Low Power Wide Area Network, Cognitive Radio and the Internet of Things: Potentials for Integration
Abstract
:1. Introduction
- It presents insights and a recent overview regarding the use of CR in LPWAN. In particular, the use of CR as a potential solution to some known LPWAN problems is considered.
- In addition to discussing the concept of CR-LPWAN, the present article provides a framework for integrating CR and LPWAN modules into a possible functional unit. It describes the front-end of a generic CR-LPWAN system describing how the interlink of each module may contribute to the support of effective CR-LPWAN systems.
- We identify specific challenges that may mitigate against the realization of functional CR-LPWAN systems. Specifically, new insights are provided into different research challenges that require the use of adaptive CR technologies in LPWAN transceivers.
- An up-to-date information is provided pertaining to the development and standardization of LPWAN systems in general. These include the provision of a summary concerning the origin of different LPWAN technologies, and an update regarding the different standard organizations and special groups involved in LPWAN development. An updated list of different LPWAN technology developers is provided with focus on their potential/adoption of CR technology. The use of CR is also discussed with regards to the general IoT architecture and the different challenges in this direction. Essentially, this article provides insights and future research considerations with regards to the concept of CR in LPWAN technologies, which may interest readers aiming to explore this new research trend.
2. Related Works
3. Low Power Wide Area Network
3.1. Brief Origin of LPWAN
3.2. LPWAN Technologies
- A.
- Sigfox: Sigfox may be considered as the first major proprietary LPWAN provider in France [13]. Since its inception, Sigfox has proceeded in partnership with other network operators to ensure end-to-end LPWAN connectivity. They connect end devices to base stations via binary phase shift keying (BPSK) modulation on an ultra narrow bandwidth [4]. Sigfox technologies also provide CR capabilities, particularly in their base station infrastructures via SDR technology, which allows network and computing complexities to be managed via Cloud technology. Sigfox is quite popular with potentials to remain a strong competitor in the LPWAN market.
- B.
- LoRa: Long Range (LoRa) is a LPWAN PHY layer technology developed by Semtech Corporation. Owing to its rich patronage by a wide range of researchers, LoRa easily seems to be the most popular and trending LPWAN access technology in the IoT market [4,28]. LoRa may also be popular because of its open standard communication protocol called LoRaWAN, developed by LoRa Alliance. LoRa adopts a spread spectrum technique, which allows for an increase in its scalability and data rate. Specifically, it is based on a chirp spread spectrum (CSS) modulation scheme integrated with forward error correction (FEC) codes, which allows for longer communication range as against using the frequency shift keying (FSK) technique [29]. LoRa devices are also capable of adjusting their transmission power to meet the regulatory requirements. LoRaWAN protocol is based on the ALOHA scheme [9]. It provides a fixed channel bandwidth of either 125 or 500 kHz in its uplink channels, and 500 kHz in its downlink channels [30]. LoRa is presently deployed by other notable developers such as Symphony LinkTM and LoRaBlink [31].
- C.
- Ingenu RPMA: Ingenu was formerly known as On-Ramp Wireless [4]. It is a proprietary LPWAN technology designed to function strictly in the 2.4 GHz ISM band. It adopts a PHY layer technology based on random phase multiple access (RPMA) direct sequence spread spectrum (DSSS). RPMA enables multiple transmitters to share a single time slot. Ingenu-based RPMA achieves a high sensitivity level of about −142 dBm and a link budget of 168 dB [4,9,29]. It complies with the IEEE 802.15.4 k standard.
- D.
- Telensa: Telensa is a LPWAN proprietary technology provider that renders end-to-end device connectivity [6]. It operates in the unlicensed sub-GHz ISM bands using a proprietary UNB modulation technique. Telensa complies with the European Telecommunications Standards Institute (ETSI) low throughput network (LTN) standard, which enables heterogeneous integration with other LPWAN technologies [4]. Telensa is widely considered for smart city applications such as intelligent traffic control and smart parking.
- E.
- Qowisio: Qowisio is a proprietary LPWAN technology that combines its vertical stack with the use of LoRa PHY layer technology [4]. It ensures the provision of LPWAN services to end-users, with integration to cloud services for network operation. It adopts a proprietary UNB technology that provides most LPWAN characteristics such as low data rate and long-range transmissions.
- F.
- IQRF: IQRF is a proprietary LPWAN technology developed by IORF Alliance in Pisek, Czech Republic [6]. Unlike other technologies, it uses mesh network topology supporting up to 239 devices with a single coordinator. It implements a dual communication mode to enable single or multimode peer-to-peer communication [13]. IQRF uses its own IQMESH protocol to communicate based on the mesh topology. It works in the unlicensed sub-GHz bands using 62 channels of 100 kHz bandwidth.
- G.
- LTE-M: Long-Term Evolution, Category M1 (LTE-M) is proposed by the 3GPP group to provide connectivity for IoT devices. It can work in either full or half-duplex modes and provides a large receiver bandwidth of 1.4 MHz, which makes it relatively faster with a higher data rate (up to 1 Mbit/s in both uplink and downlink channels) than most other products [32]. It uses a deep sleep mode under the power saving mode (PSM) scheme and wakes only periodically to guarantee long battery lifetime. Its downlink channels work using both orthogonal frequency division multiple access (OFDMA) and 16-QAM modulation techniques, whereas its uplink employs the single carrier frequency division multiple access (SC-FDMA) and 16-QAM modulation techniques [33]. It aims to profit from the existing cellular infrastructure of the 3GPP group.
- H.
- NB-IoT: Narrowband IoT (NB-IoT) is another scheme proposed by the 3GPP group for the connectivity of IoT devices. It supports up to 50,000 devices per cell using between 180 and 200 kHz bandwidth. It can operate in three different modes namely, the stand-alone, guard band, and in-band operating modes. Further details about these communication modes can be found in [34]. It uses quadrature phase shift keying (QPSK) modulation scheme for transmission in the licensed LTE frequency bands. It attains a maximum data rate of 200 kbps on half duplex mode. It complies with the 3GPP standardization specifications.
- I.
- Weightless: Weightless is an open-standard LPWAN technology that operates in the sub-GHz unlicensed spectrum [35]. It achieves this feat via three different versions namely, Weightless-W, Weightless-N, and Weightless-P. Weightless-W leverages white space CR technology via dynamic spectrum access. However, it suffers from a shorter battery lifetime as against the other two versions [35]. Weightless-N operates in the unlicensed spectrum using narrow band protocols developed by NWave. Weightless-P, on the other hand works on a fully bidirectional based communication protocol developed by M2COMM’s Platanus technology [35].
- J.
- Adaptrum: Adaptrum is a relatively newer technology compared to other known brands such as LoRa, Sigfox, and Weightless. There are few investigations available at the moment concerning the technical comparative characteristics of Adaptrum against other LPWAN technologies owing to its proprietary standards; nevertheless, it is considered to be a rare class of LPWAN technologies that claim to support TV white space usage via CR technology [36].
- K.
- Nwave: Nwave is a LPWAN technology often used interchangeably with Weightless technologies [37]. Nevertheless, they differ, particularly in that Weightless developers use Nwave technologies to guarantee the use of TV white spaces [38]. Although Nwave technologies are known to provide Internet facilities, nevertheless, in recent times, they have been enabled for wireless IoT services and technologies in cities, rural areas, and remote areas [39]. Technically, Nwave technologies are tightly interlinked with Weightless technologies, thereby making it difficult to differentiate them.
- L.
- Platanus M2COMM: Platanus is a wireless networking technology developed by M2COMM and considered to be a LPWAN technology because it provides ultra-low energy consumption rates with network coverage far longer in range than Wi-Fi, Bluetooth, Zigbee and BLE (i.e., from several meters to 10 km) [40]. Platanus is used in the Weightless-P technology to achieve fully bi-directional communication. Another LPWAN module developed by M2COMM is the Uplynx highly integrated system on a chip (SoC) module [41], which is deployed to simplify the development of LPWAN IoT applications. There is a very tight working relationship between Sigfox and M2COMM; consequently, both technologies are often used interchangeably in the literature; nevertheless, it is worth noting that they are distinct LPWAN technologies [12].
- M.
- Wi-SUN: Wireless smart utility network (Wi-SUN) is an industry alliance that promotes interoperability between wireless standards in the IoT market. They work closely with the Internet Engineering Task Force (IETF) in order to ensure that Internet Protocol (IP) and transport layer protocols of LPWAN technologies are adequately standardized [25]. A prominent proponent of Wi-SUN is their field area network (FAN), which poses so many use-cases for IoT applications. They adopt the 6LoWPAN technology primarily for header compression [42]. Wi-SUN supports full IP frames with header compression in order to optimize bandwidth. They intend to maximize battery lifetime and guarantee long-range communication.
- N.
- Amber Wireless: Amber Wireless GmBH is an electronics company that designs and manufactures wireless connectivity solutions. Although they may not be full-time players in the LPWAN market, nevertheless, they are known for low power products, particularly for shorter range transmission [14]. Their access modules are used primarily for home automation applications and smart metering.
- O.
- Starfish: Starfish is a recent international wireless IPv6 network service deployed particularly for IoT applications. It is a technology developed by Silver Spring Networks [33]. Use-cases for Starfish technologies include intelligent traffic light control, wireless sensor networks applications including water, energy, traffic and safety monitoring [33]. Starfish uses a wide range of LPWAN standards-based communication protocols, particularly the IEEE 802.15.4 g. Although little may be known regarding the technicalities of Starfish technologies, nevertheless, Starfish projects are gaining wide spread use in many IoT applications.
- P.
- Symphony Link and Ensemble: Symphony Link and Ensemble is a proprietary technology of Link Labs, which uses LoRa at the PHY layer and a different MAC architecture to provide proprietary services [43]. It uses an eight-channel base station that operates in the 433 MHz or 915 MHz ISM bands, and in the 868 MHz band in Europe. It covers a transmission range of over 16 km over a back-haul based on Wi-Fi or cellular network [43].
3.3. LPWAN Standards
3.3.1. Standard Development Organizations (SDOs)
IEEE Standards
European Telecommunications Standard Institute (ETSI)
Third Generation Partnership Project (3GPP)
Internet Engineering Task Force (IETF)
3.3.2. Special Interest Groups (SIGs)
LoRa Alliance
Weightless-SIG
- Weightless-W standard, which uses TV white spaces based on different modulation schemes such as 16-quadrature amplitude modulation (16-QAM) and differential binary phase shift keying (D-BPSK) [58].
- The Weightless-N standard, which is a UNB standard that focuses only on simplex communication mode. It provides for higher energy efficiency and lower device cost as against the Weightless-W.
DASH7 Alliance
IQRF Alliance
Wi-SUN Alliance
IoT World Alliance
3.4. General LPWAN Architecture
4. Cognitive Radio
4.1. Brief Background
4.2. Cognitive Radio Functions
- Spectrum Sensing (SS): A typical CR device is equipped with a radio front-end to scan (sense) its immediate electromagnetic environment for the presence/absence of primary user (PU) signals. In this case, PU refers to the licensed owner of the spectrum. There are different approaches proposed for SS, including the use of the energy detector (ED), matched filter, cyclostationary detector (CD), eigenvalue method, covariance method, and prediction-based approaches [72]. Another method currently deployed for spectral awareness is the geolocation database approach [28,73]. In this case, a central database comprising geographic coordinates and the respective RF signal distributions in such environments is established. Consequently, CR devices would connect to these databases in order to acquire PU information before decision is made.
- Spectrum Decision Making: Following the measurement of the energy content of a specified band, the CR device progresses to the spectrum decision-making phase wherein decision is made concerning the presence/absence of PU signals in the band. In the case where only the signal’s energy values are known, then decision is made based on whether the received energy values exceed a specified threshold value or not. However, in cases where certain characteristics about the PU signal are known a priori, for example, the cyclic frequency, then the CD technique can be deployed, albeit at the expense of long processing times.
- Spectrum Access: Spectrum access entails the use of information pertaining to the absence of PU signals in a band (white space) by carefully designed CR MAC protocols in order to adjust transmission parameters. This ensures that the new operating radio spectral can be conveniently and efficiently used for opportunistic communication.
- Spectrum Mobility: Information regarding the presence of PU signals in a band (black space) is used to ensure hand-off/change of transmission parameters in order to prevent interference to PU operators. This ensures seamless communication between CR devices in the new white spaces.
- Spectrum Sharing: Spectrum sharing guarantees effective communication between CR devices and coexistence with PU transceivers without inflicting harmful interference. This is achieved by specific protocols designed to operate below a predefined interference level.
4.3. Cognitive Radio Network
- The Interweave CRN: The Interweave CRN enables a CR device to use spectrum only if no PU is active. Thus, PU activities are constantly being monitored to prevent interference from CR transmissions.
- The Underlay CRN: In the Underlay CRN, CR devices transmit with low power in the presence of PU activities. However, CR power is strictly ensured below a predefined noise/temperature level to prevent interference [75]. Ultra wide band communication approaches are typically used in Underlay CRN scheme.
- The Overlay CRN: In the Overlay CRN, CR devices use code books and messages to identify the PU, and then mitigate interference by relaying their messages based on a difference code book [75]. The CR power level is typically not an issue of concern in the Overlay scheme.
5. Integrating Cognitive Radio in LPWAN for the Internet of Things
5.1. Motivation for CR-LPWAN
5.2. CR-LPWAN at the PHY Layer
- Antenna: Antenna design plays an important role in improving the radio performance of CR-LPWAN systems. Effective antenna design can be vital in ensuring proper propagation characteristics and also in conserving energy consumption rates. Essentially, antenna wavelengths must be made to match the operating frequency of the device. The antenna form factor used also determines to a large extent the gain (or loss) of the system, in addition to the gain in the directivity of the antenna. Low cost antenna technologies were discussed in [77] with particular focus on cost efficient antennas for 868 MHz band. The antenna design in [77] comprised of an inverted F antenna (IFA) topology with simulation results of about -6dB reflection coefficient in the 850–893 MHz band. A dipole radiation pattern was proposed. These are characteristics that should be considered in the antenna design of any CR-LPWAN system. Lizzi et al., in [78] discussed the design of miniature antennas for IoT applications. Similar to [77], Lizzi’s design [78] adopts the IFA topology. He noted that the overall IFA length is responsible for the lower antenna resonance relished in LoRa communication systems [78]. Essentially, proper consideration must be given to antenna design and structure for the efficient and effective deployment of CR-LPWAN systems.
- Switching Module: The switching module is a Duplexer that enables bi-directional transmission over a single path. Its function is to separate the receiving path from the transmitting path while ensuring that a common antenna is shared. We suggest that CR-LPWAN models should deploy a switching module, whereas the choice of whether or not half or full duplex mode should be used, can be an application-specific decision.
- Low Noise Amplifier (LNA): The LNA amplifies the received RF signal to increase the signal to noise ratio (SNR) at the CR-LPWAN receiver. We identity a few low-cost LNA modules that can be in CR-LPWAN systems. The duplex current reused CMOS LNA is a notable example with complementary derivative superposition technique that can be used in IoT devices [79]. We suggest that LNAs be deployed to ensure that low power consumption rates are maintained to maximize the battery lifetime of CR-LPWAN systems.
- Filtering and Down Conversion: The front-end of the CR-LPWAN system filters and down-converts the signal frequencies to their intermediate frequencies (IF). It achieves this by using a mixer to obtain the in-phase and quadrature signal components at the IF. It can then process the signal either at both the IF and baseband levels to minimize design complexities in CR-LPWAN systems.
- Analogue to Digital Converter: The ADC transforms the analogue signal to its digital form. As an example, CR-LPWAN systems can be deployed with sigma delta ADCs to convert the input data and then all subsequent signal processing and demodulation processes can be performed in the digital domain.
- Fast Fourier Transform Module: CR-LPWAN systems will adopt an FFT module to compute the signal’s input energy. For example, an FFT LogiCORE IP core module can be used in this regard since it implements the Cooley-Tukey FFT algorithm in an efficient manner [80].
- Threshold Estimator: Most CR-LPWAN systems will be required to compute threshold values for accurate signal detection. Since this process often depends on the noise floor, simple threshold estimation techniques can be considered in CR-LPWAN systems such as the fixed threshold technique. However, while the fixed threshold technique is readily deployed in most LPWAN systems, e.g., LoRa [66,81,82], other approaches can be used such as the peak and average threshold mode techniques. In the peak threshold mode, the threshold level corresponds to the peak value of the received signal strength (RSS). In the absence of an input signal, or during the reception of zero bits, the acquired peak value is decremented until it reaches the noise floor threshold [83]. On the other hand, the average threshold mode simply computes the mean of the entire dataset supplied by the RSS block. However, this approach may not be efficient in the presence of DC (direct current) encoded data. Summarily, it is worth noting that appropriate configuration of threshold values is fundamental to the success of CR-LPWAN systems, and its choice may be application dependent.
5.3. Network Architecture to Support CR-LPWAN
5.3.1. CR at the LPWAN End Node
5.3.2. CR at Gateway
5.3.3. CR at both LPWAN End Node and Gateway
6. Benefits of CR-LPWAN
6.1. Technical Benefits to IoT Devices
6.1.1. Improved Spectral Utilization
6.1.2. Less Transmission Power Constraints
6.1.3. Longer Transmission Range
6.1.4. Increased Scalability
6.1.5. Improved Reliability
6.2. Benefits to IoT Application Areas
6.2.1. Smart Grids
- Communication between smart meters and devices in the smart home called the home area network (HAN);
- Communication between HAN and a network gateway called the field area network (FAN);
- Communication between different HANs called the neighborhood area network (NAN)
6.2.2. Smart Homes
6.2.3. Telemedicine
6.2.4. Vehicular Networks
6.2.5. Smart Agriculture
7. Challenges/Future Directions of CR-LPWAN
7.1. PHY Layer Challenges
7.1.1. Rendezvous
7.1.2. Spectrum Sensing
7.1.3. Local or Cooperative Sensing
7.1.4. Spectrum Mobility
7.1.5. Incorporating Adaptive CR Technologies
7.1.6. Other Challenges
7.2. Upper Layer Challenges
7.2.1. Connectivity Challenges
- Connectivity compatibility issue: The challenge of connectivity compatibility, also termed interoperability issue, stems from conditions wherein different users adopt different connectivity technologies for different CR-LPWAN systems. This is due to the present large IoT market space, wherein technologies are developed from different vendors. These technologies are often proprietary in nature, which compounds further the issue of compatibility. It is thus difficult for users to migrate easily or interconnect devices obtained from different vendors. This will cause a divide in the market, which will ultimately limit the range of CR-LPWAN systems and stifle user satisfaction.
- Maintainability issue: With different products being available for use, different CR-LPWAN systems will have different reliability and durability levels. Consequently, devices may develop faults, shut down, or batteries may expire at different rates, limiting connectivity in CR-LPWAN systems. In such cases, maintenance should be made easy to reduce the length of down times.
- Signalling: Different technologies have different communication modes, which may hamper signalling between CR-LPWAN end nodes and different gateways. For example, bidirectional signalling may be required to ensure effective data delivery in CR-LPWAN networks. However, due to signalling mismatch between different CR technologies, there may be breakdown in connectivity.
- Bandwidth: Bandwidth usage and management is a factor in ensuring effective connectivity in CR-LPWAN networks. With different products available for IoT applications, there may be more bandwidth requirement in an application over another. Thus, inability to meet minimum bandwidth requirements across a variety of applications may cause increase transmission error rates, which will limit connectivity.
- Transmission Power levels: Increasing transmission distance often depends on the transmission power level of CR-LPWAN end nodes. Thus, deploying devices with disparate transmission power levels can hamper the connectivity of CR-LPWAN networks. Consequently, effort is required to develop CR-LPWAN nodes that meet specific power transmission levels in order to ensure effective information transfer over CR-LPWAN networks.
7.2.2. Networking Challenges
- Small packet sizes: The requirement for low power consumption rates along with long transmission ranges may limit the data frame size to be deployed in CR-LPWAN networks. For example, the data frame size for Sigfox technologies is a total of 26 bytes [151], whereas a total payload of 222 bytes (for data rates 4–7) is provided by LoRa for use in Europe and 242 bytes for use in the US [152]. This is quite small to satisfy the demands of all IoT use-cases. Furthermore, there are different standards for frame sizes across different proprietary technologies, which may render the networking process of CR-LPWAN devices a burdensome task. Improvement in the standardization process is highly encouraged.
- Routing: Many CR-LPWAN networks consist of large numbers of end nodes; thus, effective routing schemes are essential. In this regard, light weight routing protocols are required in CR-LPWANs since CR functionalities often incur additional computational overheads. The IETF is strongly involved in addressing routing issues in IoT with several new protocols being deployed, for example, the CoAP. They have also developed the RPL (IPv6 Routing Protocol for Low-Power and Lossy Networks), which tackles problems associated with mesh networking in IoT [153]. With the burgeoning of CR-LPWAN, these standards may require further extensions in order to address the challenge of increased routing computational demands, which may arise from spectrum mobility across different white spaces.
7.2.3. Security Challenges
- Light weight Security Protocols: There are a number of existing security protocols for traditional wireless networks and IoT networks [156], which cannot be deployed for CR-LPWAN applications because of their complexities. It is thus required to develop light weight security protocols to ensure low power consumption rates, and reduced complexity in CR-LPWANs.
- Software Vulnerability: It is often expected that the initial version of most software are plagued by programming bugs known as software vulnerabilities [154]. It is essential to reduce as much as possible the number of bugs in CR-LPWAN software, e.g., spectrum mobility and management software, to reduce the risk of back-door sabotage, which may lead to malicious attacks and network downtimes if left unchecked.
- Malware: The promising and open spectrum-access nature of CR-LPWAN suggests that it is a potential breeding ground for malware attacks. Malicious attackers are constantly on the prowl looking for possible loopholes to exploit. While malware attacks against IoT software may seem far fetched, it is worth noting that Symantec has declared the detection of the first piece of IoT malware (a worm) termed “Linux.Darlloz” [157]. Others include Mirai, which turn networked devices running Linux into remotely controlled bots for large-scale network attacks. These discoveries imply that CR-LPWAN devices and networks are not exempted from possible malware attacks, which demand new research measures to improve security.
8. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
3GPP | 3rd Generation Partnership Project |
6LoWPAN | IPv6 for low power wireless personal area networks |
ADEMCO | alarm device manufacturing company |
AES | Advance Encryption Standard |
ARDIS | advanced radio data information service |
AS | application server |
ATA | adaptive threshold estimation algorithm |
BPSK | binary phase shift keying |
CCC | common control channel |
CR | cognitive radio |
CREN | cognitive radio at end node |
CRGW | cognitive radio at gateway |
CRENGW | cognitive radio at both end node and gateway |
CRN | cognitive radio network |
CRS | cognitive radio system |
CRSN | cognitive radio sensor network |
CSMA/CA | carrier sense multiple access with collision avoidance |
CSS | chirp spread spectrum |
CD | cyclostationary detector |
D-BPSK | differential binary phase shift keying |
DC | direct current |
DECT | Digital Enhanced Cordless Telecommunication |
DSSS | direct sequence spread spectrum |
E2E | End 2 End |
EC-GSM-IoT | extended coverage GSM IoT |
ED | energy detector |
eDRx | enhanced discontinuous reception |
eMTC | enhanced machine-type communication |
ETSI | European Telecommunications Standards Institute |
FAN | field area network |
FCC | Federal Communications Commission |
FCME | forward consecutive mean excision |
FDMA | frequency division multiple access |
FEC | forward error correction |
FFT | fast Fourier transformation |
FDMA | frequency division multiple access |
FOST | first order statistical technique |
FSK | frequency shift keying |
GMSK | Gaussian minimum shift keying |
GSM | Global System for Mobile communication |
GW | gateway |
HAN | home area network |
HDTV | high definition television |
HTTP | Hypertext Transfer Protocol |
IEEE | Institute of Electrical and Electronics Engineers |
IETF | Internet Engineering Task Force |
IF | intermediate frequency |
IFA | inverted F antenna |
IIC | Industrial Internet Consortium |
ISM | industrial, scientific, and medical |
IoT | Internet of Things |
IP | Internet Protocol |
IPSO | Internet Protocol for Smart Objects |
ITU | International Telecommunication Union |
LECIM | low energy critical infrastructure monitoring |
LNA | low noise amplifier |
LoRa | Long Range |
LPWAN | low power wide area network |
LRLP | long-range low power |
LTE-M | Long-Term Evolution, category M1 |
LTN | low throughput network |
MAC | medium access control |
NAN | neighbourhood area network |
NB-IoT | Narrowband IoT |
NS | network server |
OFDMA | orthogonal frequency division multiple access |
OOK | on-off keying |
OSSS | orthogonal sequence spread spectrum |
PCA | priority channel access |
PHY | physical |
PPU | power provisioning unit |
PSM | power saving mode |
PU | primary user |
PUE | primary user emulation |
QAM | quadrature amplitude modulation |
QoS | quality of service |
QPSK | quadrature phase shift keying |
RF | radio frequency |
ROHT | recursive onesided hypothesis testing |
RPMA | random phase multiple access |
RSS | received signal strength |
SC-FDMA | single carrier frequency division multiple access |
SDN | software-defined network |
SDO | standard development organizations |
SDR | software-defined radio |
SDWSN | software-defined wireless sensor network |
SG | smart grid |
SGN | smart grid network |
SGCN | smart grid communication network |
SIGs | Special Interest Groups |
SNOW | sensor network over white spaces |
SNR | signal to noise ratio |
SoC | system on a chip |
SRD | short range device |
SS | spectrum sensing |
SSL | secured sockets layer |
SUN | smart utility network |
TG | task group |
TVWS | television white space |
UHF | ultra high frequency |
ULPC | ultra-low power communication |
ULPP | ultra-low power processing |
UNB | ultra narrow band |
USRP | Universal Software Radio Peripheral |
VHF | very high frequency |
WG | working group |
Wi-SUN | wireless smart utility network |
WBAN | wireless body area network |
WLAN | wireless local area network |
WSN | wireless sensor network |
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S/N | LPWAN Technology | Developer/Company | Year of Origin |
---|---|---|---|
1 | MOBITEX | Televerket Radio | Beginning of 1980s |
2 | ARDIS/DataTAC | Motorola | 1980–1990s |
3 | AlarmNET (ADEMCO) | Motorola | 1990–2000s |
4 | GPRS | Cellular Network Developers | 2000s |
5 | IQRF | IQRF | 2004 |
6 | Telensa | Telensa (Formerly part of Plextek Inc.) | 2005 |
7 | RPMA | Ingenu (Formerly known as OnRamp) | 2008 |
8 | Sigfox | Sigfox | 2009 |
9 | Qowisio | Qowisio | 2009 |
10 | Wi-SUN | Wi-SUN | 2011 |
11 | LoRa/LoRaWAN | LoRa Alliance | 2012 |
12 | Weightless | Weightless SIG | 2012 |
13 | Symphony Link | Link Labs | 2013 |
14 | Adaptrum | Adaptrum | 2014 |
15 | NB-IoT/LTE-M | 3GPP group | 2016 |
Rank | LPWAN Technology | Licensed Band Operation | Unlicensed Band Operation | Currently Supports CR | Supports Multiple Channels | Considering Future CR Deployment |
---|---|---|---|---|---|---|
1 | Nwave | ✓ | ✓ | ✓ | ✓ | ✓ |
2 | Sigfox | ✕ | ✓ | ✕ | ✓ | ✓ |
3 | Weightless | ✕ | ✓ | ✓ | ✓ | ✓ |
4 | LoRa | ✕ | ✓ | ✕ | ✓ | ✓ |
5 | Symphony Link | ✕ | ✓ | ✕ | ✓ | ✓ |
6 | Amber Wireless | ✕ | ✓ | ✕ | ✓ | ✕ |
7 | IQRF | ✕ | ✓ | ✕ | ✓ | ✕ |
8 | LTE-M | ✓ | ✕ | ✕ | ✓ | ✕ |
9 | NB-IoT | ✓ | ✕ | ✕ | ✓ | ✕ |
10 | Starfish | ✕ | ✓ | ✕ | ✓ | ✕ |
11 | Telensa | ✕ | ✓ | ✕ | ✓ | ✕ |
12 | Wi-SUN | ✕ | ✓ | ✕ | ✓ | ✕ |
13 | Qowisio | ✕ | ✓ | ✕ | ✕ | ✕ |
14 | Ingenu | ✕ | ✓ | ✕ | ✕ | ✕ |
S/N | SDOs | Overview | Area of Focus | Compliant LPWAN Technologies | Number of Participating Members & Organizations |
---|---|---|---|---|---|
1 | IEEE 802.15.4 | Addresses protocol development and compatible interconnection for devices requiring low data, low power, low complexity and short range transmission | (1) PHY Layer consideration: QPSK, BPSK, ASK, CSS, UWB, GFSK (2) MAC Protocol development (3) Security: Lookup procedures, security operations and header | Zigbee, Bluetooth, Wi-SUN, Sigfox, Symphony, Ingenu RPMA | ∼216 (Corporate Members) |
2 | ETSI | Developing LTN for long-range data transportation, long battery lifetime, high scalability and low throughput services | (1) Application areas such as smart metering, smart cities, automotives, e.t.c (2) Network topology (3) Traffic and Protocol harmonization (4) Identifiers and addressing (5) Security aspects (6) End point implementation | Sigfox, LoRa, Silver Spring, Telensa | >400 (Individual Members) |
3 | 3GPP | Provision for low power consumption, low device cost, improved outdoor and indoor penetration, optimized data transfer, scalability for capacity upgrade | (1) Architecture enhancement for MTC (2) Addressing (3) Identifiers (4) Device triggering (5) Small data enhancement (6) Power consumption rate (7) Battery saving (8) Monitoring enhancement | NB-IoT, LTE-M, EC-GSM-IoT | >800 (Including Individual and Corporate Members) |
4 | IETF | Interested in enabling a wide range of things to use interoperable technologies including for the IoT including covering technologies surrounding LPWAN characteristics | (1) Header compression (2) Fragmentation (3) Reassembly (4) Management (5) Security, Integrity, and Privacy (6) Neighborhood discovery | LoRaWAN, NB-IoT, Sigfox, Wi-SUN FAN | Involuntary membership |
S/N | SIGs | Focus | Open | Non-Profit based | Number of Members | Support for Cognitive Radio |
---|---|---|---|---|---|---|
1 | LoRa Alliance | To standardize LPWAN for IoT applications, and also to drive the global success of LoRa protocol for interoperability between operators | ✓ | ✓ | >130 (mainly companies) | Not Yet |
2 | Weightless SIG | To coordinate and enable all activities required to ensured interoperable standards for wide area IoT connectivity | ✓ | ✓ | ∼4752 Individual members | Yes |
3 | Dash Alliance | Development and enhancement of DASH7 protocol specification and other DASH7 technologies for global adoption by national and international standard bodies/agencies | ✓ | ✓ | 9 (These are mainly companies excluding the number of students/Professors from 4 Universities) | Not Yet |
4 | IQRF Alliance | Deliver interoperable wireless IoT devices and solutions for fast realization of wide range of IoT projects | ✓ | ✓ | ∼98 (Including 45 Institutions, 45 Adopters, and 5 Contributor companies) | Not Yet |
5 | Wi-SUN Alliance | To drive the global proliferation of interoperable wireless solutions for IoT applications using global open standards | ✓ | ✓ | 176 (Including 87 contributor companies, 79 Adopter companies, and 10 Promoter companies) | Not Yet |
6 | IoT World Alliance | To deploy IoT solutions seamlessly worldwide through a single point of contact. Ensure the use of a Single SIM world wide while reducing the cost of data connectivity | ✕ | ✕ | ∼70 (mainly companies) | Not Yet |
S/N | Consortium | Focus | Number of Members | Open Membership | Non-Profit | Annual Dues Required |
---|---|---|---|---|---|---|
1 | Oasis IoT | Technology Architecture Focused (TAF): Building protocols such as AMQP, MQTT, oBIX | ∼5000) | ✓ | ✓ | ✓ |
2 | Object Management Group | TAF: Developing Data distribution services and also managing the IIC | ∼327 | ✓ | ✓ | ✓ |
3 | Open Interconnect | Providing software support including platform support of different Operating Systems. They are also defining connectivity requirements for interoperability of IoT devices | ∼150 | ✓ | ✓ | ✓ |
4 | Industrial Internet | Works with the Object Management Group to catalyse, coordinate and enable growth of the Industrial Internet. They work on Data Distribution Services, and unifying component models for real-time and embedded systems | ∼293 (mainly companies) | ✓ | ✓ | ✓ |
5 | Internet of Things | Ensuring the global adoption of IoT products and services through research and market education | ∼50 | ✓ | ✓ | ✕ |
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Onumanyi, A.J.; Abu-Mahfouz, A.M.; Hancke, G.P. Low Power Wide Area Network, Cognitive Radio and the Internet of Things: Potentials for Integration. Sensors 2020, 20, 6837. https://doi.org/10.3390/s20236837
Onumanyi AJ, Abu-Mahfouz AM, Hancke GP. Low Power Wide Area Network, Cognitive Radio and the Internet of Things: Potentials for Integration. Sensors. 2020; 20(23):6837. https://doi.org/10.3390/s20236837
Chicago/Turabian StyleOnumanyi, Adeiza J., Adnan M. Abu-Mahfouz, and Gerhard P. Hancke. 2020. "Low Power Wide Area Network, Cognitive Radio and the Internet of Things: Potentials for Integration" Sensors 20, no. 23: 6837. https://doi.org/10.3390/s20236837
APA StyleOnumanyi, A. J., Abu-Mahfouz, A. M., & Hancke, G. P. (2020). Low Power Wide Area Network, Cognitive Radio and the Internet of Things: Potentials for Integration. Sensors, 20(23), 6837. https://doi.org/10.3390/s20236837