Lee C Alisdair, Chow K M, Chan H Anthony, Lun Daniel Pak-Kong
School of Computing and Information Sciences, Caritas Institute of Higher Education, Hong Kong SAR, China.
Department of Electronic and Information Engineering, The Hong Kong Polytechnic University, Hong Kong SAR, China.
Front Res Metr Anal. 2023 Feb 16;8:1035123. doi: 10.3389/frma.2023.1035123. eCollection 2023.
Fruit losses in the supply chain owing to improper handling and a lack of proper control are common in the industry. As losses are caused by the inefficiency of the export method, selecting the appropriate export method is a possible solution. Several organizations employ only a single strategy, which is mainly based on a first-in-first-out approach. Such a policy is easy to manage but inefficient. Given that the batch of fruits may become overripe during transportation, frontline operators do not have the authority or immediate support to change the fruit dispatching strategy. Thus, this study aims to develop a dynamic strategy simulator to determine the sequence of delivery based on forecasting information projected from probabilistic data to reduce the amount of fruit loss.
The proposed method to accomplish asynchronous federated learning (FL) is based on blockchain technology and a serially interacting smart contract. In this method, each party in the chain updates its model parameters and uses a voting system to reach a consensus. This study employs blockchain technology with smart contracts to serially enable asynchronous FL, with each party in the chain updating its parameter model. A smart contract combines a global model with a voting system to reach a common consensus. Its artificial intelligence (AI) and Internet of Things engine further strengthen the support for implementing the Long Short-Term Memory (LSTM) forecasting model. Based on AI technology, a system was constructed using FL in a decentralized governance AI policy on a blockchain network platform.
With mangoes being selected as the category of fruit in the study, the system improves the cost-effectiveness of the fruit (mango) supply chain. In the proposed approach, the simulation outcomes show fewer mangoes lost (0.035%) and operational costs reduced.
The proposed method shows improved cost-effectiveness in the fruit supply chain through the use of AI technology and blockchain. To evaluate the effectiveness of the proposed method, an Indonesian mango supply chain business case study has been selected. The results of the Indonesian mango supply chain case study indicate the effectiveness of the proposed approach in reducing fruit loss and operational costs.
在该行业中,由于处理不当和缺乏适当控制,供应链中的水果损失很常见。由于损失是由出口方式的低效率造成的,选择合适的出口方式可能是一种解决方案。一些组织只采用单一策略,主要基于先进先出的方法。这样的政策易于管理,但效率低下。鉴于这批水果在运输过程中可能会过度成熟,一线操作人员没有权力或即时支持来改变水果配送策略。因此,本研究旨在开发一种动态策略模拟器,根据概率数据预测的信息来确定交付顺序,以减少水果损失量。
实现异步联邦学习(FL)的提议方法基于区块链技术和串行交互智能合约。在这种方法中,链中的每个参与方更新其模型参数,并使用投票系统达成共识。本研究采用带有智能合约的区块链技术来串行启用异步联邦学习,链中的每个参与方更新其参数模型。智能合约将全局模型与投票系统结合起来以达成共同共识。其人工智能(AI)和物联网引擎进一步加强了对实施长短期记忆(LSTM)预测模型的支持。基于人工智能技术,在区块链网络平台上的去中心化治理人工智能策略中使用联邦学习构建了一个系统。
在该研究中选择芒果作为水果类别,该系统提高了水果(芒果)供应链的成本效益。在所提议的方法中,模拟结果显示损失的芒果更少(0.035%)且运营成本降低。
所提议的方法通过使用人工智能技术和区块链在水果供应链中显示出更高的成本效益。为了评估所提议方法的有效性,选择了一个印度尼西亚芒果供应链商业案例研究。印度尼西亚芒果供应链案例研究的结果表明所提议的方法在减少水果损失和运营成本方面是有效的。