| Literature DB >> 35062459 |
Abozar Nasirahmadi1, Oliver Hensel1.
Abstract
Digitalization has impacted agricultural and food production systems, and makes application of technologies and advanced data processing techniques in agricultural field possible. Digital farming aims to use available information from agricultural assets to solve several existing challenges for addressing food security, climate protection, and resource management. However, the agricultural sector is complex, dynamic, and requires sophisticated management systems. The digital approaches are expected to provide more optimization and further decision-making supports. Digital twin in agriculture is a virtual representation of a farm with great potential for enhancing productivity and efficiency while declining energy usage and losses. This review describes the state-of-the-art of digital twin concepts along with different digital technologies and techniques in agricultural contexts. It presents a general framework of digital twins in soil, irrigation, robotics, farm machineries, and food post-harvest processing in agricultural field. Data recording, modeling including artificial intelligence, big data, simulation, analysis, prediction, and communication aspects (e.g., Internet of Things, wireless technologies) of digital twin in agriculture are discussed. Digital twin systems can support farmers as a next generation of digitalization paradigm by continuous and real-time monitoring of physical world (farm) and updating the state of virtual world.Entities:
Keywords: digital farming; digital twin; digitalization; farm management; smart farming
Mesh:
Year: 2022 PMID: 35062459 PMCID: PMC8780442 DOI: 10.3390/s22020498
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Schematic of digital twin concept for agriculture.
Previous review studies on digital twin in agriculture.
| Concept | Sources |
|---|---|
| Agriculture-farm management | [ |
| Smart farming—Hydroponics | [ |
| Food processing | [ |
| Food losses—supply chain of fresh products | [ |
| Agri-food—societal and ethical aspects | [ |
| Food processing—fresh horticulture supply chain | [ |
| Agri-food supply chain | [ |
| Smart farming—definition and concept | [ |
| Agriculture—general application and adoption | [ |
Figure 2An architecture of the digital twin concept for crop production technology.
Summary of soil and irrigation digital twin concepts.
| Concept | Key Components and Benefits | Source |
|---|---|---|
| Soil–water | Supporting precision irrigation in agriculture, better irrigation planning and water distribution, reduce crop yield losses | [ |
| Soil–water | IoT-based water management platform, monitoring water pattern in soil | [ |
| Water | Analyze and optimization of aquaponic systems, minimize water waste | [ |
| Irrigation | Urban-integrated hydroponic system, integration of forecasting models for better decision-making assistance | [ |
| Irrigation | System management and irrigation decision-making integration, water use, global energy and pumping facilities efficiency evaluation, understanding of irrigation system process | [ |
| Water | Development of decision support system, enhancement of cyber-physical implementation in aquaponics | [ |
Summary of the digital twin in crop production.
| Concept | Key Components and Benefits | Source |
|---|---|---|
| Vertical farming | Environmental conditions assessment, identification of forecasting and decision support models, monitoring and optimization of agri-food lifecycle | [ |
| Plant/tree | Plant condition monitoring including structure, health, stress, and quality of fruit | [ |
| Robot | Analysis and performance evaluation, robot selection, and navigation | [ |
| Robot | Simulation of field environment, autonomous robot navigation | [ |
| Agricultural machinery | Development and advantages of business models for potato harvesting | [ |
| Agricultural landscape | Resource distribution management over different stakeholders in agriculture | [ |
| Crop | Forecasting yield and duration of plant development | [ |
| Agricultural machinery | Development of three-dimensional geometric models, drawings of devices, mechanisms, and the attributive data | [ |
| Plant | Detection of plant diseases and nutrient efficiency | [ |
| Crop/hydroponic farm | Identification of crop growth parameters such as lighting, external temperature, and ventilation systems | [ |
| Crop | Optimize productivity, climate control strategies, and crop treatment management in controlled environment agriculture | [ |
| Robot | Co-simulation of robot environment, prediction of robot movement, and safety monitoring | [ |
Summary of digital twin for post-harvest process.
| Concept | Key Components and Benefits | Source |
|---|---|---|
| Food supply chain | Thermophysical behavior of fruit during supply chain, storage at different airflow rate, understanding, recording, and predicting losses of temperature-based fruit quality | [ |
| Beverage | Predicting possible anomalies and preventing safety issues for employees | [ |
| Food | Machine learning-based models for real-time response and quality predictions, maintenance, and data collection | [ |
| Food supply chain | Development of practical implementation strategies, enhancing resilience food retail, and capacity management | [ |
| Food | Challenges, methodologies, and opportunities for implementation of digital twin in food processing, importance of realistic and accurate models in food processing | [ |
| Food | Modeling of equipment, humans, and space for fast-food producing, management of production chain, and performance evaluation | [ |
| Post-harvest | Monitoring of retail stores and detection of fruit quality lost | [ |