An Advanced First Aid System Based on an Unmanned Aerial Vehicles and a Wireless Body Area Sensor Network for Elderly Persons in Outdoor Environments
Abstract
:1. Introduction
- (i)
- An advanced first aid system (AFAS) for elderly people in outdoor settings, based on a fall detection device (FDD) and an unmanned aerial vehicle (UAV), was practically implemented.
- (ii)
- A new proposed algorithm, called fall detection based on heart rate threshold (FDB-HRT), was presented to improve fall detection for elderly patients.
- (iii)
- The geolocation error of the fallen patients was improved based on advanced GPS using eight satellites for geolocation.
- (iv)
- Heart rate, fall detection, and GPS measurement accuracy were confirmed based on a statistical analysis.
- (v)
- Compared to delivery via ambulance, the UAV-based first aid kit reduces delivery time to patients.
- (vi)
- The results of this work outperformed similar previous research in terms of heart rate measurement accuracy, fall detection accuracy, UAV time savings and mission success.
2. Related Work
2.1. Work Related to FD Systems
2.2. Work Related to the UAV System
3. System Architecture
3.1. Fall Detection Device (FDD)
3.1.1. Microcontroller
3.1.2. Biomedical Sensors
3.1.3. GSM Module
3.1.4. GPS Module
3.2. Call Emergency Center (CEC)
3.2.1. Smartphone
3.2.2. First Aid Kit
3.2.3. Unmanned Aerial Vehicle
4. Proposed Algorithm
4.1. Fall Detection Algorithm
4.2. CEC Algorithm
5. Experiment Configuration
5.1. Performance Evaluation of FDD
5.1.1. Performance of HB and ACC Sensors
5.1.2. Performance of the FDB-HRT Algorithm
5.1.3. Geolocation Error of the GPS Module
5.1.4. Performance of the GSM Module
5.2. Time Savings of UAV Relative to Ambulance
6. Results and Discussions
6.1. HR Measurements and Static Analysis Results
6.1.1. Mean Absolute Error (MAE)
6.1.2. Histogram Analysis
6.2. Fall Detection Accuracy Validation
6.3. Measurements of FDB-HRT Algorithm
6.4. GPS Measurement and Accuracy of Geolocations
6.5. Testing of Information Delivery
6.6. Time Savings of UAV Relative to Ambulance
6.7. Battery Life Estimation of the FDD
7. Comparison of Results with Previous Work
7.1. Comparison of Heart Rate Measurement Accuracy
7.2. Comparison of Fall Detection Accuracy
7.3. Comparison of Response Time
7.4. Comparison of Transmission Information Accuracy
8. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Parameters | Standard Values [43] | Selected Threshold Values of FDB-HRT Algorithm |
---|---|---|
FAMt | 0.313–0.563 (g) | 0.5 (g) |
FTt | 20–70 (ms) | 40 (ms) |
AAMt | >2 (g) | 2.5 (g) |
Type | Experiment Test |
---|---|
F1 | Forward fall, lying on ground |
F2 | Fall to the right, lying on ground |
F3 | Backward fall from a seated position on a chair |
F4 | Forward fall, landing on knees |
NA1 | Walking |
NA2 | Ascending stairs |
NA3 | Descending stairs |
NA3 | Sitting on chair |
Type | Experiment Test | Test Result |
---|---|---|
F1 | Forward fall, lying on ground | 15/15 |
F2 | Fall to the right, lying on ground | 15/15 |
F3 | Backward fall from a seated position on a chair | 14/15 |
F4 | Forward fall, landing on knees | 15/15 |
NA1 | Walking | 15/15 |
NA2 | Ascending stairs | 15/15 |
NA3 | Descending stairs | 15/15 |
NA3 | Sitting on chair | 16/15 |
Location | Arrival Time of UAV (s) | Arrival Time of Ambulance (s) | Savings Time (s) |
---|---|---|---|
Locations 1 and 2 | 210 | 300 | 90 (based on Equation (2)) |
Locations 3 and 4 | 240 | 360 | 120 (based on Equation (2)) |
Average time (s) | 225 | 330 | |
Average time savings = 105 s (based on Equation (3)) | |||
Percentage of time saved = 31.81% (based on Equation (5)) |
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Fakhrulddin, S.S.; Gharghan, S.K.; Al-Naji, A.; Chahl, J. An Advanced First Aid System Based on an Unmanned Aerial Vehicles and a Wireless Body Area Sensor Network for Elderly Persons in Outdoor Environments. Sensors 2019, 19, 2955. https://doi.org/10.3390/s19132955
Fakhrulddin SS, Gharghan SK, Al-Naji A, Chahl J. An Advanced First Aid System Based on an Unmanned Aerial Vehicles and a Wireless Body Area Sensor Network for Elderly Persons in Outdoor Environments. Sensors. 2019; 19(13):2955. https://doi.org/10.3390/s19132955
Chicago/Turabian StyleFakhrulddin, Saif Saad, Sadik Kamel Gharghan, Ali Al-Naji, and Javaan Chahl. 2019. "An Advanced First Aid System Based on an Unmanned Aerial Vehicles and a Wireless Body Area Sensor Network for Elderly Persons in Outdoor Environments" Sensors 19, no. 13: 2955. https://doi.org/10.3390/s19132955