Resource Management for Massive Internet of Things in IEEE 802.11ah WLAN: Potentials, Current Solutions, and Open Challenges
Abstract
:1. Introduction
- What are the currently deployed use cases of the IEEE 802.11ah in the industry?
- What are the advantages and disadvantages of the current literature to support IoT applications?
- What MAC feature of the IEEE 802.11ah WLAN is the most suitable and widely adopted for improving resource efficiency?
- What impact do deployment choices, such as channel plan and MAC feature, have on the performance of the IEEE 802.11ah WLAN?
- What kind of traffic (UL/DL) harms the network performance of the IEEE 802.11ah WLAN network?
1.1. Related Survey Articles
1.2. Motivation and Contributions
- First, we briefly describe the IEEE 802.11ah, including deployed use cases of the IEEE 802.11ah WLAN and the MAC layer features.
- Second, the current solutions in the literature are thoroughly studied and assessed from several aspects, along with their shortcomings for different MAC features of the IEEE 802.11ah WLAN.
- Third, the potentials and challenges of the IEEE 802.11ah are identified, and open research issues and future research directions are briefly discussed.
1.3. Structure of Survey
Ref. | Year | Main Focus of Surveys | Brief Description of Main Topics Covered |
---|---|---|---|
[31] | 2012 | advantages and challenges | highlighted the IEEE 802.11ah standardization efforts and explored the benefits and challenges of physical (PHY) and medium access control (MAC) layer methods |
[34] | 2013 | channel access enhancement | aimed to describe the channel access (e.g., MAC layer) improvements made to the IEEE 802.11ah specification to improve machine-type communication (MTC) performance |
[35] | 2013 | overview of PHY and MAC layer | surveyed the MAC layer enhancements, including power-saving features, support for many STAs, efficient medium access methods, and throughput improvements for meeting the expected system requirement |
[36] | 2014 | energy consumption in the MAC layer | explored the energy consumption in the MAC layer along with a performance evaluation of IEEE 802.11ah in four popular M2M situations, namely farm monitoring, smart metering, industrial automation, and animal monitoring |
[30] | 2015 | mechanisms and challenges | in-depth overview of the fundamental mechanisms and the use of these mechanisms in smart cities with related open issues are discussed |
[37] | 2015 | PHY and MAC layer feature | summarized the issues and solutions regarding throughput and network reliability as well as discussed the proposed enhancements to the PHY and MAC layers |
[38] | 2015 | PHY and MAC layer features | provided an overview of the PHY and MAC layers and highlighted how various features might address the issues associated with enabling IoT use cases |
[39] | 2016 | challenges for IoT scenarios | investigated the essential properties of IEEE 802.11ah to satisfy IoT needs and provided a comprehensive assessment of IEEE 802.11ah WLAN |
[40] | 2017 | challenges and future directions | surveyed the state of the art of IEEE 802.11ah WLAN and identified the technical challenges and research directions in this area |
[41] | 2017 | cooperative MAC protocols | offered an in-depth overview of current research on cooperative MAC and relay-based MAC protocols and models desirable categories and problems in the IEEE 802.11ah standard |
[42] | 2017 | study of M2M communications | presented state-of-the-art M2M technologies, focusing on IEEE 802.11ah, and explored the future challenges and envisioned opportunities |
[43] | 2019 | study of LPWAN technologies | explored the LPWA technologies, focusing on technical parameters of IEEE 802.11ah, LoRa, and NB-IoT |
[44] | 2019 | MAC layer features | presented a detailed review of the research on MAC improvement for wireless real-time control applications |
[45] | 2019 | MAC layer features | provided a comparative study of MAC protocols for the IoT was performed to provide insights into IoT applications, considering their characteristics, limitations, and behavior, along with challenges and open research issues |
[46] | 2021 | suitability for IoV and IoT-enabled networks | surveyed IoT communication technologies and highlighted the benefits of the Internet of Vehicles (IoV) and IoT-enabled networks |
[47] | 2021 | machine learning techniques | presented several Wi-Fi applications of machine learning, providing researchers an in-depth review of the major trends, open issues, and future recommendations |
[48] | 2021 | challenges in mobile IoT networks | provided a comprehensive view of the challenges introduced by mobility in IoT networks under different IoT standards related to intelligent transport, smart agriculture, smart cities, and industry that involve collecting measurements and performing coordinated actuation |
[8] | 2021 | PHY and MAC layer features | presented a detailed review of the WiFi Halow, comprising analysis of the PHY and MAC layers, open challenges, and addressed future orientation |
[49] | 2022 | MAC layer features | provided a comprehensive assessment of various MAC protocols and highlighted issues and limitations of the MAC layer |
2. Deployed Use Cases of the IEEE 802.11ah WLAN
2.1. Sensors and Meters
2.1.1. Smart Grid-Meter to Pole
2.1.2. Environmental/Agricultural Monitoring
2.1.3. Industrial Monitoring
2.1.4. Healthcare Monitoring
2.2. Extended Wi-Fi Range
2.3. Wireless Backhaul
2.4. IEEE 802.11ah Use Cases Requirements
3. MAC Features of the IEEE 802.11ah and Current Resource Allocation Solutions
3.1. Authentication and Association
- Centralized Authentication Control: The AP modifies the proportion of STAs permitted to transmit messages in the CAC method. The AP creates a threshold and broadcasts it through beacon frames to all STAs. The beacon frame comprises network information that the AP regularly delivers to advertise the network existence and synchronize all STAs. When an STA starts authentication, it randomly generates a value within the [0, 1022] range. If the beacon delivered from the AP has a random value smaller than the threshold at the STA (i.e., available range of threshold values: [0, 1022]), the STA tries to transmit the to the AP. If not, the authentication/association procedure is delayed until the next beacon arrives. The AP should dynamically adjust the threshold to limit the number of STAs that may access the channel in a single BI and guarantee that all STAs can associate with the AP rapidly.
- Distributed Authentication Control: The DAC technique divides a BI into authentication control slots (ACSs). STAs randomly choose a BI and ACS to communicate their to the AP. If STA fails to authenticate, it retransmits the in the next BI and ACS, where m and i are calculated using the truncated binary exponential backoff approach [8].
Related Studies Concerning Authentication/Association
Ref. | Year | Traffic Type | PerformanceEvaluation | Shortcomings | Evaluation Tool |
---|---|---|---|---|---|
[84] | 2015 | UL | association time | does not solve the issues of coexistence data and association frames | ns-2 |
[88] | 2015 | UL/DL | link setup time | collision is still an issue owing to large association requests and hidden STAs | ns-2 |
[89] | 2016 | UL/DL | association time and throughput | no solution was proposed to reduce the association time | ns-3 |
[87] | 2016 | UL/DL | throughput | link setup time increases linearly with the increasing number of STAs since it does not entirely resolve the collision issue owing to a large association requests | analytical |
[87] | 2016 | UL/DL | throughput | collision is still an issue owing to large association requests | analytical |
[81] | 2017 | UL/DL | association time | during the link setup process, the AP knows the number of STAs in advance, which is unrealistic | analytical |
[91] | 2018 | UL/DL | association time | association and PS-Poll frames create overhead, which can cause excessive energy consumption | ns-3 |
[92] | 2019 | UL/DL | association time | the existing study does not determine the best data rate for massive IoT devices registration that can speed up the registration process | ns-3 |
[82] | 2020 | UL/DL | association and authentication | their proposed FASUS technique does not guarantee fairness if the user modifies the MAC address for fast association with the AP | ns-3 |
[83] | 2020 | UL/DL | delay and energy consumption | the proposed fast key re-authentication (FKR) method does not consider the traffic requirements | MATLAB |
[93] | 2021 | UL | association delay | their proposed method does not consider the existence of both association and data exchange frames | ns-2 |
[94] | 2022 | UL/DL | association time | it does not consider the heterogeneous traffic | analytical |
3.2. Restricted Access Window (RAW)
Related Studies Concerning RAW Optimization
3.3. Association Identifier (AID)
Related Studies Concerning AID, Overhead, and Backoff
Ref. | Year | Traffic Type | Performance Evaluation | Shortcomings | Evaluation Tool |
---|---|---|---|---|---|
[128] | 2014 2015 | UL | bitmap reduction | their proposed method can cause excessive overhead owing to the association and authentication frames, PS-Poll, and ACK etc., still challenging | unknown |
[129] | 2016 | UL/DL | throughput, delay, association time | limiting contention and RAW size calculation over dynamic network | ns-3 |
[126] | 2016 | UL/DL | collision mitigation | collisions remain due to longer sleep duration and number of hidden STAs remain in each group during the regrouping process | MATLAB |
[127] | 2017 | UL/DL | throughput, energy, overhead | it does not take into account energy efficiency as the similarity index | MATLAB |
[127] | 2017 | UL/DL | overhead, energy | it completely ignores energy consumption and unnecessary wake-up of STAs and the support for RAW schemes | MATLAB |
[130] | 2018 | UL | delay and retransmission | optimizing contention window size in a small IoT network does not help in reducing the number of collisions in massive IoT scenario | OPNET |
[131] | 2018 | UL/DL | throughput, delivery ratio, delay | it does not take into heterogeneous traffic requirements while optimizing the contention window size | ns-3 |
[132] | 2018 | UL/DL | fairness, delay, interference | EDCCA and Q-learning backoff diminish the packet delivery rate of IEEE 802.11ah because they limit STAs’ channel access opportunities | analytical |
[133] | 2018 | UL/DL | scalability, throughput, latency, energy | their proposed method does not consider the STAs status (i.e., either asleep or awake) is still challenging | ns-3 |
[134] | 2019 | UL/DL | throughput, latency | it is not compatible with the current RAW of the IEEE 802.11ah WLAN | analytical |
[135] | 2021 | UL/DL | throughput, packet collision and loss rate | their proposed method does not consider re-grouping for load balancing to improve throughput | ns-3 |
3.4. Relay and Group Sectorization
3.4.1. Relay
3.4.2. Group Sectorization
3.4.3. Related Studies Concerning Relay and Group Sectorization
3.5. Traffic Indication Map (TIM) Segmentation
Related Studies Concerning TIM Segmentation
3.6. Target Wakeup Time (TWT) for Energy Saving
Related Studies Concerning TWT and Energy Saving
Ref | Year | Traffic Type | Performance Evaluation | Shortcomings | Evaluation Tool |
---|---|---|---|---|---|
[89] | 2016 | UL | throughput, packet loss rate, latency | TIM segmentation is not taken into account | ns-3 |
[149] | 2018 | UL | throughput | no solution is proposed for RAW mechanism optimization | analytical |
[152] | 2018 | DL/UL | packet delivery rate, energy consumption | RAW optimization is not taken account | ns-3 |
[150] | 2019 | DL/UL | latency | the transmission time should be know to utilize TWT | ns-3 |
[151] | 2019 | DL/UL | energy consumption | clock drift might cause missing the planned transmission time, which may increase the active time and, consequently, energy consumption | ns-3 |
[153] | 2021 | UL/DL | throughput, delay, energy consumption | a tradeoff exists between delay and energy consumption, influenced by the traffic intensity | analytical and ns-3 |
4. Potentials of IEEE 802.11ah and Challenges
4.1. Network Coverage
4.2. Resources
4.3. Support for Massive IoT
4.4. Energy Consumption
5. Conclusions and Future Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
ACM | Authentication Control Mechanism |
ACS | Authentication Control Slot |
AID | Association Identifier |
AssocReq | Association Request |
AuthReq | Authentication Request |
b/s | bits per second |
BI | Beacon Interval |
BLE | Bluetooth Low Energy |
BSS | Sasic Service Set |
CAC | Centralized Authentication Control |
CAS | Channel Access Slot |
CCM | Collision Chain Mitigation |
CRS | Contention Reservation Scheme |
DAC | Distributed Authentication Control |
DTIM | Delivery Traffic Indication Map |
EDCCA | Energy Detection Clear Channel Assessment Method |
FASUS | Fast Association Based on Speculating the Number of Stations |
FILS | Fast Initial Link Setup |
FKR | Fast Key Re-authentication |
G-RAP | Renewal Access Protocol with Grouping |
GS-DCF | Group-synchronized Distributed Coordination Function |
GTS | Guaranteed Time Slot |
HAN | Home Area Network |
IoT | Internet of Things |
IoV | Internet of Vehicles |
kbps | kilobits per second |
LEACH | Low-Energy Adaptive Clustering Hierarchy |
LoRa | Long Range |
LPWAN | Low-Power Wide Area Networks |
M2M | Machine-to-Machine |
MAC | Medium Access Control |
MIMO | Multi Input Multi Output |
MTC | Machine-Type Communication |
NAN | Neighborhood Area Network |
NB-IoT | Narrowband-IoT |
OFDM | Orthogonal Frequency Division Multiplexing |
PHY | Physical Layer |
PS | Power Saving |
PSM | Power Saving Mechanism |
PSMP | Power Save Multi-Poll |
RAP | Renewal Access Protocol |
RAW | Restricted Access Window |
RPS | RAW Parameter Set |
RSSI | Received Signal Strength Indication |
SP | Service Period |
STA | Station |
STS | Sequential Transmission Scheme |
TAROA | Traffic-Adaptive RAW Optimization Algorithm |
TBTT | Target Beacon Transmission Time |
TDMA | Time Division Multiple Access |
TDoA | Time Difference of Arrival |
TIM | Traffic Indication Map |
TP | Traffic Profile |
TWT | Target Wakeup Time |
UAV | Unmanned Aerial Vehicle |
WAN | Wide Area Network |
WPAN | Wireless Personal Area Network |
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LPWAN | WPAN | |||||
---|---|---|---|---|---|---|
Features | IEEE 802.11ah | LoRaWAN | NB-IoT | Sigfox | BLE | ZigBee |
Spectrum | Sub GHz | 868 MHz (ISM) in EU | Sub GHz | Sub GHz | 2.4 GHz (ISM) | 2.4 GHz (ISM) |
Bandwidth | 1–16 MHz | 125/250/500 KHz | 180 KHz | 100 KHz | 2 MHz | 5 MHz |
Modulation | OFDM | chirp spread spectrum | QPSK | BPSK | GFSK | OQPSK |
Topology | star | star | cellular | star | star | mesh |
Data rate | 150 Kbps | 300–500 Kbps | 250 bps | 100 bps | 1–2 Mbps | 10–250 Kbps |
Range | 1000 m | 20 km | 15 km | 50 km | 30 m | 100 m |
Power consumption | Low | Low | High | Low | Low | Low |
Mobility support | Yes | Yes | No | No | Yes | Yes |
Localization | Yes | Yes (TDoA) | No | Yes (RSSI) | Yes | Yes |
Bidirectional | Yes | Yes | Yes | Limited | Yes | Yes |
Advantages | high data rate | long distance | long distance | long distance | medium data rate | short distance |
Shortcomings | medium distance | low data rate | low data rate | low data rate | short distance | low data rate |
References | [8] | [4,12,14] | [7,15,16] | [9,17] | [5,18] | [6,19] |
Applications | Ref. | Traffic Type | Latency | Throughput | Network Lifetime |
---|---|---|---|---|---|
Smart grid | Section 2.1.1[50,61] | continuous, periodic, and burst | Low | High | Months to Years |
Environmental and agricultural monitoring | Section 2.1.2[62,63] | periodic and event-based | High | Medium | Years |
Industrial/Building monitoring | Section 2.1.3[68,69] | periodic and burst | Low | High | Years |
Health monitoring | Section 2.1.4[70,71] | periodic and event-based | Low | High | Years |
Extended Wi-Fi | Section 2.2[75,76] | burst | Low | High | Years |
Wireless backhaul | Section 2.3[39] | periodic and burst | Low | High | Years |
Ref. | Year | Traffic Type | Performance Evaluation | Shortcomings | Evaluation Tool |
---|---|---|---|---|---|
[96] | 2014 2015 | UL | throughput | typical DCF design reduces performance for a network with a high number of STAs | MATLAB |
[97] | 2014 | UL | channel efficiency | it examines the active STAs, even though traffic load and energy consumption are equally crucial factors in IoT | analytical |
[98] | 2014 | UL | throughput | it does not optimize the number of groups and RAW duration | analytical |
[121] | 2015 | UL | energy, delay | it completely ignores the unnecessary wake-up of STAs | analytical |
[99] | 2015 | UL | throughput | the improvement is suitable only for traffic of the same kind | analytical |
[116] | 2015 | UL | channel efficiency with success probability | channel contention still an issue in a heterogeneous IoT network with priority-based channel access | analytical |
[59] | 2015 | UL | energy | traffic heterogeneity is not taken into account | MATLAB |
[119] | 2016 | UL | energy | RAW needs to be adjusted dynamically for event detection system | analytical |
[120] | 2016 | UL | energy | traffic heterogeneity in terms of low and high with energy requirements are not considered | analytical |
[102] | 2017 | UL | energy | heterogeneous traffic requirements are not considered | MATLAB |
[122] | 2017 | UL | delay, energy | the DL traffic and the mathematical model is not validated through simulation analysis | analytical |
[100] | 2017 | UL/DL | throughput | it does not always produce better latency performance | ns-3 |
[104] | 2017 | UL | channel contention, throughput, delay | the channel resources are not efficiently allocated into different RAW groups | analytical |
[101] | 2017 | UL | throughput | it does not take into account the network traffic and channel contention | analytical |
[103] | 2017 | UL/DL | throughput | priority scheduling creates a RAW group, and fairness concerns that are not considered | ns-3 |
[102] | 2017 | UL | energy, packet delivery ratio | RAW size is adjusted based on STAs per group, which does not consider heterogeneous STAs for RAW adaptation | MATLAB |
[124] | 2017 | UL | energy and delay | network conditions are not taken into account for RAW adjustment and grouping of STAs | MATLAB |
[100] | 2017 | UL/DL | throughput, energy | the RAW adjustment is made using just the information available at AP; RAW grouping is inefficient for long-term performance and only considers STAs with identical characteristics | ns-3 |
[123] | 2017 | UL | energy, packet delivery ratio | collision in a massive IoT scenario can cause retransmission, leading to channel under utilization | MATLAB |
[104] | 2017 | UL | throughput | dynamic and heterogeneous traffic are not taken into account | OPNET |
[105] | 2017 | UL/DL | throughput, latency, energy | RAW grouping is inefficient for long-term performance since it only considers STAs with identical characteristics | ns-3 |
[106] | 2018 | UL/DL | throughput | it failed to consider grouping of STAs in RAW and fairness problems | ns-3 |
[107] | 2018 | UL/DL | delay, throughput | heterogeneous STAs (i.e., different MCSs utilized by STAs during communication) within a RAW group are not considered | ns-3 |
[108] | 2018 | UL/DL | throughput, delay | saturated level of the network is taken into account always | ns-3 |
[109] | 2018 | UL/DL | throughput | their proposed method only classifies the traffic and does not consider RAW adaptation for each classified traffic | ns-3 |
[110] | 2018 | UL | throughput, energy | can increase the energy consumption due to retransmission in the UL direction | analytical |
[112] | 2018 | UL/DL | throughput, energy | only analysis of different traffic pattern schemes are presented | ns-3 |
[111] | 2019 | UL/DL | delay, energy, throughput | their proposed method does not take into account the dynamic environment of the IoT scenario | ns-3 |
[117] | 2019 | UL/DL | channel utilization | channel contention in a massive IoT scenario may cause a collision and leads to the channel under utilization | ns-3 |
[113] | 2019 | UL/DL | throughput | traffic-aware STAs partitioning with heterogeneous traffic environment is not considered by their proposed method | analytical |
[118] | 2019 | UL/DL | packet received ratio | predicting the RAW size does not take into account the energy depletion, the dynamic adjustment of RAW, and multi-hop scenarios | unknown |
[114] | 2020 | UL/DL | throughput | the prediction accuracy of the right number of slots in a RAW, contained in BI is still a concern | analytical |
[115] | 2022 | UL/DL | throughput | multi-class with traffic-aware STAs and heterogeneous traffic requirements are not considered | MATLAB |
Ref. | Year | Traffic Type | Performance Evaluation | Shortcomings | Evaluation Tool |
---|---|---|---|---|---|
[137] | 2015 | DL | throughput, energy | it does not deal with problems, such as STA dynamic and traffic heterogeneity | ns-3 |
[129] | 2016 | UL/DL | coverage range, delay | limiting contention and calculating RAW size across a dynamic network | analytical |
[108] | 2018 | UL/DL | delay, energy consumption | their proposed method does not provide data aggregation and RAW size prediction | ns-3 |
[138] | 2015 | DL | throughput | optimal bandwidth allocation for heterogeneous traffic is not considered in their proposed work | ns-3 |
[139] | 2018 | UL/DL | RSSI | their proposed method does not consider the relay location | analytical |
[141] | 2018 | UL/DL | throughput | their proposed method doe not comprehensively demonstrate the simultaneous transmission using multiple channels in different sectors | MATLAB |
[140] | 2021 | UL/DL | throughput, delay | it does not consider delay priority | ns-3 |
Ref. | Year | Traffic Type | Performance Evaluation | Shortcomings | Evaluation Tool |
---|---|---|---|---|---|
[142] | 2015 | DL | TIM compression | three-level hierarchical TIM compression coding framework can increase the system complexity and energy consumption | unknown |
[143] | 2016 | DL | delay, energy consumption | shorter DTIM intervals may reduce delay at the expense of increased energy consumption | analytical |
[144] | 2017 | DL | energy efficiency | it can increase network delay in terms of traffic delivery in a massive IoT scenario | MATLAB |
[144] | 2017 | DL | bitmap compression | their proposed method does not consider communication delay of the STAs in UL direction and energy consumption | MATLAB |
[145] | 2018 | DL | energy efficiency, quality of service | resource allocation in heterogeneous network is still challenging | analytical |
[146] | 2018 | DL/UL | energy consumption | impact of the RAW is neglected | MATLAB |
[147] | 2017 | DL/UL | throughput, energy consumption | does not consider delay requirements for low-powered STAs | analytical |
[133] | 2018 | DL/UL | scalability, throughput, latency, and energy efficiency | RAW with a large number of slots could increase the delay of the STA in high dense network | ns-3 |
[111] | 2019 | DL/UL | throughput, energy, delay | reduction in the BI can cause an increase in the energy consumption of monitoring application and might reduce the overall throughput of the network | ns-3 |
[148] | 2021 | DL/UL | collision rate | it does not consider load balancing in slots of a RAW | ns-3 |
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Farhad, A.; Pyun, J.-Y. Resource Management for Massive Internet of Things in IEEE 802.11ah WLAN: Potentials, Current Solutions, and Open Challenges. Sensors 2022, 22, 9509. https://doi.org/10.3390/s22239509
Farhad A, Pyun J-Y. Resource Management for Massive Internet of Things in IEEE 802.11ah WLAN: Potentials, Current Solutions, and Open Challenges. Sensors. 2022; 22(23):9509. https://doi.org/10.3390/s22239509
Chicago/Turabian StyleFarhad, Arshad, and Jae-Young Pyun. 2022. "Resource Management for Massive Internet of Things in IEEE 802.11ah WLAN: Potentials, Current Solutions, and Open Challenges" Sensors 22, no. 23: 9509. https://doi.org/10.3390/s22239509
APA StyleFarhad, A., & Pyun, J. -Y. (2022). Resource Management for Massive Internet of Things in IEEE 802.11ah WLAN: Potentials, Current Solutions, and Open Challenges. Sensors, 22(23), 9509. https://doi.org/10.3390/s22239509