Advanced Mobile Communication Techniques in the Fight against the COVID-19 Pandemic Era and Beyond: An Overview of 5G/B5G/6G
Abstract
:1. Introduction
2. Advance 5G, B5G, and 6G Mobile Communication Technologies Related to COVID-19
3. Applications (Apps) Related to COVID-19
4. Discussions
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AC | awareness about COVID-19 |
apps | applications |
AI | artificial intelligence |
ARACP | appropriately react to abrupt changes in the pandemic. |
BC | blockchain |
BCI | brain–computer interaction |
BCRTAPHC | book, cancel, and/or reschedule their appointments at primary healthcare centers |
B5G | beyond 5G |
CCTPD | COVID-19 contact-tracing or proximity detection |
DELM | de-escalate lockdown measures |
DPSCI | detecting possible suspects for COVID-19 infection |
CFI | core fundamental infrastructure |
COVID-19 | coronavirus disease 2019 |
CONSU | consultation |
CPCS | combat and prevention COVID-19 strategies |
CT | contact tracing |
CVI | COVID-19 vaccine information |
CR | cardiac rehabilitation |
CRHI | COVID-19-related hospital infrastructure |
DTCS | diagnosis and treatment COVID-19 strategies |
DPPICUCP | decreasing the psychological problems of ICU COVID-19 patients |
ECG | electrocardiography |
EEG | electroencephalogram |
EHS | employees’ health status |
eMBB | enhanced mobile broadband |
EMS | emergency medical services |
ERCMR | effectively reducing COVID-19 mortality rates |
eV2X | enhanced vehicle to everything |
4G | fourth generation |
5G | fifth generation |
FRPC | facilitate remote patient care |
FS | fluorescence sensor |
HD | healthcare delivery |
HBF | holographic beamforming |
HHT | Hilbert–Huang transformation |
HIPU | high-impact policies update |
IA | industrial application |
ICU | intensive care unit |
ICP | immediate control policies |
LEO | low-earth-orbit |
LIS | large intelligent service |
IoT | internet of things |
IoMT | internet of medical things |
IPP | institutional policies and protocols |
IR-VD | intelligent reflector-viral detectors |
IVHRFIVI | identify vaccine hesitancy, assess risk factors, and investigate vaccine intention |
LTE | long-term evolution |
MAPP | mobile app |
MHP | mobile health promotion |
MHT | medical holographic telepresence |
MIMO | multi-input multi-output |
ML | machine learning |
MLE | maximum-likelihood estimation |
mMTC | massive machine-type communications |
mmWave | millimeter-wave |
M/THz | mmwave/terahertz |
MR | mixed reality |
MS | mobile sensors |
MSM | mathematical and statistical modeling |
NR | new radio |
OAM | orbital angular momentum |
PCWCA | patient-centered wound care activities. |
PHR | personal health record |
PIHICTD | preventing infections, hospitalizations, intensive care treatments, and deaths |
PILIC | power distance, individualism, long-term orientation, and indulgence in the pre-deployment phase are confirmed |
PM | patient monitoring |
PROH | patient rehabilitation outside of hospitals |
RT | real-time |
RTSDPF | RT streaming data processing framework |
6G | sixth generation |
SDC | short development cycles |
SHC | smart hospital care |
SHCRD | smart hospital care, and remote diagnosis |
SM | symptom monitoring |
SMS | short message service |
SR | situ recordings |
SWMD | smart wearable medical devices |
Tbs | T bits per second |
3D | three dimension |
THz | terahertz |
TI | thermal imaging |
TM | tele-monitoring |
TS | telehealth services |
UAVs | unmanned aerial vehicles |
UHR | ultra-high reliability |
URLLC | ultra-reliable low-latency communications |
VD | vaccine distribution |
VDE | viral detection |
VLC | visible-light communication |
VR | virtual reality |
VT | video teleconsultation |
WAPP | web app |
WHO | World Health Organization |
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References | Technical Features | Technical Effectiveness |
---|---|---|
Siriwardhana et al. [15] | 1. 5G; 2. IoMT; 3. SWMD. | 1. RT; 2. TS; 3. CT; 4. ICP. |
Chamola et al. [16] | 1. 5G; 2. IoMT; 3. UAV; 4. robots; 5. SWMD; 6. BC; 7. AI. | 1. CPCS; 2. DTCS; 3. CFI; 4. ERCMR. |
He et al. [17] | 1. 5G; 2. VR; 3. Video; 4. SWMD. | 1. CPCS; 2. DTCS; 3. DPPICUCP; 4. CFI; 5. ERCMR. |
Moglia et al. [18] | 1. B5G; 2. IoMT; 3. cloud. | 1. DTCS; 2. HD; 3. PM; 4. CT; 5. VD; 6. EMS; 7. SHCRD; 8. CFI; 9. ERCMR. |
Wang et al. [19] | 1. B5G; 2. AI; 3. cloud. | 1. CPCS; 2. DTCS; 3. HD; 4. PM; 5. SHCRD; 6. CFI; 7. ERCMR. |
Muhammad et al. [20] | 1. B5G; 2. IoMT; 3. AI; 4. SMS. | 1. CPCS; 2. DTCS; 3. HD; 4. PM; 5. VD; 6. SHCRD; 7. CFI; 8. ERCMR. |
Elmousalami et al. [21] | 1. 5G; 2. IoMT; 3. AI; 4. TI. | 1. DTCS; 2. HD; 3. PM; 4. SHCRD; 5. CFI; 6. RT; 7. ERCMR. |
Verma et al. [22] | 1. 6G; 2. UAV. | 1. CPCS; 2. CT; 3. VD; 4. CFI; 5. RT; 6. ERCMR. |
Devi et al. [23] | 1. 5G; 2. robots; 3. SWMD. | 1. HD; 2. PM; 3. SHCRD; 4. CFI; 5. PROH; 6. ERCMR. |
Tan et al. [24] | 1. 5G; 2. SWMD; 3. RTSDPF; 4. AI. | 1. DTCS; 2. HD; 3. PM; 4. RT; 5. ERCMR. |
Muhammad et al. [25] | 1. 6G; 2. IoMT; 3. AI. | 1. DTCS; 2. HD; 3. PM; 4. SHCRD; 5. CFI; 6. RT; 7. ERCMR. |
Šiljak et al. [26] | 1. 6G; 2. IR-VD; M/T Hz. | wireless indoor VDE. |
Barroca Filho et al. [27] | 1. 5G; 2. IoMT; 3. SWMD. | 1. DTCS; 2. HD; 3. PM; 4. SHCRD; 5. CFI. |
Guo et al. [28] | 1. 5G; 2. IoMT; 3. FS; 4. AI; 5. cloud. | 1. HD; 2. PM; 3. VDE. |
Hussein et al. [29] | 1. 5G; 2. TS; 3. telemedicine. | 1. CPCS; 2. DTCS; 3. HD; 4. PM. |
Ahmed et al. [30] | 1. 5G; 2. IoMT; 3. robots; 4. AI; 5. cloud; 7. TI. | 1. CPCS; 2. DTCS; 3. HD; 4. PM. |
Solleiro et al. [31] | 1. 5G; 2. IoMT; 3. AI; 4. line. | 1. CPCS; 2. DTCS; 3. HD; 4. PM. |
References | Technical Features | Technical Effectiveness |
---|---|---|
Anyanwu et al. [32] | 1. MAPP; 2. CRHI. | 1. FRPC; 2. IPP; 3. HIPU; 4. RT; 5. PIHICTD; 6. SHC; 7. CFI. |
Kobayashi et al. [33] | 1. MAPP; 2. CVI; 3. line. | 1. IPP; 2. HIPU; 3. IVHRFIVI. |
Dzandu et al. [34] | 1. MAPP; 2. CCTPD. | 1. IPP; 2. HIPU; 3. PILIC; 4. DELM; 5. CT. |
Ellmann et al. [35] | 1. MAPP; 2. CCTPD; 3. MSM. | 1. AC; 2. PIHICTD; 3. CT; 4. CFI. |
Kaiser et. al. [36] | 1. CCTPD; 2. TS; 3. TM; 4. K-nearest neighbor and K-means. | 1. AC; 2. CT; 3. DELM; 4. DPSCI; 5. EHS; 6. IA. |
Yap et. al. [37] | 1. CCTPD; 2. PHR; 3. TS; 4. TM; 5. WAPP. | 1. CT; 2. SM. |
Park et al. [38] | 1. MAPP; 2. VT; 3. PHR; 4. TS; 5. TM; 6. MS. | 1. FRPC; 2. AC; 3. RT; 4. SM. |
AlAli et al. [39] | 1. MAPP; 2. CRHI; 3. CVI; 4. PHR; 5. TS; 6. TM; 7. BCRTAPHC. | 1. AC; 2. SM; 3. DPSCI; 4. CFI. |
Beierle et al. [40] | 1. MAPP; 2. SR; 3. MS; 4. SDC; 5. ARACP. | 1. FRPC; 2. AC; 3. RT; 4. EMS; 5. DPSCI; 6. SM. |
Barakat-Johnson et al. [41] | 1. MAPP; 2. HRC; 3. PHR; 4. TM; 5. ML; 6. cloud. | 1. FRPC; 2. PCWCA; 3. wound images; 4. DOSCI; 5. SM. |
Sousa et al. [42] | 1. MAPP; 2. PHR; 3. TS; 4. TM; 5. SR; 6. ML. | 1. IPP; 2. HIPU; 3. SM. |
Wu et al. [43] | 1. MAPP; 2. CCTPD; 3. PHR; 4. TS; 5. TM; 6. CONSU. | 1. FRPC; 2. CT; 3. SM. |
Getz et al. [44] | 1. WAPP; 2. TS; 3. TM; PHR; 4. MLE. | 1. AC; 2. SM; 3. DPSCI. |
Lin et al. [45] | 1. MAPP; 2. VT; 3. PHR; 4. TS; 5. TM; 6. CONSU; 7. cloud. | 1. MHP; 2. RT; 3. SM. |
Technical Features | |
---|---|
Millimeter-wave (mmWave) communications. | An explosion in the number of connected devices. |
Large diversity of use cases and requirements. | Massive increase in data volumes and rates. |
Connect billions of smart devices, such as surveillance cameras, smart-home/grid devices, and connected sensors. | 5G-based wireless connections for at least 100 billion devices, and 10 Gb/s delivered to individual patients. |
Mass low-latency and ultra-reliable 5G connectivity has been established among patients, medical machines, devices, and sensors, which will ultimately lead to patients in the era of the IoMT. | Massive MIMO. |
Technical Features | |
---|---|
Make 5G capable of achieving higher data rates, lower latency, greater capacity, and more efficient spectrum utilization. | Significantly much more efficient networks, new services, new ecosystems, and new revenues can be provided. |
eMBB. | URLLC. |
mMTC. | eV2X. |
Technical Features | |||||
---|---|---|---|---|---|
Connected intelligence. | Ubiquitous wireless intelligence. | ||||
THz communications. | Super-massive MIMO. | ||||
HBF. | OAM multiplexing. | ||||
Laser communication. | VLC. | ||||
BC-based spectrum sharing. | Quantum computing. | ||||
Cell-less architectures to enable ubiquitous 3D coverage (LEO satellite, land-based mobile cellular, and underwater) intelligent communication networks. | |||||
Reconfigurable intelligent surface. | BC. | ||||
Tbs delivered to individual patients. | High-capacity backhaul connectivity. | ||||
Cloud-fog architecture. | Machine-type communications. | ||||
Edge intelligence. | Pervasive AI. | ||||
MR medical applications with real-time patients interaction in an immersive environment. | MHT application synchronizing many viewing angles. | ||||
1 Tbps | Minimum latency. | UHR | 4.32 Tbps | Sub-ms latency | UHR |
Telesurgery. | Mobile healthcare. | ||||
6G-based wireless BCI connections to medical machines, devices, and sensors. | LIS. |
Technical Features | |
---|---|
5G [15,16,17,21,23,24,27,28,29,30,31] | IoMT, UAV, robots, SWMD, BC, AI, CPCS, DTCS, CT, CFI, ERCMR, VR, video, DPPICUCP, TI, TS, HD, PM, SHCRD, RT, RTSDPF, cloud, FS, ICP, PROH., VDE, telemedicine, line. |
B5G [18,19,20] | IoMT, cloud, DTCS, HD, PM, CT, VD, EMS, SHCRD, CFI, ERCMR, AI, CPCS, SMS, RT. |
6G [22,25,26] | IoMT, UAV, CPCS, CT, VD, CFI, RT, ERCMR, AI, HD, PM, SHCRD, IR-VD, M/T Hz, wireless indoor VDE. |
Technical Features | |
---|---|
MAPP [32,33,34,35,36,38,39,40,41,42,43,45] | FRPC, IPP, HIPU, RT, CVI, CT, line, IVHRFIVI, PIHICTD, CCTPD, MSM, AC, TS, TM, DELM, DPSCI, EHS, IA, VT, PHR, MS, SM, BCRTAPHC, SR, SDC, PCWCA, CONSU, PILIC, SHC, CFI, K-nearest neighbor and K-means, ARACP, ML, cloud, wound images. |
CRHI [32,39,44] | FRPC, IPP, HIPU, RT, PIHICTD, SHC, CFI, CVI, AC, PHR, TM, TS, BCRTAPHC, DPSCI, SM, WAPP, MLE. |
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Lin, C.-F.; Chang, S.-H. Advanced Mobile Communication Techniques in the Fight against the COVID-19 Pandemic Era and Beyond: An Overview of 5G/B5G/6G. Sensors 2023, 23, 7817. https://doi.org/10.3390/s23187817
Lin C-F, Chang S-H. Advanced Mobile Communication Techniques in the Fight against the COVID-19 Pandemic Era and Beyond: An Overview of 5G/B5G/6G. Sensors. 2023; 23(18):7817. https://doi.org/10.3390/s23187817
Chicago/Turabian StyleLin, Chin-Feng, and Shun-Hsyung Chang. 2023. "Advanced Mobile Communication Techniques in the Fight against the COVID-19 Pandemic Era and Beyond: An Overview of 5G/B5G/6G" Sensors 23, no. 18: 7817. https://doi.org/10.3390/s23187817
APA StyleLin, C. -F., & Chang, S. -H. (2023). Advanced Mobile Communication Techniques in the Fight against the COVID-19 Pandemic Era and Beyond: An Overview of 5G/B5G/6G. Sensors, 23(18), 7817. https://doi.org/10.3390/s23187817