Scalable Compositional Digital Twin-Based Monitoring System for Production Management: Design and Development in an Experimental Open-Pit Mine

Designs Pub Date : 2024-05-07 DOI:10.3390/designs8030040
Nabil El Bazi, Oussama Laayati, Nouhaila Darkaoui, Adila El Maghraoui, Nasr Guennouni, Ahmed Chebak, Mustapha Mabrouki
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Abstract

While digital twins (DTs) have recently gained prominence as a viable option for creating reliable asset representations, many existing frameworks and architectures in the literature involve the integration of different technologies and paradigms, including the Internet of Things (IoTs), data modeling, and machine learning (ML). This complexity requires the orchestration of these different technologies, often resulting in subsystems and composition frameworks that are difficult to seamlessly align. In this paper, we present a scalable compositional framework designed for the development of a DT-based production management system (PMS) with advanced production monitoring capabilities. The conducted approach used to design the compositional framework utilizes the Factory Design and Improvement (FDI) methodology. Furthermore, the validation of our proposed framework is illustrated through a case study conducted in a phosphate screening station within the context of the mining industry.
用于生产管理的可扩展合成数字孪生监测系统:露天矿实验中的设计与开发
数字孪生(DTs)作为创建可靠资产表征的一种可行方案,近来备受瞩目,但文献中的许多现有框架和架构都涉及不同技术和范式的集成,包括物联网(IoTs)、数据建模和机器学习(ML)。这种复杂性要求对这些不同的技术进行协调,往往导致子系统和组成框架难以无缝对接。在本文中,我们介绍了一个可扩展的组合框架,该框架专为开发基于 DT 的生产管理系统(PMS)而设计,具有先进的生产监控功能。设计组合框架所采用的方法是工厂设计与改进(FDI)方法。此外,我们还通过在采矿业磷酸盐筛选站进行的案例研究,对我们提出的框架进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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