Social Distancing in Indoor Spaces: An Intelligent Guide Based on the Internet of Things: COVID-19 as a Case Study
Abstract
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- This study uses the potential of Internet of Things (IoT) devices to contribute to the fight against COVID-19;
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- An indoor relocation system is suggested to ensure that social distancing is respected;
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- A set of real experiences are provided to prove the efficiency of the proposed system.
1. Introduction
- Two optimizers (PSO and ACO) were adapted to the problem of indoor placement of IoT devices to maintain social distance between people in order to reduce the propagation of COVID-19.
- The behavior of each algorithm was evaluated in a real-world environment using prototyping on different parameters, different network metrics (such as the average distance between students and the rate of transferred data between nodes), and different optimization metrics (such as convergence time and quality of the solution). The results were then interpreted and discussed.
- Contrary to contact tracing applications, privacy is preserved, and the security of the user’s data is guaranteed by the proposed system (optimizers and IoT network prototyping).
- The use of the proposed system may be easily extended for use in other indoor places, such as stadiums, cinema rooms, malls, and public transport vehicles.
2. Related Works
3. Proposed PSO and ACO for Student Positioning
3.1. The Proposed PSO Algorithm for IoT Indoor Positioning
3.2. The Proposed ACO Algorithm for IoT Indoor Positioning
4. Results
4.1. Parameters and Scenario of IoT Prototyping in Classes of Students
4.1.1. Parameters of Nodes
4.1.2. Scenario of IoT Prototyping
4.2. ACO and PSO Parameters
4.3. Comparing the Average Distance between Students
4.4. Comparing the Amount of Transmitted Data
4.5. Comparing the Convergence Time of PSO and ACO
4.6. Comparing the Quality of Solutions of PSO and ACO
4.7. Discussion and Findings
- In addition to computing a configuration for the manner of distributing the nodes in the region, the proposed approach computes the frequency of contacts between nodes and measures the duration, time, and distances that separate the nodes during these contacts.
- In terms of the average distance separating the students, the amount of transmitted data, convergence time, and the quality of solutions, both PSO and ACO are more efficient than random distribution and the GA.
- In terms of the amount of transmitted data and the quality of solutions, ACO is better than PSO, whereas with regard to the high number of students, PSO is better than ACO. The two algorithms have comparable performance in terms of convergence time.
- The achieved real-world experiments highlight the contribution and efficiency of evolutionary optimizers for resolving complex engineering problems [20].
- Contrary to the contact tracing applications currently in use via smartphones, the problems of user data and COVID-19 infection status privacy are not a concern when using our suggested IoT indoor placement system.
5. Conclusions
Funding
Conflicts of Interest
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ACO | PSO | GA | |
---|---|---|---|
Best Case | O(logn*M*n) | O(logn*M*n) | O(Mn2) |
Worst Case | O(Mn2) | O(Mn2) | O(Mn2) |
Parameter | Value |
---|---|
RoI (m) | 90 × 30 |
Number of IoT devices | 23 |
Range of IoT devices (m) | 20 to 25 |
Initial energy Eo (J) | 1 |
Data packet length (bit) | 4500 |
Ratio of data generation | 1 bits/s |
Average consumption of energy (Eelec) | 40 nJ/bit |
Transmission | Wi-Fi/BLE |
Frequency | 2.4 GHz |
Transmission power (mW) | 100 |
Memory (Mb) | 4 |
Antenna | ESP32 transceiver |
Number of Students | Random Distribution of Students | PSO | ACO | GA |
---|---|---|---|---|
10 (in real prototyping) | 5.73 | 7.92 | 8.34 | 6.38 |
20 (in real prototyping) | 4.81 | 7.68 | 7.89 | 4.20 |
40 (in simulations) | 2.01 | 6.26 | 5.65 | 3.94 |
100 (in simulations) | 1.92 | 3.65 | 2.92 | 2.68 |
250 (in simulations) | 0.74 | 2.04 | 1.98 | 1.49 |
Random Distribution of Nodes | ACO | PSO | GA | |
---|---|---|---|---|
Average amount of transmitted data (Mbit) | 77.35 | 178.93 | 163.64 | 124.6 |
Measure | Algorithm | ||
---|---|---|---|
ACO | PSO | GA | |
Average | 0.03243096 | 0.03391269 | 0.17198354 |
Standard deviation | 0.01304763 | 0.01872561 | 0.19478108 |
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Alrashidi, M. Social Distancing in Indoor Spaces: An Intelligent Guide Based on the Internet of Things: COVID-19 as a Case Study. Computers 2020, 9, 91. https://doi.org/10.3390/computers9040091
Alrashidi M. Social Distancing in Indoor Spaces: An Intelligent Guide Based on the Internet of Things: COVID-19 as a Case Study. Computers. 2020; 9(4):91. https://doi.org/10.3390/computers9040091
Chicago/Turabian StyleAlrashidi, Malek. 2020. "Social Distancing in Indoor Spaces: An Intelligent Guide Based on the Internet of Things: COVID-19 as a Case Study" Computers 9, no. 4: 91. https://doi.org/10.3390/computers9040091