Food Supply Chain Transformation through Technology and Future Research Directions—A Systematic Review
Abstract
:1. Introduction
2. Literature Review
2.1. Rubrics of Food Supply Chain
2.2. Effect of Pandemic Disruptions on Food Supply Chain
2.3. Conventional Food Supply Chain and Issues
2.4. Application of Internet of Things (IoT), Big Data & Blockchain in FSC
2.5. Blockchain in FSC
2.6. Artificial Intelligence (AI) and Machine Learning (ML) in FSC
2.7. Digital Twins & Cyber-Physical Systems in FSC
3. Methodology
4. Results
5. Bibliometric Analysis of Food Safety, Quality, and Sustainability Using Keyword Coupling
Indexed Keyword Coupling
6. Discussion
6.1. Effect of Current Pandemic on FSC
6.2. Technology and Food Sustainability
6.3. Scope for Circularity in Food Supply Chain and Waste Management
6.4. Technological Adoption in FSC and Challenges
6.5. Role of Technology in Food Relationship Strategies
6.6. Food Supply Transformations through Technology
7. Future Research on Technological Inclusions for Food Supply-Chain Transformation and Innovation
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Publication Source | No | Technology (Research Area) |
---|---|---|
International Journal of Production Research | 5 | Artificial Intelligence (Food Supply Chain Configurations), Mixed Integer Nonlinear Programming (Food Perishability), Blockchain (Food Traceability), Decision Support Systems (Arima, Arimax Machine Learning) Dynamic Network Sensors (Pricing Chilled Food Supply Chain). |
Journal of Cleaner Production | 4 | Blockchain (Traceability, Tracking), Big data (Green Agrifood Supply-Chain Investment decisions), Decision-Making Trial Evaluation Lab (Reduce FSC risks) |
Industrial Management and Data Systems, Production Planning and Control | 3 | Data-Driven Problem (FSC problems), Internet of Things (Perishable FSC), IoT (Tracking Prepacked Food Supply Chain), Blockchain (FSC Traceability) |
2nd International Conference on Industry 4.0 and Smart Manufacturing, ISM 2020, International Journal of Environmental, Research and Public Health, Computers in Industry, Food Control, International Journal of Supply Chain Management, Benchmarking, Foods, Sustainability (Switzerland), Technological Forecasting and Social Change, Proceedings of the 5th NA International Conference on Industrial Engineering and Operations Management, IOEM 2020 | 2 | Blockchain (FSC Traceability), Digital QR code (FSC safety), Fuzzy Logic (FSC Information), IoT (FSC Information Integration), Big Data (FSC sustainability, Integrity), Stochastic Modelling (Perishable FSC) |
Author | Problem Addressed | Number of Citations |
---|---|---|
[49] | Integrated RFID (Radio-Frequency Identification) and blockchain for an agrifood supply-chain traceability system (production, processing, warehousing, and sales) | 465 |
[50] | Built a food supply-chain traceability system for real-time food tracing based on HACCP (Hazard Analysis and Critical Control Points), blockchain and Internet of Things. | 263 |
[51] | Presented AgriBlockIoT, a fully decentralized, blockchain-based traceability solution for Agrifood supply chain management. | 175 |
[52] | Analyzed the concept of virtual food supply chains from an Internet of Things perspective and proposes an architecture to implement enabling information systems in a Fish Supply Chain. | 147 |
[53] | Proposed a value-centric business–technology joint design framework for acceleration of data processing, self-learning shelf-life prediction and real-time supply-chain replanning. | 139 |
[54] | Proposed big-data analytics-based approach that considers social media (Twitter) data for the identification of supply-chain management issues in food industries. | 89 |
[55] | Proposed a food-safety prewarning system, adopting association rule mining and Internet of Things technology, to timely monitor all the detection data of the whole supply chain and automatically prewarn. | 76 |
[24] | Proposed a blockchain-inspired Internet-of-Things architecture for creating a transparent food supply chain by integrating a radio frequency identification (RFID)-based sensor at the physical layer and blockchain at the cyber layer to build a tamperproof digital database to avoid cyberattacks. | 67 |
[56] | Proposed a supply-chain quality sustainability decision support system (QSDSS), adopting association rule mining and Dempster’s rule of combination techniques. | 66 |
[5] | Provided a blockchain-based credit evaluation system to strengthen the effectiveness of supervision and management in the food supply chain. | 61 |
[57] | Identified the various barriers that affect the adoption of IoT in the retail supply chain in the Indian context and also investigates the interdependences between the factors using a two-stage integrated ISM and DEMATEL methodology. | 52 |
[29] | Investigated the potential benefits of the chilled-food chain management innovation through sensor data-driven pricing decisions to predict the remaining shelf life of perishable foods. | 48 |
[58] | Proposed an effective and economical management platform to realize real-time tracking and tracing for prepackaged food supply-chain based on Internet of Things (IoT] technologies, and finally to ensure a benign and safe food consumption environment. | 46 |
[59] | Discussed goals and strategies for the design and building of an IoT architecture aiding the planning, management and control of the Food Supply Chain (FSC) operations using a simulation gaming tool embedded with IoT paradigm for the FSC applications. | 40 |
[60] | Proposed a blended, grey-based Decision-Making Trial and Evaluation Laboratory (DEMATEL) model to assess the relationships among the identified major risks in FSCs. | 39 |
Reference | Food Quality | Food Safety | Food Waste | Proposed Technologies |
---|---|---|---|---|
[61] | ✓ | Cyber-physical network systems (monitor food contamination) | ||
[22] | ✓ | IoT—blockchain-driven traceability technique for data transparency | ||
[62] | ✓ | Smart sensing technology to enhance food quality and freshness | ||
[20] | ✓ | Blockchain- and IoT-based traceability system for food waste | ||
[25] | ✓ | Cost-of-food traceability using blockchain | ||
[40] | ✓ | IoT-based inventory network tracing to minimize food waste | ||
[63] | ✓ | To check for adulteration and foodborne diseases—Traceability using grey Dematel approach | ||
[42] | ✓ | RFID-coupled, IoT-based food-quality forecasting | ||
[48] | ✓ | Digital twin-based behavioral modelling | ||
[64] | ✓ | IoT-based agrifood logistics system architecture | ||
[49] | ✓ | RFID-integrated blockchain for food traceability | ||
[65] | ✓ | Food supply-chain monitoring and planning using IoT |
Reference | Food Production and Processing | Food Tracking and Traceability | Warehousing and Packaging | Logistics | Branding, Marketing & Sales | Technological Tool Applied & Purpose | Publication Source |
---|---|---|---|---|---|---|---|
[20] | ✓ | Blockchain-based food traceability to ensure safety | Foods | ||||
[66] | ✓ | Blockchain integrated with QR code and built FoodSQRBlock in food production (scalability and feasibility) | Sustainability | ||||
[67] | ✓ | ✓ | Enhanced naive Bayes approach and IoT integration in warehousing and transportation | International Journal of Scientific and Technology Research | |||
[3] | ✓ | Smart Farming Technology Framework | Land Use Policy | ||||
[68] | ✓ | Producer-to-consumer food production and quality-based blockchain ledger | Quality—Access to success | ||||
[41] | ✓ | Blockchain machine-learning-based food-traceability system (BMLFTS) to improve food readability, scalability and improve anticounterfeiting | Electronics | ||||
[69] | ✓ | ✓ | IoT-enabled supply-chain parameters and modelling | Industrial Management and Data Systems | |||
[37] | ✓ | AI adoption to address operational efficiency in food production at SMEs | HSE Economic Journal | ||||
[70] | ✓ | Decision support systems (Arima, Arimax) for food sales forecasting | International Journal of Production Research | ||||
[22] | ✓ | IoT- and blockchain-driven food traceability | International Journal of Information Technology | ||||
[4] | ✓ | Blockchain-based diary product supply-chain traceability | International Journal of Production Research | ||||
[38] | ✓ | AI-based energy savings in food logistics | IEEE Industrial Applications of Artificial Intelligence (2020) | ||||
[71] | ✓ | Bayes classifiers algorithm integrated IoT for food supply-chain traceability | International Journal of Engineering and Advanced Technology | ||||
[63] | ✓ | Grey Dematal approach for food traceability | Information Processing in Agriculture | ||||
[72] | ✓ | Internet of perishable logistics for food supply-chain networks | IEEE Access | ||||
[73] | ✓ | Determinants of food safety level using smart technology | International Journal of Environmental Research and Public Health | ||||
[74] | ✓ | Electronic Product Code (EPC)-based Internet of Things for food sales monitoring | International Journal of RF Technologies |
Country | Documents | Total Citations | Link Strength |
---|---|---|---|
United Kingdom | 22 | 276 | 1943 |
India | 20 | 131 | 1686 |
China | 25 | 481 | 855 |
Turkey | 3 | 16 | 841 |
United States | 9 | 206 | 692 |
Canada | 6 | 53 | 576 |
Italy | 11 | 295 | 340 |
Netherlands | 6 | 252 | 337 |
Indonesia | 2 | 4 | 273 |
France | 5 | 73 | 248 |
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Abideen, A.Z.; Sundram, V.P.K.; Pyeman, J.; Othman, A.K.; Sorooshian, S. Food Supply Chain Transformation through Technology and Future Research Directions—A Systematic Review. Logistics 2021, 5, 83. https://doi.org/10.3390/logistics5040083
Abideen AZ, Sundram VPK, Pyeman J, Othman AK, Sorooshian S. Food Supply Chain Transformation through Technology and Future Research Directions—A Systematic Review. Logistics. 2021; 5(4):83. https://doi.org/10.3390/logistics5040083
Chicago/Turabian StyleAbideen, Ahmed Zainul, Veera Pandiyan Kaliani Sundram, Jaafar Pyeman, Abdul Kadir Othman, and Shahryar Sorooshian. 2021. "Food Supply Chain Transformation through Technology and Future Research Directions—A Systematic Review" Logistics 5, no. 4: 83. https://doi.org/10.3390/logistics5040083
APA StyleAbideen, A. Z., Sundram, V. P. K., Pyeman, J., Othman, A. K., & Sorooshian, S. (2021). Food Supply Chain Transformation through Technology and Future Research Directions—A Systematic Review. Logistics, 5(4), 83. https://doi.org/10.3390/logistics5040083