基于合成数据的铁路信号数字孪生创建大数据架构

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Giulio Salierno;Letizia Leonardi;Giacomo Cabri
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引用次数: 0

摘要

工业 5.0 为定义未来工厂的关键特征带来了新的可能性。这一趋势通过利用数字孪生(DT)模型作为实体制造资产的虚拟代表,改变了传统的工业生产。在铁路行业,数字孪生模型通过预测铁路系统和子系统的发展、洞察物理资产的未来性能以及在实施前测试和原型化解决方案,提供了显著的优势。本文介绍了我们在铁路领域创建数字孪生模型的方法。我们特别强调了大数据在支持铁路公司决策方面的关键作用,以及数据在创建铁路系统中物理对象的虚拟表征方面的重要性。我们的研究结果表明,基于合成数据的铁路开关点数字孪生模型能够准确地以数据点的形式表现物理铁路开关的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Big Data Architecture for Digital Twin Creation of Railway Signals Based on Synthetic Data
Industry 5.0 has introduced new possibilities for defining key features of the factories of the future. This trend has transformed traditional industrial production by exploiting Digital Twin (DT) models as virtual representations of physical manufacturing assets. In the railway industry, Digital Twin models offer significant benefits by enabling anticipation of developments in rail systems and subsystems, providing insight into the future performance of physical assets, and allowing testing and prototyping solutions prior to implementation. This paper presents our approach for creating a Digital Twin model in the railway domain. We particularly emphasize the critical role of Big Data in supporting decision-making for railway companies and the importance of data in creating virtual representations of physical objects in railway systems. Our results show that the Digital Twin model of railway switch points, based on synthetic data, accurately represents the behavior of physical railway switches in terms of data points.
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CiteScore
5.40
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