Fight against Future Pandemics: UAV-Based Data-Centric Social Distancing, Sanitizing, and Monitoring Scheme
Abstract
:1. Introduction
1.1. Research Contributions
- The article presents the deployment of 6G-enabled services in a multi-UAV ecosystem to address the challenges of the COVID-19 pandemic as 3FFs (social distancing, sanitization, and inspection and monitoring of affected zones).
- To fulfil the 3FFs vision, we present a proposed reference architecture and components that integrate 6G-envisioned wireless coverage channels to support the multi-UAVs swarm ecosystem at extremely low delay. As a result, the accurate precision of geo-location coordinates of infected patients in densely populated areas can be achieved with high bandwidth. Thus, the proposed scheme allows real-time responsive management to tackle the viral spread of global COVID-19 and future pandemics.
- We delve into the data-centric and computational aspects of UAVs and present an effective task offloading mechanism, where the offloaded tasks to edge servers are trained by local learning models in a federated manner. These local models update the gradients of global server models (normally analytics are performed on the cloud server).
- We present a non-stationary For estimation for moving persons for thermal inspection and social distancing norms. For sanitization, we present the nature of drones specific to the task. Finally, we present the specifics of blockchain-based vaccine registration, which forms an umbrella approach (end-to-end) solution to implement 3FFs.
- We highlight the open issues and research challenges in the integration of 6G-based UAV communication and present a use-case scenario that compares the presented 6G service set with 5G-based UAV service sets in terms of parameters such as communication latency, density, spectral efficiency, UAV mobility, radio loss, and user-experienced data rates. The presented results indicate the viability of 6G-assisted UAVs to tackle 3FFs at a massive scale.
1.2. Organization
2. Existing Schemes
Novelty
3. The Proposed Scheme: Threefold Functionality
3.1. COVID-19 Pandemic: An Impact Analysis
3.2. Threefold Functionalities
- UAV data management—In our 3FFs, we consider social distancing and thermal inspection of regions by UAVs. It would require high-end image processing algorithms, which could drain the useful battery of UAV swarms (grouped UAVs) by a considerable fraction. Thus, it becomes crucial to offload important tasks to nearby edge servers, which run federated learning (FL) for task learning. This would save essential battery consumption, and the UAV network lifetime would increase drastically.
- Non-stationary frames—To effectively realize the 3FFs, we assumed that persons (objects under consideration for thermal inspection, or social distancing) might be present in a moving frame-of-reference (FoR). For the persons, they are stationary, but for UAVs (outside the moving FoR), the motion is relative. Thus, the persons are moving, and we require a geo-fencing operation to locate the person in a moving FoR. In this case, we divide our FoR into coordinate frames (North, South, West, and East) and find the relative location of a person in the coordinate frame through a GPS tracker (which is installed in the personal application). We form a revised bounding-box estimation based on moving FoR to form the position estimate.
- Blockchain for COVID-19 vaccine registration and supply management—Regarding the supply of COVID-19 vaccines after detection, the governance layer would raise the requirements of vaccine distribution to the nearest medical centers, which can deploy ground logistics (or UAVs) to carry the vaccines, maintaining the cold-chain process. The recent literature by authors in [6,37,38] indicates the use of blockchain for transparent monitoring and distribution of vaccines at the ground level.
4. The Proposed Scheme: Architecture and Components
4.1. The Governance Layer
4.2. The Communication Layer
4.3. The COVID-19 Layer
4.3.1. COVID-19 Social Distancing Monitoring
Algorithm 1 Social Distancing |
Input: Registration information , UAV swarm network . Output: Critical 3FF Boolean flags , where is the flag for social distancing violation and is for sanitization.
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4.3.2. COVID-19 Sanitization
Algorithm 2 Sanitization |
Input: UAV swarm network . Output: Critical Boolean flag for sanitization in a designated region R.
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4.3.3. COVID-19 Thermal Inspection
Algorithm 3 Thermal inspection and monitoring |
Input: UAV swarms assisted with normal and thermal cameras. Output: Critical Boolean flag for thermal screening of in a designated region R.
|
5. Federated Task Offloading in the Proposed Scheme
6. Non-Stationary Object FoR Estimation
Vaccine Forecasting and Blockchain-Based Vaccine Distribution
7. Open Issues and Research Challenges
7.1. Device Complexity
7.2. Health Hazards
7.3. Environmental Conditions
7.4. Energy Management
7.5. Blockchain-Based Spectrum Sharing
7.6. Security
7.7. Privacy
8. Performance Evaluation
8.1. Improved 3FFs of 6G-Enabled UAVs
8.2. 6G-Assisted UAVs Network Characteristics
8.3. Computational Offloading and FL Characteristics
8.3.1. Simulation Setup
8.3.2. Result Analysis
8.4. Discussion and Open Challenges
- 6G channel characteristics: The presented scheme considers the deployment of a UAV swarm setup, where they are controlled through a controller node. In such cases, we considered 6G communication networks for effective UAV set up, where we analyze the performance based on 6G frequency and bandwidth ranges on the MATLAB simulation tool. However, in practicality, the performance and robustness would depend significantly on the size of the UAV swarm network and the fading model estimation. Moreover, the lack of open standards for 6G communication channels hinders the accurate modeling of the UAV setups. Thus, an open challenge is the standardization of 6G standards, which would allow homogeneity in the overall communication process.
- Accuracy of non-stationary FoR estimation: Moreover, we considered that objects are in non-stationary FoR, and thus the object detection accuracy (estimation of the bounding boxes) significantly depends on the velocity of the object. In our simulation, we considered the YOLOv3 model owing to its improved detection accuracy in real time. The algorithm achieves a fine balance between the detection speed against accuracy, which is essential for non-stationary FoR, but the inherent model complexity adds overhead to the overall model. In YOLOv3, a convolutional neural network is formed, where the location and class information of the object is fed as input. A deep feature map is formed, and in our simulations, we experienced a significant loss in spatial features. Thus, the person localization in moving frames has low accuracy compared with stationary FoR. In such cases, a future approach is moving towards shallow feature maps, which form a higher response towards the spatial features and improve the model accuracy.
- Challenges in FL setups: In our approach, we considered that edge nodes () deploying local FL models and communicating the gradients to the global cloud server. The setups and simulations are promising for small setups, but in real life, a massive number of edge nodes are required to realize our 3FFs operations in a wide range. Moreover, the UAV swarm network controller nodes would increase, and thus, the local computations would become expensive. In such cases, a potential challenge is to address an optimized communication model that sends the updates (gradients) efficiently. In simulations, owing to a small setup, we ignored the communication overheads in the FL communications. Secondly, FL devices (smartphones and laptops) have limited computing capability, and the increase in network size requires low-powered protocols at the network and transport layers. In such cases, hybrid approach (both connectionless and connection-oriented) link setups are required, which can be fine-tuned with software emulation functions in the 6G networks. At last, the data under consideration in our simulations have fewer data-point variations, and thus preserve the non-identically distributed (non-id) considerations. In large setups, the statistical heterogeneity might violate the frequency distributions, which increases the training time of the overall network. The loss optimization at the global model is slower in such cases.
9. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Shi, P.; Dong, Y.; Yan, H.; Zhao, C.; Li, X.; Liu, W.; He, M.; Tang, S.; Xi, S. Impact of temperature on the dynamics of the COVID-19 outbreak in China. Sci. Total. Environ. 2020, 728, 138890. [Google Scholar] [CrossRef] [PubMed]
- Masud, M.; Alshehri, M.; Alroobaea, R.; Mohammad, S. Leveraging Convolutional Neural Network for COVID-19 Disease Detection Using CT Scan Images. Intell. Autom. Soft Comput. 2021, 29, 1–13. [Google Scholar] [CrossRef]
- COVID-19 Coronavirus Pandemic. Available online: https://www.worldometers.info/coronavirus/ (accessed on 8 November 2022).
- Wang, W.; Tang, J.; Wei, F. Updated understanding of the outbreak of 2019 novel coronavirus (2019-nCoV) in Wuhan, China. J. Med. Virol. 2020, 92, 441–447. [Google Scholar] [CrossRef] [PubMed]
- Mistry, C.; Thakker, U.; Gupta, R.; Obaidat, M.S.; Tanwar, S.; Kumar, N.; Rodrigues, J.J.P.C. MedBlock: An AI-enabled and Blockchain-driven Medical Healthcare System for COVID-19. In Proceedings of the ICC 2021—IEEE International Conference on Communications, Montreal, QC, Canada, 14–23 June 2021; pp. 1–6. [Google Scholar] [CrossRef]
- Verma, A.; Bhattacharya, P.; Zuhair, M.; Tanwar, S.; Kumar, N. VaCoChain: Blockchain-Based 5G-Assisted UAV Vaccine Distribution Scheme for Future Pandemics. IEEE J. Biomed. Health Inform. 2022, 26, 1997–2007. [Google Scholar] [CrossRef] [PubMed]
- Marinella, M.A. COVID-19 pandemic and the stethoscope: Don’t forget to sanitize. Heart Lung 2020, 49, 350. [Google Scholar] [CrossRef]
- Vos, J.D. The effect of COVID-19 and subsequent social distancing on travel behavior. Transp. Res. Interdiscip. Perspect. 2020, 5, 100121. [Google Scholar] [CrossRef]
- Shah, H.; Shah, S.; Tanwar, S.; Gupta, R.; Kumar, N. Fusion of AI Techniques to Tackle COVID-19 Pandemic: Models, Incidence Rates, and Future Trends. Multimed. Syst. 2021, 28, 1189–1222. [Google Scholar] [CrossRef]
- Lydia, L.; Anupama, C.; Beno, A.; Elhoseny, M.; Alshehri, M.; Selim, M. Cognitive computing-based COVID-19 detection on Internet of things-enabled edge computing environment. Soft Comput. 2021, 1–12. [Google Scholar] [CrossRef]
- How Drones Can Help Fight the Coronavirus, Mecatus Center, George Mason University. Available online: https://www.mercatus.org/system/files/skorup-drones-coronavirus-mercatus-v1.pdf (accessed on 8 November 2021).
- Gupta, R.; Kumari, A.; Tanwar, S. A taxonomy of blockchain envisioned edge-as-a-connected autonomous vehicles. Trans. Emerg. Telecommun. Technol. 2021, 32, e4009. [Google Scholar] [CrossRef]
- Bhattacharya, P. Co Existence of Packets and Bursts in High Speed Networks. Ph.D. Thesis, Dr. A.P.J. Abdul Kalam Technical University, Lucknow, India. Available online: http://shodhganga.inflibnet.ac.in:8080/jspui/handle/10603/332953 (accessed on 19 July 2022).
- Zhang, Z.; Xiao, Y.; Ma, Z.; Xiao, M.; Ding, Z.; Lei, X.; Karagiannidis, G.K.; Fan, P. 6G Wireless Networks: Vision, Requirements, Architecture, and Key Technologies. IEEE Veh. Technol. Mag. 2019, 14, 28–41. [Google Scholar] [CrossRef]
- Sanghvi, J.; Bhattacharya, P.; Tanwar, S.; Gupta, R.; Kumar, N.; Guizani, M. Res6Edge: An Edge-AI Enabled Resource Sharing Scheme for C-V2X Communications towards 6G. In Proceedings of the 2021 International Wireless Communications and Mobile Computing (IWCMC), Harbin City, China, 28 June–2 July 2021; pp. 149–154. [Google Scholar] [CrossRef]
- Zuhair, M.; Patel, F.; Navapara, D.; Bhattacharya, P.; Saraswat, D. BloCoV6: A blockchain-based 6G-assisted UAV contact tracing scheme for COVID-19 pandemic. In Proceedings of the 2021 2nd International Conference on Intelligent Engineering and Management (ICIEM), London, UK, 28–30 April 2021; pp. 271–276. [Google Scholar] [CrossRef]
- Yeh, C.; Jo, G.D.; Ko, Y.J.; Chung, H.K. Perspectives on 6G wireless communications. ICT Express 2022. [Google Scholar] [CrossRef]
- Technical Specification ITU-T FG-ML5G-ARC5G Unified architecture for machine learning in 5G and Future Networks. Available online: https://www.itu.int/en/ITU-T/focusgroups/ml5g/Documents/ML5G-delievrables.pdf (accessed on 20 July 2022).
- Verma, A.; Bhattacharya, P.; Saraswat, D.; Tanwar, S.; Kumar, N.; Sharma, R. SanJeeVni: Secure UAV-envisioned Massive Vaccine Distribution for COVID-19 Underlying 6G Network. IEEE Sens. J. 2022. [Google Scholar] [CrossRef]
- Verma, A.; Bhattacharya, P.; Bodkhe, U.; Saraswat, D.; Tanwar, S.; Dev, K. FedRec: Trusted rank-based recommender scheme for service provisioning in federated cloud environment. Digit. Commun. Netw. 2022. [Google Scholar] [CrossRef]
- Xing, Y.; Carlson, C.; Yuan, H. Optimize Path Planning for UAV COVID-19 Test Kits Delivery System by Hybrid Reinforcement Learning. In Proceedings of the 2022 IEEE 12th Annual Computing and Communication Workshop and Conference (CCWC), Las Vegas, NV, USA, 26–29 January 2022; pp. 0177–0183. [Google Scholar] [CrossRef]
- Rezaee, K.; Ghayoumi Zadeh, H.; Chakraborty, C.; Khosravi, M.R.; Jeon, G. Smart Visual Sensing for Overcrowding in COVID-19 Infected Cities Using Modified Deep Transfer Learning. IEEE Trans. Ind. Inform. 2022. [Google Scholar] [CrossRef]
- Suraci, C.; Pizzi, S.; Montori, F.; Di Felice, M.; Araniti, G. 6G to Take the Digital Divide by Storm: Key Technologies and Trends to Bridge the Gap. Future Internet 2022, 14, 189. [Google Scholar] [CrossRef]
- Shao, Z.; Cheng, G.; Ma, J.; Wang, Z.; Wang, J.; Li, D. Real-Time and Accurate UAV Pedestrian Detection for Social Distancing Monitoring in COVID-19 Pandemic. IEEE Trans. Multimed. 2022, 24, 2069–2083. [Google Scholar] [CrossRef]
- Harfina, D.; Zaini, Z.; Wulung, W. Disinfectant Spraying System with Quadcopter Type Unmanned Aerial Vehicle (UAV) Technology as an Effort to Break the Chain of the COVID-19 Virus. J. Robot. Control (JRC) 2021, 2, 502–507. [Google Scholar] [CrossRef]
- Janjua, M.B.; Duranay, A.E.; Arslan, H. Role of wireless communication in healthcare system to cater disaster situations under 6G vision. Front. Commun. Netw. 2020, 1, 610879. [Google Scholar] [CrossRef]
- Kumari, A.; Gupta, R.; Tanwar, S. Amalgamation of blockchain and IoT for smart cities underlying 6G communication: A comprehensive review. Comput. Commun. 2021, 172, 102–118. [Google Scholar] [CrossRef]
- Barnawi, A.; Chhikara, P.; Tekchandani, R.; Kumar, N.; Boulares, M. A CNN-based scheme for COVID-19 detection with emergency services provisions using an optimal path planning. Multimed. Syst. 2021, 1–15. [Google Scholar] [CrossRef]
- Islam, S.M.M.; Grado, C.; Lubecke, V.; Lubecke, L.C. UAV Radar Sensing of Respiratory Variations for COVID-Type Disorders. In Proceedings of the 2020 IEEE Asia-Pacific Microwave Conference (APMC), Hong Kong, 8–11 December 2020; pp. 737–739. [Google Scholar] [CrossRef]
- Siriwardhana, Y.; De Alwis, C.; Gür, G.; Ylianttila, M.; Liyanage, M. The Fight Against the COVID-19 Pandemic with 5G Technologies. IEEE Eng. Manag. Rev. 2020, 48, 72–84. [Google Scholar] [CrossRef]
- Unmanned Aerial Vehicle (UAV) Based Smart Garbage Collection System and Method Thereof. Available online: https://curin.chitkara.edu.in/patents/unmanned-aerial-vehicle-uav-based-smart-garbage-collection-system-and-method-thereof/ (accessed on 16 November 2022).
- Kaur, P.; Harnal, S.; Tiwari, R.; Alharithi, F.S.; Almulihi, A.H.; Noya, I.D.; Goyal, N. A Hybrid Convolutional Neural Network Model for Diagnosis of COVID-19 Using Chest X-ray Images. Int. J. Environ. Res. Public Health 2021, 18, 12191. [Google Scholar] [CrossRef] [PubMed]
- Khurana, S.; Sharma, G.; Miglani, N.; Singh, A.; Alharbi, A.; Alosaimi, W.; Alyami, H.; Goyal, N. An intelligent fine-tuned forecasting technique for COVID-19 prediction using neuralprophet model. Comput. Mater. Contin. 2022, 71, 629–649. [Google Scholar]
- Loey, M.; El-Sappagh, S.; Mirjalili, S. Bayesian-based optimized deep learning model to detect COVID-19 patients using chest X-ray image data. Comput. Biol. Med. 2022, 142, 105213. [Google Scholar] [CrossRef] [PubMed]
- Chew, A.W.Z.; Zhang, L. Data-driven multiscale modelling and analysis of COVID-19 spatiotemporal evolution using explainable AI. Sustain. Cities Soc. 2022, 80, 103772. [Google Scholar] [CrossRef]
- Baker, S.R.; Bloom, N.; Davis, S.J.; Kost, K.J.; Sammon, M.C.; Viratyosin, T. The Unprecedented Stock Market Impact of COVID-19; Technical Report; National Bureau of Economic Research: Cambridge, MA, USA, 2020. [Google Scholar]
- Chauhan, H.; Gupta, D.; Gupta, S.; Singh, A.; Aljahdali, H.M.; Goyal, N.; Noya, I.D.; Kadry, S. Blockchain Enabled Transparent and Anti-Counterfeiting Supply of COVID-19 Vaccine Vials. Vaccines 2021, 9, 1239. [Google Scholar] [CrossRef]
- Gupta, K.; Bansal, S.; Goel, R. Uses of Drones In Fighting COVID-19 Pandemic. In Proceedings of the 2021 10th International Conference on System Modeling & Advancement in Research Trends (SMART), Moradabad, India, 10–11 December 2021; pp. 651–655. [Google Scholar] [CrossRef]
- Prasad, V.K.; Bhattacharya, P.; Bhavsar, M.; Verma, A.; Tanwar, S.; Sharma, G.; Bokoro, P.N.; Sharma, R. ABV-CoViD: An Ensemble Forecasting Model to Predict Availability of Beds and Ventilators for COVID-19 like Pandemics. IEEE Access 2022, 10, 74131–74151. [Google Scholar] [CrossRef]
- Letaief, K.B.; Chen, W.; Shi, Y.; Zhang, J.; Zhang, Y.A. The Roadmap to 6G: AI Empowered Wireless Networks. IEEE Commun. Mag. 2019, 57, 84–90. [Google Scholar] [CrossRef]
- Alsharif, M.H.; Kelechi, A.H.; Albreem, M.A.; Chaudhry, S.A.; Zia, M.S.; Kim, S. Sixth Generation (6G) Wireless Networks: Vision, Research Activities, Challenges and Potential Solutions. Symmetry 2020, 12, 676. [Google Scholar] [CrossRef]
- Bhattacharya, P.; Bodkhe, U.; Zuhair, M.; Rashid, M.; Liu, X.; Verma, A.; Kishan Dewangan, R. Amalgamation of blockchain and sixth-generation-envisioned responsive edge orchestration in future cellular vehicle-to-anything ecosystems: Opportunities and challenges. Trans. Emerg. Telecommun. Technol. 2021, e4410. [Google Scholar] [CrossRef]
- Tanwar, S.; Gupta, R.; Patel, M.M.; Shukla, A.; Sharma, G.; Davidson, I.E. Blockchain and AI-Empowered Social Distancing Scheme to Combat COVID-19 Situations. IEEE Access 2021, 9, 129830–129840. [Google Scholar] [CrossRef]
- SYENA-H10. Available online: http://www.thanos.in/products/ (accessed on 12 November 2022).
- ESPY Drones. Available online: https://espy-drones.business.site/ (accessed on 12 November 2022).
- NAL-OCTA drones. Available online: https://pib.gov.in/PressReleasePage.aspx?PRID=1771470 (accessed on 12 November 2022).
- AIR-6 Hexacopter. Available online: https://www.droneprovide.com/airbornerobotic.html (accessed on 12 November 2022).
- Sharma, K.; Singh, H.; Sharma, D.K.; Kumar, A.; Nayyar, A.; Krishnamurthi, R. Dynamic Models and Control Techniques for Drone Delivery of Medications and Other Healthcare Items in COVID-19 Hotspots. In Emerging Technologies for Battling COVID-19: Applications and Innovations; Al-Turjman, F., Devi, A., Nayyar, A., Eds.; Springer International Publishing: Cham, Switzerland, 2021; pp. 1–34. [Google Scholar] [CrossRef]
- Saraswat, D.; Bhattacharya, P.; Singh, A.; Verma, A.; Tanwar, S.; Kumar, N. Secure 5G-Assisted UAV Access Scheme in IoBT for Region Demarcation and Surveillance Operations. IEEE Commun. Stand. Mag. 2022, 6, 58–66. [Google Scholar] [CrossRef]
- MEDICAS. Available online: https://www.droneprovide.com/medicas.html (accessed on 12 November 2022).
- Savio, M.M.D.; Deepa, T.; Bonasu, A.; Anurag, T.S. Image Processing For Face Recognition Using HAAR, HOG, and SVM Algorithms. JoUrnal Phys. Conf. Ser. 2021, 1964, 062023. [Google Scholar] [CrossRef]
- Barnawi, A.; Chhikara, P.; Tekchandani, R.; Kumar, N.; Alzahrani, B. Artificial intelligence-enabled Internet of Things-based system for COVID-19 screening using aerial thermal imaging. Future Gener. Comput. Syst. 2021, 124, 119–132. [Google Scholar] [CrossRef] [PubMed]
- Yi, K.M.; Yun, K.; Kim, S.W.; Chang, H.J.; Jeong, H.; Choi, J.Y. Detection of Moving Objects with Non-stationary Cameras in 5.8 ms: Bringing Motion Detection to Your Mobile Device. In Proceedings of the 2013 IEEE Conference on Computer Vision and Pattern Recognition Workshops, Portland, OR, USA, 23–28 June 2013; pp. 27–34. [Google Scholar] [CrossRef]
- Boulogeorgos, A.A.; Alexiou, A.; Merkle, T.; Schubert, C.; Elschner, R.; Katsiotis, A.; Stavrianos, P.; Kritharidis, D.; Chartsias, P.; Kokkoniemi, J.; et al. Terahertz Technologies to Deliver Optical Network Quality of Experience in Wireless Systems Beyond 5G. IEEE Commun. Mag. 2018, 56, 144–151. [Google Scholar] [CrossRef]
- Wang, C.X.; Huang, J.; Wang, H.; Gao, X.; You, X.; Hao, Y. 6G Wireless Channel Measurements and Models: Trends and Challenges. IEEE Veh. Technol. Mag. 2020, 15, 22–32. [Google Scholar] [CrossRef]
- Al-Saman, A.; Mohamed, M.; Cheffena, M.; Moldsvor, A. Wideband Channel Characterization for 6G Networks in Industrial Environments. Sensors 2021, 21, 2015. [Google Scholar] [CrossRef]
- Dong, Y.; Dai, J.; Niu, K.; Wang, S.; Yuan, Y. Joint source-channel coding for 6G communications. China Commun. 2022, 19, 101–115. [Google Scholar] [CrossRef]
- Sun, S.; Zhang, G.; Mei, H.; Wang, K.; Yang, K. Optimizing Multi-UAV Deployment in 3-D Space to Minimize Task Completion Time in UAV-Enabled Mobile Edge Computing Systems. IEEE Commun. Lett. 2021, 25, 579–583. [Google Scholar] [CrossRef]
Verticals | Parameters | 4G | 4.5G | 5G | 6G (Proposed) |
---|---|---|---|---|---|
Communication | Drivers | 3GPP, LTE | LTE-A, WIMAX | mMIMO, mmWave, eMBB, URLLC, mMTC | FeMBB, ERLLC, umMTC, LDHMC, ELPC |
Frequency band | 2–8 GHz | 2–8 GHz | 3–300 GHz | 0.1–10 THz | |
Uplink/Downlink | 128/56 Mbps | 3/1.5 Gbps | 20/10 Gbps | 52.6/24.25 Gbps | |
Peak data rate | 100 Mbps | 1.5 Gbps | 20 Gbps | 1 Tbps | |
Edge devices data rate | 1 Mbps | 10 Mbps | 0.1 Gbps | 1–10 Gbps | |
RTT latency (in ms) | 20 ms | 10 ms | 1 ms | 10–100 s | |
Spectral efficiency | 300 bps/Hz | 30 bps/Hz | 120 bps/Hz | 600–1200 bps/Hz | |
Connected devices | devices/km2 | devices/km2 | devices/km2 | devices/km2 | |
UAVs | Cell size | 6 GHz umbrella small dense cells | mmWave cells of 100 m (fixed) | <100 m tiny cells with dense mmWave | tiny THz cells with cell-free smart surfaces |
Coverage range | 50–80 m | 2 km | 100–150 km | 1500–2000 km | |
Payload weight | 16 g | 750 g | 4.9–50 km | 150 km | |
Flying mechanism | Multi-rotor | Fixed-wing | Multi-rotor | Multi-rotor | |
Speed & Flying time | 80 km/h & 6–8 min | 100 km/h & 45 min | 150 km/h & 180 min | 482 km/h & 1800 min | |
Energy efficiency | 1× J | 10× J | 100× J | 1000× J | |
Power supply | 3.7 V/160 mAh Li-battery | 2700 mAh-3-cell LiPo battery | LiPo Battery (10,000–15000 mAh) | 950-shaft-horsepower-turbo-propellant-engine | |
COVID-19 3FFs UAVs | Radio-only hop delay (in nanoseconds (ns)) | 100 | 100 | 10 | <1 |
Processing delay (in ns) | 100 | 50 | 10 | <1 | |
Base station-UAV communication delay | 10 ms | 5 ms | 0.5 ms | 50 s | |
End-to-end reliability (in %) | 99.99 | 99.999 | 99.99999 | 99.9999999 | |
Mobility | 300 km/h | 350 km/h | 500 km/h | ≥1000 km/h | |
Area traffic capacity | 0.1 Mb/s/m2 | 1 Mb/s/m2 | 10 Mb/s/m2 | 1 Gb/s/m2 | |
Technology | OFDM, MIMO, D2D, HetNets | Carrier aggregation, Turbo codes | mm-Wave, mMIMO, LDPC, Planar codes, NOMA, Ultra-dense | SM-MIMO, LIS, HBF, OAM MuX, Laser, VLC, Blockchain-based spectrum, Quantum entanglement, Coverage maximization over ML/DL algorithms. |
Author | Year | Parameters | Objective | Advantages | Limitations | ||||
---|---|---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | |||||
Proposed | 2022 | Y | Y | Y | Y | Y | A 6G-enabled monitoring and control ecosystem is proposed to curb the COVID-19 virus transmissibility | A UAV-based scheme is presented that highlights the importance of social distancing, sanitization, and control of 3FFs to tackle COVID-19 and future pandemics | The proposed work addresses the issues at the UAV-networking front but does not present insights towards UAV security |
Xing et al. [21] | 2022 | Y | N | N | Y | Y | The UAV path planning scheme is presented to deliver the COVID-19 testing kits | A hybrid RL scheme optimizes the UAV trip times and maintains an optimal delivery sequence from a given source to multiple destinations | To support the RL operations, discussions on effective UAV uplink rate are not considered |
Rezaee et al. [22] | 2022 | Y | Y | N | N | N | A virtual sensing UAV detection algorithm for crowded regions is considered for COVID-19 patients | WCA algorithm is combined with DTL for object detection, which improves monitoring accuracy | Challenges such as scene overlapping, non-human subject classification, and pixel occlusion are not considered |
Suraci et al. [23] | 2022 | Y | Y | Y | N | N | The benefits of 6G are discussed for COVID-19 to simplify the overall model prediction | A digital-divide concept (users and machines) interplay with 6G is presented to leverage massive UAV connectivity, which improves the service outreach to last-mile users | Specific use cases in healthcare, AR/VR, are discussed, but latency constraints are not highlighted |
Verma et al. [19] | 2022 | Y | N | Y | Y | Y | A 6G-based UAV vaccine distribution scheme is proposed that couples blockchain for chronological registrations of users | A scheme named SanJeeVni addresses the UAV distribution and registration challenges, where UAV is supported over a 6G-TI network | COVID-19 monitoring and social distancing measures to curb the virus spread are not presented |
Shao et al. [24] | 2021 | Y | Y | N | Y | Y | UAV-based social distancing monitoring is proposed, where captured UAV frames are diagnosed for distance measurements between two users | YOLOv3 with SSD is used for object head and movement detections, and an alarm is raised if distance falls below an acceptable level | Wind velocity and nearby UAV interference are not considered in the model computation |
Harfina et al. [25] | 2021 | N | Y | N | N | N | UAV quadcopter design for disinfectant spray over surfaces | The quadcopter is designed over a 2200 KV motor and the design is capable of carrying 200 mL of disinfectant | Higher load specifications require additional UAV hardware, which increases the design cost |
Janjua et al. [26] | 2021 | N | Y | Y | Y | Y | Explored the 6G impact on disaster control ecosystems with UAVs | A responsive design unit is presented over 6G services to support variable links | Communication topology is highly mobile, thus a single BS faces a stringent bottleneck in serving the UAV response units |
Gupta et al. [27] | 2021 | Y | Y | Y | Y | N | An edge-intelligence framework to tackle massive application data and complex task frameworks for COVID-19 is presented | Edge-intelligence framework to support vehicles, UAVs, and holographic communication in smart cities is discussed | Trusted edge task offloading and learning are not discussed |
Barnawi et al. [28] | 2021 | Y | Y | N | Y | N | The UAV-based medical delivery scheme is coupled with COVID-19 classification | A CNN approach for COVID-19 X-ray detection of positive cases over negative cases (pneumonia) is presented | The loss function of the CNN classifier leads to a higher dropout rate |
Islam et al. [29] | 2020 | Y | Y | N | N | N | Radar-based UAV to detect common patterns of COVID-19 | Respiration rate and displacement are sensed, and the classification of COVID-19 cases is presented. | The designed radar method requires high-end calibration to improve accuracy |
Siriwardhana et al. [30] | 2020 | N | Y | N | Y | N | Potential use cases of 5G and IoT for COVID-19 detection and control are presented | Real-time responsive management in contact tracing and delivery supply chains is discussed | Effective solutions and frameworks are not discussed in greater depth |
Drones | SYENA-H10 [44] | ESPY [45] | NAL-OCTA [46] | AIR-6 [47] | |
---|---|---|---|---|---|
Specification | |||||
Hexcopter Type | Multi-copter | Multi-copter | Octcopter | Hexacopter | |
Propellers dimension | 1700 × 1500 × 710 (mm Opened) | 609.6 × 447.04 mm | Not specified | 774.7 × 774.7 × 424.18 mm | |
Tank (payload) Capacity | 5, 10, 15 L | 12 L | 18 L | 15 L | |
Flight take-off time | 20 min | 15 min | 20 min | 30 min | |
Wind resistance | yes (Level 5) | Level 4 | 10 m/s (Level 3) | Level 5 | |
Coverage area | 60 acres/day | 214 acres/day | Not specified | Not specified |
Network Parameters | Value |
---|---|
Frequency Range | 102.1 GHz |
Channel bandwidth | 2.3 GHz |
Delay Spread | 0.56 (ns) |
Channel model | Rayleigh Fading |
Modulation | Orthogonal Time Frequency Space (OTFS) |
Channel coding | Polar codes |
Parameter | Value |
---|---|
Number of swarm networks | 2 |
UAVs/Swarm | 5 |
UAV Flying altitude | 40 m |
Edge nodes | 2 |
Transmission power | 0.2 W |
Input data size | Uniform distribution |
propagation delay | 25 ms |
capability | 30 GHz |
FL algorithm | FedAvg |
0.001 | |
Batch-size | Min-batch |
Epochs | 10,000 |
Log_interval | 10 |
Activation | ReLU |
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Share and Cite
Gupta, R.; Bhattacharya, P.; Tanwar, S.; Sharma, R.; Alqahtani, F.; Tolba, A.; Țurcanu, F.-E.; Raboaca, M.S. Fight against Future Pandemics: UAV-Based Data-Centric Social Distancing, Sanitizing, and Monitoring Scheme. Drones 2022, 6, 381. https://doi.org/10.3390/drones6120381
Gupta R, Bhattacharya P, Tanwar S, Sharma R, Alqahtani F, Tolba A, Țurcanu F-E, Raboaca MS. Fight against Future Pandemics: UAV-Based Data-Centric Social Distancing, Sanitizing, and Monitoring Scheme. Drones. 2022; 6(12):381. https://doi.org/10.3390/drones6120381
Chicago/Turabian StyleGupta, Rajesh, Pronaya Bhattacharya, Sudeep Tanwar, Ravi Sharma, Fayez Alqahtani, Amr Tolba, Florin-Emilian Țurcanu, and Maria Simona Raboaca. 2022. "Fight against Future Pandemics: UAV-Based Data-Centric Social Distancing, Sanitizing, and Monitoring Scheme" Drones 6, no. 12: 381. https://doi.org/10.3390/drones6120381
APA StyleGupta, R., Bhattacharya, P., Tanwar, S., Sharma, R., Alqahtani, F., Tolba, A., Țurcanu, F. -E., & Raboaca, M. S. (2022). Fight against Future Pandemics: UAV-Based Data-Centric Social Distancing, Sanitizing, and Monitoring Scheme. Drones, 6(12), 381. https://doi.org/10.3390/drones6120381