| Literature DB >> 35590963 |
Amsale Zelalem Bayih1,2, Javier Morales1, Yaregal Assabie2, Rolf A de By1.
Abstract
Agriculture is the economy's backbone for most developing countries. Most of these countries suffer from insufficient agricultural production. The availability of real-time, reliable and farm-specific information may significantly contribute to more sufficient and sustained production. Typically, such information is usually fragmented and often does fit one-on-one with the farm or farm plot. Automated, precise and affordable data collection and dissemination tools are vital to bring such information to these levels. The tools must address details of spatial and temporal variability. The Internet of Things (IoT) and wireless sensor networks (WSNs) are useful technology in this respect. This paper investigates the usability of IoT and WSN for smallholder agriculture applications. An in-depth qualitative and quantitative analysis of relevant work over the past decade was conducted. We explore the type and purpose of agricultural parameters, study and describe available resources, needed skills and technological requirements that allow sustained deployment of IoT and WSN technology. Our findings reveal significant gaps in utilization of the technology in the context of smallholder farm practices caused by social, economic, infrastructural and technological barriers. We also identify a significant future opportunity to design and implement affordable and reliable data acquisition tools and frameworks, with a possible integration of citizen science.Entities:
Keywords: Internet of Things; affordable digital data infrastructure; smart agriculture; technology assist in smallholder data acquisition; wireless sensor network
Mesh:
Year: 2022 PMID: 35590963 PMCID: PMC9101116 DOI: 10.3390/s22093273
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Schematic workflow representation of the proposed work.
Systematic search parameters to identify relevant papers for review. * is a wildcard of zero or more search characters and can take ing, er, ers.
| Search Parameter | Value |
|---|---|
| Search query | Internet of Things (IoT) AND (Wireless Sensor Network (WSN) OR sensor) |
| AND small AND (agriculture OR farm *) AND “smart farming” | |
| Inclusion criteria | Open access |
| Research article, conference proceeding, book chapter, software or data publication | |
| Small farms or smallholder agriculture | |
| Wireless communication | |
| 2010–2021 | |
| Exclusion criteria | Targets mechanized, large-scale farms, developed countries |
| Non-English manuscripts | |
| Less technical details or mostly higher-level descriptions | |
| Theoretical frameworks | |
| Non-agricultural applications | |
| Citation databases | ACM |
| Scopus | |
| ScienceDirect |
Figure 2Search procedures for review papers and obtained results based on PRISMA framework.
Figure 3A general Internet of Things (IoT)-wireless Sensor Network (WSN) architecture for agriculture applications (PA:Precision Agriculture, LM: Livestock Management, WM: Weather Monitoring, PAIM: Pest and Animal Infestation Monitoring).
Wireless communication technology comparison with example.
| Wireless Technology | WiFi | WiMAX | ZigBee | Cellular | Bluetooth | LoRa |
|---|---|---|---|---|---|---|
| Wireless network | WLAN | WMAN | WPAN | WWAN | PAN | LPWAN |
| Standard | 802.11 * | 802.16 * | 802.15.4 * | 2/3/4 G | 802.15.1 * | LoRaWAN |
| Operating Frequency (Hz ) | 5–60 G | 2–6 G | 868/919 M | 2.4 G, 865 M | 2.4 G | 433/868/900 M |
| Data Rate (bps ) | 1 M–6.75 G | 1 M–1 G | 40–250 K | 50 K–1 G | 1–24 M | 0.3–50 K |
| Transmission Range | 20–100 m | <50 km | 10–20 m | Entire cellular | 8–10 m | <50 km |
| Power Consumption | High | Medium | Low | Medium | Medium | Very low |
| Cost | High | High | Low | Medium | Low | High |
| Operating Life | Years | Hours | Up to 2 years | Hours | Hours | 10–20 Years |
| Noise Resistance | Low | Medium | Medium | Medium | Low | High |
| References | [ | [ | [ | [ | [ | [ |
*: IEEE
Figure 4Thematic distribution of reviewed papers () depicting important uses of IoT-WSN in smallholder agriculture (PA:Precision Agriculture, LM: Livestock Management, WM: Weather Monitoring, PAIM: Pest and Animal Infestation Monitoring); classes may be mutually overlapping.
Figure 5Sensor type distribution of reviewed papers () showing important types in smallholder agriculture. Papers typically report multiple sensor types in use.
Figure 6Wireless communication technology preference trends of the reviewed works for smallholder agriculture applications. The Y–axis denotes number of works using a specific communication technology. Some papers have used multiple of this technology, simultaneously.
Figure 7Trends of common backhaul communication standards use in smallholder agriculture applications.
Figure 8Elementary components of typical sensor node in a WSN (ADC: Analog-Digital-Converter; RF: Radio Frequency; Tx/Rx: Transmitter/Receiver).
Figure 9A general dataflow schema in data science computations.
Assessment report of reviewed works based on defined data science actions. Note that categorizations are not exclusive and some works utilized multiple classes of computing action. ISO/IEC 9126 describes software characteristics for quality metrics.
| Data Science Action | Techniques/Approaches |
|---|---|
| Data curation | Data preservation [ |
| Data transfer to JSON and XML formats [ | |
| Data fuzzification and de-fuzzification [ | |
| Redundant data removal [ | |
| Data analysis and processing | If then [ |
| Statistical [ | |
| ML and AI [ | |
| Data presentation and visualization | Web-based [ |
| App-based [ | |
| SMS-based [ | |
| Computing environment | Cloud [ |
| Edge and/or Fog [ | |
| Private server [ | |
| Quality assurance measures | Non-elaborated calibration [ |
| Data validation based on descriptive statistics [ | |
| Reliability and data accuracy assessment based on ISO/IEC 9126 [ | |
| Sensor calibration based on standard laboratory results [ | |
| Sensor calibration using conventional weather station readings [ | |
| Sensor data validation against standard laboratory results [ | |
| Sensor data validation using linear correlation [ | |
| Transaction validation based on block chain [ |
Figure 10IoT and WSN domains and deployment environment in smallholder agriculture researches (PA:Precision Agriculture, LM: Livestock Management, WM: Weather Monitoring, PAIM: Pest and Animal Infestation Monitoring). The Y-axis labels denote works under each deployment environment and application domain.
Figure 11Spatial distribution to continent of IoT and WSN applications in smallholder agriculture (PA:Precision Agriculture, LM: Livestock Management, WM: Weather Monitoring, PAIM: Pest and Animal Infestation Monitoring). The Y-axis denotes percentage distribution of works in the three continents and over each application domain.
Figure 12Temporal distribution of IoT and WSN applications in smallholder agriculture. The Y-axis values indicate percentage distribution of works targeting each continent in the specified time period.
Major micro-controllers used in smallholder agriculture application projects (PA:Precision Agriculture, LM: Livestock Management, WM: Weather Monitoring, PAIM: Pest and Animal Infestation Monitoring).
| Micro-Controllers | Application Domain | |||
|---|---|---|---|---|
| PA | LM | WM | PAIM | |
| Arduino | [ | [ | [ | |
| Atmega | [ | [ | [ | |
| NodeMCU | [ | [ | [ | |
| RPi | [ | [ | ||
| Others | [ | [ | ||
WSN and backend communication standards adopted in smallholder agriculture applications (PA:Precision Agriculture, LM: Livestock Management, WM: Weather Monitoring, PAIM: Pest and Animal Infestation Monitoring).
| Network | Communication Standard | Application Domain | |||
|---|---|---|---|---|---|
| PA | LM | PAIM | WM | ||
| WSN | Bluetooth | [ | [ | ||
| GPRS/GSM | [ | [ | |||
| LoRa/LoRaWAN | [ | [ | [ | ||
| WiFi | [ | [ | [ | ||
| Zigbee | [ | [ | [ | [ | |
| Wired | [ | [ | [ | ||
| Backhaul | GPRS/GSM | [ | [ | [ | [ |
| LoRa | [ | ||||
| WiFi | [ | [ | [ | ||
| Ethernet/standalone | [ | [ | [ | [ | |