corresponding position coordinate.
Results
2
Simulation results demonstrate that the positioning error of the proposed positioning system reaches the centimeter level
with average positioning errors of 0.73
0.94
1.13
1.92 and 2.97 cm recorded for the receiving planes at ground level
0.5
1.0
1.5 and 2.0 m
respectively. Compared with the other received signal strength based positioning methods
the indoor positioning precision of the proposed system is better at different heights. Besides
the average positioning time of the proposed system is 2.3 ms.
Conclusion
2
The Transformer model extracts the dependency among the elements of every received signal strength fingerprint. It also extracts the dependency among the received signal strength fingerprints. The hidden spatial information within the received signal strength fingerprint structure is retrievable
effectively boosting the feature discriminability relevant to indoor locations. Hence
the average positioning error of the proposed system does not increase sharply even when the receiving plane height reaches 1.5 and 2.0 m. Moreover
the system's cumulative distribution function curve shows a clear advantage over those of the comparative approaches.
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