A Review of IoT Sensing Applications and Challenges Using RFID and Wireless Sensor Networks
Abstract
:1. Introduction
2. RFID Sensing Technology
- Analog RFID sensing: These systems perform an analog processing of the physical signals related to the communication between the reader and the tag, with no dedicated sensing electronics. The reader is able to obtain much more information about the target, more than just identification, without the need for additional electronics. Analog RFID sensing relies on the knowledge that the performance of an RFID tag is affected by the hosting object, and hence it is possible to retrieve sensing data simply by evaluating the variation of the signals backscattered from the tags. Sensitive coating materials or lumped components displaced over the antenna are also used to achieve a more specific response of the device [12].
- Digital RFID sensing: Tags are integrated with electronic components, such as sensory material, analog-to-digital converters, and a microcrontroller, to make an integrated sensor module [13]. These systems are referred to as Computational RFID (CRFID). CRFID systems permit running programs on embedded computers using only scavenged Radio Frequency (RF) energy. Battery free, “invisible” sensing and computation is key to truly ubiquitous computing applications for the IoT. The CRFID tag is used as a communication interface for transmitting data. Passive RFID sensors harvest the RF energy from RF radiation to power the circuit, perform the sensing task, and save the data in the RFID chip to be accessed by RFID readers.
2.1. Challenges
- Limited energy harvester and read range: These are considered to be two of the most important limitations because both sensor nodes and RFID tags are made of scarce resources [14,15]. Existing RFID platforms implemented in the IoT are mostly passive, that is, they cannot operate or sense data without being placed inside the reader’s reading zone. The integrated circuit (IC), the microcontroller unit, and the sensing module on a passive tag are powered by harvesting the RF energy transmitted by the reader, and communicate by backscattering the incident signal. This implementation reduces the manufacturing cost by keeping IC costs low. However, the long-range communication and power hungry sensing capabilities will be limited by the power available at the tag.Furthermore, the maximum power transmitted by the reader is constrained by the Federal Communications Commission (FCC) (or similar regional organization) at 1 W (30 dBm), assuming an antenna with a maximum gain of 6 dBi. Only a fraction of this transmitted RF power is received at the IC after path losses and polarization mismatches.Although all the components are typically designed to be power efficient, the operation of the logic of the sensors is more complex and time consuming. Therefore, it is still a challenge to power all the components and cover the operations of the logic with only harvested RF energy. This challenge is more notable when the sensors are implanted in the materials under test, because the RF signal is attenuated by the surrounding materials and the received RF energy can hardly power all the operations, which seriously affects the read/write range of the RFID sensor.
- Sensor responses collisions: An RFID sensing application is composed of at least one reader and several RFID sensors, which include at least one sensor. The tag collision problem acquires the main focus when interrogating these tags. The communication channel is shared among them and, therefore, their responses need to be arbitrated in order to avoid simultaneous responses that will lead to collisions. This problem is one of the main causes of energy wastage, increases in identification time, and decreases in the read rate [16]. Due to the current increasing number of sensor tags in a shared reader interrogation area, this problem is the subject of increasing concern. Efficient anti-collision protocols for streaming sensor data are needed to minimize the impact of collisions.
- Lack of flexibility: Current sensor RFID tags usually come with a single sensor or, in some cases, with multiple built-in sensors. But once they are manufactured, they cannot be replaced or reconfigured without a costly redesign and reproduction. Since the IoT is an open, dynamic, and versatile global networking and sensing system, the generality, modularity, and reconfigurability of the sensing nodes/platform are essential for the their adoption in the future IoT architecture. Furthermore, commercial RFID readers are generally black box systems that only allow limited configuration [16] and are only capable of implementing the current UHF RFID communication standard named EPCglobal Class 1 Generation 2 (EPC C1G2) (ISO/IEC 18000-63). Thus, it is not possible to implement new communication protocols beyond the EPC C1G2 that meet the demands of novel and emerging RFID-based sensors. Although there are some publications in the literature that propose a flexible RFID reader based on a software-defined radio, there is a lot of room for improvement in this regard [17].Another limitation is related to the current lack of an UHF RFID mobile sensing platform. Currently are portable commercial RFID readers, which do not need to be plugged in to operate, but there is a lack of a smartphone-based platform that enables the use of unmodified smartphones to read data from UHF RFID sensors. It would be very beneficial and practical to be able to read RFID sensor tags by using a common smartphone with some additional hardware components (such as an UHF antenna).
- Cost: The cost of commercial RFID readers is relatively high compared to the cost of sensors and tags.
2.2. Applications
3. Wireless Sensor Networks
3.1. Challenges
- Reliability: Nodes must be available at any time to monitor critical areas, but this can lead to unnecessary communications or computations, which can cause the batteries of the nodes to run out of charge. Also, time synchronization between the nodes and spectrum sharing techniques are of the utmost importance to ensure the integrity of the data or avoid uncertainty in the sensed data, without consuming all the radio resources [37].
- Energy consumption, including harvesting, conservation and usage. Nodes must be power efficient and must be capable of low power communication with low cost on-node processing. Whether the nodes use a battery or harvest energy from the surroundings, their power consumption must be low in order to maximize their efficiency. The optimal node would be able to harvest energy from its surroundings and not waste any of that energy in its operations [38].
- Scalability: IoT solutions will involve thousands of smart devices, and this number will be dramatically increased in the coming years. Hence, a WSN must be sufficiently scalable so as to be able to integrate new nodes and provide (Quality of Service) QoS services involving heterogeneous devices, working for long periods [39].
- Communication mechanisms and protocols: There are 4 types of MAC communication strategies: Fixed, On-demand, Random, and Hybrid assignment [36]. Fixed assignment protocols divide the resources between the nodes in predefined time slots; On-demand protocols provide resources to each node on demand; Random Assignment protocols randomly divide the resources; and Hybrid Assignment protocols combine the previous three strategies. The Fixed assignment strategy adds determinism at the expense of an inefficient use of time; whilst the On-demand assignment lacks determinism and is not suitable for industrial real-time applications. In between these strategies are the Hybrid assignment strategies, combining fixed and random assignments. Moreover, the WSNs used in the IoT need to implement Internet functionalities. The most used one is the Internet Protocol (IP), to allow the routing of the messages among the wireless network.
3.2. Applications
4. IoT Promising Technologies
4.1. RFID and WSN Integration
- The category of RFID tags with WSN nodes involves the possibility that the end node can be an RFID tag or a WSN node (see Figure 4a), and thus, there are two cases: integrated sensors with limited communication capabilities for the first case, and integrated sensors with extended communication capabilities for the second [58].
- For the category of RFID readers with WSN nodes (see Figure 4b), the integration is at the reader level. This increases the capabilities of the integrated system, allowing the identification of a tag, through the WSN node, at a very long distance, at the expense of an increase in the WSN node’s power consumption [8].
- The last category, hybrid integration, is a mixture of the previous two (see Figure 4c). An RFID reader is attached to a WSN gateway and thus, RFID tags coexist with WSN nodes as sensors. This Reader/Gateway collects data from either RFID sensors or sensor nodes and forwards the data to the coordinator of the network. Figure 4 shows a diagram of an example of hybrid integration.
4.2. Wearable Sensors
- Public Land Mobile Networks: These range from 2G to future 5G communication systems, which support machine to machine communications (M2M) or purpose specific systems for sensor integration, such as NB-IoT or Cat. Mobile terminals can be used as opportunistic sensor platforms or to provide access gateways in tethered operation to WBAN/WPAN networks.
- WPAN/WBAN: These are wireless communication systems which are intended to support short to medium range communications, have network topologies that are reconfigurable in the face of adverse network conditions (i.e., ad-hoc network configurations), and large scalability. The majority of communication systems have been developed under the scope of IEEE 802.15 standards, such as Bluetooth, ZigBee, RFID/NFC liaison or Ultrawideband (UWB), while there are other alternatives, such as ANT, Zarlink, Sensium, Z-Wave, RuBee, Dash7 and EnOcean, among others.
- WLAN: Wireless local area networks provide multiple functionalities, such as communication gateway capabilities or support for guiding and location systems.
- Small form factor and ergonomics: Typically, the circuit footprint is on the order of several mm in order to enable their integration with wearable platforms, such as wristbands, watches, earrings, necklaces, or in different types of textiles. Novel approaches have been followed to increase the integration, employing additive manufacturing techniques (ergonomic casings and enclosures, conductive screen printing of electrodes, sensors and antennas), embroidering conductive wires within textiles, or flexible/stretchable electronics.
- Reduced energy consumption: Wearable applications usually have the use of only limited energy sources. Moreover, an extended lifetime of the energy source is a desirable requirement, to increase the user’s comfort in terms of device downtime owing to the need to recharge the device. Energy reduction is provided by hardware (e.g., the use of ultra-low power electronics, optimized circuit routing, etc.) and communication protocol/software (optimized device states and modified MAC protocols, energy efficient routing protocols, cooperative and heterogeneous network schemes). Other aspects, such as restrictions on the antenna size, non-optimal antenna matching conditions, and the influence of the human body on the antenna radiation diagram, also limit the performance and hence affect the available energy. New approaches have been proposed, such as the use of artificial electromagnetic bandgap embedded antennas in order to enhance antenna performance in contact with the human body. Extended device operation can be provided by using energy harvesting schemes (with different options, such as solar energy, thermo-electric conversion such as Peltier cells, piezo-electric transducers or RF/electromagnetic harvesting by using rectennas).
- Seamless communication capabilities: Wearable devices require communication systems which can efficiently transmit and receive the required information, providing optimal coverage/capacity response, with straightforward connection capabilities in order to ease their operation by the users. WBAN/WPAN communication systems, such as Bluetooth (BT)/Bluetooth Low Energy (BLE), RFID or Near Field Communications (NFC) provide simple association procedures, requiring little or no configuration by the user under conventional operating conditions. Moreover, coverage/capacity restrictions must also be taken into consideration, in aspects such as the transceiver density, which can increase the overall interference levels and hence reduce the quality of service parameters. Moreover, user interaction and adoption levels will also be biased by normalization in the use of the technology, in terms of accepting information exchange and ensuring adequate privacy and security levels.
Technology | Challenges | Solutions |
---|---|---|
RFID | Energy harvesting Inflexibility Platform Cost Communication protocols Coverage/Read range | [18,22,37,58] [12,20,23] [20,23,24,37] [22,25] [5,20,25,59] [18,23] |
WSN | Latency Reliability Data rate Energy consumption Scalability Communication protocols Security & privacy | [35,36,69] [35,36,56,68,69] [54,68] [10,56,58] [10,70,71] [42,70] [21,40,54,63] |
RFID-WSN | Coordination Communication protocols Energy management & Accuracy of sensors | [8,9,59] [5,7] [3,36,58] |
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Health | Agriculture | Transportation |
---|---|---|
continuous patient monitoring inter-departmental communications patients’ mobility Efficient emergency dispatching [18,19,20] | sensor innovations smart irrigation smart tractors monitoring key parameters [21,22] | smart roads environment-connected vehicles people-centric integrated transportation [23,24,25] |
Retail | Industry | Neuro-Engineering |
security process automation real-time stock control product quality control [26,27] | smart maintenance environment-aware objects real-time monitoring real-time monitoring of the platforms [30,31,32] | biomedical device communications low-power communications backscatter communications [33,34] |
Technology | Description and Main Applications |
---|---|
RFID | Radio Frequency Identification Very low power identification, tracking, sensing, indoor positioning |
NFC | Near Field Communications Very short range identification, tracking, sensing |
BT/BLE | Low Energy Support short to medium range communications. Indoor positioning |
2G and 5G | Mobile communications network. Support M2M communications, sensor integration |
ZigBee | Communication protocol for WPAN Short distance, low complexity, power, and rate sensor data transmission |
UWB | Ultra Wide Band radio techonology Short-range indoor applications. Real-time positioning systems |
Requirements | Enabling Technologies | Application Domains |
---|---|---|
Small form factor-ergonomics | Additive manufacturing techniques | Sports-Leisure (training, injury monitoring, competition assistance) |
Reduced energy consumption | Energy harvesting supercapacitor/batteries-ultra low power consumption | Healthcare (body signal monitoring, ambient assisted living, telemedicine) |
Small/moderate coverage-transmission rate | WBAN/WPAN-PLMN-WLAN communication systems | Location and tracking (infants, industrial security, livestock/domestic pet tracking and monitoring) |
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Landaluce, H.; Arjona, L.; Perallos, A.; Falcone, F.; Angulo, I.; Muralter, F. A Review of IoT Sensing Applications and Challenges Using RFID and Wireless Sensor Networks. Sensors 2020, 20, 2495. https://doi.org/10.3390/s20092495
Landaluce H, Arjona L, Perallos A, Falcone F, Angulo I, Muralter F. A Review of IoT Sensing Applications and Challenges Using RFID and Wireless Sensor Networks. Sensors. 2020; 20(9):2495. https://doi.org/10.3390/s20092495
Chicago/Turabian StyleLandaluce, Hugo, Laura Arjona, Asier Perallos, Francisco Falcone, Ignacio Angulo, and Florian Muralter. 2020. "A Review of IoT Sensing Applications and Challenges Using RFID and Wireless Sensor Networks" Sensors 20, no. 9: 2495. https://doi.org/10.3390/s20092495