| Literature DB >> 35789661 |
Khalil A Ammar1, Ahmed M S Kheir1,2, Ioannis Manikas3.
Abstract
Background: Big data and data analysis methods and models are important tools in food security (FS) studies for gap analysis and preparation of appropriate analytical frameworks. These innovations necessitate the development of novel methods for collecting, storing, processing, and extracting data. Methodology: The primary goal of this study was to conduct a critical review of agricultural big data and methods and models used for FS studies published in peer-reviewed journals since 2010. Approximately 130 articles were selected for full content review after the pre-screening process.Entities:
Keywords: Analysis; Challenges; Data extraction; Data infrastructure; Gaps; Multi-model approach; United Arab Emirates; Visualization
Year: 2022 PMID: 35789661 PMCID: PMC9250308 DOI: 10.7717/peerj.13674
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 3.061
Figure 1Methodology and protocol of the systematic literature review.
Enabling factors of IoT-driven sustainable food security (modified after (Kaur, 2021)).
| Parameter | Reference | Role in sustainable food security |
|---|---|---|
| Yield prediction based big data | Assist in the procurement process and the distribution of food resources across different regions. | |
| Delphi survey | It can aid in the procurement and distribution of goods in a decentralized and distributed manner. | |
| Traceability based Blockchain | Avoid food losses, shrinkages, and fraud in FSS | |
| Mobile application for crop details | Crop yield, diseases prediction, horticulture research and policy designing | |
| Robotics technology | Food production and quality without farmers | |
| Sensors and image processing | Ensure better quality control, and higher yield | |
| Sharing information-based channels | Better supply chain coordination is aided by information sharing. It also helps supply chain partners build trust. | |
| Refrigeration IoT interface |
| The temperature can be adjusted depending on the type and quantity of stock in the refrigerator. |
| Food AI package before date |
| Decreasing food waste and ensuring food safety |
| Policy improvement using technology | FSS monitoring and quality control | |
| e-farm marketing |
| Avoid losses, maintain food and exclude the intermediate retailers |
| Consumption pattern simulations | Assist policy-makers in designing a FS system that is appropriate for population consumption behavior. Modeling the pattern of power consumption using a single sensor | |
| Encoded digital data |
| Tracking the goods movement throughout the supply chain. |
| Cloud computing optimization (Google Collaboratory, Azur, IBM, AWS) | Saving time, reducing food losses, and keeping high quality |
Examples of public agricultural big data with related references.
| Type | Source | References |
|---|---|---|
| Meteorology and RS data | Cloud computing-based earth |
|
| Cloud computing-based Google earth engine |
| |
| Cloud computing-based NASA, NOAA | ||
| Cloud computing-based labor statistics |
| |
| Survey | National Agricultural Statistics Services (NASS) |
|
| Financial | National Water Economy Database (NWED) |
|
| Scientific data | Scientific Research Centers in Agriculture |
|
| Geospatial, water and soil | Natural Resources Conservation Service (NRCS) |
|
| Sales and prices | Agricultural Marketing Services |
|
| Marketing | World Agricultural Outlook Board |
|
| Generic | Global Open Data for Agriculture and Nutrition |
|
Notes.
Modified after U.S. Department of Agriculture (USDA).
Figure 2Processing of big data paradigm.
Figure 3Network visualization of the model number and types used in food security from literature over last 10 years.