Energy-Efficient Wireless Sensor Networks for Precision Agriculture: A Review
Abstract
:1. Introduction
- (i)
- The potential of using wireless communications protocols or technologies in agriculture was investigated, and the technology with the best power consumption and communication distance was identified.
- (ii)
- The taxonomy of energy-efficient and energy harvesting techniques was examined to address the power consumption problems in agriculture and to identify those methods that are most suitable for solving these problems.
- (iii)
- The existing solutions, applicability, and limitations of applying WSNs in agriculture were reviewed and compared.
- (iv)
- Recent studies using WSN in PA applications based on Internet of Things (IoT) were surveyed and compared in terms of type of sensors and actuators, IoT end devices, IoT platforms, and IoT application layer.
2. Wireless Communication Technologies for Agriculture
2.1. ZigBee Wireless Protocol
2.2. Bluetooth (BT) Wireless Protocol
2.3. WiFi Wireless Protocol
2.4. GPRS/3G/4G Technology
2.5. Long Range Radio (LoRa) Protocol
2.6. SigFox Protocol
2.7. Performance Comparison of Wireless Communication Protocols
3. Agriculture-Based Energy-Efficient Schemes in Literature
3.1. Agriculture-Based Power Reduction Techniques
3.1.1. Sleep/Wake Strategy
3.1.2. Radio Optimization
3.1.3. Data Mitigation
3.1.4. Routing Protocol
3.2. Agriculture-Based Energy-Harvesting Techniques
3.2.1. Solar Energy
3.2.2. Wireless Power Transfer
3.2.3. Air Flow Energy
3.2.4. Vibration Energy
3.2.5. Water Flow Energy
3.2.6. Microbial Fuel Cell Energy
4. Agriculture Requirements for IoT
5. Challenges and Limitations
- (1)
- Power consumption and battery life: A WSN consists of three main components: sensors, microcontrollers, and RF transceivers. Given that the battery of a sensor node provides limited energy, ensuring that the components of the sensor node consume minimum power is crucial. In particular, reducing the power consumption of the RF transceiver, which consumes more power than the other components in a sensor node, would alleviate this problem [67,127]. Moreover, this issue can be addressed in two steps. The first is to propose an intelligent energy-efficient algorithm. The second step can be performed by utilizing available energy-harvesting techniques, such as solar cells, vibration, and WPT.
- (2)
- Communication range: WSNs suffer from the effect of harsh ecological conditions because of the wide range of open agricultural surroundings [5]. The WSN protocol contains mechanisms to resist the effect of data transmission failures in the network, which increase due to ecological effects. In agricultural applications, most wireless sensor technologies support a relatively short communication range. Therefore, many sensor and router nodes need to be diffused in a WSN. In the point-to-point Zigbee network, the communication distance can reach 100 m in outdoor environments. The ZigBee communication range can be extended by adopting multi-tire, ad-hoc, decentralized, and mesh network topologies. Drones or UAV also can be used as a mobile router node to extend the communication range within a farm field. A drone could pass the collected data from the sensor nodes to the master node through multi-hop. However, using drones entails other challenges and limitations.
- (3)
- Propagation losses: In agricultural applications, WSNs must be able to work in diverse surroundings, such as ground, bare land, orchards, greenhouses, farms, and complex topography; they must also be able to operate in all climate conditions. All these conditions influence the performance of radio propagation. Whether the topography is simple or complicated, the communication possibility between the points in a WSN still suffers from serious challenges. The signal transmitted from the sensor nodes in agricultural applications need to pass through a heavy crop canopy to arrive to at the receiver nodes, which cannot ensure a sufficient clearance area and will cause signal propagation absorption, reflection, attenuation, and scattering. In this case, the link quality is degraded, especially when the signal spreads through dense crops. Therefore, when deploying WSNs, communication link quality and temporal and spatial variables must be guaranteed. The communication performance of WSNs is related to the working surroundings. Therefore, due to the limited resources and power budget of WSNs, an accurate wireless channel path loss model must be adopted to reflect the propagation features. This model is expected to demonstrate correct optimization and network evaluation performance throughout the deployment design process to develop the energy efficiency of the nodes [15], improve the target detection and localization applications [16], decrease the number of retransmission, and ensure Quality of Service (QoS) of the network [175].
- (4)
- Routing: Different problems can emerge due to packet collision and limited bandwidth, which are introduced by channel propagation, and so on. Therefore, when a WSN is deployed in a wide area in farm fields, multi-hop is required. Kim et al. [3] developed an independent mobile robot platform based on a mobility task for surveillance to overcome channel interference.
- (5)
- Localization and tracking: Tracking and localization of a herd of cattle are considered smart farm applications based on WSNs. For example, a WSN can be employed to track and localize of dairy cows to enable herd management. ZigBee wireless protocol is used to monitor animal locations and behaviors, such as walking and standing, lying down, and grazing [16,18]. In this context, several considerations, such as radio interference, animal situation, and mobility, changes in WSN topology, penetration depth of the signal through the animal body, height of the collar, and access point antennas, need to be taken into account [176]. These considerations pose challenges in the localization and tracking of the animals.
- (6)
- Reliability: Agricultural monitoring systems based on different environmental sensors can also be used to monitor pollution aside from climate conditions. Important information on climate conditions is reported to related agencies and farmers from a remote location for advance investigations. Dangerous information needs to be dealt with immediately in an emergency, which means that data transmission in WSNs should demonstrate high reliability [3].
- (7)
- Scalability: In agricultural applications, the construction of WSN-based fault-tolerant and robust hierarchical architectures requires large-scale deployment relative to single-level network architectures. A hierarchical architecture can be scaled up for developing applications by duplicating to several fields. In this context, to increase the number of WSNs over a vast area, multiple wireless router nodes are placed in an agricultural field to guarantee sustained operation.
- (8)
- Cost: The total hardware and software costs of sensor nodes are important. The design of sensor nodes for any agricultural application level must involve a low cost while demonstrating a robust performance; moreover, the design needs to be available for use by poor country markets [5]. This challenge can be overcome by reducing software and hardware costs further.
- (9)
- Real time: Most crops are vulnerable to climate conditions, such as humidity, intensity of illumination, and temperature. This vulnerability is a burden to farmers who monitor changes in climate conditions hourly and/or daily because doing so is labor-intensive. Moreover, in greenhouses, a fire can occur and lead to severe agricultural disasters. This evidence suggests that the monitoring of the ecological conditions of agricultural WSNs needs to be in real time. Real-time monitoring will enhance yield production and plant growth and avoid dangerous disasters in farms [3].
- (10)
- Storage and recording of data: Large amounts of data are recorded from agriculture observing systems because several WSNs in agricultural applications contain several sensors for crop growth analysis and harvesting estimation. This condition requires the base station to monitor changes in farm fields by analyzing patterns. The base station must thus be supported by a high storage capacity.
- (11)
- Security: Security and protection are important issues in agricultural products. Protection from insects or attacks of rodents in grain stores or fields is essential. Such a challenge must be considered to maintain the security level of agriculture. Protection and security can be achieved based on real-time analysis and processing of agricultural information without human intrusion [159].
- (12)
- Delay tolerance: Critical delay poses a challenge to agricultural applications. Some agricultural applications can be considered as time sensitive, such as those used in farm fire detection, detection of exposure of crops to pests, cow heat event detection during milking, and exposure of cattle to heat for a certain period. Such information must be transmitted as fast as possible if the critical issue is to be handled. In such a case, a tradeoff between energy consumption and data timelines is necessary. By contrast, some agricultural applications are delay tolerant (i.e., time insensitive), such as protein content, milk fat [177], gathering data from soil and grass monitoring. With delay tolerant approach, the short range low power wireless protocols can be used [178]. Where the information of the agricultural field can be collected and transferred to the master node or to a cloud computing node using “messengers” e.g., a mobile node (mobile robot or UAV). Consequently, the cost [179] and the complexity of the agriculture WSN will be reduced and the lifetime will be increased.
- (13)
- Fault tolerance: Fault tolerance is a crucial feature of WSNs for succeeding PA. Several faults may occur in PA based on the WSN system, which are (i) communication failure, (ii) faulty sensor setting, (iii) sensor component faults producing incorrect value, and (iv) node failure because of exhausted battery or any other cause. Gutiérrez et al. [40] introduced communication failure and node fault tolerance for an irrigation system. If any fault occurs, the irrigation system tracks the default irrigation program. The node energy depletion failure was minimized in [1,40,180] by adopting solar-cell-powered nodes. Data aggregation and topology control schemes are probable to be fault tolerant for deploying sensor nodes in a vast area.
- (14)
- Data management: The data management in agriculture poses a challenge because the large amount of data that can be collected from several sensors spread in agricultural field, especially when the agricultural data are intended to be connected to the cloud. Determination of the (i) data analysis method, (ii) data collection schemes, (iii) sensor types, (iv) semantic sensor networking, (v) big data, and (vi) complex event processing enables the designer to manage these crucial aspects. The integration of IoT and software-defined network also introduces a promising and new methodology in deployment, monitoring, and design of network services and resources [181].
- (15)
- Heterogeneous sensors: Integration of wired and wireless heterogeneous sensors into information platforms to perform interoperability pose challenges in PA. Chen et al. [152] proposed “web service-enabled cyber-physical infrastructure” to solve this issue. The proposed system was able to integrate, process, acquire, and distribute surveillance data from different physical sensors spread in the PA system over the Internet. The infrastructure was executed to serve as an architecture middleware between PA clients and heterogeneous sensors.
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Parameters | ZigBee | Classic BT | BLE | WiFi | GPRS | LoRa | SigFox |
---|---|---|---|---|---|---|---|
Standard | IEEE 802.15.4 | IEEE 802.15.1 | IEEE 802.15.1 | IEEE 802.11a,b,g,n | N/A | IEEE 802.15.4g | IEEE 802.15.4g |
Frequency band | 868/915 MHz and 2.4 GHz | 2.4 GHz | 2.4 GHz | 2.4 GHz | 900–1800 MHz | 869/915 MHz | 868/915 MHz |
Modulation type | BPSK/OQPSK | GFSK, DPSK, and DQPSK | GMSK | BPSK/OQPSK | GMSK/8PSK | GFSK | DBPSK(UL), GFSK(DL) |
Spreading | DSSS | FHSS | FHSS | MC-DSSS, CCK | TDMA, DSSS | CSS | N/A |
Number of RF channels | 1, 10, and 16 | 79 | 40 | 11 | 124 | 10 in EU, 8 in US | 360 |
Channel bandwidth | 2 MHz | 1 MHz | 1 MHz | 22 MHz | 200 kHz | <500 KHz | <100 Hz |
Power consumption in Tx mode [5,40,56,59,60,61] | Low | Medium | Ultra-low | High | Medium | Low | Low |
36.9 mW | 215 mW | 10 mW | 835 mW | 560 mW | 100 mW | 122 mW | |
Data rate | 20, 40, and 250 kbps | 1–3 Mbps | 1 Mbps | 11–54 and 150 Mbps | Up to 170 kbps | 50 kbps | 100 bps |
Latency [62,63,64,65] | (20–30) ms | 100 ms | 6 ms | 50 ms | <1 s | N/A | N/A |
Communication range [48,66] | 100 m | 10–50 m | 10 m | 100 m | 1–10 km | 5 km | 10 km |
Network size | 65,000 | 8 | Limited by the application | 32 | 1000 | 10,000 (nodes per BS) | 1,000,000 (nodes per BS) |
Cost [5] | Low | Low | Low | High | Medium | Low Cost | Low Cost |
Security capability | 128 bits AES | 64 or 128 bits AES | 64 or 128 bits AES | 128 bits AES | GEA, MS-SGSN, MS-host | AES 128b | Encryption not supported |
Network Topologies | P2P, tree, star, mesh | Scatternet | Star-bus | Point-to-hub | Cellular system | Star-of-stars | Star |
Application | WPANs, WSNs, and Agriculture | WPANs | WPANs | WLANs | AMI, demand response, HAN | Agriculture, Smart grid, environment control, and lighting control | Agriculture and environment, automotive, buildings, and consumer electronics |
Limitations | line-of-sight (LOS) between the sensor node and the coordinator node must be available | Short communication range | Short communication range | High power consumption and long access time (13.74 s) | Power consumption problem | Network size (scalability), data rate, and message capacity | Low data rates |
Power Reduction Scheme | Reference Example | Wireless Protocol/Device | Power Savings/Battery Lifetime | Communication Distance/Field Size | Sensors/Actuators | Application | Limitations | |
---|---|---|---|---|---|---|---|---|
Sleep/wake scheme | Duty-cycle | [8]/2016 | LoRa | 4408 h | Limited | Soil temperature, Soil moisture, air temperature, air humidity and light intensity/alert messages | Greenhouse | Communication distance |
[38]/2013 | WiFi | 9.5 days | 100 m | Temperature, humidity, water level, soil moisture, light, and pressure | Precision Agriculture | Short battery life | ||
[42]/2015 | ZigBee and GSM/GPRS | 13.35 days | Long | Soil moisture, temperature, pressure, and water electrical conductivity and temperature | Irrigation | Short battery life | ||
[49]/2013 | ZigBee and GSM/GPRS | 21 days | 20 m | Air temperature, air humidity, and solar radiation | Vineyard | Short battery life and communication distance | ||
[69]/2013 | GPRS | Low power | 30 m | Soil moisture/sprinkling machine | Precision Agriculture | Data losses-Measurement error | ||
[70]/2013 | ZigBee and GPRS | Low power | 23 m | Temperature and soil moisture/solenoid valves | Precision Agriculture | Conflicted in communication between ZigBee and GPRS | ||
[71]/2014 | DZ50 (RFM12b) | 700%/7 years | Short | Soil moisture/solenoid valves | Precision Irrigation | Low data rate | ||
[72]/2015 | ZigBee and GPRS/3G | 8.1 days | 2000–3000 m | Wind speed, wind direction, temperature, humidity, rain gauge, water and pH level | Crop fields | Short battery life | ||
[78]/2012 | ZigBee (CC2530) | 150 day (3606 h) | 400 m | Soil moisture, ambient temperature, soil temperature, and ambient humidity/irrigation equipment | Agriculture/farm field | RSSI measurements are not considered the actual field | ||
[79]/2014 | ZigBee (CC2530) | 84.9 h | 65, 95, 200 m | Soil moisture, air humidity, and air temperature/irrigation system | Orchard, greenhouse, and farmland | Packet losses | ||
MAC protocol | [39]/2011 | Simulation | 10% | 1000 m | Temperature, and soil moisture/solenoid valve and motor | Irrigation | High power consumption in the case of the sensor nodes far from base station | |
[73]/2013 | IEEE 802.15.4 (CC2420) | 745.4 days | 50 m | Temperature, light intensity, and humidity | Greenhouse agriculture | Short communication distance | ||
[74]/2013 | ZigBee | 6.5 month | 10 m | Air temperature, soil pH, humidity light intensity, and soil moisture/irrigation system | Precision farming | Proposed protocol have additional complexity | ||
[75]/2011 | IEEE 802.15.4 (CC2420) | 222 and 1204 days | 84 m | Air temperature and soil moisture/drip water system | Precision horticulture | Gateway consumes more power because it is always awake | ||
[76]/2010 | IEEE 802.15.4 (CC2420) | Low power | 50 m | Leaf temperature and wetness and air temperature and humidity/relay | Greenhouse | The power consumption of the sensor node increases with the number of sensors | ||
Topology control | [77]/2016 | ZigBee | Low power | 100 × 100 m2 | Soil moisture, temperature and humidity/valve | Irrigation | More power is consumed at long communication distance |
Power Reduction Scheme | Reference Example | Wireless Protocol/Device | Power Savings/Battery Lifetime | Communication Distance/Field Size | Sensors/Actuators | Application | Limitations | |
---|---|---|---|---|---|---|---|---|
Radio optimization scheme | TPC | [82]/2010 | CC1110 module | ≈10% | 50 × 50 m2 | Agricultural environment sensors | Precision agriculture | Large power is consumed through the wakeup synchronization |
[83]/2012 | ZigBee CC2420 | 8.5% | 180, 66, and 60 m | Agricultural environments sensors | Agriculture | Simulation study and did not implement in the real environments | ||
Cognitive radio | [19]/2012 | ZigBee-Pro | 14 years | Long | Temperature, light intensity, humidity/humidifier, heater, and ventilation | Greenhouse | Limited to one topology (i.e., star topology) to save power | |
Modulation scheme | [88]/2016 | Simulation | 52% (MFSK), 55% (MSK) | 10, 30, and 100 m | Different applications including agricultural sensor network | Suggested to use in agriculture application | Power consumption increases with communication range |
Power Reduction Scheme | Reference Example | Wireless Protocol/Device | Power Savings/Battery Lifetime | Communication Distance/Field Size | Sensors/Actuators | Application | Limitations | |
---|---|---|---|---|---|---|---|---|
Data mitigation Scheme | Data gathering | [17]/2016 | ZigBee and GSM/GPRS | 22% | Short | Temperature, illumination, CO2 rate, and humidity/heating, ventilation, dehumidification, and humidification | Greenhouse | System complexity due to fuzzy logic algorithm is implemented in FPGA |
[92]/2014 | IEEE 802.15.4 (CC2420) | 58.8% | 50 and 100 m | Temperature and moisture | Precision agriculture | Limited computational capacity of the sensor nodes | ||
[93]/2011 | ZigBee and GPRS | Low power | Less than 52 m | Soil moisture and temperature, soil electrical conductivity, and environmental temperature and humidity/irrigation system | Smart farming | Path losses due to obstacles | ||
Data compression | [41]/2010 | CC1000 RF module | 359 days | 150 m | Soil moisture/drip water system | Auto-irrigation | When new node added to the network, encoding all nodes again is necessary | |
Data-driven | [95]/2017 | WiFi (ESP8266) | 81.53% (SPIN) and 36.84% (ESPIN) | 45 m (150 feet) | Air temperature, soil moisture, air humidity, and light intensity | Precision agriculture | The sensor node stays awake until received message from relay node, this process wastes power consumption | |
Data rate | [98]/2012 | IEEE 802.15.4 (CC2420) | 150% | N/A | Soil water potential, soil moisture and temperature | Sap flow, soil moisture, and soil water | Under low battery power (i.e., 2.3 V) of the sensor node, the proposed algorithm becomes invalid |
Power Reduction Scheme | Reference Example | Wireless Protocol/Device | Power Savings/Battery Lifetime | Communication Distance/Field Size | Sensors/Actuators | Application | Limitations | |
---|---|---|---|---|---|---|---|---|
Energy-Efficient routing scheme | Sink mobility | [99]/2016 | Simulation | High power | 672 m | Environmental Sensors for monitoring forest zones | Forest area | Packet losses leads to more energy consumption |
[100]/2016 | IEEE 802.15.4 | N/A | 40 m | Agricultural environments sensors | Precision agriculture | Using predefined paths have many disadvantages: -break of the WSN operation -the existence of an obstacle leads to obstruct WSN operation | ||
Multi-path routing | [67]/2015 | ZigBee | 1825 min | 150 m | Soil humidity, soil temperature, and air speed/mechanical and hydraulic system | Irrigation system | TEEN protocol consumes a lot of power at long communication distance | |
[68]/2016 | ZigBee (CC2530) | 30% | Less than 200 m | Shadow detection, temperature, and humidity/shadow tracking to save energy | Trees in the agriculture field | Solar cell system is generally irregular and extensively influenced by the change of weather | ||
[101]/2012 | Crossbow Technology (based on IEEE 802.15.4) and 3G | 4 weeks | 1000 m | Soil moisture, rain gauge, water content, soil suction, and soil temperature/water pump | Irrigation system | N/A | ||
Cluster architecture | [102]/2014 | ZigBee | 20 times traditional without cluster heads | 180 m | Air temperature, soil water potential , soil moisture, and humidity | Crop farming | Unreliable communication beyond 80 m | |
[103]/2013 | Simulation | N/A | 150 m | Area of interested sensors | Agriculture | ECHERP routing protocol did not take into consideration the time constraints and Quality of Service (QoS) | ||
[105]/2012 | ZigBee (CC2530) | Low power | 50 m | Temperature, light, CO2 concentration, and humidity | Greenhouse | Time synchronization accuracy | ||
Routing metric | [104]/2015 | IEEE 802.15.4 (CC2520) | 28.4 days | 100 m2 | Light intensity and air temperature | Precision agriculture | Short battery life |
Power Reduction Scheme | Reference Example | Wireless Protocol/Device | Power Savings/Battery Lifetime | Communication Distance/Field Size | Sensors/Actuators | Application | Limitations | |
---|---|---|---|---|---|---|---|---|
Combination schemes | TPC and MAC and routing protocols schemes | [106]/2011 | RF transceiver (CC1100) | 65% | N/A | Crop growth, carbon cycle, and hydrologic flow/irrigation system | Precision agriculture | Fault management detection and improving are not considered in the work |
Encoding and modulation schemes | [107]/2011 | IEEE 802.15.4 (CC2420) and RF transceiver (CC1100) | 53% | N/A | Data generated by the sensors as ASCII text | Agriculture | Low data rate | |
Cluster architecture with TDMA-based MAC protocol and data aggregation schemes | [108]/2016 | IEEE 802.15.4 (CC2420) | 3–5 times traditional | 100 m | Farm environment sensors | Agricultural environments | The number of clusters based on LEACH does not converge 100 × 100 m2, which reduces the lifetime of WSN network | |
Data acquisition, compression, and sampling schemes | [109]/2014 | C1110 RF module | 8 days | N/A | Leaf wetness, humidity, camera, and temperature | Vineyard | Communication range is limited due to omnidirectional antenna of the RF module |
Energy Harvesting Techniques | Reference Example | Wireless Protocol/Device | Harvesting Energy/Power/Power Saving | Sensors/Actuators | Applications | Limitations | |
---|---|---|---|---|---|---|---|
Solar Energy | Solar cell | [40]/2014 | ZigBee (XBee-Pro S2) and GPRS | 240 mW | Temperature, soil moisture/solenoid valve | Irrigation system | The solar cell can only charge three batteries type AA 2000 mAh Ni-MH |
[52]/2015 | RFD 900 (902–928 MHz) | 1.75–3 W | CH4 and CO2 Concentration/solenoid valve and motor | Greenhouse gases | Power consumption of drone and solar cell weight and size may restrict flight endurance | ||
[68]/2016 | ZigBee (CC2530) | 500 mW | Shadow detection, temperature, and humidity/shadow tracking to save energy | Trees in the agriculture field | Solar cell system is generally irregular and extensively influenced by the weather changes | ||
[72]/2015 | IEEE 802.15.4 and GPRS/3G | 2 W | Wind speed, wind direction, temperature, humidity, rain gauge, water and pH level | Crop fields | The battery supports the sensor node for seven days only | ||
[109]/2014 | C1110 RF module | 500 mW | Leaf wetness, humidity, camera, and temperature | Vineyard | Communication range due to omnidirectional antenna of the RF module | ||
[119]/2010 | nRF24L01 | N/A | Temperature, pressure, humidity, vibration, and flow/irrigation system | Greenhouse | The communication range (100 m) becomes unstable when there are other communications in the same area or when the people moving in the communication path | ||
[120]/2012 | IEEE 802.15.4 (CC2420) | 1 W | Temperature, leaf wetness, rain gauge, and humidity/condensation or infiltration system | Vineyard | Solar energy changes with time | ||
[133]/2015 | RFD 900 (902–928 MHz) | 59.14 Wh | CH4 and CO2 Concentration/gas chamber and olenoid valve | Greenhouse | The maximum area for the solar cell panels is restricted by the UAV wings size | ||
[134]/2012 | ZigBee (Mica2 motes)/GPRS | 20 W | Air humidity, air temperature, soil moisture, and soil temperature/irrigation system | Agricultural environments | Single antenna is not suitable for both point-to-point links and broadcast | ||
[135]/2015 | WiFi (IEEE 802.11a) | 180 mW (sunny area), 24 mw (shady area) | Temperature and humidity/shadow tracking to save energy | Agricultural environments | The intensity of solar energy changes with weather conditions and shadow (depending on height of crops, time, and orbit of the sun) | ||
[136]/2010 | IEEE 802.15.4 | 2 W | Temperature, light, humidity, and wind speed | Agricultural and forest ecology | Due to dense forests, the solar cell can not supply the sensor nodes more than two hours | ||
WPT | Inductive coupling | [121]/2016 | Zigbee | 2.4 W | Vibration, pressure soil moisture, and temperature | Agriculture fields | Strong coupled magnetic resonance are required |
Magnetic resonant coupling | [137]/2015 | N/A | 1315 J | Agricultural environments sensors/water processing system | Agriculture areas | Exhausting the UAV battery | |
Electromagnetic wave | [122]/2016 | Zigbee | N/A | Temperature, Strain, humidity, and displacement | Agriculture fields | Harvested energy is inadequate to replenish an ad hoc network with multi-hop | |
Air Flow Energy | Wind turbine | [126]/2014 | Zigbee | 70–100 mW | Ambient temperature, rain fall, and soil moisture/irrigation system | Vineyard | Wind power is inefficient when the wind intensity is not constant and irregular |
Vibration Energy | Piezoelectric convertors | [127]/2010 | ZigBee (CC2420 and CC2500) and CC1100 | 200 µW | Ambient vibration sensor | Agricultural machinery | Transmission errors due to Interferences from similar neighboring WSN and third-party system |
[138]/2016 | IEEE 802.15.4 (CC2500) | 14% | MEMS inertial | Agricultural machinery | N/A | ||
[139]/2011 | IEEE 802.15.4 | 724 μ[email protected] | Vibration sensor | Agricultural machinery | Duty-cycle of the end device must be modified according to the total power collected by the piezoelectric convertor | ||
Thermal Energy | Thermoelectrical elements | [140]/2012 | ZigBee (CC2530 embeded in HaLOEWEn platform | N/A | Temperature and soil moisture/irrigation control system | Precision irrigation | Harvested energy is comparatively low based on thermoelectric element |
Water Flow Energy | [128]/2008 | ZigBee | 16–19 mW | Soil moisture, air temperature, relative humidity, soil temperature, and solar radiation/irrigation control system | Precision Agriculture | The amount of energy harvested is not enough alone to supply the ZigBee router node | |
Microbial Fuel Cell Energy | [129]/2016 | LoRa | 296 μW | Capacitive phreatimeter/irrigation system | Precision agriculture | The amount of microbial fuel cell power is not enough to power the LoRa wireless protocol and microcontroller directly |
Reference Example | Sensors/Actuators | IoT End Device Wireless Protocol | IoT Platform/Device | IoT Application Layer |
---|---|---|---|---|
[8]/2016 | Soil temperature, Soil moisture, air temperature, air humidity and light intensity/alert messages | LoRa | LoRaWAN | User interface, remote monitoring, and email |
[42]/2015 | Soil moisture, temperature, pressure, and water electrical conductivity and temperature | ZigBee | GSM/GPRS | Web application (HTML5, PHP, and Javascript) |
[95]/2017 | Air temperature, soil moisture, air humidity, and light intensity | WiFi (ESP8266) | WiFi | Web services |
[143]/2016 | Camera to monitor the rice leaf disease | Sensor networks | Wisekar and cloud Computing | Web application and user-defined |
[144]/2017 | Temperature, humidity, soil moisture, and wind direction and speed | nRF wireless protocol | Intel Edison and cloud computing | User interface and ustom server |
[145]/2015 | Temperature and soil moisture/electrovalve | eZ430-RF2500 (IEEE802.15.4/ZigBee-based CC2500) | WiFi 802.11 or GPRS through http and Cloud computing | Web applications |
[147]/2016 | Temperature and soil moisture/irrigation system | Libelium WaspMotes, Remote, Netatmo, etc. | SmartFarmNet and Cloud computing | Server application, user interface, and do-it-yourself visualization |
[150]/2015 | Temperature, humidity, light, pressure, camera, CO2, and wind direction and speed/air flow, sprinkler, and sunlight secreen | ZigBee | Ethernet shield and GPRS | User applications and server applications |
[151]/2015 | Ambient temperature, soil moisture, pH value, and humidity/valves and pumps | ZigBee (XBee) | Ethernet/WiFi/GSM | User applications |
[152]/2015 | Air temperature, wind speed/direction, air humidity, air pressure, net radiation, sunshine duration, and precipitation/irrigation system | IEEE 802.11 or Bluetooth | GPRS | User applications (desktop client, web client, and mobile client) and web processing service |
[153]/2015 | Pesticide concentration sensor | Hypogynous computer | Epigynous computer | HTML files, Webpage, and Smartphone |
[154]/2016 | Air temperature, relative humidity, solar radiation, precipitation, water, and nutrients/irrigation system | IEEE 802.15.4/ZigBee | FIWARE platform and cloud computing | Web services, data analysis, and database |
[155]/2016 | Temperature, Luminosity, PH, moisture, EC/lamps, electro-valves, and pumps | IEEE 802.15.4/ZigBee | Cloud computing | Web services, data analysis, database, and HMI interfaces |
[156]/2016 | Temperature, light intensity CO2 concentration, and humidity | ZigBee (CC2530) | GPRS (SIM300 module) | User application |
[157]/2016 | Soil moisture/water pumps, fan, and mist | ZigBee (XBee) | WiFi and GSM/GPRS | Graphical user interface |
[158]/2016 | Air temperature, wind speed and direction, leaf wetness, soil moisture, air humidity, rain volume/fertilizers or spraying chemicals and watering system | nRF24L01 | IEEE 802.11b/g/n (WiFi) and Cloud computing | Data visualization, data storage, data analysis, and application program interface |
[159]/2016 | Web camera, ultrasonic ranging, infrared heat sensor, and ultrasonic sound repeller | Wired connection to PC | PTC’s ThingWorx’s | User application, web services, and http and several Internet protocols |
[160]/2016 | Temperature, humidity carbon dioxide, soil moisture light intensity, and pH value | Bluetooth and mobile device | 4G and cloud computing | Intelligent management (neural network) |
[161]/2016 | Ultrasonic, air humidity, air temperature, LDR sensor, and soil moisture/pumps, solenoid valve, fogger system, lights, and peltier | RFID tags | GSM sim900a and WiFi | SMS, e-mail, google spreadsheet, e-commerce website |
[162]/2016 | Air temperature/fan, curtain, and shutter | ZigBee | GPRS | Web applications |
[163]/2016 | Temperature, soil moisture, light, and humidity/water pump | nRF24L01 | GPRS/GSM | Microsoft active server pages and MYSQL |
[164]/2016 | Relative humidity, barometric pressure, temperature, light intensity, camera, and proximity sensing/buzzer, SMS alerts | IEEE 802.15.4/ZigBee | Wireless connection | Web application, Android application, and cloud storage |
[165]/2016 | Temperature | Off-the-shelf mesh WSN | SmartMesh IP Manager | Server applications and database |
[166]/2016 | Air temperature, illumination intensity, and relative humidity | Mica2 (CC1000) | 2G/3G and cloud computing | User applications (display terminal, PC, PDA, remote monitoring device) and GUI |
[167]/2017 | Temperature, illumination, camera, and humidity/vaporization system | ZigBee | WiFi | Data mining, data inquery, and data storage |
[168]/2017 | Liquid level sensor/water pump | Wired connection | Ethernet shield | User-defined |
[169]/2017 | Temperature and light | IEEE 802.15.4 | IEEE 802.11g, 802.11a, and RFS 6000 | User applications and server applications |
[170]/2017 | Temperature, pH value, and Oxygen | ZigBee | GSM, WiFi, and cloud computing | Web services, desktop application, and mobile applications |
[171]/2017 | Relative humidity | LoRa/LoRaWAN | GPRS/3G/4G and cloud computing | Liquid crystal display (LCD) |
[172]/2017 | Relative humidity, temperature, air pressure, and luminosity | WiFi | IBM Watson IoT, IBM Bluemix cloud service, and cloud computing | data storage, and data graphs and visualized |
[173]/2017 | Soil moisture, salinity, and temperature | WiFi/ZigBee/Bluetooth | WiFi, cloud | HTTP protocol and smartphone applications |
[174]/2017 | Soil moisture, soil pH, and camera | WiFi and drone | FarmBeats (based Ethernet or WiFi) and cloud computing | Web interface (data access, cross-farm analytics, and long term applications) |
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Jawad, H.M.; Nordin, R.; Gharghan, S.K.; Jawad, A.M.; Ismail, M. Energy-Efficient Wireless Sensor Networks for Precision Agriculture: A Review. Sensors 2017, 17, 1781. https://doi.org/10.3390/s17081781
Jawad HM, Nordin R, Gharghan SK, Jawad AM, Ismail M. Energy-Efficient Wireless Sensor Networks for Precision Agriculture: A Review. Sensors. 2017; 17(8):1781. https://doi.org/10.3390/s17081781
Chicago/Turabian StyleJawad, Haider Mahmood, Rosdiadee Nordin, Sadik Kamel Gharghan, Aqeel Mahmood Jawad, and Mahamod Ismail. 2017. "Energy-Efficient Wireless Sensor Networks for Precision Agriculture: A Review" Sensors 17, no. 8: 1781. https://doi.org/10.3390/s17081781
APA StyleJawad, H. M., Nordin, R., Gharghan, S. K., Jawad, A. M., & Ismail, M. (2017). Energy-Efficient Wireless Sensor Networks for Precision Agriculture: A Review. Sensors, 17(8), 1781. https://doi.org/10.3390/s17081781