| Literature DB >> 35161937 |
Nahar Sultana1, Farhana Huq1, Md Abdur Razzaque1, Md Mustafizur Rahman1.
Abstract
Narrowband Internet of Things (NB-IoT) is a promising technology for healthcare applications since it reduces the latency necessary in acquiring healthcare data from patients, as well as handling remote patients. Due to the interference, limited bandwidth, and heterogeneity of generated data packets, developing a data transmission framework that offers differentiated Quality of Services (QoS) to the critical and non-critical data packets is challenging. The existing literature studies suffer from insufficient access scheduling considering heterogeneous data packets and relationship among them in healthcare applications. In this paper, we develop an optimal resource allocation framework for NB-IoT that maximizes a user's utility through event prioritization, rate enhancement, and interference mitigation. The proposed Priority Aware Utility Maximization (PAUM) system also ensures weighted fair access to resources. The suggested system outperforms the state-of-the-art works significantly in terms of utility, delay, and fair resource distribution, according to the findings of the performance analysis performed in NS-3.Entities:
Keywords: NB-IoT; interference mitigation; prioritized healthcare; resource allocation; utility
Mesh:
Year: 2022 PMID: 35161937 PMCID: PMC8838280 DOI: 10.3390/s22031192
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1A smart healthcare application architecture using NB-IoT.
Notations.
| Symbol | Meaning |
|---|---|
| Set of UEs and vital signs, respectively | |
| Set of hypotheses and Events, respectively | |
| Critical, Relevant, and Normal training data, respectively | |
|
| Received power of a user |
|
| Channel gain |
|
| Interference |
|
| Additive White Gaussian Noise |
|
| Data rate of uplink user, |
|
| User Utility |
Figure 2Functional Block Diagram of the Proposed PAUM System.
Events Classification.
| Disease | Probable Location | Event Description | Event Type |
|---|---|---|---|
|
| (i) Emergency (ii) Urgent Operation Theatre | (a) Respiratory rate, Heart Rate, Blood Sugar | (a) Critical Event |
| (iii) Remote Location | (b) Blood Pressure, Oxygen Saturation, Chest X-Ray, Kidney, Liver Functionalities | (b) Relevant Event | |
|
| (i) Emergency (ii) Urgent Operation theatre | (a) Oxygen Saturation, Respiratory rate | (a) Critical Event |
| (iii) OPD (iv) Cabin | (b) Heart Rate, Fever, Cough | (b) Relevant Event | |
|
| (i) Emergency | (a) Ultrasound, Endoscopy, Colonoscopy | (a) Critical Event |
| (ii) OPD (iii) Cabin | (b) Food Habit, Stress Measurement | (b) Relevant Event | |
|
| (i) Emergency (ii) Urgent Operation Theatre | (a) Blood Pressure, Creatinine test | (a) Critical Event |
| (iii) OPD, Cabin (iv) Remote Location | (b) Chest X-Ray, ECG, Echo | (b) Relevant Event | |
|
| (i) OPD (ii) Cabin (iii) Remote location | (a) Creatinine, Uric Acid, Ultrasound, Fever | a) Normal Event |
|
| (i) OPD (ii) Cabin (iii) Remote location | (a) X-Ray, Blood Test | (a) Normal Event |
|
| (i) OPD (ii) Cabin (iii) Remote location | (a) Opthalmology machine screening | (a) Normal Event |
|
| (i) OPD (ii) Cabin (iii) Remote location | (a) Blood Pressure, Movement of fetus, Heart rate | (a) Normal Event |
Figure 3Preemptive multi-level priority queue scheduling.
Simulation Parameters.
| Parameters | Values |
|---|---|
| Cellular layout | Hexagonal Grid, 3 sectors per site |
| Carrier | 900 MHz |
| Inter-site distance | 500 m/1732 m |
| UE deployment | Uniform random distribution |
| Event generation at UEs | Uniform random distribution |
| BS Transmit Power | 43 dBm |
| UE transmit power | Maximum 23 dBm |
| Inter-site correlation co-efficient | 0.5 and 0.75 |
|
| 0.0005 |
Figure 4Impacts of varying data generation rates from sensor devices.
Figure 5Impacts of varying number of User Equipment (UEs).
Figure 6Delays experienced by different packet types vs. data generation rate.
Figure 7Delays Experienced by different packet types vs. User Equipment.
Figure 8Classification Accuracy vs. User Equipment and Simulation Time.