| Literature DB >> 26389919 |
Bing Li1, Wei Cui2, Bin Wang3.
Abstract
Localization algorithms based on received signal strength indication (RSSI) are widely used in the field of target localization due to its advantages of convenient application and independent from hardware devices. Unfortunately, the RSSI values are susceptible to fluctuate under the influence of non-line-of-sight (NLOS) in indoor space. Existing algorithms often produce unreliable estimated distances, leading to low accuracy and low effectiveness in indoor target localization. Moreover, these approaches require extra prior knowledge about the propagation model. As such, we focus on the problem of localization in mixed LOS/NLOS scenario and propose a novel localization algorithm: Gaussian mixed model based non-metric Multidimensional (GMDS). In GMDS, the RSSI is estimated using a Gaussian mixed model (GMM). The dissimilarity matrix is built to generate relative coordinates of nodes by a multi-dimensional scaling (MDS) approach. Finally, based on the anchor nodes' actual coordinates and target's relative coordinates, the target's actual coordinates can be computed via coordinate transformation. Our algorithm could perform localization estimation well without being provided with prior knowledge. The experimental verification shows that GMDS effectively reduces NLOS error and is of higher accuracy in indoor mixed LOS/NLOS localization and still remains effective when we extend single NLOS to multiple NLOS.Entities:
Keywords: Gaussian mixed model; RSSI; multidimensional scaling; wireless sensor network
Year: 2015 PMID: 26389919 PMCID: PMC4610549 DOI: 10.3390/s150923536
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Environment deployment.
Figure 2ZigBee nodes deployment.
Figure 3RSSI measurements.
Experimental result data.
| Algorithm | RSSI (dB) |
|---|---|
| GMM-RSSI | −43.6757 |
| Sample mean | −57.0877 |
| Reference | −42.9588 |
Figure 4Result of RSSI estimation.
Figure 5Result of distance estimation.
Figure 6Performance of the tracking algorithms when . (a) Localization error when ; (b) Diagram of cumulative error distribution when .
Figure 7Performance of the tracking algorithms when . (a) Localization error when ; (b) Diagram of cumulative error distribution when .
Figure 8Performance of the tracking algorithms when . (a) Errors of localization when ; (b) Diagram of cumulative error distribution when .
Average errors of localization (m).
| Algorithm | |||
|---|---|---|---|
| GMDS | 1.2057 | 1.3028 | 1.3111 |
| CMDS | 2.6223 | 2.9836 | 3.4741 |
| LS | 3.2646 | 3.4515 | 3.7053 |
| Rwgh | 2.7367 | 2.6401 | 2.8519 |