Edge computing-oriented smart agricultural supply chain mechanism with auction and fuzzy neural networks

Qing He, Hua Zhao, Yu Feng, Zehao Wang, Zhaofeng Ning, Tingwei Luo
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Abstract

Powered by data-driven technologies, precision agriculture offers immense productivity and sustainability benefits. However, fragmentation across farmlands necessitates distributed transparent automation. We developed an edge computing framework complemented by auction mechanisms and fuzzy optimizers that connect various supply chain stages. Specifically, edge computing offers powerful capabilities that enable real-time monitoring and data-driven decision-making in smart agriculture. We propose an edge computing framework tailored to agricultural needs to ensure sustainability through a renewable solar energy supply. Although the edge computing framework manages real-time crop monitoring and data collection, market-based mechanisms, such as auctions and fuzzy optimization models, support decision-making for smooth agricultural supply chain operations. We formulated invisible auction mechanisms that hide actual bid values and regulate information flows, combined with machine learning techniques for robust predictive analytics. While rule-based fuzzy systems encode domain expertise in agricultural decision-making, adaptable training algorithms help optimize model parameters from the data. A two-phase hybrid learning approach is formulated. Fuzzy optimization models were formulated using domain expertise for three key supply chain decision problems. Auction markets discover optimal crop demand–supply balancing and pricing signals. Fuzzy systems incorporate domain knowledge into interpretable crop-advisory models. An integrated evaluation of 50 farms over five crop cycles demonstrated the high performance of the proposed edge computing-oriented auction-based fuzzy neural network model compared with benchmarks.
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利用拍卖和模糊神经网络建立面向边缘计算的智能农业供应链机制
在数据驱动技术的推动下,精准农业带来了巨大的生产力和可持续发展效益。然而,由于农田分散,需要分布式透明自动化。我们开发了一个边缘计算框架,辅以拍卖机制和模糊优化器,将供应链的各个阶段连接起来。具体来说,边缘计算提供了强大的功能,可在智能农业中实现实时监控和数据驱动决策。我们提出了一个适合农业需求的边缘计算框架,以通过可再生太阳能供应确保可持续性。虽然边缘计算框架可管理实时作物监测和数据收集,但拍卖和模糊优化模型等基于市场的机制可为农业供应链的平稳运营提供决策支持。我们制定了隐形拍卖机制,以隐藏实际出价并规范信息流,同时结合机器学习技术进行稳健的预测分析。在基于规则的模糊系统编码农业决策领域专业知识的同时,适应性训练算法有助于从数据中优化模型参数。本文提出了一种两阶段混合学习方法。针对三个关键的供应链决策问题,利用领域专业知识制定了模糊优化模型。拍卖市场发现最佳作物供需平衡和定价信号。模糊系统将领域知识纳入可解释的作物咨询模型。对 50 个农场的五个作物周期进行的综合评估表明,与基准相比,所提出的以边缘计算为导向、基于拍卖的模糊神经网络模型具有很高的性能。
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