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Data-Driven Digital Twins for Technical Building Services Operation in Factories A Cooling Tower Case Study

机译:数据驱动的数字双胞胎技术建筑服务在工厂中操作进行冷却塔案例研究

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Cyber-physical production systems (CPPS) and digital twins (DT) with a data-driven core enable retrospective analyses of acquired data to achieve a pervasive system understanding and can further support prospective operational management in production systems. Cost pressure and environmental compliances sensitize facility operators for energy and resource efficiency within the whole life cycle while achieving reliability requirements. In manufacturing systems, technical building services (TBS) such as cooling towers (CT) are drivers of resource demands while they fulfil a vital mission to keep the production running. Data-driven approaches, such as data mining (DM), help to support operators in their daily business. Within this paper the development of a data-driven DT for TBS operation is presented and applied on an industrial CT case study located in Germany. It aims to improve system understanding and performance prediction as essentials for a successful operational management. The approach comprises seven consecutive steps in a broadly applicable workflow based on the CRISP-DM paradigm. Step by step, the workflow is explained including a tailored data pre-processing, transformation and aggregation as well as feature selection procedure. The graphical presentation of interim results in portfolio diagrams, heat maps and Sankey diagrams amongst others to enhance the intuitive understanding of the procedure. The comparative evaluation of selected DM algorithms confirms a high prediction accuracy for cooling capacity (R~(2) = 0.96) by using polynomial regression and electric power demand (R~(2) = 0.99) by linear regression. The results are evaluated graphically and the transfer into industrial practice is discussed conclusively.
机译:网络 - 物理生产系统(CPP)和数字双胞胎(DT)具有数据驱动的核心,可实现对获取数据的回顾性分析,以实现普遍存在的系统理解,并进一步支持生产系统中的预期运营管理。成本压力和环境促进致富设备运营商在整个生命周期内的能源和资源效率的同时达到可靠性要求。在制造系统中,诸如冷却塔(CT)之类的技术建筑服务(TB)是资源需求的驱动因素,同时符合努力使生产运行的重要任务。数据驱动的方法,例如数据挖掘(DM),有助于支持日常业务中的运营商。在本文中,介绍了TBS操作的数据驱动DT的开发,并应用于位于德国的工业CT案例研究。它旨在改善成功运营管理的必需品的系统理解和性能预测。该方法在基于CRISP-DM范例的广泛适用的工作流程中包含七个连续步骤。步骤一步,解释工作流,包括定制数据预处理,转换和聚合以及特征选择过程。 Interim结果的图形呈现在产品组合,热图和SANKey图中,其中包括对该程序的直观了解。所选择的DM算法的比较评估通过使用多项式回归和电力需求(R〜(2)= 0.99)通过线性回归来确认冷却能力(R〜(2)= 0.96)的高预测精度。该结果以图形方式评估,并讨论了工业实践的转移。

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