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IoT-Blockchain Enabled Optimized Provenance System for Food Industry 4.0 Using Advanced Deep Learning

机译:使用高级深度学习为食品工业4.0启用物联网-区块链的优化货源系统

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摘要

Agriculture and livestock play a vital role in social and economic stability. Food safety and transparency in the food supply chain are a significant concern for many people. Internet of Things (IoT) and blockchain are gaining attention due to their success in versatile applications. They generate a large amount of data that can be optimized and used efficiently by advanced deep learning (ADL) techniques. The importance of such innovations from the viewpoint of supply chain management is significant in different processes such as for broadened visibility, provenance, digitalization, disintermediation, and smart contracts. This article takes the secure IoT–blockchain data of Industry 4.0 in the food sector as a research object. Using ADL techniques, we propose a hybrid model based on recurrent neural networks (RNN). Therefore, we used long short-term memory (LSTM) and gated recurrent units (GRU) as a prediction model and genetic algorithm (GA) optimization jointly to optimize the parameters of the hybrid model. We select the optimal training parameters by GA and finally cascade LSTM with GRU. We evaluated the performance of the proposed system for a different number of users. This paper aims to help supply chain practitioners to take advantage of the state-of-the-art technologies; it will also help the industry to make policies according to the predictions of ADL.
机译:农业和畜牧业在社会和经济稳定中发挥着至关重要的作用。食品供应链中的食品安全性和透明度是许多人关注的重要问题。物联网(IoT)和区块链由于在多功能应用程序中的成功而受到关注。它们生成大量数据,这些数据可以通过高级深度学习(ADL)技术进行优化和有效使用。从供应链管理的角度来看,这种创新的重要性在不同的过程中非常重要,例如对于扩大可见性,出处,数字化,解中介和智能合约。本文将食品行业中工业4.0的安全IoT区块链数据作为研究对象。使用ADL技术,我们提出了基于递归神经网络(RNN)的混合模型。因此,我们使用长短期记忆(LSTM)和门控循环单元(GRU)作为预测模型和遗传算法(GA)优化来共同优化混合模型的参数。我们通过GA选择最佳训练参数,最后将LSTM与GRU级联。我们针对不同数量的用户评估了所提出系统的性能。本文旨在帮助供应链从业人员利用最新技术。它还将帮助行业根据ADL的预测制定政策。

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