Sajal Halder , Md Rafiqul Islam , Quazi Mamun , Arash Mahboubi , Patrick Walsh , Md Zahidul Islam
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引用次数: 0
Abstract
The rapid evolution of Artificial Intelligence (AI) and the Social Industrial Internet of Things (SIIoT) has significantly impacted the agri-food supply chain, offering transformative solutions for security, efficiency, and sustainability. However, challenges related to data integrity, cyber threats, and system interoperability remain. This study provides a comprehensive analysis of AI-enabled secure SIIoT applications in the agri-food supply chain, addressing key security concerns and efficiency bottlenecks. It aims to develop a structured taxonomy of AI-driven security mechanisms, highlighting their roles in safeguarding SIIoT systems. A systematic literature review was conducted using reputable databases, including Google Scholar, ACM, DBLP, IEEE Xplore, SCOPUS, and Web of Science, focusing on peer-reviewed articles from the last six years. Additionally, multiple case studies were examined to validate the real-world application of AI-driven security frameworks in the agri-food industry. The findings indicate that AI-driven security solutions significantly enhance trust management, anomaly detection, and data privacy in SIIoT networks. The proposed taxonomy categorizes AI-enabled security mechanisms into five distinct areas, offering a structured reference for future research and practical implementations. Furthermore, case study analysis demonstrates the successful deployment of AI-driven security in real-world agri-food applications, emphasizing improved traceability and resilience against cyber threats. This study advances the field by identifying gaps in current research, proposing strategic recommendations, and outlining future directions for AI-enabled secure SIIoT systems in the agri-food research domain. The insights presented here provide a strong foundation for researchers, policymakers, and stakeholders in the agri-food sector to build more resilient and intelligent ecosystems.
人工智能(AI)和社会工业物联网(SIIoT)的快速发展对农业食品供应链产生了重大影响,为安全、效率和可持续性提供了变革性的解决方案。然而,与数据完整性、网络威胁和系统互操作性相关的挑战仍然存在。本研究全面分析了人工智能在农业食品供应链中的安全SIIoT应用,解决了关键的安全问题和效率瓶颈。它旨在开发人工智能驱动的安全机制的结构化分类,突出其在保护SIIoT系统中的作用。采用谷歌Scholar、ACM、DBLP、IEEE explore、SCOPUS和Web of Science等知名数据库进行系统文献综述,重点关注近六年同行评议的文章。此外,还研究了多个案例研究,以验证人工智能驱动的安全框架在农业食品行业的实际应用。研究结果表明,人工智能驱动的安全解决方案显著增强了SIIoT网络中的信任管理、异常检测和数据隐私。提出的分类法将支持人工智能的安全机制分为五个不同的领域,为未来的研究和实际实施提供了结构化的参考。此外,案例研究分析展示了人工智能驱动的安全在现实农业食品应用中的成功部署,强调了对网络威胁的可追溯性和弹性的改进。本研究通过确定当前研究中的差距,提出战略建议,并概述农业食品研究领域中支持人工智能的安全SIIoT系统的未来方向,推动了该领域的发展。本文提出的见解为农业食品部门的研究人员、政策制定者和利益相关者建立更具弹性和智能的生态系统提供了坚实的基础。