| Literature DB >> 35408087 |
Oluwaseyi Paul Babalola1, Vipin Balyan1.
Abstract
Visible light communication (VLC) channel quality depends on line-of-sight (LoS) transmission, which cannot guarantee continuous transmission due to interruptions caused by blockage and user mobility. Thus, integrating VLC with radio frequency (RF) such asWireless Fidelity (WiFi), provides good quality of experience (QoE) to users. A vertical handover (VHO) scheme that optimizes both the cost of switching and dwelling time of the hybrid VLC-WiFi system is required since blockage on VLC LoS usually occurs for a short period. Hence, an automated VHO algorithm for the VLC-WiFi system based on the hidden Markov model (HMM) is developed in this article. The proposed VHO prediction scheme utilizes the channel characterization of the networks, specifically, the measured received signal strength (RSS) values at different locations. Effective RSS are extracted from the huge datasets using principal component analysis (PCA), which is adopted with HMM, and thus reducing the computational complexity of the model. In comparison with state-of-the-art VHO handover prediction methods, the proposed HMM-based VHO scheme accurately obtains the most likely next assigned access point (AP) by selecting an appropriate time window. The results show a high VHO prediction accuracy and reduced mixed absolute percentage error performance. In addition, the results indicate that the proposed algorithm improves the dwell time on a network and reduces the number of handover events as compared to the threshold-based, fuzzy-controller, and neural network VHO prediction schemes. Thus, it reduces the ping-pong effects associated with the VHO in the heterogeneous VLC-WiFi network.Entities:
Keywords: WiFi; hidden Markov model; principal component analysis; radio frequency; received signal strength; vertical handover; visible light communication
Year: 2022 PMID: 35408087 PMCID: PMC9002554 DOI: 10.3390/s22072473
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
VLC System Parameters.
| Transmitter | |
|---|---|
| Room size (length × width × height) | 3 m × 3 m × |
|
|
|
| LED Driving Current | 300 mA |
| LED Modulation | Pulse Width Modulation: |
| Switching Frequency | 100 Hz |
| Modulation Bandwidth | 1 MHz |
|
| |
| Optical Filter Wavelength | 660 nm |
| TIA Bandwidth | 240 MHz |
| Flourescent Frequency | 50 Hz |
| Height of PD from floor | |
|
| |
|
|
|
| FFT size | 256 samples |
| PD Responsivity | |
| Sampling Frequency | 128 kHz |
| Cutoff Frequency | 100 MHz |
|
| 10 |
|
| 1 |
Figure 1Hybrid VLC-WiFi Network Model.
Figure 2Enhanced VHO prediction system based on HMM.
Figure 3Hybrid VLC–WiFi RSS time series for training.
RSS Dataset Intervals.
| Intervals | VLC | WiFi |
|---|---|---|
| High (dBm) | [−5~−13] | [−38~−63] |
| Medium (dBm) | [−14~−19] | [−64~−79] |
| Low (dBm) | [−20~−30] | [−80~−95] |
Performance analysis for different w.
|
|
|
|
|---|---|---|
| 1 |
|
|
| 3 |
|
|
| 5 |
|
|
| 8 |
|
|
Figure 4Actual versus Predicted RSS Values of the VLC–WiFi APs; HMM, Fuzzy, NN.
Performance analysis of the proposed HMM, fuzzy controller and NN; .
| Methods |
|
| Computational Time (s) |
|---|---|---|---|
| HMM |
|
|
|
| NN |
|
|
|
| Fuzzy |
|
|
|
Figure 5Average dwell time comparison of the VLC and WiFi systems using HMM, Fuzzy, NN, Threshold methods.
Figure 6Handover decision comparison for proposed HMM, Fuzzy, NN, Threshold methods.