Channel-Quality-Evaluation-Based Anchor Node Selection for UWB Indoor Positioning
Abstract
:1. Introduction
- Mitigate or correct the ranging error. This can be assisted by using an inertial navigation system (INS) [5,6,7]. When using the INS alone, the error will accumulate and the accuracy will become worse due to its characteristics, but using it in combination with UWB positioning can effectively improve the accuracy in the case of NOLS. In addition, the fingerprint of the position can be used to improve the positioning accuracy [8,9,10]. The fingerprint of the location is formed by collecting the features of the location in advance and training on them. The application is performed by finding the best-matching features to determine the location. This approach requires tedious data collection and is not environmentally adaptive;
- Removing values with large ranging errors. Since anchor nodes are usually redundant, some methods select a group of anchor nodes that can achieve better positioning accuracy than all the anchor nodes.
2. Analysis of the CIR Characteristics under Different Channel Conditions
- Machine learning [18,19] or neural networks [20] were usually used in previous papers for LOS/NLOS identification, which combined with the CIR characteristics, can achieve better results [24]. These methods need to be trained for specific scenes and have poor environmental adaptability [25]. These articles showed that the ranging errors were correlated with the CIR characteristics;
- The normal method of NLOS identification by extracting some CIR characteristics. The article [21] logged the distribution for five characteristics determined by the CIRs, then the thresholds were used to determine whether a certain measurement was either LOS or NLOS. Kegen Yu used the Pearson correlation coefficient to calculate the correlations between different features [22]. These methods are simple enough to operate in low-cost UWB devices. However, these methods are dependent on the thresholds that are relevant to the environment.
3. Methods
3.1. Channel Quality Evaluation Method
3.2. Anchor Node Selection Method
3.3. Positioning Solution Method
4. Simulation and Experiments
4.1. Simulation of the Channel Quality Evaluation Methods
Parameter | Value |
---|---|
Weights of the ideal channel factor a | 0.5 |
Weights of the power dispersion factor b | 0.2 |
Weights of the first path intensity factor c | 0.3 |
Sliding window length N | 10 |
False alarm rate | |
Channel model settings | Standard IEEE 802.15.4a model settings; see the details in the Supplementary |
4.2. Experiments
4.2.1. Ranging Experiments
4.2.2. Positioning Experiments
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
CFAR | Constant false alarm detection |
CIR | Channel impulse response |
DOP | Dilution of precision |
INS | Inertial navigation system |
LOS | Line-of-sight |
NLOS | Non-line-of-sight |
PN | Pseudo-noise |
RMSE | Root-mean-squared error |
UWB | Ultra-wideband |
CDF | Cumulative distribution function |
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Ref. | Remark | Basic Idea | Advantage | Disadvantage |
---|---|---|---|---|
- | Anchor node selection | Manual calibration | No calculation required | Labor intensive |
[11,12,13,14] | Anchor node selection | DOP | No labor required | Not adapted to NLOS conditions |
[15] | Anchor node selection | Ranging error variance | Recognizes NLOS condition partly | Inability to cope with static and rest situations |
[17] | Anchor node selection | Traversal of all combinations | Low complexity | High time complexity when the number of anchor points is large |
[18,19,20] | LOS/NLOS identified by the CIR characteristic | Machine learning | High performance | High complexity |
[21,22] | LOS/NLOS identified by the CIR characteristic | Normal method | Low complexity | Low environmental adaptation |
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Chen, C.; Huang, Z.; Wang, J.; Yuan, L.; Bao, J.; Chen, Z. Channel-Quality-Evaluation-Based Anchor Node Selection for UWB Indoor Positioning. Electronics 2022, 11, 436. https://doi.org/10.3390/electronics11030436
Chen C, Huang Z, Wang J, Yuan L, Bao J, Chen Z. Channel-Quality-Evaluation-Based Anchor Node Selection for UWB Indoor Positioning. Electronics. 2022; 11(3):436. https://doi.org/10.3390/electronics11030436
Chicago/Turabian StyleChen, Chunxue, Zheng Huang, Jiayu Wang, Lei Yuan, Jun Bao, and Zhuming Chen. 2022. "Channel-Quality-Evaluation-Based Anchor Node Selection for UWB Indoor Positioning" Electronics 11, no. 3: 436. https://doi.org/10.3390/electronics11030436
APA StyleChen, C., Huang, Z., Wang, J., Yuan, L., Bao, J., & Chen, Z. (2022). Channel-Quality-Evaluation-Based Anchor Node Selection for UWB Indoor Positioning. Electronics, 11(3), 436. https://doi.org/10.3390/electronics11030436