| Literature DB >> 31480709 |
Uferah Shafi1, Rafia Mumtaz2, José García-Nieto3, Syed Ali Hassan1, Syed Ali Raza Zaidi4, Naveed Iqbal1.
Abstract
Internet of Things (IoT)-based automation of agricultural events can change the agriculture sector from being static and manual to dynamic and smart, leading to enhancedEntities:
Keywords: Internet of Things; precision agriculture; smart agriculture; vegetation index
Mesh:
Year: 2019 PMID: 31480709 PMCID: PMC6749385 DOI: 10.3390/s19173796
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Wireless nodes used in the agriculture domain.
| Sr # | Sensor Name | Parameters Captured |
|---|---|---|
| 1 | ECH2O soil moisture sensor | Soil Temperature, Soil Moisture, Conductivity |
| 2 | Hydra probe II soil sensor | Soil Temperature, Salinity level, Soil Moisture, Conductivity |
| 3 | MP406 Soil moisture sensor | Soil Temperature, Soil Moisture |
| 4 | EC sensor (EC250) | Soil Temperature, Salinity level, Soil Moisture, Conductivity |
| 5 | Pogo portable soil sensor | Soil Temperature, Soil Moisture |
| 6 | 107-L temperature Sensor (BetaTherm 100K6A1B | Plant Temperature |
| Thermistor) | ||
| 7 | 237 leaf wetness sensor | Plant Moisture, Plant Wetness, Plant Temperature |
| 8 | SenseH2™ hydrogen sensor | Hydrogen, Plant Wetness, CO |
| 9 | Field scout CM1000TM | Photosynthesis |
| 10 | YSI 6025 chlorophyll sensor | Photosynthesis |
| 11 | LW100, leaf wetness sensor | Plant Moisture, Plant Wetness, Plant Temperature |
| 12 | TT4 multi-sensor thermocouple | Plant Moisture, Plant Temperature |
| 13 | TPS-2 portable photosynthesis | Photosynthesis, Plant Moisture, CO |
| 14 | LT-2 M (leaf temperature sensor) | Plant Temperature |
| 15 | PTM-48A photosynthesis monitor | Photosynthesis, Plant Moisture, Plant Wetness, CO |
| 16 | Cl-340 hand-held photosynthesis | Photosynthesis, Plant Moisture, Plant Wetness, CO |
| 17 | CM-100 Compact Weather Sensor | Air Temperature, Air Humidity, Wind Speed, Air Pressure |
| 18 | HMP45C (Vaisala’s HUMICAP® H-chip) | Air Temperature, Air Humidity, Air Pressure |
| 19 | Met Station One (MSO) | Air Humidity, Air Temperature, Wind Speed, Air Pressure |
| 20 | XFAM-115KPASR | Air Temperature, Air Pressure, Air Humidity |
| 21 | SHT71, SHT75 (Humidity and temperature sensor) | Humidity and Temperature Sensor |
| 22 | 107-L Temperature Sensor (BetaTherm 100K6A1B thermistor) | Air Temperature |
| 23 | Cl-340 hand-held photosynthesis | Air Temperature, Air Humidity |
Common wireless nodes used in the agriculture domain.
| Sr # | WN1 | MC2 | Expansion Connector | Available Sensors | Data Rate |
|---|---|---|---|---|---|
| 1 | MICA2DOT | ATmega128L | 19 Pins | GPS, Light, Humidity, Barometric Pressure, Temperature, Accelerometer, Acoustic, RH | 38.4 K Baud |
| 2 | Imote2 | Marvell/XScalePXA271 | 40 Pins and 20 Pins | Light, Temperature, Humidity, Accelerometer | 250 Kbps |
| 3 | IRIS | ATmega128L | 51 Pins | Light, Barometric Pressure, RH, Acoustic, Acceleration/ Seismic, Magnetic and Video | 250 Kbps |
| 4 | MICAz | ATmega128L | 51 Pins | Light, Humidity, Temperature, Barometric Pressure, GPS, RH, Accelerometer, Acoustic, Video Sensor, Sounder, Magnetometer, Microphone | 250 Kbps |
| 5 | TelosB | TIMSP430 | 6 Pins and 10 Pins | Light, Temperature, Humidity | 250 Kbps |
| 6 | Cricket | ATmega128L | 51 Pins | Accelerometer, Light, Temperature, Humidity, GPS, RH, Acoustic, Barometric Pressure, Ultrasonic, Video Sensor, Microphone, Magnetometer, Sounder | 38.4 K Baud |
| 7 | MICA2 | ATmega128L | 51 Pin | Temperature, Light, Humidity, Accelerometer, GPS, Barometric Pressure, RH, Acoustic, Sounder, Video, Magnetometer | 38.4 K Baud |
WN1: wireless node, MC2: Micro-Controller.
Wireless communication protocols used in Precision Agriculture (PA).
| Communication Protocols | Data Rate | Topology | Standard | Physical Range | Power |
|---|---|---|---|---|---|
| 6LoWPAN | 0.3–50 Kb/s | Star, Mesh | IEEE 802.15.4 | 2–5 km urban,15 km suburban | Low |
| ZigBee | 250 Kb/s | Star, Mesh Cluster | IEEE 802.15.4 | 10–100 m | Low |
| Bluetooth | 1–2 Mb/s | Star, Bus | IEEE 802.15.1 | 30 m | Low |
| RFID | 50 tags/s | P2P | RFID | 10–20 cm | Ultra low |
| LoRa WaAN | 27–50 Kb/s | P2P, Star | IEEE 802.11ah | 5–10 km | Very low |
| Wi-Fi | 1–54 Mb/s | Star | IEEE 802.11 | 50 m | Medium |
Key differences between spectral image platforms.
| Applicability Aspect | Airborne | UAV | Satellite |
|---|---|---|---|
| Observation Area | Regional | Local | Worldwide |
| Ground Coverage | 1 km (Medium) | 100 m (Small) | 10 km (Large) |
| Field of View | Wider | Wide | Narrow |
| GSD (Spatial Resolution) | 5–25 cm | 10–5 cm | 0.30–300 m |
| Deployability | Complex | Easy | Difficult |
| Spatial Accuracy | 1–25 cm | 5–10 cm | 1–3 m |
| Repeat Time | Hour(s) | Minute(s) | Day(s) |
| Operational Risk | High | Low | Moderate |
Satellite platforms for RS.
| Name | Launch | Sensor | Country | Swath Width (km) | GSD 1 Range (m) | Revisit Time (day) |
|---|---|---|---|---|---|---|
| RapidEye | 2008 | 5 MS2 | Germany | 77 | 6.5 × 6.5 | 1–5.5 |
| QuickBird-2 | 2001 | PAN3 | USA | 16.8–18 | 0.7 × 0.7 | 1–3.5 |
| 4 MS2 | 2.6 × 2.6 | |||||
| Pleiades 1 | 2011 | PAN3 | France | 20 | 0.5 × 0.5 | 1 |
| 2012 | 4 MS2 | 2 × 2 | ||||
| Sentinel-1 | 2014 | C-band | EU | 80 | 5 × 5 | 12 |
| 2016 | SAR6 | 250 | 5 × 20 | 6 (dual) | ||
| 400 | 25 × 40 | |||||
| WorldView-3 | 2014 | PAN3, 8 MS2, 8 MS2 | USA | 13.1 | 0.3 × 0.3 | 1–4.5 |
| (SWIR4), 12 MS2 | 1.2 × 1.2 | |||||
| 3.7 × 3.7 | ||||||
| Landsat-8 | 2013 | PAN3, 11 MS2 | USA | 185 | 15 × 15 | 16 |
| 30 × 30 | ||||||
| Sentinel-2 | 2015 | 13 MS2 | EU | 290 | 10 × 10 | 10 |
| 20 × 20 | ||||||
| 2016 | 60 × 60 | 5 (dual) | ||||
| EnMap | 2017 | 232 HSI5 | Germany | 30 | 30 × 30 | 4 |
| ICESat | 2003 | 2 HSI5 | USA | N/A | 70 | 8 |
| (footprint) | ||||||
| TanDEM-X | 2007 | X-band | Germany | 5 × 10 | 1 × 1 | 11 |
| SAR6 | 1500 × 30 | 3 × 3 | ||||
| 1500 × 100 | 16 × 16 | |||||
| SkySat | 2013 | PAN3 | USA | 2 × 1 | 1.1 × 1.1 | 0.5 (2015) |
| Video | ||||||
| 2014 | PAN3 | 8 | 0.9 × 0.9 | 0.12 (2017) | ||
| 2015 | 4 MS2 | 2 × 2 | ||||
| ICESat-2 | 2018 | 1 HSI5 | USA | N/A | 10 | N/A |
| (9-beam) | (footprint) | |||||
| Sentinel-3 | 2015 | 21 MS2 | EU | 1270 | 300 × 300 | 0.25 |
| 2017 | 11 MS2 | 1420 | 500 × 500 | |||
| (IR) | 750 (nadir) | 1000 × 1000 | ||||
| RADARSAT-2 | 2007 | C-band | Canada | 20 | 3 × 3 | 24 (orbit repetition) |
| SAR6 | 500 | 100 × 100 | ||||
| SPOT 6 | 2012 | PAN3 | France | 60 | 1.5 × 1.5 | 1–5 |
| SPOT 7 | 2014 | 4 MS2 | 6 × 6 | |||
| TerraSAR-X | 2007 | X-band | Germany | 5 × 10 | 1 × 1 | 11 |
| SAR6 | 1500 × 100 | 16 × 16 | ||||
| DMC-3 | 2015 | PAN3 | U.K. | 23 | 1 × 1 | 1 |
| 4 MS2 | 4 × 4 |
GSD1: Ground Sampling Rate, MS2: Multi-Spectral, PAN3: Panchromatic, SWIR4: Short Wave Infrared, HSI5: Hyperspectral Imagery, SAR6: Synthetic Aperture Radar
Airborne/aircraft platforms for RS.
| Aircraft Type | Typical Models | RS Sensors | Max Flying Height (ft) |
|---|---|---|---|
| Fixed wing (jet) | LearJet 35A | InSAR, | 45,000 |
| Camera, | |||
| GeoSAR | |||
| Fixed wing (propeller engine) | Cessna 402 | Camera | 26,900 |
| Commander 690 | LiDAR | 19,400 | |
| Cessna 208 | Camera | ||
| LiDAR | 25,000 | ||
| Cessna 206 | Camera | ||
| DHC-6 Twin | Camera | 15,700 | |
| Otter 300 | LIDAR | 25,000 | |
| Diamond | Camera | ||
| DA42 | LiDAR | 18,000 | |
| Pilatus PC-6 | Camera | ||
| Porter | Camera | 25,000 | |
| Piper Navajo | |||
| LiDAR | 26,000 | ||
| Partenavia | Camera | ||
| P.68 | LiDAR | 19,200 | |
| Vulcanair P68 | Camera | ||
| Observer | Camera | 18,000 | |
| Gyroplan | AutoGyro | LiDAR | 10,000 |
| Cavalon | Camera | ||
| Helicopter | Eurocopter | LiDAR | 15,000 |
| AS350 | Camera | ||
| Robinson R44 | LiDAR | 14,000 | |
| Camera | |||
| Bell 206 | LiDAR | 13,000 | |
| Camera | |||
| Schweizer | LiDAR5 | 13,000 | |
| Camera |
UAV platforms for RS.
| Weight (kg) | Aircraft Power/Type | Manufacturer/Model | Flying Time (min) | Flying Speed (m/s) | RS Sensors |
|---|---|---|---|---|---|
| 0.7 | Fixed-wing/electric | senseFly/eBee RTK | 40 | 11–25 | Camera |
| 6.1 | Fixed-wing/electric | AeroVironment/Puma AE | 210 | 23 | Camera |
| 6.0 | Quadro copter/electric | Microdrones/MD4-1000 | 90 | 12 | Camera/LiDAR |
| 4.6–6.6 | Hexacopter/electric | Aibotix/Aibot X6 | 30 | 14 | Camera |
| 5 | Fixed-wing/electric | Trigger Composites/Pteryx | 120 | 12.5–15 | Camera |
| 1.3 | Quadrocopter/electric | DJI/Phantom 2 | 25 | 15 | Camera |
| 2.5 | Fixed-wing/electric | Trimble/UX5 | 50 | 22 | Camera |
| 2.7 | Fixed-wing/electric | Topcon/SIRIUS PRO | 50 | 18 | Camera |
| 5.1–5.8 | Fixed-wing/electric | Hawkeye UAV/AeroHawk | 90 | 16.5–19.5 | Camera |
| 6.9–9.5 | Hexacopter/electric | TRGS/Li-AIR | 15 | 8 | LiDAR |
| 9.5 | Octocopter/electric | Altus UAS/Delta X8 | 10–14 | 12 | Camera/LiDAR |
| 25 | Octocopter/electric | Riegl/Ricopter | 30 | 22 | LiDAR/camera |
| 77 | Helicopter/gas | Aeroscout/Scout B1-100 | 90 | LiDAR | |
| 90 | Helicopter/gas | IGI/geocopter | 120–180 | Camera/LiDAR | |
| 9.2 | Octocopter/electric | Altigator/OnyxStar FOX-C8 HD LiDAR | 20 | LiDAR | |
| 38 | Fixed-wing/gas | American Aerospace/RS-16 | 720–960 | 33 | Camera |
Comparison among existing PA applications.
| PA | Edge | Data | Soil | Soil | Air | Air | Vegetation | Web | Mobile | Light | Wind |
|---|---|---|---|---|---|---|---|---|---|---|---|
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| [ | N | Y | N | N | N | N | Y | N | N | N | N |
| Proposed system | Y | Y | Y | Y | Y | Y | Y | Y | Y | N | N |
Figure 1System architecture.
Figure 2User interface of the web portal.
Figure 3User interface of the mobile application.
Figure 4System deployed across the wheat fields.
Figure 5Deviation of observed temperature from the ideal temperature profile.
Figure 6(A) Correlation b/wair temperature and air humidity. (B) Correlation b/w air temperature and soil temperature.
Figure 7Wheat crop. (A) Optical image; (B) spectral image; (C) NDVI mapping.
Figure 8Maize crop. (A) Optical image; (B) spectral image; (C) NDVI mapping.