Non-Fungible Token based Smart Manufacturing to scale Industry 4.0 by using Augmented Reality, Deep Learning and Industrial Internet of Things

Fazeel Ahmed Khan, Adamu Abubakar Ibrahim
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Abstract

The recent revolution in Industry 4.0 (IR 4.0) has characterized the integration of advance technologies to bring the fourth industrial revolution to scale the manufacturing landscape. There are different key drivers for this revolution, in this research we have explored the following among them such as, Industrial Internet of Things (IIoT), Deep Learning, Blockchain and Augmented Reality. The emerging concept from blockchain namely “Non-Fungible Token” (NFT) relating to the uniqueness of digital assets has vast potential to be considered for physical assets identification and authentication in the IR 4.0 scenario. Similarly, the data acquired through the deployment of IIoT devices and sensors into smart industry spectrum can be transformed to generated robust analytics for different industry use-cases. The predictive maintenance is a major scenario in which early equipment failure detection using deep learning model on acquired data from IIoT devices has major potential for it. Similarly, the augmented reality can be able to provide real-time visualization within the factory environment to gather real-time insight and analytics from the physical equipment for different purposes. This research initially conducted a survey to analyse the existing developments in these domains of technologies to further widen its horizon for this research. This research developed and deployed a smart contract into an ethereum blockchain environment to simulate the use-case for NFT for physical assets and processes synchronization. The next phase was deploying deep learning algorithms on a dataset having data generated from IIoT devices and sensors. The Feedforward and Convolutional Neural Network were used to classify the target variables in relation with predictive maintenance failure analysis. Lastly, the research also proposed an AR based framework for the visualization ecosystem within the industry environment to effectively visualize and monitory IIoT based equipment’s for different industrial use-cases i.e., monitoring, inspection, quality assurance.
不可替代的基于令牌的智能制造通过使用增强现实、深度学习和工业物联网来扩展工业4.0
最近的工业4.0革命(IR 4.0)的特点是融合了先进技术,使第四次工业革命扩大了制造业的规模。这场革命有不同的关键驱动因素,在这项研究中,我们探讨了以下几个方面,如工业物联网(IIoT)、深度学习、区块链和增强现实。区块链的新兴概念,即与数字资产唯一性相关的“不可替代令牌”(NFT),在工业4.0场景中具有巨大的潜力,可用于物理资产识别和认证。同样,通过将IIoT设备和传感器部署到智能行业频谱中获得的数据可以转换为针对不同行业用例生成强大的分析。预测性维护是一种主要场景,其中使用深度学习模型对从IIoT设备获取的数据进行早期设备故障检测具有很大的潜力。同样,增强现实可以在工厂环境中提供实时可视化,以收集来自物理设备的实时洞察和分析,用于不同目的。本研究最初进行了一项调查,分析了这些技术领域的现有发展,以进一步扩大本研究的视野。本研究在以太坊区块链环境中开发并部署了一个智能合约,以模拟NFT用于物理资产和流程同步的用例。下一阶段是在工业物联网设备和传感器生成的数据集上部署深度学习算法。采用前馈神经网络和卷积神经网络对预测维修故障分析中的目标变量进行分类。最后,该研究还为工业环境中的可视化生态系统提出了一个基于AR的框架,以有效地可视化和监控基于工业物联网的设备,用于不同的工业用例,如监控、检查、质量保证。
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