| Literature DB >> 36015968 |
Yazdan Ahmad Qadri1, Ali Nauman1, Arslan Musaddiq2, Eduard Garcia-Villegas3, Sung Won Kim1.
Abstract
The healthcare Internet of Things (H-IoT) is an interconnection of devices capable of sensing and transmitting information that conveys the status of an individual's health. The continuous monitoring of an individual's health for disease diagnosis and early detection is an important application of H-IoT. Ambient assisted living (AAL) entails monitoring a patient's health to ensure their well-being. However, ensuring a limit on transmission delays is an essential requirement of such monitoring systems. The uplink (UL) transmission during the orthogonal frequency division multiple access (OFDMA) in the wireless local area networks (WLANs) can incur a delay which may not be acceptable for delay-sensitive applications such as H-IoT due to their random nature. Therefore, we propose a UL OFDMA scheduler for the next Wireless Fidelity (Wi-Fi) standard, the IEEE 802.11be, that is compliant with the latency requirements for healthcare applications. The scheduler allocates the channel resources for UL transmission taking into consideration the traffic class or access category. The results demonstrate that the proposed scheduler can achieve the required latency for H-IoT applications. Additionally, the performance in terms of fairness and throughput is also superior to state-of-the-art schedulers.Entities:
Keywords: IEEE 802.11be; Internet of Things; healthcare; orthogonal frequency division multiple access
Mesh:
Year: 2022 PMID: 36015968 PMCID: PMC9416596 DOI: 10.3390/s22166209
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Continuous monitoring of patients in H-IoT: ambient assisted living.
List of abbreviations used in the manuscript.
| Abbreviation | Description |
|---|---|
| AAL | Ambient Assisted Living |
| AC | Access Category |
| AID | Association ID |
| AP | Access Point |
| BSR | Buffer Status Report |
| BSRP | Buffer Status Report Poll |
| BSS | Basic Service Set |
| CW | Contention Window |
| EDCA | Enhanced Distributed Channel Access |
| EHT | Extremely High Throughput |
| IoT | Internet of Things |
| MCS | Modulation and Coding Scheme |
| OCW | OFDMA Contention Window |
| OFDMA | Orthogonal Frequency Division Multiple Access |
| QAM | Quadrature Amplitude Modulation |
| QoS | Quality-of-Service |
| RTA | Real-time Applications |
| RU | Resource Units |
| STA | Wi-Fi Station |
| TSN | Time-Sensitive Networking |
| TXOP | Transmission Opportunity |
| WLAN | Wireless Local Area Network |
Figure 2Trigger-based UL multi-user transmission sequence in IEEE 802.11ax WLAN.
Figure 3UORA operation for random access in UL-OFDMA.
Figure 4The flowchart of the proposed algorithm.
Comparison of the proposed algorithm with the state of the art.
| Scheduler | Latency | Throughput | Fairness |
|---|---|---|---|
| Proposed | ✓ | ✓ | ✓ |
| History Aware | ✓ | ||
| UORA | ✓ |
Parameters used in the simulation.
| Parameter | Value |
|---|---|
| Frequency Band | 5 GHz |
| Channel Width | 40 MHz |
| Number of RUs | 1, 2, 4, 8, 18 |
| MCS Value | 11 |
| Guard Interval | 0.8 |
| Number of STAs | 10, 20, 30, 40, 50, 60 |
| UORA CW range | [32, 1024] |
| Packet Size | 1472 bytes |
Figure 5Average UL latency. As the number of STAs increases, the average latency increases.
Figure 6Fairness in RU allocation. The lower the value is, fairer the RU allocation will be.
Figure 7Average throughput achieved. The increase in the number of STAs increases the total average throughput.
Figure 8Satisfaction level of the proposed OFDMA scheduler in terms of delay for three different application classes in H-IoT. The red line at 1 depicts the threshold value for meeting the satisfaction levels of different applications. (a) Remote control applications with haptic control. (b) Critical monitoring of health parameters in real-time. (c) Activity recognition using real-time video.
Figure 9Impact of MCS index on the average latency.